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Erschienen in: Structural and Multidisciplinary Optimization 1/2023

01.01.2023 | Review Article

A comprehensive review of digital twin—part 2: roles of uncertainty quantification and optimization, a battery digital twin, and perspectives

verfasst von: Adam Thelen, Xiaoge Zhang, Olga Fink, Yan Lu, Sayan Ghosh, Byeng D. Youn, Michael D. Todd, Sankaran Mahadevan, Chao Hu, Zhen Hu

Erschienen in: Structural and Multidisciplinary Optimization | Ausgabe 1/2023

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Abstract

As an emerging technology in the era of Industry 4.0, digital twin is gaining unprecedented attention because of its promise to further optimize process design, quality control, health monitoring, decision- and policy-making, and more, by comprehensively modeling the physical world as a group of interconnected digital models. In a two-part series of papers, we examine the fundamental role of different modeling techniques, twinning enabling technologies, and uncertainty quantification and optimization methods commonly used in digital twins. This second paper presents a literature review of key enabling technologies of digital twins, with an emphasis on uncertainty quantification, optimization methods, open-source datasets and tools, major findings, challenges, and future directions. Discussions focus on current methods of uncertainty quantification and optimization and how they are applied in different dimensions of a digital twin. Additionally, this paper presents a case study where a battery digital twin is constructed and tested to illustrate some of the modeling and twinning methods reviewed in this two-part review. Code and preprocessed data for generating all the results and figures presented in the case study are available on Github.

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Literatur
Zurück zum Zitat Abdar M, Pourpanah F, Hussain S, Rezazadegan D, Liu L, Ghavamzadeh M, Fieguth P, Cao X, Khosravi A, Acharya UR (2021) A review of uncertainty quantification in deep learning: techniques, applications and challenges. Inf Fusion 76:243–297 Abdar M, Pourpanah F, Hussain S, Rezazadegan D, Liu L, Ghavamzadeh M, Fieguth P, Cao X, Khosravi A, Acharya UR (2021) A review of uncertainty quantification in deep learning: techniques, applications and challenges. Inf Fusion 76:243–297
Zurück zum Zitat Adnan MA, Razzaque MA, Ahmed I, Isnin IF (2013) Bio-mimic optimization strategies in wireless sensor networks: a survey. Sensors 14(1):299–345 Adnan MA, Razzaque MA, Ahmed I, Isnin IF (2013) Bio-mimic optimization strategies in wireless sensor networks: a survey. Sensors 14(1):299–345
Zurück zum Zitat AllahBukhsh Z, Stipanovic I, Klanker G, O’Connor A, Doree AG (2019) Network level bridges maintenance planning using multi-attribute utility theory. Struct Infrastruct Eng 15(7):872–885 AllahBukhsh Z, Stipanovic I, Klanker G, O’Connor A, Doree AG (2019) Network level bridges maintenance planning using multi-attribute utility theory. Struct Infrastruct Eng 15(7):872–885
Zurück zum Zitat Allemang RJ (2003) The modal assurance criterion-twenty years of use and abuse. Sound Vib 37(8):14–23 Allemang RJ (2003) The modal assurance criterion-twenty years of use and abuse. Sound Vib 37(8):14–23
Zurück zum Zitat Alliance GB (2020) The global battery alliance battery passport: giving an identity to the ev’s most important component. Glob. Batter, Alliance Alliance GB (2020) The global battery alliance battery passport: giving an identity to the ev’s most important component. Glob. Batter, Alliance
Zurück zum Zitat Alsheikh MA, Hoang DT, Niyato D, Tan H-P, Lin S (2015) Markov decision processes with applications in wireless sensor networks: a survey. IEEE Commun Surv Tutor 17(3):1239–1267 Alsheikh MA, Hoang DT, Niyato D, Tan H-P, Lin S (2015) Markov decision processes with applications in wireless sensor networks: a survey. IEEE Commun Surv Tutor 17(3):1239–1267
Zurück zum Zitat An H, Youn BD, Kim HS (2022a) A methodology for sensor number and placement optimization for vibration-based damage detection of composite structures under model uncertainty. Compos Struct 279:114863 An H, Youn BD, Kim HS (2022a) A methodology for sensor number and placement optimization for vibration-based damage detection of composite structures under model uncertainty. Compos Struct 279:114863
Zurück zum Zitat An H, Youn BD, Kim HS (2022b) Optimal sensor placement considering both sensor faults under uncertainty and sensor clustering for vibration-based damage detection. Struct Multidisc Optim 65(3):1–32 An H, Youn BD, Kim HS (2022b) Optimal sensor placement considering both sensor faults under uncertainty and sensor clustering for vibration-based damage detection. Struct Multidisc Optim 65(3):1–32
Zurück zum Zitat Anand M, Ives Z, Lee I (2005) Quantifying eavesdropping vulnerability in sensor networks. In: Proceedings of the 2nd International Workshop on Data Management for Sensor Networks, pp 3–9 Anand M, Ives Z, Lee I (2005) Quantifying eavesdropping vulnerability in sensor networks. In: Proceedings of the 2nd International Workshop on Data Management for Sensor Networks, pp 3–9
Zurück zum Zitat Andrieu C, De Freitas N, Doucet A, Jordan MI (2003) An introduction to MCMC for machine learning. Mach Learn 50(1):5–43MATH Andrieu C, De Freitas N, Doucet A, Jordan MI (2003) An introduction to MCMC for machine learning. Mach Learn 50(1):5–43MATH
Zurück zum Zitat Ao D, Hu Z, Mahadevan S (2017a) Design of validation experiments for life prediction models. Reliab Eng Syst Saf 165:22–33 Ao D, Hu Z, Mahadevan S (2017a) Design of validation experiments for life prediction models. Reliab Eng Syst Saf 165:22–33
Zurück zum Zitat Ao D, Hu Z, Mahadevan S (2017b) Dynamics model validation using time-domain metrics. J Verif Valid Uncertain Quantif 2(1):011004 Ao D, Hu Z, Mahadevan S (2017b) Dynamics model validation using time-domain metrics. J Verif Valid Uncertain Quantif 2(1):011004
Zurück zum Zitat Arendt PD, Apley DW, Chen W (2012) Quantification of model uncertainty: calibration, model discrepancy, and identifiability Arendt PD, Apley DW, Chen W (2012) Quantification of model uncertainty: calibration, model discrepancy, and identifiability
Zurück zum Zitat Asorey-Cacheda R, Garcia-Sanchez A-J, García-Sánchez F, García-Haro J (2017) A survey on non-linear optimization problems in wireless sensor networks. J Netw Comput Appl 82:1–20 Asorey-Cacheda R, Garcia-Sanchez A-J, García-Sánchez F, García-Haro J (2017) A survey on non-linear optimization problems in wireless sensor networks. J Netw Comput Appl 82:1–20
Zurück zum Zitat Astroza R, Alessandri A, Conte JP (2019) A dual adaptive filtering approach for nonlinear finite element model updating accounting for modeling uncertainty. Mech Syst Signal Process 115:782–800 Astroza R, Alessandri A, Conte JP (2019) A dual adaptive filtering approach for nonlinear finite element model updating accounting for modeling uncertainty. Mech Syst Signal Process 115:782–800
Zurück zum Zitat Attia PM, Chueh WC, Harris SJ (2020) Revisiting the t0. 5 dependence of sei growth. J Electrochem Soc 167(9):090535 Attia PM, Chueh WC, Harris SJ (2020) Revisiting the t0. 5 dependence of sei growth. J Electrochem Soc 167(9):090535
Zurück zum Zitat Augustine P (2020) The industry use cases for the digital twin idea. In: Advances in Computers, vol 117. Elsevier, pp 79–105 Augustine P (2020) The industry use cases for the digital twin idea. In: Advances in Computers, vol 117. Elsevier, pp 79–105
Zurück zum Zitat Aydemir H, Zengin U, Durak U (2020) The digital twin paradigm for aircraft review and outlook. In: AIAA Scitech 2020 Forum, p 0553 Aydemir H, Zengin U, Durak U (2020) The digital twin paradigm for aircraft review and outlook. In: AIAA Scitech 2020 Forum, p 0553
Zurück zum Zitat Ayerbe E, Berecibar M, Clark S, Franco AA, Ruhland J (2021) Digitalization of battery manufacturing: current status, challenges, and opportunities. Adv Energy Mater 12(17):2102696 Ayerbe E, Berecibar M, Clark S, Franco AA, Ruhland J (2021) Digitalization of battery manufacturing: current status, challenges, and opportunities. Adv Energy Mater 12(17):2102696
Zurück zum Zitat Bai Y, Muralidharan N, Sun Y-K, Passerini S, Whittingham MS, Belharouak I (2020) Energy and environmental aspects in recycling lithium-ion batteries: concept of battery identity global passport. Mater Today 41:304–315 Bai Y, Muralidharan N, Sun Y-K, Passerini S, Whittingham MS, Belharouak I (2020) Energy and environmental aspects in recycling lithium-ion batteries: concept of battery identity global passport. Mater Today 41:304–315
Zurück zum Zitat Bao N, Wang C (2015) A monte carlo simulation based inverse propagation method for stochastic model updating. Mech Syst Signal Process 60:928–944 Bao N, Wang C (2015) A monte carlo simulation based inverse propagation method for stochastic model updating. Mech Syst Signal Process 60:928–944
Zurück zum Zitat Barbehenn M (1998) A note on the complexity of Dijkstra’s algorithm for graphs with weighted vertices. IEEE Trans Comput 47(2):263MATH Barbehenn M (1998) A note on the complexity of Dijkstra’s algorithm for graphs with weighted vertices. IEEE Trans Comput 47(2):263MATH
Zurück zum Zitat Barzegar V, Laflamme S, Hu C, Dodson J (2022) Ensemble of recurrent neural networks with long short-term memory cells for high-rate structural health monitoring. Mech Syst Signal Process 164:108201 Barzegar V, Laflamme S, Hu C, Dodson J (2022) Ensemble of recurrent neural networks with long short-term memory cells for high-rate structural health monitoring. Mech Syst Signal Process 164:108201
Zurück zum Zitat Basagni S, Bölöni L, Gjanci P, Petrioli C, Phillips CA, Turgut D (2014) Maximizing the value of sensed information in underwater wireless sensor networks via an autonomous underwater vehicle. In: IEEE INFOCOM 2014-IEEE Conference on Computer Communications, pp 988–996. IEEE Basagni S, Bölöni L, Gjanci P, Petrioli C, Phillips CA, Turgut D (2014) Maximizing the value of sensed information in underwater wireless sensor networks via an autonomous underwater vehicle. In: IEEE INFOCOM 2014-IEEE Conference on Computer Communications, pp 988–996. IEEE
Zurück zum Zitat Beck JL, Katafygiotis LS (1998) Updating models and their uncertainties. I: Bayesian statistical framework. J Eng Mech 124(4):455–461 Beck JL, Katafygiotis LS (1998) Updating models and their uncertainties. I: Bayesian statistical framework. J Eng Mech 124(4):455–461
Zurück zum Zitat Behmanesh I, Moaveni B, Papadimitriou C (2017) Probabilistic damage identification of a designed 9-story building using modal data in the presence of modeling errors. Eng Struct 131:542–552 Behmanesh I, Moaveni B, Papadimitriou C (2017) Probabilistic damage identification of a designed 9-story building using modal data in the presence of modeling errors. Eng Struct 131:542–552
Zurück zum Zitat Bing L, Meilin Z, Kai X (2000) A practical engineering method for fuzzy reliability analysis of mechanical structures. Reliab Eng Syst Saf 67(3):311–315 Bing L, Meilin Z, Kai X (2000) A practical engineering method for fuzzy reliability analysis of mechanical structures. Reliab Eng Syst Saf 67(3):311–315
Zurück zum Zitat Birkl CR, Roberts MR, McTurk E, Bruce PG, Howey DA (2017) Degradation diagnostics for lithium ion cells. J Power Sources 341:373–386 Birkl CR, Roberts MR, McTurk E, Bruce PG, Howey DA (2017) Degradation diagnostics for lithium ion cells. J Power Sources 341:373–386
Zurück zum Zitat Bisdikian C, Kaplan LM, Srivastava MB (2013) On the quality and value of information in sensor networks. ACM Trans Sens Netw 9(4):1–26 Bisdikian C, Kaplan LM, Srivastava MB (2013) On the quality and value of information in sensor networks. ACM Trans Sens Netw 9(4):1–26
Zurück zum Zitat Błachowski B, Świercz A, Ostrowski M, Tauzowski P, Olaszek P, Jankowski Ł (2020) Convex relaxation for efficient sensor layout optimization in large-scale structures subjected to moving loads. Comput-Aided Civil Infrastruct Eng 35(10):1085–1100 Błachowski B, Świercz A, Ostrowski M, Tauzowski P, Olaszek P, Jankowski Ł (2020) Convex relaxation for efficient sensor layout optimization in large-scale structures subjected to moving loads. Comput-Aided Civil Infrastruct Eng 35(10):1085–1100
Zurück zum Zitat Boers Y, Driessen JN (2003) Interacting multiple model particle filter. IEEE Proc-Radar Sonar Navig 150(5):344–349 Boers Y, Driessen JN (2003) Interacting multiple model particle filter. IEEE Proc-Radar Sonar Navig 150(5):344–349
Zurück zum Zitat Boscaglia L, Bonsanto F, Boglietti A, Nategh S, Scema C (2019) Conjugate heat transfer and cfd modeling of self-ventilated traction motors. In: 2019 IEEE Energy Conversion Congress and Exposition (ECCE), pp 3103–3109. IEEE Boscaglia L, Bonsanto F, Boglietti A, Nategh S, Scema C (2019) Conjugate heat transfer and cfd modeling of self-ventilated traction motors. In: 2019 IEEE Energy Conversion Congress and Exposition (ECCE), pp 3103–3109. IEEE
Zurück zum Zitat Bousdekis A, Lepenioti K, Apostolou D, Mentzas G (2019) Decision making in predictive maintenance: literature review and research agenda for industry 4.0. IFAC-PapersOnLine 52(13):607–612 Bousdekis A, Lepenioti K, Apostolou D, Mentzas G (2019) Decision making in predictive maintenance: literature review and research agenda for industry 4.0. IFAC-PapersOnLine 52(13):607–612
Zurück zum Zitat Bruynseels K, Santoni de Sio F, Van den Hoven J (2018) Digital twins in health care: ethical implications of an emerging engineering paradigm. Front Genet 31 Bruynseels K, Santoni de Sio F, Van den Hoven J (2018) Digital twins in health care: ethical implications of an emerging engineering paradigm. Front Genet 31
Zurück zum Zitat Bukhsh ZA, Stipanovic I, Doree AG (2020) Multi-year maintenance planning framework using multi-attribute utility theory and genetic algorithms. Eur Transp Res Rev 12(1):1–13 Bukhsh ZA, Stipanovic I, Doree AG (2020) Multi-year maintenance planning framework using multi-attribute utility theory and genetic algorithms. Eur Transp Res Rev 12(1):1–13
Zurück zum Zitat Burns JA, Cliff EM, Farlow K (2014) Parameter estimation and model discrepancy in control systems with delays. IFAC Proc Vol 47(3):11679–11684 Burns JA, Cliff EM, Farlow K (2014) Parameter estimation and model discrepancy in control systems with delays. IFAC Proc Vol 47(3):11679–11684
Zurück zum Zitat Burns JA, Cliff EM, Herdman TL (2018) Identification of dynamical systems with structured uncertainty. Inverse Probl Sci Eng 26(2):280–321MATH Burns JA, Cliff EM, Herdman TL (2018) Identification of dynamical systems with structured uncertainty. Inverse Probl Sci Eng 26(2):280–321MATH
Zurück zum Zitat Camci F (2009) System maintenance scheduling with prognostics information using genetic algorithm. IEEE Trans Reliab 58(3):539–552 Camci F (2009) System maintenance scheduling with prognostics information using genetic algorithm. IEEE Trans Reliab 58(3):539–552
Zurück zum Zitat Camci F (2015) Maintenance scheduling of geographically distributed assets with prognostics information. Eur J Oper Res 245(2):506–516MATH Camci F (2015) Maintenance scheduling of geographically distributed assets with prognostics information. Eur J Oper Res 245(2):506–516MATH
Zurück zum Zitat Cantero-Chinchilla S, Chiachío J, Chiachío M, Chronopoulos D, Jones A (2020) Optimal sensor configuration for ultrasonic guided-wave inspection based on value of information. Mech Syst Signal Process 135:106377 Cantero-Chinchilla S, Chiachío J, Chiachío M, Chronopoulos D, Jones A (2020) Optimal sensor configuration for ultrasonic guided-wave inspection based on value of information. Mech Syst Signal Process 135:106377
Zurück zum Zitat Carne TG, Dohrmann CR (1994) A modal test design strategy for model correlation. Technical report, Sandia National Labs., Albuquerque, NM (United States) Carne TG, Dohrmann CR (1994) A modal test design strategy for model correlation. Technical report, Sandia National Labs., Albuquerque, NM (United States)
Zurück zum Zitat Casals LC, García BA, Canal C (2019) Second life batteries lifespan: rest of useful life and environmental analysis. J Environ Manag 232:354–363 Casals LC, García BA, Canal C (2019) Second life batteries lifespan: rest of useful life and environmental analysis. J Environ Manag 232:354–363
Zurück zum Zitat Cha S-H (2007) Comprehensive survey on distance/similarity measures between probability density functions. City 1(2):1 Cha S-H (2007) Comprehensive survey on distance/similarity measures between probability density functions. City 1(2):1
Zurück zum Zitat Chadha M, Hu Z, Todd MD (2021) An alternative quantification of the value of information in structural health monitoring. Struct Health Monit 14759217211028439 Chadha M, Hu Z, Todd MD (2021) An alternative quantification of the value of information in structural health monitoring. Struct Health Monit 14759217211028439
Zurück zum Zitat Chen G-S, Bruno RJ, Salama M (1991) Optimal placement of active/passive members in truss structures using simulated annealing. AIAA J 29(8):1327–1334 Chen G-S, Bruno RJ, Salama M (1991) Optimal placement of active/passive members in truss structures using simulated annealing. AIAA J 29(8):1327–1334
Zurück zum Zitat Chen X, Kang E, Shiraishi S, Preciado VM, Jiang Z (2018) Digital behavioral twins for safe connected cars. In: Proceedings of the 21th ACM/IEEE international conference on model driven engineering languages and systems, p 144–153 Chen X, Kang E, Shiraishi S, Preciado VM, Jiang Z (2018) Digital behavioral twins for safe connected cars. In: Proceedings of the 21th ACM/IEEE international conference on model driven engineering languages and systems, p 144–153
Zurück zum Zitat De Angelis V, Preger Y, Chalamala BR (2021) Battery lifecycle framework: a flexible repository and visualization tool for battery data from materials development to field implementation De Angelis V, Preger Y, Chalamala BR (2021) Battery lifecycle framework: a flexible repository and visualization tool for battery data from materials development to field implementation
Zurück zum Zitat Der Kiureghian A, Ditlevsen O (2009) Aleatory or epistemic? Does it matter? Struct Saf 31(2):105–112 Der Kiureghian A, Ditlevsen O (2009) Aleatory or epistemic? Does it matter? Struct Saf 31(2):105–112
Zurück zum Zitat Diao W, Saxena S, Pecht M (2019) Accelerated cycle life testing and capacity degradation modeling of licoo2-graphite cells. J Power Sources 435:226830 Diao W, Saxena S, Pecht M (2019) Accelerated cycle life testing and capacity degradation modeling of licoo2-graphite cells. J Power Sources 435:226830
Zurück zum Zitat Dodson J, Downey A, Laflamme S, Todd MD, Moura AG, Wang Y, Mao Z, Avitabile P, Blasch E (2022) High-rate structural health monitoring and prognostics: an overview. Data Sci Eng 9:213–217 Dodson J, Downey A, Laflamme S, Todd MD, Moura AG, Wang Y, Mao Z, Avitabile P, Blasch E (2022) High-rate structural health monitoring and prognostics: an overview. Data Sci Eng 9:213–217
Zurück zum Zitat Dowding KJ, Pilch M, Hills RG (2008) Formulation of the thermal problem. Comput Methods Appl Mech Eng 197(29–32):2385–2389MATH Dowding KJ, Pilch M, Hills RG (2008) Formulation of the thermal problem. Comput Methods Appl Mech Eng 197(29–32):2385–2389MATH
Zurück zum Zitat Downey A, Hu C, Laflamme S (2018) Optimal sensor placement within a hybrid dense sensor network using an adaptive genetic algorithm with learning gene pool. Struct Health Monit 17(3):450–460 Downey A, Hu C, Laflamme S (2018) Optimal sensor placement within a hybrid dense sensor network using an adaptive genetic algorithm with learning gene pool. Struct Health Monit 17(3):450–460
Zurück zum Zitat Duchoň F, Babinec A, Kajan M, Beňo P, Florek M, Fico T, Jurišica L (2014) Path planning with modified a star algorithm for a mobile robot. Procedia Eng 96:59–69 Duchoň F, Babinec A, Kajan M, Beňo P, Florek M, Fico T, Jurišica L (2014) Path planning with modified a star algorithm for a mobile robot. Procedia Eng 96:59–69
Zurück zum Zitat Durão LF, Haag S, Anderl R, Schützer K, Zancul E (2018) Digital twin requirements in the context of industry 4.0. In: IFIP international conference on product lifecycle management. Springer, pp 204–214 Durão LF, Haag S, Anderl R, Schützer K, Zancul E (2018) Digital twin requirements in the context of industry 4.0. In: IFIP international conference on product lifecycle management. Springer, pp 204–214
Zurück zum Zitat Ehsani N, Afshar A (2010) Optimization of contaminant sensor placement in water distribution networks: multi-objective approach. Water Distrib Syst Anal 2010:338–346 Ehsani N, Afshar A (2010) Optimization of contaminant sensor placement in water distribution networks: multi-objective approach. Water Distrib Syst Anal 2010:338–346
Zurück zum Zitat Engel Y, Wellman MP (2010) Multiattribute auctions based on generalized additive independence. J Artif Intell Res 37:479–525MATH Engel Y, Wellman MP (2010) Multiattribute auctions based on generalized additive independence. J Artif Intell Res 37:479–525MATH
Zurück zum Zitat Engel H, Hertzke P, Siccardo G (2019) Second-life ev batteries: the newest value pool in energy storage. McKinsey & Company Engel H, Hertzke P, Siccardo G (2019) Second-life ev batteries: the newest value pool in energy storage. McKinsey & Company
Zurück zum Zitat Eshghi AT, Lee S, Jung H, Wang P (2019) Design of structural monitoring sensor network using surrogate modeling of stochastic sensor signal. Mech Syst Signal Process 133:106280 Eshghi AT, Lee S, Jung H, Wang P (2019) Design of structural monitoring sensor network using surrogate modeling of stochastic sensor signal. Mech Syst Signal Process 133:106280
Zurück zum Zitat Ferson S, Oberkampf WL, Ginzburg L (2008) Model validation and predictive capability for the thermal challenge problem. Comput Methods Appl Mech Eng 197(29–32):2408–2430MATH Ferson S, Oberkampf WL, Ginzburg L (2008) Model validation and predictive capability for the thermal challenge problem. Comput Methods Appl Mech Eng 197(29–32):2408–2430MATH
Zurück zum Zitat Flynn EB, Todd MD (2010) A bayesian approach to optimal sensor placement for structural health monitoring with application to active sensing. Mech Syst Signal Process 24(4):891–903 Flynn EB, Todd MD (2010) A bayesian approach to optimal sensor placement for structural health monitoring with application to active sensing. Mech Syst Signal Process 24(4):891–903
Zurück zum Zitat Frazier W (2014) Metal additive manufacturing: a review. J Mater Eng Perform 23:1917–1928 Frazier W (2014) Metal additive manufacturing: a review. J Mater Eng Perform 23:1917–1928
Zurück zum Zitat Froger A, Gendreau M, Mendoza JE, Pinson E, Rousseau L-M (2016) Maintenance scheduling in the electricity industry: a literature review. Eur J Oper Res 251(3):695–706MATH Froger A, Gendreau M, Mendoza JE, Pinson E, Rousseau L-M (2016) Maintenance scheduling in the electricity industry: a literature review. Eur J Oper Res 251(3):695–706MATH
Zurück zum Zitat Gal Y, Ghahramani Z (2015) Bayesian convolutional neural networks with bernoulli approximate variational inference. arXiv preprint arXiv:1506.02158 Gal Y, Ghahramani Z (2015) Bayesian convolutional neural networks with bernoulli approximate variational inference. arXiv preprint arXiv:​1506.​02158
Zurück zum Zitat Gal Y, Ghahramani Z (2016a) Dropout as a bayesian approximation: representing model uncertainty in deep learning. In: International Conference on Machine Learning, pp 1050–1059. PMLR Gal Y, Ghahramani Z (2016a) Dropout as a bayesian approximation: representing model uncertainty in deep learning. In: International Conference on Machine Learning, pp 1050–1059. PMLR
Zurück zum Zitat Gal Y, Ghahramani Z (2016b) A theoretically grounded application of dropout in recurrent neural networks. Adv Neural Inf Process Syst 29 Gal Y, Ghahramani Z (2016b) A theoretically grounded application of dropout in recurrent neural networks. Adv Neural Inf Process Syst 29
Zurück zum Zitat Gammell JD, Srinivasa SS, Barfoot TD (2014) Informed rrt*: optimal sampling-based path planning focused via direct sampling of an admissible ellipsoidal heuristic. In: 2014 IEEE/RSJ International Conference on Intelligent Robots and Systems, pp 2997–3004. IEEE Gammell JD, Srinivasa SS, Barfoot TD (2014) Informed rrt*: optimal sampling-based path planning focused via direct sampling of an admissible ellipsoidal heuristic. In: 2014 IEEE/RSJ International Conference on Intelligent Robots and Systems, pp 2997–3004. IEEE
Zurück zum Zitat Gao W, Song C, Tin-Loi F (2010) Probabilistic interval analysis for structures with uncertainty. Struct Saf 32(3):191–199 Gao W, Song C, Tin-Loi F (2010) Probabilistic interval analysis for structures with uncertainty. Struct Saf 32(3):191–199
Zurück zum Zitat Garmabaki A, Ahmadi A, Ahmadi M (2016) Maintenance optimization using multi-attribute utility theory. In: Current trends in reliability, availability, maintainability and safety. Springer, pp 13–25 Garmabaki A, Ahmadi A, Ahmadi M (2016) Maintenance optimization using multi-attribute utility theory. In: Current trends in reliability, availability, maintainability and safety. Springer, pp 13–25
Zurück zum Zitat Gawlikowski J, Tassi CRN, Ali M, Lee J, Humt M, Feng J, Kruspe A, Triebel R, Jung P, Roscher R, Shahzad M (2021) A survey of uncertainty in deep neural networks. arXiv preprint arXiv:2107.03342 Gawlikowski J, Tassi CRN, Ali M, Lee J, Humt M, Feng J, Kruspe A, Triebel R, Jung P, Roscher R, Shahzad M (2021) A survey of uncertainty in deep neural networks. arXiv preprint arXiv:​2107.​03342
Zurück zum Zitat Glaessgen E, Stargel D (2012) The digital twin paradigm for future nasa and us air force vehicles. In: 53rd AIAA/ASME/ASCE/AHS/ASC structures, structural dynamics and materials conference 20th AIAA/ASME/AHS adaptive structures conference 14th AIAA, p 1818 Glaessgen E, Stargel D (2012) The digital twin paradigm for future nasa and us air force vehicles. In: 53rd AIAA/ASME/ASCE/AHS/ASC structures, structural dynamics and materials conference 20th AIAA/ASME/AHS adaptive structures conference 14th AIAA, p 1818
Zurück zum Zitat Goebel K, Saha B, Saxena A, Celaya JR, Christophersen JP (2008) Prognostics in battery health management. IEEE Instrum Meas Mag 11(4):33–40 Goebel K, Saha B, Saxena A, Celaya JR, Christophersen JP (2008) Prognostics in battery health management. IEEE Instrum Meas Mag 11(4):33–40
Zurück zum Zitat Gomes GF, de Almeida FA, da Silva Lopes Alexandrino P, da Cunha SS, de Sousa BS, Ancelotti AC (2019) A multiobjective sensor placement optimization for SHM systems considering fisher information matrix and mode shape interpolation. Eng Comput 35(2):519–535 Gomes GF, de Almeida FA, da Silva Lopes Alexandrino P, da Cunha SS, de Sousa BS, Ancelotti AC (2019) A multiobjective sensor placement optimization for SHM systems considering fisher information matrix and mode shape interpolation. Eng Comput 35(2):519–535
Zurück zum Zitat Grall A, Dieulle L, Bérenguer C, Roussignol M (2002) Continuous-time predictive-maintenance scheduling for a deteriorating system. IEEE Trans Reliab 51(2):141–150MATH Grall A, Dieulle L, Bérenguer C, Roussignol M (2002) Continuous-time predictive-maintenance scheduling for a deteriorating system. IEEE Trans Reliab 51(2):141–150MATH
Zurück zum Zitat Gupta V, Sharma M, Thakur N (2010) Optimization criteria for optimal placement of piezoelectric sensors and actuators on a smart structure: a technical review. J Intell Mater Syst Struct 21(12):1227–1243 Gupta V, Sharma M, Thakur N (2010) Optimization criteria for optimal placement of piezoelectric sensors and actuators on a smart structure: a technical review. J Intell Mater Syst Struct 21(12):1227–1243
Zurück zum Zitat Guratzsch RF, Mahadevan S (2010) Structural health monitoring sensor placement optimization under uncertainty. AIAA J 48(7):1281–1289 Guratzsch RF, Mahadevan S (2010) Structural health monitoring sensor placement optimization under uncertainty. AIAA J 48(7):1281–1289
Zurück zum Zitat He W, Williard N, Osterman M, Pecht M (2011) Prognostics of lithium-ion batteries based on Dempster-Shafer theory and the bayesian Monte Carlo method. J Power Sources 196(23):10314–10321 He W, Williard N, Osterman M, Pecht M (2011) Prognostics of lithium-ion batteries based on Dempster-Shafer theory and the bayesian Monte Carlo method. J Power Sources 196(23):10314–10321
Zurück zum Zitat Heimes FO (2008) Recurrent neural networks for remaining useful life estimation. In: 2008 international conference on prognostics and health management, pp 1–6. IEEE Heimes FO (2008) Recurrent neural networks for remaining useful life estimation. In: 2008 international conference on prognostics and health management, pp 1–6. IEEE
Zurück zum Zitat Heydari A, Aghabozorgi M, Biguesh M (2020) Optimal sensor placement for source localization based on RSSD. Wireless Netw 26(7):5151–5162 Heydari A, Aghabozorgi M, Biguesh M (2020) Optimal sensor placement for source localization based on RSSD. Wireless Netw 26(7):5151–5162
Zurück zum Zitat Hills R, Dowding K, Swiler L (2008) Thermal challenge problem: summary. Comput Methods Appl Mech Eng 197(29–32):2490–2495MATH Hills R, Dowding K, Swiler L (2008) Thermal challenge problem: summary. Comput Methods Appl Mech Eng 197(29–32):2490–2495MATH
Zurück zum Zitat Honkura K, Takahashi K, Horiba T (2011) Capacity-fading prediction of lithium-ion batteries based on discharge curves analysis. J Power Sources 196(23):10141–10147 Honkura K, Takahashi K, Horiba T (2011) Capacity-fading prediction of lithium-ion batteries based on discharge curves analysis. J Power Sources 196(23):10141–10147
Zurück zum Zitat Hsu M-H (2021) Machine learning-based non-destructive evaluation of fatigue damage in metals. PhD thesis Hsu M-H (2021) Machine learning-based non-destructive evaluation of fatigue damage in metals. PhD thesis
Zurück zum Zitat Hu Z, Mahadevan S (2017) Uncertainty quantification and management in additive manufacturing: current status, needs, and opportunities. Int J Adv Manuf Technol 93(5):2855–2874 Hu Z, Mahadevan S (2017) Uncertainty quantification and management in additive manufacturing: current status, needs, and opportunities. Int J Adv Manuf Technol 93(5):2855–2874
Zurück zum Zitat Hu C, Youn BD, Wang P, Yoon JT (2012) Ensemble of data-driven prognostic algorithms for robust prediction of remaining useful life. Reliab Eng Syst Saf 103:120–135 Hu C, Youn BD, Wang P, Yoon JT (2012) Ensemble of data-driven prognostic algorithms for robust prediction of remaining useful life. Reliab Eng Syst Saf 103:120–135
Zurück zum Zitat Hu C, Jain G, Tamirisa P, Gorka T (2014) Method for estimating capacity and predicting remaining useful life of lithium-ion battery. In: 2014 international conference on prognostics and health management, pp 1–8. IEEE Hu C, Jain G, Tamirisa P, Gorka T (2014) Method for estimating capacity and predicting remaining useful life of lithium-ion battery. In: 2014 international conference on prognostics and health management, pp 1–8. IEEE
Zurück zum Zitat Hu C, Ye H, Jain G, Schmidt C (2018) Remaining useful life assessment of lithium-ion batteries in implantable medical devices. J Power Sources 375:118–130 Hu C, Ye H, Jain G, Schmidt C (2018) Remaining useful life assessment of lithium-ion batteries in implantable medical devices. J Power Sources 375:118–130
Zurück zum Zitat Hu X, Xu L, Lin X, Pecht M (2020) Battery lifetime prognostics. Joule 4(2):310–346 Hu X, Xu L, Lin X, Pecht M (2020) Battery lifetime prognostics. Joule 4(2):310–346
Zurück zum Zitat Hu Z, Ao D, Mahadevan S (2017) Calibration experimental design considering field response and model uncertainty. Comput Methods Appl Mech Eng 318:92–119MATH Hu Z, Ao D, Mahadevan S (2017) Calibration experimental design considering field response and model uncertainty. Comput Methods Appl Mech Eng 318:92–119MATH
Zurück zum Zitat Hu Z, Hu C, Mourelatos ZP, Mahadevan S (2019) Model discrepancy quantification in simulation-based design of dynamical systems. J Mech Des 141(1) Hu Z, Hu C, Mourelatos ZP, Mahadevan S (2019) Model discrepancy quantification in simulation-based design of dynamical systems. J Mech Des 141(1)
Zurück zum Zitat Huan X, Marzouk YM (2013) Simulation-based optimal Bayesian experimental design for nonlinear systems. J Comput Phys 232(1):288–317 Huan X, Marzouk YM (2013) Simulation-based optimal Bayesian experimental design for nonlinear systems. J Comput Phys 232(1):288–317
Zurück zum Zitat Huan X, Marzouk Y (2014) Gradient-based stochastic optimization methods in bayesian experimental design. Int J Uncertain Quantif 4(6) Huan X, Marzouk Y (2014) Gradient-based stochastic optimization methods in bayesian experimental design. Int J Uncertain Quantif 4(6)
Zurück zum Zitat Huber GP (1974) Multi-attribute utility models: a review of field and field-like studies. Manag Sci 20(10):1393–1402MATH Huber GP (1974) Multi-attribute utility models: a review of field and field-like studies. Manag Sci 20(10):1393–1402MATH
Zurück zum Zitat Ijomah WL, Childe S, McMahon C (2004) Remanufacturing: a key strategy for sustainable development Ijomah WL, Childe S, McMahon C (2004) Remanufacturing: a key strategy for sustainable development
Zurück zum Zitat Jiang X, Mahadevan S (2009) Bayesian inference method for model validation and confidence extrapolation. J Appl Stat 36(6):659–677MATH Jiang X, Mahadevan S (2009) Bayesian inference method for model validation and confidence extrapolation. J Appl Stat 36(6):659–677MATH
Zurück zum Zitat Jiang C, Hu Z, Liu Y, Mourelatos ZP, Gorsich D, Jayakumar P (2020) A sequential calibration and validation framework for model uncertainty quantification and reduction. Comput Methods Appl Mech Eng 368:113172MATH Jiang C, Hu Z, Liu Y, Mourelatos ZP, Gorsich D, Jayakumar P (2020) A sequential calibration and validation framework for model uncertainty quantification and reduction. Comput Methods Appl Mech Eng 368:113172MATH
Zurück zum Zitat Jiang C, Hu Z, Mourelatos ZP, Gorsich D, Jayakumar P, Fu Y, Majcher M (2021) R2-RRT*: reliability-based robust mission planning of off-road autonomous ground vehicle under uncertain terrain environment. IEEE Trans Autom Sci Eng 19(2):1030–1046 Jiang C, Hu Z, Mourelatos ZP, Gorsich D, Jayakumar P, Fu Y, Majcher M (2021) R2-RRT*: reliability-based robust mission planning of off-road autonomous ground vehicle under uncertain terrain environment. IEEE Trans Autom Sci Eng 19(2):1030–1046
Zurück zum Zitat Jiang C, Liu Y, Mourelatos ZP, Gorsich D, Fu Y, Hu Z (2022a) Efficient reliability-based mission planning of off-road autonomous ground vehicles using an outcrossing approach. J Mech Des 144(4) Jiang C, Liu Y, Mourelatos ZP, Gorsich D, Fu Y, Hu Z (2022a) Efficient reliability-based mission planning of off-road autonomous ground vehicles using an outcrossing approach. J Mech Des 144(4)
Zurück zum Zitat Jiang C, Vega MA, Ramancha MK, Todd MD, Conte JP, Parno M, Hu Z (2022b) Bayesian calibration of multi-level model with unobservable distributed response and application to miter gates. Mech Syst Signal Process 170:108852 Jiang C, Vega MA, Ramancha MK, Todd MD, Conte JP, Parno M, Hu Z (2022b) Bayesian calibration of multi-level model with unobservable distributed response and application to miter gates. Mech Syst Signal Process 170:108852
Zurück zum Zitat Jiang C, Vega MA, Todd MD, Hu Z (2022c) Model correction and updating of a stochastic degradation model for failure prognostics of miter gates. Reliab Eng Syst Saf 218:108203 Jiang C, Vega MA, Todd MD, Hu Z (2022c) Model correction and updating of a stochastic degradation model for failure prognostics of miter gates. Reliab Eng Syst Saf 218:108203
Zurück zum Zitat Johnson JB, Kulchitsky AV, Duvoy P, Iagnemma K, Senatore C, Arvidson RE, Moore J (2015) Discrete element method simulations of mars exploration rover wheel performance. J Terrramech 62:31–40 Johnson JB, Kulchitsky AV, Duvoy P, Iagnemma K, Senatore C, Arvidson RE, Moore J (2015) Discrete element method simulations of mars exploration rover wheel performance. J Terrramech 62:31–40
Zurück zum Zitat Kammer DC (1991) Sensor placement for on-orbit modal identification and correlation of large space structures. J Guid Control Dyn 14(2):251–259 Kammer DC (1991) Sensor placement for on-orbit modal identification and correlation of large space structures. J Guid Control Dyn 14(2):251–259
Zurück zum Zitat Kapteyn MG, Pretorius JV, Willcox KE (2021) A probabilistic graphical model foundation for enabling predictive digital twins at scale. Nat Comput Sci 1(5):337–347 Kapteyn MG, Pretorius JV, Willcox KE (2021) A probabilistic graphical model foundation for enabling predictive digital twins at scale. Nat Comput Sci 1(5):337–347
Zurück zum Zitat Kaveh A, Dadras Eslamlou A, Rahmani P, Amirsoleimani P (2022) Optimal sensor placement in large-scale dome trusses via q-learning-based water strider algorithm. Struct Control Health Monit e2949 Kaveh A, Dadras Eslamlou A, Rahmani P, Amirsoleimani P (2022) Optimal sensor placement in large-scale dome trusses via q-learning-based water strider algorithm. Struct Control Health Monit e2949
Zurück zum Zitat Kendall A, Gal Y (2017) What uncertainties do we need in bayesian deep learning for computer vision? Adv Neural Inf Process Syst 30 Kendall A, Gal Y (2017) What uncertainties do we need in bayesian deep learning for computer vision? Adv Neural Inf Process Syst 30
Zurück zum Zitat Kennedy MC, O’Hagan A (2001) Bayesian calibration of computer models. J R Stat Soc Ser B 63(3):425–464MATH Kennedy MC, O’Hagan A (2001) Bayesian calibration of computer models. J R Stat Soc Ser B 63(3):425–464MATH
Zurück zum Zitat Kim T, Youn BD, Oh H (2018) Development of a stochastic effective independence (sefi) method for optimal sensor placement under uncertainty. Mech Syst Signal Process 111:615–627 Kim T, Youn BD, Oh H (2018) Development of a stochastic effective independence (sefi) method for optimal sensor placement under uncertainty. Mech Syst Signal Process 111:615–627
Zurück zum Zitat Kim W, Yoon H, Lee G, Kim T, Youn BD (2020) A new calibration metric that considers statistical correlation: marginal probability and correlation residuals. Reliab Eng Syst Saf 195:106677 Kim W, Yoon H, Lee G, Kim T, Youn BD (2020) A new calibration metric that considers statistical correlation: marginal probability and correlation residuals. Reliab Eng Syst Saf 195:106677
Zurück zum Zitat Kuffner JJ, LaValle SM (2000) Rrt-connect: an efficient approach to single-query path planning. In: Proceedings 2000 ICRA. Millennium Conference. IEEE International Conference on Robotics and Automation. Symposia Proceedings (Cat. No. 00CH37065), vol 2, pp 995–1001. IEEE Kuffner JJ, LaValle SM (2000) Rrt-connect: an efficient approach to single-query path planning. In: Proceedings 2000 ICRA. Millennium Conference. IEEE International Conference on Robotics and Automation. Symposia Proceedings (Cat. No. 00CH37065), vol 2, pp 995–1001. IEEE
Zurück zum Zitat Kuleshov V, Fenner N, Ermon S (2018) Accurate uncertainties for deep learning using calibrated regression. In: International conference on machine learning, pp 2796–2804. PMLR Kuleshov V, Fenner N, Ermon S (2018) Accurate uncertainties for deep learning using calibrated regression. In: International conference on machine learning, pp 2796–2804. PMLR
Zurück zum Zitat Kulkarni RV, Venayagamoorthy GK (2010) Particle swarm optimization in wireless-sensor networks: a brief survey. IEEE Trans Syst Man Cybern Part C 41(2):262–267 Kulkarni RV, Venayagamoorthy GK (2010) Particle swarm optimization in wireless-sensor networks: a brief survey. IEEE Trans Syst Man Cybern Part C 41(2):262–267
Zurück zum Zitat Lakshminarayanan B, Pritzel A, Blundell C (2017) Simple and scalable predictive uncertainty estimation using deep ensembles. Adv Neural Inf Process Syst 30 Lakshminarayanan B, Pritzel A, Blundell C (2017) Simple and scalable predictive uncertainty estimation using deep ensembles. Adv Neural Inf Process Syst 30
Zurück zum Zitat Lee J, Lapira E, Bagheri B, Kao H-A (2013a) Recent advances and trends in predictive manufacturing systems in big data environment. Manuf Lett 1(1):38–41 Lee J, Lapira E, Bagheri B, Kao H-A (2013a) Recent advances and trends in predictive manufacturing systems in big data environment. Manuf Lett 1(1):38–41
Zurück zum Zitat Lee J, Lapira E, Yang S, Kao A (2013b) Predictive manufacturing system-trends of next-generation production systems. Ifac Proc Vol 46(7):150–156 Lee J, Lapira E, Yang S, Kao A (2013b) Predictive manufacturing system-trends of next-generation production systems. Ifac Proc Vol 46(7):150–156
Zurück zum Zitat Lehner H, Dorffner L (2020) Digital geotwin vienna: towards a digital twin city as geodata hub Lehner H, Dorffner L (2020) Digital geotwin vienna: towards a digital twin city as geodata hub
Zurück zum Zitat Lei X, Sandborn PA (2018) Maintenance scheduling based on remaining useful life predictions for wind farms managed using power purchase agreements. Renew Energy 116:188–198 Lei X, Sandborn PA (2018) Maintenance scheduling based on remaining useful life predictions for wind farms managed using power purchase agreements. Renew Energy 116:188–198
Zurück zum Zitat Li J, Zhang X, Xing J, Wang P, Yang Q, He C (2015) Optimal sensor placement for long-span cable-stayed bridge using a novel particle swarm optimization algorithm. J Civ Struct Heal Monit 5(5):677–685 Li J, Zhang X, Xing J, Wang P, Yang Q, He C (2015) Optimal sensor placement for long-span cable-stayed bridge using a novel particle swarm optimization algorithm. J Civ Struct Heal Monit 5(5):677–685
Zurück zum Zitat Li M, Nemani VP, Liu J, Lee MA, Ahmed N, Kremer GE, Hu C (2021a) Reliability-informed life cycle warranty cost and life cycle analysis of newly manufactured and remanufactured units. J Mech Des 143(11) Li M, Nemani VP, Liu J, Lee MA, Ahmed N, Kremer GE, Hu C (2021a) Reliability-informed life cycle warranty cost and life cycle analysis of newly manufactured and remanufactured units. J Mech Des 143(11)
Zurück zum Zitat Li S, Fang H, Shi B (2021b) Remaining useful life estimation of lithium-ion battery based on interacting multiple model particle filter and support vector regression. Reliab Eng Syst Saf 210:107542 Li S, Fang H, Shi B (2021b) Remaining useful life estimation of lithium-ion battery based on interacting multiple model particle filter and support vector regression. Reliab Eng Syst Saf 210:107542
Zurück zum Zitat Li W, Chen W, Jiang Z, Lu Z, Liu Y (2014) New validation metrics for models with multiple correlated responses. Reliab Eng Syst Saf 127:1–11 Li W, Chen W, Jiang Z, Lu Z, Liu Y (2014) New validation metrics for models with multiple correlated responses. Reliab Eng Syst Saf 127:1–11
Zurück zum Zitat Li Y, Sui S, Tong S (2016) Adaptive fuzzy control design for stochastic nonlinear switched systems with arbitrary switchings and unmodeled dynamics. IEEE Trans Cybern 47(2):403–414 Li Y, Sui S, Tong S (2016) Adaptive fuzzy control design for stochastic nonlinear switched systems with arbitrary switchings and unmodeled dynamics. IEEE Trans Cybern 47(2):403–414
Zurück zum Zitat Ling Y, Mahadevan S (2013) Quantitative model validation techniques: new insights. Reliab Eng Syst Saf 111:217–231 Ling Y, Mahadevan S (2013) Quantitative model validation techniques: new insights. Reliab Eng Syst Saf 111:217–231
Zurück zum Zitat Liu Y, Li X-Y (2002) Decentralized robust adaptive control of nonlinear systems with unmodeled dynamics. IEEE Trans Autom Control 47(5):848–856MATH Liu Y, Li X-Y (2002) Decentralized robust adaptive control of nonlinear systems with unmodeled dynamics. IEEE Trans Autom Control 47(5):848–856MATH
Zurück zum Zitat Liu W, Gao W-C, Sun Y, Xu M-J (2008) Optimal sensor placement for spatial lattice structure based on genetic algorithms. J Sound Vib 317(1–2):175–189 Liu W, Gao W-C, Sun Y, Xu M-J (2008) Optimal sensor placement for spatial lattice structure based on genetic algorithms. J Sound Vib 317(1–2):175–189
Zurück zum Zitat Liu Y, Chen W, Arendt P, Huang H-Z (2011) Toward a better understanding of model validation metrics. J Mech Des 133(7) Liu Y, Chen W, Arendt P, Huang H-Z (2011) Toward a better understanding of model validation metrics. J Mech Des 133(7)
Zurück zum Zitat Liu Y, Zhang L, Yang Y, Zhou L, Ren L, Wang F, Liu R, Pang Z, Deen MJ (2019) A novel cloud-based framework for the elderly healthcare services using digital twin. IEEE Access 7:49088–49101 Liu Y, Zhang L, Yang Y, Zhou L, Ren L, Wang F, Liu R, Pang Z, Deen MJ (2019) A novel cloud-based framework for the elderly healthcare services using digital twin. IEEE Access 7:49088–49101
Zurück zum Zitat Liu J, Lin Z, Padhy S, Tran D, Bedrax Weiss T, Lakshminarayanan B (2020) Simple and principled uncertainty estimation with deterministic deep learning via distance awareness. Adv Neural Inf Process Syst 33:7498–7512 Liu J, Lin Z, Padhy S, Tran D, Bedrax Weiss T, Lakshminarayanan B (2020) Simple and principled uncertainty estimation with deterministic deep learning via distance awareness. Adv Neural Inf Process Syst 33:7498–7512
Zurück zum Zitat Liu X, Gao M, Zhao J, Sun X, Li Z, Li Q, Wang L, Wang J, Zhuang W (2021a) Effects of charging protocols on the cycling performance for high-energy lithium-ion batteries using a graphite-siox composite anode and li-rich layered oxide cathode. J Power Sources 495:229793 Liu X, Gao M, Zhao J, Sun X, Li Z, Li Q, Wang L, Wang J, Zhuang W (2021a) Effects of charging protocols on the cycling performance for high-energy lithium-ion batteries using a graphite-siox composite anode and li-rich layered oxide cathode. J Power Sources 495:229793
Zurück zum Zitat Liu Y, Jiang C, Mourelatos ZP, Gorsich D, Jayakumar P, Fu Y, Majcher M, Hu Z (2021b) Simulation-based mission mobility reliability analysis of off-road ground vehicles. J Mech Des 143(3) Liu Y, Jiang C, Mourelatos ZP, Gorsich D, Jayakumar P, Fu Y, Majcher M, Hu Z (2021b) Simulation-based mission mobility reliability analysis of off-road ground vehicles. J Mech Des 143(3)
Zurück zum Zitat Liu Y, Jiang C, Zhang X, Mourelatos ZP, Barthlow D, Gorsich D, Singh A, Hu Z (2021c) Reliability-based multi-vehicle path planning under uncertainty using a bio-inspired approach. J Mech Des 1–44 Liu Y, Jiang C, Zhang X, Mourelatos ZP, Barthlow D, Gorsich D, Singh A, Hu Z (2021c) Reliability-based multi-vehicle path planning under uncertainty using a bio-inspired approach. J Mech Des 1–44
Zurück zum Zitat Long Q, Scavino M, Tempone R, Wang S (2013) Fast estimation of expected information gains for bayesian experimental designs based on laplace approximations. Comput Methods Appl Mech Eng 259:24–39MATH Long Q, Scavino M, Tempone R, Wang S (2013) Fast estimation of expected information gains for bayesian experimental designs based on laplace approximations. Comput Methods Appl Mech Eng 259:24–39MATH
Zurück zum Zitat Lu L, Han X, Li J, Hua J, Ouyang M (2013) A review on the key issues for lithium-ion battery management in electric vehicles. J Power Sources 226:272–288 Lu L, Han X, Li J, Hua J, Ouyang M (2013) A review on the key issues for lithium-ion battery management in electric vehicles. J Power Sources 226:272–288
Zurück zum Zitat Lu Q, Parlikad AK, Woodall P, Don Ranasinghe G, Xie X, Liang Z, Konstantinou E, Heaton J, Schooling J (2020) Developing a digital twin at building and city levels: case study of west cambridge campus. J Manag Eng 36(3):05020004 Lu Q, Parlikad AK, Woodall P, Don Ranasinghe G, Xie X, Liang Z, Konstantinou E, Heaton J, Schooling J (2020) Developing a digital twin at building and city levels: case study of west cambridge campus. J Manag Eng 36(3):05020004
Zurück zum Zitat Lui YH, Li M, Downey A, Shen S, Nemani VP, Ye H, VanElzen C, Jain G, Hu S, Laflamme S, Hu C (2021) Physics-based prognostics of implantable-grade lithium-ion battery for remaining useful life prediction. J Power Sources 485:229327 Lui YH, Li M, Downey A, Shen S, Nemani VP, Ye H, VanElzen C, Jain G, Hu S, Laflamme S, Hu C (2021) Physics-based prognostics of implantable-grade lithium-ion battery for remaining useful life prediction. J Power Sources 485:229327
Zurück zum Zitat Mahadevan S, Nath P, Hu Z (2022) Uncertainty quantification for additive manufacturing process improvement: recent advances. ASCE-ASME J Risk Uncertain Eng Syst Part B 8(1):010801 Mahadevan S, Nath P, Hu Z (2022) Uncertainty quantification for additive manufacturing process improvement: recent advances. ASCE-ASME J Risk Uncertain Eng Syst Part B 8(1):010801
Zurück zum Zitat Malik AA, Brem A (2021) Digital twins for collaborative robots: a case study in human-robot interaction. Robot Comput-Integr Manuf 68:102092 Malik AA, Brem A (2021) Digital twins for collaborative robots: a case study in human-robot interaction. Robot Comput-Integr Manuf 68:102092
Zurück zum Zitat Malings C, Pozzi M (2016) Value of information for spatially distributed systems: application to sensor placement. Reliab Eng Syst Saf 154:219–233 Malings C, Pozzi M (2016) Value of information for spatially distributed systems: application to sensor placement. Reliab Eng Syst Saf 154:219–233
Zurück zum Zitat Malings C, Pozzi M, Velibeyoglu I (2015) Sensor placement optimization for structural health monitoring. In: Proceedings of the 10th International Workshop on Structural Health Monitoring Malings C, Pozzi M, Velibeyoglu I (2015) Sensor placement optimization for structural health monitoring. In: Proceedings of the 10th International Workshop on Structural Health Monitoring
Zurück zum Zitat Meo M, Zumpano G (2005) On the optimal sensor placement techniques for a bridge structure. Eng Struct 27(10):1488–1497 Meo M, Zumpano G (2005) On the optimal sensor placement techniques for a bridge structure. Eng Struct 27(10):1488–1497
Zurück zum Zitat Miao Q, Xie L, Cui H, Liang W, Pecht M (2013) Remaining useful life prediction of lithium-ion battery with unscented particle filter technique. Microelectron Reliab 53(6):805–810 Miao Q, Xie L, Cui H, Liang W, Pecht M (2013) Remaining useful life prediction of lithium-ion battery with unscented particle filter technique. Microelectron Reliab 53(6):805–810
Zurück zum Zitat Moghaddass R, Zuo MJ (2014) An integrated framework for online diagnostic and prognostic health monitoring using a multistate deterioration process. Reliab Eng Syst Saf 124:92–104 Moghaddass R, Zuo MJ (2014) An integrated framework for online diagnostic and prognostic health monitoring using a multistate deterioration process. Reliab Eng Syst Saf 124:92–104
Zurück zum Zitat Mousazadeh H (2013) A technical review on navigation systems of agricultural autonomous off-road vehicles. J Terrramech 50(3):211–232 Mousazadeh H (2013) A technical review on navigation systems of agricultural autonomous off-road vehicles. J Terrramech 50(3):211–232
Zurück zum Zitat Mukhoti J, Kirsch A, van Amersfoort J, Torr PH, Gal Y (2021) Deterministic neural networks with appropriate inductive biases capture epistemic and aleatoric uncertainty. arXiv e-prints, p-2102 Mukhoti J, Kirsch A, van Amersfoort J, Torr PH, Gal Y (2021) Deterministic neural networks with appropriate inductive biases capture epistemic and aleatoric uncertainty. arXiv e-prints, p-2102
Zurück zum Zitat Nado Z, Band N, Collier M, Djolonga J, Dusenberry MW, Farquhar S, Feng Q, Filos A, Havasi M, Jenatton R, Jerfel G (2021) Uncertainty baselines: benchmarks for uncertainty & robustness in deep learning. arXiv preprint arXiv:2106.04015 Nado Z, Band N, Collier M, Djolonga J, Dusenberry MW, Farquhar S, Feng Q, Filos A, Havasi M, Jenatton R, Jerfel G (2021) Uncertainty baselines: benchmarks for uncertainty & robustness in deep learning. arXiv preprint arXiv:​2106.​04015
Zurück zum Zitat NASA (2008) Standard for models and simulation-nasa technical standard. National Aeronautics and Space Administration, Washington (DC): Standard No.NASA–STD–7009 NASA (2008) Standard for models and simulation-nasa technical standard. National Aeronautics and Space Administration, Washington (DC): Standard No.NASA–STD–7009
Zurück zum Zitat Nath P, Hu Z, Mahadevan S (2017) Sensor placement for calibration of spatially varying model parameters. J Comput Phys 343:150–169 Nath P, Hu Z, Mahadevan S (2017) Sensor placement for calibration of spatially varying model parameters. J Comput Phys 343:150–169
Zurück zum Zitat Nemani VP, Lu H, Thelen A, Hu C, Zimmerman AT (2021) Ensembles of probabilistic lstm predictors and correctors for bearing prognostics using industrial standards. Neurocomputing Nemani VP, Lu H, Thelen A, Hu C, Zimmerman AT (2021) Ensembles of probabilistic lstm predictors and correctors for bearing prognostics using industrial standards. Neurocomputing
Zurück zum Zitat Niculescu-Mizil A, Caruana R (2005) Predicting good probabilities with supervised learning. In: Proceedings of the 22nd International Conference on Machine Learning, pp 625–632 Niculescu-Mizil A, Caruana R (2005) Predicting good probabilities with supervised learning. In: Proceedings of the 22nd International Conference on Machine Learning, pp 625–632
Zurück zum Zitat Ostachowicz W, Soman R, Malinowski P (2019) Optimization of sensor placement for structural health monitoring: a review. Struct Health Monit 18(3):963–988 Ostachowicz W, Soman R, Malinowski P (2019) Optimization of sensor placement for structural health monitoring: a review. Struct Health Monit 18(3):963–988
Zurück zum Zitat Papamarkou T, Hinkle J, Young MT, Womble D (2021) Challenges in markov chain monte carlo for bayesian neural networks. Stat Sci Papamarkou T, Hinkle J, Young MT, Womble D (2021) Challenges in markov chain monte carlo for bayesian neural networks. Stat Sci
Zurück zum Zitat Plett GL (2004) Extended kalman filtering for battery management systems of lipb-based hev battery packs: Part 3. State and parameter estimation. J Power Sources 134(2):277–292 Plett GL (2004) Extended kalman filtering for battery management systems of lipb-based hev battery packs: Part 3. State and parameter estimation. J Power Sources 134(2):277–292
Zurück zum Zitat Plett GL (2006) Sigma-point kalman filtering for battery management systems of lipb-based hev battery packs: Part 2: Simultaneous state and parameter estimation. J Power Sources 161(2):1369–1384 Plett GL (2006) Sigma-point kalman filtering for battery management systems of lipb-based hev battery packs: Part 2: Simultaneous state and parameter estimation. J Power Sources 161(2):1369–1384
Zurück zum Zitat Ramancha MK, Conte JP, Parno MD (2022) Accounting for model form uncertainty in bayesian calibration of linear dynamic systems. Mech Syst Signal Process 171:108871 Ramancha MK, Conte JP, Parno MD (2022) Accounting for model form uncertainty in bayesian calibration of linear dynamic systems. Mech Syst Signal Process 171:108871
Zurück zum Zitat Rebba R, Mahadevan S (2008) Computational methods for model reliability assessment. Reliab Eng Syst Saf 93(8):1197–1207 Rebba R, Mahadevan S (2008) Computational methods for model reliability assessment. Reliab Eng Syst Saf 93(8):1197–1207
Zurück zum Zitat Ricker NL, Lee J (1995) Nonlinear model predictive control of the tennessee eastman challenge process. Comput Chem Eng 19(9):961–981 Ricker NL, Lee J (1995) Nonlinear model predictive control of the tennessee eastman challenge process. Comput Chem Eng 19(9):961–981
Zurück zum Zitat Rohrs CE, Valavani L, Athans M, Stein G (1982) Robustness of adaptive control algorithms in the presence of unmodeled dynamics. In: 1982 21st IEEE Conference on Decision and Control, pp 3–11. IEEE Rohrs CE, Valavani L, Athans M, Stein G (1982) Robustness of adaptive control algorithms in the presence of unmodeled dynamics. In: 1982 21st IEEE Conference on Decision and Control, pp 3–11. IEEE
Zurück zum Zitat Rohrs C, Valavani L, Athans M, Stein G (1985) Robustness of continuous-time adaptive control algorithms in the presence of unmodeled dynamics. IEEE Trans Autom Control 30(9):881–889MATH Rohrs C, Valavani L, Athans M, Stein G (1985) Robustness of continuous-time adaptive control algorithms in the presence of unmodeled dynamics. IEEE Trans Autom Control 30(9):881–889MATH
Zurück zum Zitat Sabatino S, Frangopol DM, Dong Y (2015) Sustainability-informed maintenance optimization of highway bridges considering multi-attribute utility and risk attitude. Eng Struct 102:310–321 Sabatino S, Frangopol DM, Dong Y (2015) Sustainability-informed maintenance optimization of highway bridges considering multi-attribute utility and risk attitude. Eng Struct 102:310–321
Zurück zum Zitat Sachan VK, Imam SA, Beg M (2012) Energy-efficient communication methods in wireless sensor networks: a critical review. Int J Comput Appl 39(17):35–48 Sachan VK, Imam SA, Beg M (2012) Energy-efficient communication methods in wireless sensor networks: a critical review. Int J Comput Appl 39(17):35–48
Zurück zum Zitat Saha B, Goebel K (2007) Battery data set. NASA AMES prognostics data repository Saha B, Goebel K (2007) Battery data set. NASA AMES prognostics data repository
Zurück zum Zitat Saha B, Goebel K, Poll S, Christophersen J (2008) Prognostics methods for battery health monitoring using a bayesian framework. IEEE Trans Instrum Meas 58(2):291–296 Saha B, Goebel K, Poll S, Christophersen J (2008) Prognostics methods for battery health monitoring using a bayesian framework. IEEE Trans Instrum Meas 58(2):291–296
Zurück zum Zitat Saha B, Goebel K, Christophersen J (2009) Comparison of prognostic algorithms for estimating remaining useful life of batteries. Trans Inst Meas Control 31(3–4):293–308 Saha B, Goebel K, Christophersen J (2009) Comparison of prognostic algorithms for estimating remaining useful life of batteries. Trans Inst Meas Control 31(3–4):293–308
Zurück zum Zitat Salvatier J, Wiecki TV, Fonnesbeck C (2016) Probabilistic programming in python using pymc3. PeerJ Comput Sci 2:e55 Salvatier J, Wiecki TV, Fonnesbeck C (2016) Probabilistic programming in python using pymc3. PeerJ Comput Sci 2:e55
Zurück zum Zitat Saxena A, Goebel K (2008a) Phm08 challenge data set. NASA Ames Prognostics Data Repository Saxena A, Goebel K (2008a) Phm08 challenge data set. NASA Ames Prognostics Data Repository
Zurück zum Zitat Saxena A, Goebel K (2008b) Turbofan engine degradation simulation data set. NASA Ames Prognostics Data Repository, pp 1551–3203 Saxena A, Goebel K (2008b) Turbofan engine degradation simulation data set. NASA Ames Prognostics Data Repository, pp 1551–3203
Zurück zum Zitat Scott E, Brown J, Schmidt C, Howard W (2005) A practical longevity model for lithium-ion batteries: de-coupling the time and cycle-dependence of capacity fade. In: 208th ECS Meeting Scott E, Brown J, Schmidt C, Howard W (2005) A practical longevity model for lithium-ion batteries: de-coupling the time and cycle-dependence of capacity fade. In: 208th ECS Meeting
Zurück zum Zitat Sela L, Amin S (2018) Robust sensor placement for pipeline monitoring: mixed integer and greedy optimization. Adv Eng Inform 36:55–63 Sela L, Amin S (2018) Robust sensor placement for pipeline monitoring: mixed integer and greedy optimization. Adv Eng Inform 36:55–63
Zurück zum Zitat Severson KA, Attia PM, Jin N, Perkins N, Jiang B, Yang Z, Chen MH, Aykol M, Herring PK, Fraggedakis D, Bazant MZ (2019) Data-driven prediction of battery cycle life before capacity degradation. Nat Energy 4(5):383–391 Severson KA, Attia PM, Jin N, Perkins N, Jiang B, Yang Z, Chen MH, Aykol M, Herring PK, Fraggedakis D, Bazant MZ (2019) Data-driven prediction of battery cycle life before capacity degradation. Nat Energy 4(5):383–391
Zurück zum Zitat Sharma M, George J (2018) Digital twin in the automotive industry: Driving physical-digital convergence. Tata Consultancy Services White Paper Sharma M, George J (2018) Digital twin in the automotive industry: Driving physical-digital convergence. Tata Consultancy Services White Paper
Zurück zum Zitat Shen W, Huan X (2021) Bayesian sequential optimal experimental design for nonlinear models using policy gradient reinforcement learning. arXiv preprint arXiv:2110.15335 Shen W, Huan X (2021) Bayesian sequential optimal experimental design for nonlinear models using policy gradient reinforcement learning. arXiv preprint arXiv:​2110.​15335
Zurück zum Zitat Sisson W, Karve P, Mahadevan S (2022) Digital twin approach for component health-informed rotorcraft flight parameter optimization. AIAA J 60(3):1923–1936 Sisson W, Karve P, Mahadevan S (2022) Digital twin approach for component health-informed rotorcraft flight parameter optimization. AIAA J 60(3):1923–1936
Zurück zum Zitat Sjarov M, Lechler T, Fuchs J, Brossog M, Selmaier A, Faltus F, Donhauser T, Franke J (2020) The digital twin concept in industry—a review and systematization. In: 2020 25th IEEE International Conference on Emerging Technologies and Factory Automation (ETFA), vol 1, pp 1789–1796. IEEE Sjarov M, Lechler T, Fuchs J, Brossog M, Selmaier A, Faltus F, Donhauser T, Franke J (2020) The digital twin concept in industry—a review and systematization. In: 2020 25th IEEE International Conference on Emerging Technologies and Factory Automation (ETFA), vol 1, pp 1789–1796. IEEE
Zurück zum Zitat Skardal A, Shupe T, Atala A (2016) Organoid-on-a-chip and body-on-a-chip systems for drug screening and disease modeling. Drug Discov Today 21(9):1399–1411 Skardal A, Shupe T, Atala A (2016) Organoid-on-a-chip and body-on-a-chip systems for drug screening and disease modeling. Drug Discov Today 21(9):1399–1411
Zurück zum Zitat Smith RC (2013) Uncertainty quantification: theory, implementation, and applications, vol 12. Siam Smith RC (2013) Uncertainty quantification: theory, implementation, and applications, vol 12. Siam
Zurück zum Zitat Snoek J, Larochelle H, Adams RP (2012) Practical bayesian optimization of machine learning algorithms. Adv Neural Inf Process Syst 25 Snoek J, Larochelle H, Adams RP (2012) Practical bayesian optimization of machine learning algorithms. Adv Neural Inf Process Syst 25
Zurück zum Zitat Song M, Moaveni B, Papadimitriou C, Stavridis A (2019) Accounting for amplitude of excitation in model updating through a hierarchical bayesian approach: application to a two-story reinforced concrete building. Mech Syst Signal Process 123:68–83 Song M, Moaveni B, Papadimitriou C, Stavridis A (2019) Accounting for amplitude of excitation in model updating through a hierarchical bayesian approach: application to a two-story reinforced concrete building. Mech Syst Signal Process 123:68–83
Zurück zum Zitat Soundappan P, Nikolaidis E, Haftka RT, Grandhi R, Canfield R (2004) Comparison of evidence theory and bayesian theory for uncertainty modeling. Reliab Eng Syst Saf 85(1–3):295–311 Soundappan P, Nikolaidis E, Haftka RT, Grandhi R, Canfield R (2004) Comparison of evidence theory and bayesian theory for uncertainty modeling. Reliab Eng Syst Saf 85(1–3):295–311
Zurück zum Zitat Subramanian A, Mahadevan S (2019) Error estimation in coupled multi-physics models. J Comput Phys 395:19–37MATH Subramanian A, Mahadevan S (2019) Error estimation in coupled multi-physics models. J Comput Phys 395:19–37MATH
Zurück zum Zitat Suresh K, Kumarappan N (2013) Hybrid improved binary particle swarm optimization approach for generation maintenance scheduling problem. Swarm Evol Comput 9:69–89 Suresh K, Kumarappan N (2013) Hybrid improved binary particle swarm optimization approach for generation maintenance scheduling problem. Swarm Evol Comput 9:69–89
Zurück zum Zitat Tan Y, Zhang L (2020) Computational methodologies for optimal sensor placement in structural health monitoring: A review. Struct Health Monit 19(4):1287–1308 Tan Y, Zhang L (2020) Computational methodologies for optimal sensor placement in structural health monitoring: A review. Struct Health Monit 19(4):1287–1308
Zurück zum Zitat Tasora A, Serban R, Mazhar H, Pazouki A, Melanz D, Fleischmann J, Taylor M, Sugiyama H, Negrut D (2015) Chrono: an open source multi-physics dynamics engine. In: International Conference on High Performance Computing in Science and Engineering. Springer, pp 19–49 Tasora A, Serban R, Mazhar H, Pazouki A, Melanz D, Fleischmann J, Taylor M, Sugiyama H, Negrut D (2015) Chrono: an open source multi-physics dynamics engine. In: International Conference on High Performance Computing in Science and Engineering. Springer, pp 19–49
Zurück zum Zitat Thelen A, Zhang X, Fink O, Lu Y, Ghosh S, Youn BD, Todd MD, Mahadevan S, Hu C, Hu Z (2022) A comprehensive review of digital twin—part 1: modeling and twinning enabling technologies. Struct Multidisc Optim Thelen A, Zhang X, Fink O, Lu Y, Ghosh S, Youn BD, Todd MD, Mahadevan S, Hu C, Hu Z (2022) A comprehensive review of digital twin—part 1: modeling and twinning enabling technologies. Struct Multidisc Optim
Zurück zum Zitat Tong K, Bakhary N, Kueh A, Yassin A (2014) Optimal sensor placement for mode shapes using improved simulated annealing. Smart Struct Syst 13(3):389–406 Tong K, Bakhary N, Kueh A, Yassin A (2014) Optimal sensor placement for mode shapes using improved simulated annealing. Smart Struct Syst 13(3):389–406
Zurück zum Zitat Van Amersfoort J, Smith L, Teh YW, Gal Y (2020) Uncertainty estimation using a single deep deterministic neural network. In: International conference on machine learning, pp 9690–9700. PMLR Van Amersfoort J, Smith L, Teh YW, Gal Y (2020) Uncertainty estimation using a single deep deterministic neural network. In: International conference on machine learning, pp 9690–9700. PMLR
Zurück zum Zitat Van Dongen BF, de Medeiros AKA, Verbeek H, Weijters A, van Der Aalst WM (2005) The prom framework: a new era in process mining tool support. In: International conference on application and theory of petri nets. Springer, pp 444–454 Van Dongen BF, de Medeiros AKA, Verbeek H, Weijters A, van Der Aalst WM (2005) The prom framework: a new era in process mining tool support. In: International conference on application and theory of petri nets. Springer, pp 444–454
Zurück zum Zitat VanDerHorn E, Mahadevan S (2021) Digital twin: generalization, characterization and implementation. Decis Support Syst 145:113524 VanDerHorn E, Mahadevan S (2021) Digital twin: generalization, characterization and implementation. Decis Support Syst 145:113524
Zurück zum Zitat Vega MA, Hu Z, Fillmore TB, Smith MD, Todd MD (2021) A novel framework for integration of abstracted inspection data and structural health monitoring for damage prognosis of miter gates. Reliab Eng Syst Saf 211:107561 Vega MA, Hu Z, Fillmore TB, Smith MD, Todd MD (2021) A novel framework for integration of abstracted inspection data and structural health monitoring for damage prognosis of miter gates. Reliab Eng Syst Saf 211:107561
Zurück zum Zitat Verbeek H, Buijs J, Van Dongen B, van der Aalst WM (2010) Prom 6: the process mining toolkit. Proc. BPM Demonstration Track 615:34–39 Verbeek H, Buijs J, Van Dongen B, van der Aalst WM (2010) Prom 6: the process mining toolkit. Proc. BPM Demonstration Track 615:34–39
Zurück zum Zitat Viana FA, Nascimento RG, Dourado A, Yucesan YA (2021) Estimating model inadequacy in ordinary differential equations with physics-informed neural networks. Comput Struct 245:106458 Viana FA, Nascimento RG, Dourado A, Yucesan YA (2021) Estimating model inadequacy in ordinary differential equations with physics-informed neural networks. Comput Struct 245:106458
Zurück zum Zitat Walker E, Rayman S, White RE (2015) Comparison of a particle filter and other state estimation methods for prognostics of lithium-ion batteries. J Power Sources 287:1–12 Walker E, Rayman S, White RE (2015) Comparison of a particle filter and other state estimation methods for prognostics of lithium-ion batteries. J Power Sources 287:1–12
Zurück zum Zitat Wang P, Wang T (2006) Adaptive routing for sensor networks using reinforcement learning. In: The Sixth IEEE International Conference on Computer and Information Technology (CIT’06), pp 219–219. IEEE Wang P, Wang T (2006) Adaptive routing for sensor networks using reinforcement learning. In: The Sixth IEEE International Conference on Computer and Information Technology (CIT’06), pp 219–219. IEEE
Zurück zum Zitat Wang T, Yu J, Siegel D, Lee J (2008) A similarity-based prognostics approach for remaining useful life estimation of engineered systems. In: 2008 international conference on prognostics and health management, pp 1–6. IEEE Wang T, Yu J, Siegel D, Lee J (2008) A similarity-based prognostics approach for remaining useful life estimation of engineered systems. In: 2008 international conference on prognostics and health management, pp 1–6. IEEE
Zurück zum Zitat Wang S, Chen W, Tsui K-L (2009) Bayesian validation of computer models. Technometrics 51(4):439–451 Wang S, Chen W, Tsui K-L (2009) Bayesian validation of computer models. Technometrics 51(4):439–451
Zurück zum Zitat Wang D, Miao Q, Pecht M (2013) Prognostics of lithium-ion batteries based on relevance vectors and a conditional three-parameter capacity degradation model. J Power Sources 239:253–264 Wang D, Miao Q, Pecht M (2013) Prognostics of lithium-ion batteries based on relevance vectors and a conditional three-parameter capacity degradation model. J Power Sources 239:253–264
Zurück zum Zitat Wang P, Youn BD, Hu C, Ha JM, Jeon B (2015) A probabilistic detectability-based sensor network design method for system health monitoring and prognostics. J Intell Mater Syst Struct 26(9):1079–1090 Wang P, Youn BD, Hu C, Ha JM, Jeon B (2015) A probabilistic detectability-based sensor network design method for system health monitoring and prognostics. J Intell Mater Syst Struct 26(9):1079–1090
Zurück zum Zitat Wang Z, Li H-X, Chen C (2019) Reinforcement learning-based optimal sensor placement for spatiotemporal modeling. IEEE Trans Cybern 50(6):2861–2871 Wang Z, Li H-X, Chen C (2019) Reinforcement learning-based optimal sensor placement for spatiotemporal modeling. IEEE Trans Cybern 50(6):2861–2871
Zurück zum Zitat Ward R, Choudhary R, Gregory A, Jans-Singh M, Girolami M (2021) Continuous calibration of a digital twin: Comparison of particle filter and bayesian calibration approaches. Data-Centric Eng 2 Ward R, Choudhary R, Gregory A, Jans-Singh M, Girolami M (2021) Continuous calibration of a digital twin: Comparison of particle filter and bayesian calibration approaches. Data-Centric Eng 2
Zurück zum Zitat Weigert M, Schmidt U, Boothe T, Müller A, Dibrov A, Jain A, Wilhelm B, Schmidt D, Broaddus C, Culley S, Rocha-Martins M (2018) Content-aware image restoration: pushing the limits of fluorescence microscopy. Nat Methods 15(12):1090–1097 Weigert M, Schmidt U, Boothe T, Müller A, Dibrov A, Jain A, Wilhelm B, Schmidt D, Broaddus C, Culley S, Rocha-Martins M (2018) Content-aware image restoration: pushing the limits of fluorescence microscopy. Nat Methods 15(12):1090–1097
Zurück zum Zitat White G, Zink A, Codecá L, Clarke S (2021) A digital twin smart city for citizen feedback. Cities 110:103064 White G, Zink A, Codecá L, Clarke S (2021) A digital twin smart city for citizen feedback. Cities 110:103064
Zurück zum Zitat Wilkinson RD, Vrettas M, Cornford D, Oakley JE (2011) Quantifying simulator discrepancy in discrete-time dynamical simulators. J Agric Biol Environ Stat 16(4):554–570MATH Wilkinson RD, Vrettas M, Cornford D, Oakley JE (2011) Quantifying simulator discrepancy in discrete-time dynamical simulators. J Agric Biol Environ Stat 16(4):554–570MATH
Zurück zum Zitat Williams C, Rasmussen C (1995) Gaussian processes for regression. Adv Neural Inf Process Syst 8 Williams C, Rasmussen C (1995) Gaussian processes for regression. Adv Neural Inf Process Syst 8
Zurück zum Zitat Winterfeldt DV, Fischer GW (1975) Multi-attribute utility theory: models and assessment procedures. Util Probab Hum Decis Making 47–85 Winterfeldt DV, Fischer GW (1975) Multi-attribute utility theory: models and assessment procedures. Util Probab Hum Decis Making 47–85
Zurück zum Zitat Xi Z, Dahmardeh M, Xia B, Fu Y, Mi C (2019) Learning of battery model bias for effective state of charge estimation of lithium-ion batteries. IEEE Trans Veh Technol 68(9):8613–8628 Xi Z, Dahmardeh M, Xia B, Fu Y, Mi C (2019) Learning of battery model bias for effective state of charge estimation of lithium-ion batteries. IEEE Trans Veh Technol 68(9):8613–8628
Zurück zum Zitat Xiong Y, Chen W, Tsui K-L, Apley DW (2009) A better understanding of model updating strategies in validating engineering models. Comput Methods Appl Mech Eng 198(15–16):1327–1337MATH Xiong Y, Chen W, Tsui K-L, Apley DW (2009) A better understanding of model updating strategies in validating engineering models. Comput Methods Appl Mech Eng 198(15–16):1327–1337MATH
Zurück zum Zitat Yan J, Laflamme S, Hong J, Dodson J (2021) Online parameter estimation under non-persistent excitations for high-rate dynamic systems. Mech Syst Signal Process 161:107960 Yan J, Laflamme S, Hong J, Dodson J (2021) Online parameter estimation under non-persistent excitations for high-rate dynamic systems. Mech Syst Signal Process 161:107960
Zurück zum Zitat Yang C, Liang K, Zhang X (2020a) Strategy for sensor number determination and placement optimization with incomplete information based on interval possibility model and clustering avoidance distribution index. Comput Methods Appl Mech Eng 366:113042MATH Yang C, Liang K, Zhang X (2020a) Strategy for sensor number determination and placement optimization with incomplete information based on interval possibility model and clustering avoidance distribution index. Comput Methods Appl Mech Eng 366:113042MATH
Zurück zum Zitat Yang Z, Lu Y, Yeung H, Kirishnamurty S (2020b) 3d build melt pool predictive modeling for powder bed fusion additive manufacturing. 22662: V009T09A046 Yang Z, Lu Y, Yeung H, Kirishnamurty S (2020b) 3d build melt pool predictive modeling for powder bed fusion additive manufacturing. 22662: V009T09A046
Zurück zum Zitat Yang Y, Chadha M, Hu Z, Vega MA, Parno MD, Todd MD (2021) A probabilistic optimal sensor design approach for structural health monitoring using risk-weighted f-divergence. Mech Syst Signal Process 161:107920 Yang Y, Chadha M, Hu Z, Vega MA, Parno MD, Todd MD (2021) A probabilistic optimal sensor design approach for structural health monitoring using risk-weighted f-divergence. Mech Syst Signal Process 161:107920
Zurück zum Zitat Yao L, Sethares WA, Kammer DC (1993) Sensor placement for on-orbit modal identification via a genetic algorithm. AIAA J 31(10):1922–1928 Yao L, Sethares WA, Kammer DC (1993) Sensor placement for on-orbit modal identification via a genetic algorithm. AIAA J 31(10):1922–1928
Zurück zum Zitat Ye M, Guo H, Xiong R, Yu Q (2018) A double-scale and adaptive particle filter-based online parameter and state of charge estimation method for lithium-ion batteries. Energy 144:789–799 Ye M, Guo H, Xiong R, Yu Q (2018) A double-scale and adaptive particle filter-based online parameter and state of charge estimation method for lithium-ion batteries. Energy 144:789–799
Zurück zum Zitat Yeung H, Yang Z, Lu Y (2020) A meltpool prediction based scan strategy for powder bed fusion additive manufacturing. J Addit Manuf 35:101383 Yeung H, Yang Z, Lu Y (2020) A meltpool prediction based scan strategy for powder bed fusion additive manufacturing. J Addit Manuf 35:101383
Zurück zum Zitat Yi T-H, Li H-N, Gu M (2011) Optimal sensor placement for structural health monitoring based on multiple optimization strategies. Struct Des Tall Spec Build 20(7):881–900 Yi T-H, Li H-N, Gu M (2011) Optimal sensor placement for structural health monitoring based on multiple optimization strategies. Struct Des Tall Spec Build 20(7):881–900
Zurück zum Zitat Yucesan YA, Viana FA (2020) A physics-informed neural network for wind turbine main bearing fatigue. Int J Prognostics Health Manag 11(1) Yucesan YA, Viana FA (2020) A physics-informed neural network for wind turbine main bearing fatigue. Int J Prognostics Health Manag 11(1)
Zurück zum Zitat Zacharaki A, Vafeiadis T, Kolokas N, Vaxevani A, Xu Y, Peschl M, Ioannidis D, Tzovaras D (2021) Reclaim: toward a new era of refurbishment and remanufacturing of industrial equipment. Front Art Intell 101 Zacharaki A, Vafeiadis T, Kolokas N, Vaxevani A, Xu Y, Peschl M, Ioannidis D, Tzovaras D (2021) Reclaim: toward a new era of refurbishment and remanufacturing of industrial equipment. Front Art Intell 101
Zurück zum Zitat Zhang J, Lee J (2011) A review on prognostics and health monitoring of li-ion battery. J Power Sources 196(15):6007–6014 Zhang J, Lee J (2011) A review on prognostics and health monitoring of li-ion battery. J Power Sources 196(15):6007–6014
Zurück zum Zitat Zhang X, Li J, Xing J, Wang P, Yang Q, Wang R, He C (2014) Optimal sensor placement for latticed shell structure based on an improved particle swarm optimization algorithm. Math Probl Eng Zhang X, Li J, Xing J, Wang P, Yang Q, Wang R, He C (2014) Optimal sensor placement for latticed shell structure based on an improved particle swarm optimization algorithm. Math Probl Eng
Zurück zum Zitat Zhang C, Lim P, Qin AK, Tan KC (2016) Multiobjective deep belief networks ensemble for remaining useful life estimation in prognostics. IEEE Trans Neural Netw Learn Syst 28(10):2306–2318 Zhang C, Lim P, Qin AK, Tan KC (2016) Multiobjective deep belief networks ensemble for remaining useful life estimation in prognostics. IEEE Trans Neural Netw Learn Syst 28(10):2306–2318
Zurück zum Zitat Zhang X, Mahadevan S, Deng X (2017) Reliability analysis with linguistic data: an evidential network approach. Reliab Eng Syst Saf 162:111–121 Zhang X, Mahadevan S, Deng X (2017) Reliability analysis with linguistic data: an evidential network approach. Reliab Eng Syst Saf 162:111–121
Zurück zum Zitat Zhang Q, Shi L, Holzman M, Ye M, Wang Y, Carmona F, Zha Y (2019) A dynamic data-driven method for dealing with model structural error in soil moisture data assimilation. Adv Water Resour 132:103407 Zhang Q, Shi L, Holzman M, Ye M, Wang Y, Carmona F, Zha Y (2019) A dynamic data-driven method for dealing with model structural error in soil moisture data assimilation. Adv Water Resour 132:103407
Zurück zum Zitat Zhao Y, Pandey V, Kim H, Thurston D (2010) Varying lifecycle lengths within a product take-back portfolio Zhao Y, Pandey V, Kim H, Thurston D (2010) Varying lifecycle lengths within a product take-back portfolio
Zurück zum Zitat Zhao Z, Liang B, Wang X, Lu W (2017) Remaining useful life prediction of aircraft engine based on degradation pattern learning. Reliab Eng Syst Saf 164:74–83 Zhao Z, Liang B, Wang X, Lu W (2017) Remaining useful life prediction of aircraft engine based on degradation pattern learning. Reliab Eng Syst Saf 164:74–83
Zurück zum Zitat Zhu J, Mathews I, Ren D, Li W, Cogswell D, Xing B, Sedlatschek T, Kantareddy SNR, Yi M, Gao T, Xia Y (2021) End-of-life or second-life options for retired electric vehicle batteries. Cell Rep Phys Sci 2(8):100537 Zhu J, Mathews I, Ren D, Li W, Cogswell D, Xing B, Sedlatschek T, Kantareddy SNR, Yi M, Gao T, Xia Y (2021) End-of-life or second-life options for retired electric vehicle batteries. Cell Rep Phys Sci 2(8):100537
Metadaten
Titel
A comprehensive review of digital twin—part 2: roles of uncertainty quantification and optimization, a battery digital twin, and perspectives
verfasst von
Adam Thelen
Xiaoge Zhang
Olga Fink
Yan Lu
Sayan Ghosh
Byeng D. Youn
Michael D. Todd
Sankaran Mahadevan
Chao Hu
Zhen Hu
Publikationsdatum
01.01.2023
Verlag
Springer Berlin Heidelberg
Erschienen in
Structural and Multidisciplinary Optimization / Ausgabe 1/2023
Print ISSN: 1615-147X
Elektronische ISSN: 1615-1488
DOI
https://doi.org/10.1007/s00158-022-03410-x

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