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Physics-informed Gaussian process probabilistic modeling with multi-source data for prognostics of degradation processes

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  • Jiang, Chen
  • Zhong, Teng
  • Choi, Hyunhee
  • Youn, Byeng D.

Abstract

The integration of physics-based and data-driven methods in prognostics has become increasingly important in understanding the underlying degradation process using available knowledge. In this paper, we propose a physics-informed Gaussian process modeling method with multi-source data (PIGP-MD) that improves the predictive power of standard Gaussian process model by incorporating the prior knowledge from both physical models and historical data, and the current knowledge from limited observation data. We first propose a PIGP modeling method that incorporates the prior knowledge solely from physical models. In PIGP, a standard GP directly trained with current observation data is used to truncate the random realizations generated from physical models within the confidence bounds of the GP prediction. The truncated random realizations are used to derive the PIGP's nonstationary priors including the mean and autocovariance functions, as the unknown stochastic degradation process is considered as a nonstationary Gaussian process. Built upon PIGP, we propose PIGP-MD to filter credible knowledge from historical data. Some random realizations are generated from the credible knowledge from historical data and combined with the truncated random realizations generated from physical models. The combined random realizations are used to derive the nonstationary priors of PIGP-MD in the same way. With the physics model-informed and historical data-driven nonstationary priors as well as the current observation data, we can efficiently obtain the posterior future prediction without any parameter optimization. We demonstrate the applicability and efficacy of our proposed method for fatigue damage prognostics.

Suggested Citation

  • Jiang, Chen & Zhong, Teng & Choi, Hyunhee & Youn, Byeng D., 2025. "Physics-informed Gaussian process probabilistic modeling with multi-source data for prognostics of degradation processes," Reliability Engineering and System Safety, Elsevier, vol. 258(C).
  • Handle: RePEc:eee:reensy:v:258:y:2025:i:c:s0951832025000961
    DOI: 10.1016/j.ress.2025.110893
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    References listed on IDEAS

    as
    1. An, Dawn & Kim, Nam H. & Choi, Joo-Ho, 2015. "Practical options for selecting data-driven or physics-based prognostics algorithms with reviews," Reliability Engineering and System Safety, Elsevier, vol. 133(C), pages 223-236.
    2. Fernández, Juan & Chiachío, Juan & Barros, José & Chiachío, Manuel & Kulkarni, Chetan S., 2024. "Physics-guided recurrent neural network trained with approximate Bayesian computation: A case study on structural response prognostics," Reliability Engineering and System Safety, Elsevier, vol. 243(C).
    3. Kamariotis, Antonios & Tatsis, Konstantinos & Chatzi, Eleni & Goebel, Kai & Straub, Daniel, 2024. "A metric for assessing and optimizing data-driven prognostic algorithms for predictive maintenance," Reliability Engineering and System Safety, Elsevier, vol. 242(C).
    4. Arias Chao, Manuel & Kulkarni, Chetan & Goebel, Kai & Fink, Olga, 2022. "Fusing physics-based and deep learning models for prognostics," Reliability Engineering and System Safety, Elsevier, vol. 217(C).
    5. Lee, Juseong & Mitici, Mihaela, 2023. "Deep reinforcement learning for predictive aircraft maintenance using probabilistic Remaining-Useful-Life prognostics," Reliability Engineering and System Safety, Elsevier, vol. 230(C).
    6. Sun, Jianzhong & Yan, Zichen & Han, Ying & Zhu, Xinyun & Yang, Caiqiong, 2023. "Deep learning framework for gas turbine performance digital twin and degradation prognostics from airline operator perspective," Reliability Engineering and System Safety, Elsevier, vol. 238(C).
    7. Li, Wei & Chen, Wei & Jiang, Zhen & Lu, Zhenzhou & Liu, Yu, 2014. "New validation metrics for models with multiple correlated responses," Reliability Engineering and System Safety, Elsevier, vol. 127(C), pages 1-11.
    8. Cheng, Han & Kong, Xianguang & Wang, Qibin & Ma, Hongbo & Yang, Shengkang & Xu, Kun, 2023. "Remaining useful life prediction combined dynamic model with transfer learning under insufficient degradation data," Reliability Engineering and System Safety, Elsevier, vol. 236(C).
    9. Jiang, Chen & Vega, Manuel A. & Todd, Michael D. & Hu, Zhen, 2022. "Model correction and updating of a stochastic degradation model for failure prognostics of miter gates," Reliability Engineering and System Safety, Elsevier, vol. 218(PA).
    10. Deng, Huiwen & Hu, Weihao & Cao, Di & Chen, Weirong & Huang, Qi & Chen, Zhe & Blaabjerg, Frede, 2022. "Degradation trajectories prognosis for PEM fuel cell systems based on Gaussian process regression," Energy, Elsevier, vol. 244(PA).
    11. Zio, Enrico, 2022. "Prognostics and Health Management (PHM): Where are we and where do we (need to) go in theory and practice," Reliability Engineering and System Safety, Elsevier, vol. 218(PA).
    12. Liu, Jie & Hou, Bingchang & Lu, Ming & Wang, Dong, 2024. "Box-Cox transformation based state-space modeling as a unified prognostic framework for degradation linearization and RUL prediction enhancement," Reliability Engineering and System Safety, Elsevier, vol. 244(C).
    13. Xiaosheng, Si & Li, Huiqin & Zhang, Zhengxin & Li, Naipeng, 2024. "A Wiener-process-inspired semi-stochastic filtering approach for prognostics," Reliability Engineering and System Safety, Elsevier, vol. 249(C).
    14. Wang, Chu & Dou, Manfeng & Li, Zhongliang & Outbib, Rachid & Zhao, Dongdong & Zuo, Jian & Wang, Yuanlin & Liang, Bin & Wang, Peng, 2023. "Data-driven prognostics based on time-frequency analysis and symbolic recurrent neural network for fuel cells under dynamic load," Reliability Engineering and System Safety, Elsevier, vol. 233(C).
    15. Choi, Woosung & Youn, Byeng D. & Oh, Hyunseok & Kim, Nam H., 2019. "A Bayesian approach for a damage growth model using sporadically measured and heterogeneous on-site data from a steam turbine," Reliability Engineering and System Safety, Elsevier, vol. 184(C), pages 137-150.
    16. Meng, Huixing & Geng, Mengyao & Han, Te, 2023. "Long short-term memory network with Bayesian optimization for health prognostics of lithium-ion batteries based on partial incremental capacity analysis," Reliability Engineering and System Safety, Elsevier, vol. 236(C).
    17. Li, Yan-Fu & Wang, Huan & Sun, Muxia, 2024. "ChatGPT-like large-scale foundation models for prognostics and health management: A survey and roadmaps," Reliability Engineering and System Safety, Elsevier, vol. 243(C).
    18. Hajiha, Mohammadmahdi & Liu, Xiao & Lee, Young M. & Ramin, Moghaddass, 2022. "A physics-regularized data-driven approach for health prognostics of complex engineered systems with dependent health states," Reliability Engineering and System Safety, Elsevier, vol. 226(C).
    19. Hu, Chao & Youn, Byeng D. & Wang, Pingfeng & Taek Yoon, Joung, 2012. "Ensemble of data-driven prognostic algorithms for robust prediction of remaining useful life," Reliability Engineering and System Safety, Elsevier, vol. 103(C), pages 120-135.
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