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Erschienen in: Neural Computing and Applications 12/2019

06.08.2019 | Original Article

Gaussian process regression-based forecasting model of dam deformation

verfasst von: Chaoning Lin, Tongchun Li, Siyu Chen, Xiaoqing Liu, Chuan Lin, Siling Liang

Erschienen in: Neural Computing and Applications | Ausgabe 12/2019

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Abstract

The displacement at various measurement points is a critical indicator that can intuitively reflect the operational properties of a dam. It is important to analyse displacement monitoring data in a timely manner and make reliable predictions of dam safety. This paper proposes a GPR-based model for dam displacement forecasting. The input variables of the monitoring model consider hydraulic factors, thermal factors and irreversible factors, and the output variables are the observed displacements of the dam. An example analysis based on the proposed method is performed on a prototype gravity dam, and the performance of different simple/combined covariance functions is investigated to obtain the optimal choice. Compared to multiple linear regression, radial basis function network (RBFN) and support vector machine (SVM) methods, the results indicate that the GPR-based model with a combined covariance function significantly improves the prediction accuracy. The proposed model can effectively overcome the over-learning and poor robustness issues of approaches such as RBFN and SVM. In addition, the GPR-based forecasting model has the advantages of simplicity in the training process and the capacity to provide a probabilistic output.

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Literatur
1.
Zurück zum Zitat Prakash G, Sadhu A, Narasimhan S et al (2017) Initial service life data towards structural health monitoring of a concrete arch dam. Struct Control Health Monit 25(6):e2036 Prakash G, Sadhu A, Narasimhan S et al (2017) Initial service life data towards structural health monitoring of a concrete arch dam. Struct Control Health Monit 25(6):e2036
2.
Zurück zum Zitat Mohammad AHA (2018) Risk, reliability, resilience (R3) and beyond in dam engineering: a state-of-the-art review. Int J Disaster Risk Reduct 31:806–831 Mohammad AHA (2018) Risk, reliability, resilience (R3) and beyond in dam engineering: a state-of-the-art review. Int J Disaster Risk Reduct 31:806–831
3.
Zurück zum Zitat Chen S, Gu C, Lin C, et al (2018) Safety monitoring model of a super-high concrete dam by using RBF neural network coupled with kernel principal component analysis. Math Probl Eng 2018:1–13 Chen S, Gu C, Lin C, et al (2018) Safety monitoring model of a super-high concrete dam by using RBF neural network coupled with kernel principal component analysis. Math Probl Eng 2018:1–13
4.
Zurück zum Zitat Wang SJ, Gu YC, Pang Q (2017) Experience and prospect of dam surveillance system in China. In: Proceedings of the 85th annual meeting of international commission on large dams Wang SJ, Gu YC, Pang Q (2017) Experience and prospect of dam surveillance system in China. In: Proceedings of the 85th annual meeting of international commission on large dams
5.
Zurück zum Zitat Mata J, Leitão NS, Castro ATD et al (2014) Construction of decision rules for early detection of a developing concrete arch dam failure scenario. A discriminant approach. Comput Struct 142(69):45–53 Mata J, Leitão NS, Castro ATD et al (2014) Construction of decision rules for early detection of a developing concrete arch dam failure scenario. A discriminant approach. Comput Struct 142(69):45–53
6.
Zurück zum Zitat Salazar F, Morán R, Toledo MÁ et al (2017) Data-based models for the prediction of dam behaviour: a review and some methodological considerations. Arch Comput Methods Eng 24(1):1–21MATH Salazar F, Morán R, Toledo MÁ et al (2017) Data-based models for the prediction of dam behaviour: a review and some methodological considerations. Arch Comput Methods Eng 24(1):1–21MATH
7.
Zurück zum Zitat Kang F, Liu J, Li J et al (2017) Concrete dam deformation prediction model for health monitoring based on extreme learning machine. Struct Control Health Monit 24(10):e1997 Kang F, Liu J, Li J et al (2017) Concrete dam deformation prediction model for health monitoring based on extreme learning machine. Struct Control Health Monit 24(10):e1997
8.
Zurück zum Zitat Sortis AD, Paoliani P (2007) Statistical analysis and structural identification in concrete dam monitoring. Eng Struct 29(1):110–120 Sortis AD, Paoliani P (2007) Statistical analysis and structural identification in concrete dam monitoring. Eng Struct 29(1):110–120
9.
Zurück zum Zitat Acosta LE, Lacy MC, Ramos MI et al (2018) Displacements study of an earth fill dam based on high precision geodetic monitoring and numerical modeling. Sensors 18(5):1369 Acosta LE, Lacy MC, Ramos MI et al (2018) Displacements study of an earth fill dam based on high precision geodetic monitoring and numerical modeling. Sensors 18(5):1369
10.
Zurück zum Zitat Worden K, Manson G (2007) The application of machine learning to structural health monitoring. Philos Trans 365:515–537 Worden K, Manson G (2007) The application of machine learning to structural health monitoring. Philos Trans 365:515–537
11.
Zurück zum Zitat Zhou W, Li SL, Zhou ZW et al (2016) InSAR observation and numerical modeling of the earth-dam displacement of Shuibuya Dam (China). Sensors 8(10):877 Zhou W, Li SL, Zhou ZW et al (2016) InSAR observation and numerical modeling of the earth-dam displacement of Shuibuya Dam (China). Sensors 8(10):877
12.
Zurück zum Zitat Kang F, Li J, Xu Q (2009) Structural inverse analysis by hybrid simplex artificial bee colony algorithms. Comput Struct 87(13):861–870 Kang F, Li J, Xu Q (2009) Structural inverse analysis by hybrid simplex artificial bee colony algorithms. Comput Struct 87(13):861–870
13.
Zurück zum Zitat Ranković V, Novaković A, Grujović N et al (2014) Predicting piezometric water level in dams via artificial neural networks. Neural Comput Appl 24(5):1115–1121 Ranković V, Novaković A, Grujović N et al (2014) Predicting piezometric water level in dams via artificial neural networks. Neural Comput Appl 24(5):1115–1121
14.
Zurück zum Zitat Gu CS, Wu ZR (2006) Safety monitoring of dams and dam foundations—theories & methods and their application. Hohai University Press, Nanjing Gu CS, Wu ZR (2006) Safety monitoring of dams and dam foundations—theories & methods and their application. Hohai University Press, Nanjing
15.
Zurück zum Zitat Hadi S, Rigoberto B (2018) Emerging artificial intelligence methods in structural engineering. Eng Struct 171:170–189 Hadi S, Rigoberto B (2018) Emerging artificial intelligence methods in structural engineering. Eng Struct 171:170–189
16.
Zurück zum Zitat Wu ZH (2003) Safety monitoring theory & it’s application of hydraulic structures. Higher Education Press, Beijing Wu ZH (2003) Safety monitoring theory & it’s application of hydraulic structures. Higher Education Press, Beijing
17.
Zurück zum Zitat Freitag S, Graf W, Kaliske M et al (2011) Prediction of time-dependent structural behaviour with recurrent neural networks for fuzzy data. Comput Struct 89(21–22):1971–1981 Freitag S, Graf W, Kaliske M et al (2011) Prediction of time-dependent structural behaviour with recurrent neural networks for fuzzy data. Comput Struct 89(21–22):1971–1981
18.
Zurück zum Zitat Milivojevic M, Milivojevic M, Divac D et al (2013) Adaptive system for dam behavior modeling based on linear regression and genetic algorithms. Adv Eng Softw 65(10):182–190 Milivojevic M, Milivojevic M, Divac D et al (2013) Adaptive system for dam behavior modeling based on linear regression and genetic algorithms. Adv Eng Softw 65(10):182–190
19.
Zurück zum Zitat Fanelli M (1975) Control of dam displacements. Energia Elettrica 52:125–139 Fanelli M (1975) Control of dam displacements. Energia Elettrica 52:125–139
20.
Zurück zum Zitat Tonini D (1956) Observed behavior of several leakier arch dams. J Power Div 82(12):135–139 Tonini D (1956) Observed behavior of several leakier arch dams. J Power Div 82(12):135–139
21.
Zurück zum Zitat Bonaldi P, Fanelli M, Giuseppetti G (1977) Displacement forecasting for concrete dams. Int Water Power Dam Constr 29(9):42–50 Bonaldi P, Fanelli M, Giuseppetti G (1977) Displacement forecasting for concrete dams. Int Water Power Dam Constr 29(9):42–50
22.
Zurück zum Zitat Piroddi L, Spinelli W (2004) Long-range nonlinear prediction: a case study. IEEE Conf Decision Control 4:3984–3989 Piroddi L, Spinelli W (2004) Long-range nonlinear prediction: a case study. IEEE Conf Decision Control 4:3984–3989
23.
Zurück zum Zitat Mata J, Castro ATD, Costa JSD (2014) Constructing statistical models for arch dam deformation. Struct Control Health Monit 21(3):423–437 Mata J, Castro ATD, Costa JSD (2014) Constructing statistical models for arch dam deformation. Struct Control Health Monit 21(3):423–437
24.
Zurück zum Zitat Bui KTT, Bui DT, Zou J et al (2018) A novel hybrid artificial intelligent approach based on neural fuzzy inference model and particle swarm optimization for horizontal displacement modeling of hydropower dam. Neural Comput Appl 29(12):1495–1506 Bui KTT, Bui DT, Zou J et al (2018) A novel hybrid artificial intelligent approach based on neural fuzzy inference model and particle swarm optimization for horizontal displacement modeling of hydropower dam. Neural Comput Appl 29(12):1495–1506
25.
Zurück zum Zitat Wei B, Yuan D, Xu Z et al (2018) Modified hybrid forecast model considering chaotic residual errors for dam deformation. Structural Control and Health Monitoring 25(8):e2188 Wei B, Yuan D, Xu Z et al (2018) Modified hybrid forecast model considering chaotic residual errors for dam deformation. Structural Control and Health Monitoring 25(8):e2188
26.
Zurück zum Zitat Karami H, Karimi S, Bonakdari H et al (2018) Predicting discharge coefficient of triangular labyrinth weir using extreme learning machine, artificial neural network and genetic programming. Neural Comput Appl 29(11):983–989 Karami H, Karimi S, Bonakdari H et al (2018) Predicting discharge coefficient of triangular labyrinth weir using extreme learning machine, artificial neural network and genetic programming. Neural Comput Appl 29(11):983–989
27.
Zurück zum Zitat Ahmadi FF (2016) Integration of industrial videogrammetry and artificial neural networks for monitoring and modeling the deformation or displacement of structures. Neural Comput Appl 28(12):3709–3716 Ahmadi FF (2016) Integration of industrial videogrammetry and artificial neural networks for monitoring and modeling the deformation or displacement of structures. Neural Comput Appl 28(12):3709–3716
28.
Zurück zum Zitat Akrami SA, El-Shafie A, Naseri M et al (2014) Rainfall data analyzing using moving average (MA) model and wavelet multi-resolution intelligent model for noise evaluation to improve the forecasting accuracy. Neural Comput Appl 25(7–8):1853–1861 Akrami SA, El-Shafie A, Naseri M et al (2014) Rainfall data analyzing using moving average (MA) model and wavelet multi-resolution intelligent model for noise evaluation to improve the forecasting accuracy. Neural Comput Appl 25(7–8):1853–1861
29.
Zurück zum Zitat Su HZ, Li X, Yang BB et al (2018) Wavelet support vector machine-based prediction model of dam deformation. Mech Syst Signal Process 110:412–427 Su HZ, Li X, Yang BB et al (2018) Wavelet support vector machine-based prediction model of dam deformation. Mech Syst Signal Process 110:412–427
30.
Zurück zum Zitat Ou JP, Li H (2010) Structural Health Monitoring in mainland China: review and Future Trends. Struct Health Monit 9(3):219–231 Ou JP, Li H (2010) Structural Health Monitoring in mainland China: review and Future Trends. Struct Health Monit 9(3):219–231
31.
Zurück zum Zitat Devi VS (2015) Introduction to pattern recognition and machine learning. J Cell Physiol 200(1):71–81MATH Devi VS (2015) Introduction to pattern recognition and machine learning. J Cell Physiol 200(1):71–81MATH
32.
Zurück zum Zitat Mata J (2011) Interpretation of concrete dam behaviour with artificial neural network and multiple linear regression models. Eng Struct 33(3):903–910 Mata J (2011) Interpretation of concrete dam behaviour with artificial neural network and multiple linear regression models. Eng Struct 33(3):903–910
33.
Zurück zum Zitat Kao CY, Loh CH (2013) Monitoring of long-term static deformation data of Fei-Tsui arch dam using artificial neural network-based approaches. Struct Control Health Monit 20(3):282–303 Kao CY, Loh CH (2013) Monitoring of long-term static deformation data of Fei-Tsui arch dam using artificial neural network-based approaches. Struct Control Health Monit 20(3):282–303
34.
Zurück zum Zitat Hu WS, Zhang F, Song L et al (2012) Study of dam deformation model based on neural network. Appl Mech Mater 170–173:2137–2142 Hu WS, Zhang F, Song L et al (2012) Study of dam deformation model based on neural network. Appl Mech Mater 170–173:2137–2142
35.
Zurück zum Zitat Xu GH (2014) Application of rbf neural network in dam deformation prediction. Appl Mech Mater 675–677:261–264 Xu GH (2014) Application of rbf neural network in dam deformation prediction. Appl Mech Mater 675–677:261–264
36.
Zurück zum Zitat Kang F, Li J, Zhao S et al (2019) Structural health monitoring of concrete dams using long-term air temperature for thermal effect simulation. Eng Struct 180:642–653 Kang F, Li J, Zhao S et al (2019) Structural health monitoring of concrete dams using long-term air temperature for thermal effect simulation. Eng Struct 180:642–653
37.
Zurück zum Zitat Cheng J, Xiong Y (2017) Application of extreme learning machine combination model for dam displacement prediction. Proc Comput Sci 107:373–378 Cheng J, Xiong Y (2017) Application of extreme learning machine combination model for dam displacement prediction. Proc Comput Sci 107:373–378
38.
Zurück zum Zitat International Commission on Large Dams (2012) Dam surveillance guide. Tech. rep. B-158, ICOLD International Commission on Large Dams (2012) Dam surveillance guide. Tech. rep. B-158, ICOLD
39.
Zurück zum Zitat Ranković V, Grujović N, Divac D et al (2014) Development of support vector regression identification model for prediction of dam structural behaviour. Struct Saf 48(48):33–39 Ranković V, Grujović N, Divac D et al (2014) Development of support vector regression identification model for prediction of dam structural behaviour. Struct Saf 48(48):33–39
40.
Zurück zum Zitat Su H, Chen Z, Wen Z (2016) Performance improvement method of support vector machine-based model monitoring dam safety. Struct Control Health Monit 23(2):252–266 Su H, Chen Z, Wen Z (2016) Performance improvement method of support vector machine-based model monitoring dam safety. Struct Control Health Monit 23(2):252–266
41.
Zurück zum Zitat Salazar F, Toledo MA, Oñate E et al (2015) An empirical comparison of machine learning techniques for dam behaviour modelling. Struct Saf 56:9–17 Salazar F, Toledo MA, Oñate E et al (2015) An empirical comparison of machine learning techniques for dam behaviour modelling. Struct Saf 56:9–17
42.
Zurück zum Zitat Salazar F, Toledo MÁ, González JM et al (2017) Early detection of anomalies in dam performance: a methodology based on boosted regression trees. Struct Control Health Monit 24(11):e2012 Salazar F, Toledo MÁ, González JM et al (2017) Early detection of anomalies in dam performance: a methodology based on boosted regression trees. Struct Control Health Monit 24(11):e2012
43.
Zurück zum Zitat Maritz J, Maritz J, Lubbe F et al (2018) A practical guide to gaussian process regression for energy measurement and verification within the Bayesian Framework. Energies 11(4):1–12 Maritz J, Maritz J, Lubbe F et al (2018) A practical guide to gaussian process regression for energy measurement and verification within the Bayesian Framework. Energies 11(4):1–12
44.
Zurück zum Zitat Kang F, Xu B, Li J et al (2017) Slope stability evaluation using Gaussian processes with various covariance functions. Appl Soft Comput 60:387–396 Kang F, Xu B, Li J et al (2017) Slope stability evaluation using Gaussian processes with various covariance functions. Appl Soft Comput 60:387–396
45.
Zurück zum Zitat Aye SA, Heyns PS (2017) An integrated Gaussian process regression for prediction of remaining useful life of slow speed bearings based on acoustic emission. Mech Syst Signal Process 84:485–498 Aye SA, Heyns PS (2017) An integrated Gaussian process regression for prediction of remaining useful life of slow speed bearings based on acoustic emission. Mech Syst Signal Process 84:485–498
46.
Zurück zum Zitat Roushangar K, Garekhani S, Alizadeh F (2016) Forecasting daily seepage discharge of an earth dam using wavelet-mutual information-gaussian process regression approaches. Geotech Geol Eng 34(5):1313–1326 Roushangar K, Garekhani S, Alizadeh F (2016) Forecasting daily seepage discharge of an earth dam using wavelet-mutual information-gaussian process regression approaches. Geotech Geol Eng 34(5):1313–1326
47.
Zurück zum Zitat Kong D, Chen Y, Li N (2018) Gaussian process regression for tool wear prediction. Mech Syst Signal Process 104:556–574 Kong D, Chen Y, Li N (2018) Gaussian process regression for tool wear prediction. Mech Syst Signal Process 104:556–574
48.
Zurück zum Zitat Lee S, Chai J (2019) An enhanced prediction model for the on-line monitoring of the sensors using the Gaussian process regression. J Mech Sci Technol 33(5):2249–2257 Lee S, Chai J (2019) An enhanced prediction model for the on-line monitoring of the sensors using the Gaussian process regression. J Mech Sci Technol 33(5):2249–2257
49.
Zurück zum Zitat Yuan J, Wang K, Yu T et al (2008) Reliable multi-objective optimization of high-speed WEDM process based on Gaussian process regression. Int J Mach Tools Manuf 48(1):47–60 Yuan J, Wang K, Yu T et al (2008) Reliable multi-objective optimization of high-speed WEDM process based on Gaussian process regression. Int J Mach Tools Manuf 48(1):47–60
50.
Zurück zum Zitat Hestenes MR (1980) Conjugate direction methods in optimization. Math Comput 38(157):332MATH Hestenes MR (1980) Conjugate direction methods in optimization. Math Comput 38(157):332MATH
51.
Zurück zum Zitat Gu CS, Li B, Xu GL et al (2010) Back analysis of mechanical parameters of roller compacted concrete dam. Sci China Technol Sci 53(3):848–853MATH Gu CS, Li B, Xu GL et al (2010) Back analysis of mechanical parameters of roller compacted concrete dam. Sci China Technol Sci 53(3):848–853MATH
52.
Zurück zum Zitat Azman K, Kocijan J (2007) Application of Gaussian processes for black-box modelling of biosystems. ISA Trans 46(4):443–457 Azman K, Kocijan J (2007) Application of Gaussian processes for black-box modelling of biosystems. ISA Trans 46(4):443–457
53.
Zurück zum Zitat Jiang G, Wang W (2017) Error estimation based on variance analysis of k-fold cross-validation. Pattern Recogn 69:94–106 Jiang G, Wang W (2017) Error estimation based on variance analysis of k-fold cross-validation. Pattern Recogn 69:94–106
Metadaten
Titel
Gaussian process regression-based forecasting model of dam deformation
verfasst von
Chaoning Lin
Tongchun Li
Siyu Chen
Xiaoqing Liu
Chuan Lin
Siling Liang
Publikationsdatum
06.08.2019
Verlag
Springer London
Erschienen in
Neural Computing and Applications / Ausgabe 12/2019
Print ISSN: 0941-0643
Elektronische ISSN: 1433-3058
DOI
https://doi.org/10.1007/s00521-019-04375-7

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