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Published in: Structural and Multidisciplinary Optimization 3/2017

16-08-2016 | RESEARCH PAPER

Remarks on multi-fidelity surrogates

Authors: Chanyoung Park, Raphael T. Haftka, Nam H. Kim

Published in: Structural and Multidisciplinary Optimization | Issue 3/2017

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Abstract

Different multi-fidelity surrogate (MFS) frameworks have been used for optimization or uncertainty quantification. This paper investigates differences between various MFS frameworks with the aid of examples including algebraic functions and a borehole example. These MFS include three Bayesian frameworks using 1) a model discrepancy function, 2) low fidelity model calibration and 3) a comprehensive approach combining both. Three counterparts in simple frameworks are also included, which have the same functional form but can be built with ready-made surrogates. The sensitivity of frameworks to the choice of design of experiments (DOE) is investigated by repeating calculations with 100 different DOEs. Computational cost savings and accuracy improvement over a single fidelity surrogate model are investigated as a function of the ratio of the sampling costs between low and high fidelity simulations. For the examples considered, MFS frameworks were found to be more useful for saving computational time rather than improving accuracy. For the Hartmann 6 function example, the maximum cost saving for the same accuracy was 86 %, while the maximum accuracy improvement for the same cost was 51 %. It was also found that DOE can substantially change the relative standing of different frameworks. The cross-validation error appears to be a reasonable candidate for estimating poor MFS frameworks for a specific problem but it does not perform well compared to choosing single fidelity surrogates.

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Appendix
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Literature
go back to reference Acar E, Rais-Rohani M (2009) Ensemble of metamodels with optimized weight factors. Struct Multidiscip Optim 37(3):279–294CrossRef Acar E, Rais-Rohani M (2009) Ensemble of metamodels with optimized weight factors. Struct Multidiscip Optim 37(3):279–294CrossRef
go back to reference Balabanov V, Haftka RT, Grossman B, Mason WH, Watson LT (1998) Multifidelity response surface model for HSCT wing bending material weight. In Proceedings of 7th AIAA/USAF/NASA/ISSMO Symposium on Multidisciplinary Analysis and Optimization Balabanov V, Haftka RT, Grossman B, Mason WH, Watson LT (1998) Multifidelity response surface model for HSCT wing bending material weight. In Proceedings of 7th AIAA/USAF/NASA/ISSMO Symposium on Multidisciplinary Analysis and Optimization
go back to reference Bayarri MJ, Berger JO, Paulo R, Sacks J, Cafeo JA, Cavendish J, Tu J (2007) A framework for validation of computer models. Technometrics 49:138–154MathSciNetCrossRef Bayarri MJ, Berger JO, Paulo R, Sacks J, Cafeo JA, Cavendish J, Tu J (2007) A framework for validation of computer models. Technometrics 49:138–154MathSciNetCrossRef
go back to reference Coppe A, Pais MJ, Haftka RT, Kim NH (2012) Using a simple crack growth model in predicting remaining useful life. J Aircr 49(6):1965–1973CrossRef Coppe A, Pais MJ, Haftka RT, Kim NH (2012) Using a simple crack growth model in predicting remaining useful life. J Aircr 49(6):1965–1973CrossRef
go back to reference Ellis MW, Mathews EH (2001) A new simplified thermal design tool for architects. Build Environ 36(9):1009–1021CrossRef Ellis MW, Mathews EH (2001) A new simplified thermal design tool for architects. Build Environ 36(9):1009–1021CrossRef
go back to reference Fischer CC, Grandhi RV (2014) Utilizing an adjustment factor to scale between multiple fidelities within a design process: a stepping stone to dialable fidelity design. In 16th AIAA Non-Deterministic Approaches Conference Fischer CC, Grandhi RV (2014) Utilizing an adjustment factor to scale between multiple fidelities within a design process: a stepping stone to dialable fidelity design. In 16th AIAA Non-Deterministic Approaches Conference
go back to reference Fischer CC, Grandhi RV (2015) A surrogate-based adjustment factor approach to multi-fidelity design optimization. In 17th AIAA Non-Deterministic Approaches Conference Fischer CC, Grandhi RV (2015) A surrogate-based adjustment factor approach to multi-fidelity design optimization. In 17th AIAA Non-Deterministic Approaches Conference
go back to reference Forrester AI, Sóbester A, Keane AJ (2007) Multi-fidelity optimization via surrogate modelling. Proc R Soc A 463(2088):3251–3269 Forrester AI, Sóbester A, Keane AJ (2007) Multi-fidelity optimization via surrogate modelling. Proc R Soc A 463(2088):3251–3269
go back to reference Han Z, Zimmerman R, Görtz S (2012) Alternative Cokriging method for variable-fidelity surrogate modeling. AIAA J 50(5):1205–1210CrossRef Han Z, Zimmerman R, Görtz S (2012) Alternative Cokriging method for variable-fidelity surrogate modeling. AIAA J 50(5):1205–1210CrossRef
go back to reference Higdon D, Kennedy M, Cavendish JC, Cafeo JA, Ryne RD (2004) Combining field data and computer simulations for calibration and prediction. SIAM J Sci Comput 26(2):448–466MathSciNetCrossRefMATH Higdon D, Kennedy M, Cavendish JC, Cafeo JA, Ryne RD (2004) Combining field data and computer simulations for calibration and prediction. SIAM J Sci Comput 26(2):448–466MathSciNetCrossRefMATH
go back to reference Jin R, Chen W, Sudjianto A (2005) An efficient algorithm for constructing optimal design of computer experiments. J Stat Plann Inference 134(1):268–287MathSciNetCrossRefMATH Jin R, Chen W, Sudjianto A (2005) An efficient algorithm for constructing optimal design of computer experiments. J Stat Plann Inference 134(1):268–287MathSciNetCrossRefMATH
go back to reference Kennedy MC, O’Hagan A (2000) Predicting the output from a complex computer code when fast approximations are available. Biometrika 87(1):1–13MathSciNetCrossRefMATH Kennedy MC, O’Hagan A (2000) Predicting the output from a complex computer code when fast approximations are available. Biometrika 87(1):1–13MathSciNetCrossRefMATH
go back to reference Knill DL, Giunta AA, Baker CA, Grossman B, Mason WH, Haftka RT, Watson LT (1999) Response surface models combining linear and Euler aerodynamics for supersonic transport design. J Aircr 36(1):75–86CrossRef Knill DL, Giunta AA, Baker CA, Grossman B, Mason WH, Haftka RT, Watson LT (1999) Response surface models combining linear and Euler aerodynamics for supersonic transport design. J Aircr 36(1):75–86CrossRef
go back to reference Kosonen R, Shemeikka J (1997) The use of a simple simulation tool for energy analysis. VTT Building Technology Kosonen R, Shemeikka J (1997) The use of a simple simulation tool for energy analysis. VTT Building Technology
go back to reference Kuya Y, Takeda K, Zhang X, Forrester AIJ (2011) Multifidelity surrogate modeling of experimental and computational aerodynamic data sets. AIAA J 49(2):289–298CrossRef Kuya Y, Takeda K, Zhang X, Forrester AIJ (2011) Multifidelity surrogate modeling of experimental and computational aerodynamic data sets. AIAA J 49(2):289–298CrossRef
go back to reference Le Gratiet L (2013) Multi-fidelity Gaussian process regression for computer experiments (Doctoral dissertation, Université Paris-Diderot-Paris VII) Le Gratiet L (2013) Multi-fidelity Gaussian process regression for computer experiments (Doctoral dissertation, Université Paris-Diderot-Paris VII)
go back to reference Lee S, Youn BD, Sodano HA (2008) Computer model calibration and design comparison on piezoelectric energy harvester. In Proc. 12th AIAA/ISSMO Multidisciplinary Analysis and Optimization Conference (Victoria) Lee S, Youn BD, Sodano HA (2008) Computer model calibration and design comparison on piezoelectric energy harvester. In Proc. 12th AIAA/ISSMO Multidisciplinary Analysis and Optimization Conference (Victoria)
go back to reference Lophaven SN, Nielsen HB, Søndergaard J (2002) DACE-A Matlab Kriging toolbox, version 2.0 Lophaven SN, Nielsen HB, Søndergaard J (2002) DACE-A Matlab Kriging toolbox, version 2.0
go back to reference Martin JD, Simpson TW (2005) Use of kriging models to approximate deterministic computer models. AIAA J 43(4):853–863CrossRef Martin JD, Simpson TW (2005) Use of kriging models to approximate deterministic computer models. AIAA J 43(4):853–863CrossRef
go back to reference Mason BH, Haftka RT, Johnson ER, Farley GL (1998) Variable complexity design of composite fuselage frames by response surface techniques. Thin-Walled Struct 32(4):235–261CrossRef Mason BH, Haftka RT, Johnson ER, Farley GL (1998) Variable complexity design of composite fuselage frames by response surface techniques. Thin-Walled Struct 32(4):235–261CrossRef
go back to reference McFarland J, Mahadevan S, Romero V, Swiler L (2008) Calibration and uncertainty analysis for computer simulations with multivariate output. AIAA J 46(5):1253–1265CrossRef McFarland J, Mahadevan S, Romero V, Swiler L (2008) Calibration and uncertainty analysis for computer simulations with multivariate output. AIAA J 46(5):1253–1265CrossRef
go back to reference Morris MD, Mitchell TJ, Ylvisaker D (1993) Bayesian design and analysis of computer experiments: use of derivatives in surface prediction. Technometrics 35(3):243–255MathSciNetCrossRefMATH Morris MD, Mitchell TJ, Ylvisaker D (1993) Bayesian design and analysis of computer experiments: use of derivatives in surface prediction. Technometrics 35(3):243–255MathSciNetCrossRefMATH
go back to reference O’Hagan A (1992) Some Bayesian numerical analysis. Bayesian Stat 4(345–363):4–2MathSciNet O’Hagan A (1992) Some Bayesian numerical analysis. Bayesian Stat 4(345–363):4–2MathSciNet
go back to reference Owen AK, Daugherty A, Garrard D, Reynolds HC, Wright RD (1998) A parametric starting study of an axial-centrifugal gas turbine engine using a one-dimensional dynamic engine model and comparisons to experimental results: part 2—simulation calibration and trade-off study. In ASME 1998 International Gas Turbine and Aeroengine Congress and Exhibition (pp. V002T02A012-V002T02A012). Am Soc Mech Eng Owen AK, Daugherty A, Garrard D, Reynolds HC, Wright RD (1998) A parametric starting study of an axial-centrifugal gas turbine engine using a one-dimensional dynamic engine model and comparisons to experimental results: part 2—simulation calibration and trade-off study. In ASME 1998 International Gas Turbine and Aeroengine Congress and Exhibition (pp. V002T02A012-V002T02A012). Am Soc Mech Eng
go back to reference Prudencio EE, Schulz KW (2012) The parallel C++ statistical library ‘QUESO’: Quantification of Uncertainty for Estimation, Simulation and Optimization. In Euro-Par 2011: Parallel Processing Workshops (pp. 398–407). Springer Berlin Heidelberg Prudencio EE, Schulz KW (2012) The parallel C++ statistical library ‘QUESO’: Quantification of Uncertainty for Estimation, Simulation and Optimization. In Euro-Par 2011: Parallel Processing Workshops (pp. 398–407). Springer Berlin Heidelberg
go back to reference Qian PZ, Wu CJ (2008) Bayesian hierarchical modeling for integrating low-accuracy and high-accuracy experiments. Technometrics 50(2):192–204MathSciNetCrossRef Qian PZ, Wu CJ (2008) Bayesian hierarchical modeling for integrating low-accuracy and high-accuracy experiments. Technometrics 50(2):192–204MathSciNetCrossRef
go back to reference Rasmussen CE (2004) Gaussian processes in machine learning. In Advanced lectures on machine learning (pp. 63–71). Springer Berlin Heidelberg Rasmussen CE (2004) Gaussian processes in machine learning. In Advanced lectures on machine learning (pp. 63–71). Springer Berlin Heidelberg
go back to reference Ryu JS, Kim MS, Cha KJ, Lee TH, Choi DH (2002) Kriging interpolation methods in geostatistics and DACE model. KSME Int J 16(5):619–632CrossRef Ryu JS, Kim MS, Cha KJ, Lee TH, Choi DH (2002) Kriging interpolation methods in geostatistics and DACE model. KSME Int J 16(5):619–632CrossRef
go back to reference Sacks J, Welch WJ, Mitchell TJ, Wynn HP (1989) Design and analysis of computer experiments. Stat Sci 409–423 Sacks J, Welch WJ, Mitchell TJ, Wynn HP (1989) Design and analysis of computer experiments. Stat Sci 409–423
go back to reference Sanchez E, Pintos S, Queipo NV (2008) Toward an optimal ensemble of kernel-based approximations with engineering applications. Struct Multidiscip Optim 36(3):247–261CrossRef Sanchez E, Pintos S, Queipo NV (2008) Toward an optimal ensemble of kernel-based approximations with engineering applications. Struct Multidiscip Optim 36(3):247–261CrossRef
go back to reference Viana FA, Haftka RT (2009) Cross validation can estimate how well prediction variance correlates with error. AIAA J 47(9):2266–2270CrossRef Viana FA, Haftka RT (2009) Cross validation can estimate how well prediction variance correlates with error. AIAA J 47(9):2266–2270CrossRef
go back to reference Viana FA, Haftka RT, Steffen V Jr (2009) Multiple surrogates: how cross-validation errors can help us to obtain the best predictor. Struct Multidiscip Optim 39(4):439–457CrossRef Viana FA, Haftka RT, Steffen V Jr (2009) Multiple surrogates: how cross-validation errors can help us to obtain the best predictor. Struct Multidiscip Optim 39(4):439–457CrossRef
go back to reference Xiong S, Qian PZ, Wu CJ (2013) Sequential design and analysis of high-accuracy and low-accuracy computer codes. Technometrics 55(1):37–46MathSciNetCrossRef Xiong S, Qian PZ, Wu CJ (2013) Sequential design and analysis of high-accuracy and low-accuracy computer codes. Technometrics 55(1):37–46MathSciNetCrossRef
go back to reference Yoo MY, Choi JH (2013) Probabilistic calibration of computer model and application to reliability analysis of elasto-plastic insertion problem. Trans Korean Soc Mech Eng A 37(9):1133–1140CrossRef Yoo MY, Choi JH (2013) Probabilistic calibration of computer model and application to reliability analysis of elasto-plastic insertion problem. Trans Korean Soc Mech Eng A 37(9):1133–1140CrossRef
go back to reference Zheng L, Hedrick TL, Mittal R (2013) A multi-fidelity modelling approach for evaluation and optimization of wing stroke aerodynamics in flapping flight. J Fluid Mech 721:118–154 Zheng L, Hedrick TL, Mittal R (2013) A multi-fidelity modelling approach for evaluation and optimization of wing stroke aerodynamics in flapping flight. J Fluid Mech 721:118–154
Metadata
Title
Remarks on multi-fidelity surrogates
Authors
Chanyoung Park
Raphael T. Haftka
Nam H. Kim
Publication date
16-08-2016
Publisher
Springer Berlin Heidelberg
Published in
Structural and Multidisciplinary Optimization / Issue 3/2017
Print ISSN: 1615-147X
Electronic ISSN: 1615-1488
DOI
https://doi.org/10.1007/s00158-016-1550-y

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