A Bayesian framework for uncertainty quantification of perturbed gamma process based on simulated likelihood

被引:1
|
作者
Chen, Long [1 ]
Huang, Tianli [1 ]
Zhou, Hao [1 ]
Chen, Huapeng [2 ]
机构
[1] Cent South Univ, Sch Civil Engn, Changsha 410075, Hunan, Peoples R China
[2] East China Jiaotong Univ, Sch Transportat Engn, Nanchang 330013, Peoples R China
关键词
Stochastic degradation modeling; Perturbed gamma process; Simulated likelihood; Posterior inference; Model selection; Adaptive PMCMC; Bayes factor; MODELS; PREDICTION; TUTORIAL; GROWTH;
D O I
10.1016/j.probengmech.2023.103444
中图分类号
TH [机械、仪表工业];
学科分类号
0802 ;
摘要
The perturbed gamma process (PGP) has recently been widely used in modeling the noisy degradation data collected from engineering structures and components since it can simultaneously consider the temporal variability of degradation and measurement uncertainty. As a result of the sampling and inspection uncertainty in engineering practice, it is necessary to account for the resulting parameter uncertainty. Meanwhile, the flexibility of the form of measurement error motivates a potential demand for quantifying the model uncertainty and selecting the most fitting error model for the given inspection data. The Bayesian approach is well-suited to quantity the parameter uncertainty induced by imperfect inspection and limited inspection data, but its practical implementation is extremely challenging due to the intractable likelihood function of PGP. In the paper, a novel Bayesian framework for quantifying parameter and model uncertainty of PGP is presented, where the simulated likelihood that is an unbiased estimator generated by Sequential Monte Carlo (SMC) is introduced to overcome the intractable likelihood of PGP. More specifically, an Adaptive Particle Markov chain Monte Carlo (APMCMC) is proposed to perform the Bayesian sampling from the posterior distributions of parameters, achieving the requirement for the quantification of parameter uncertainty. By utilizing the posterior samples from APMCMC, a model selection method based on the Bayes factor is employed to determine the most fitting one from some alternative error models. Finally, two simulation examples are presented to illustrate the efficiency and accuracy of the proposed framework and its applicability is confirmed by a practical case involving the corrosion modeling of a group of pipelines.
引用
收藏
页数:17
相关论文
共 50 条
  • [11] Uncertainty quantification in Bayesian inverse problems with neutron and gamma time correlation measurements
    Lartaud, Paul
    Humbert, Philippe
    Garnier, Josselin
    ANNALS OF NUCLEAR ENERGY, 2025, 213
  • [12] Maximum Likelihood Estimation and Uncertainty Quantification for Gaussian Process Approximation of Deterministic Functions
    Karvonen, Toni
    Wynne, George
    Tronarp, Filip
    Oates, Chris
    Sarkka, Simo
    SIAM-ASA JOURNAL ON UNCERTAINTY QUANTIFICATION, 2020, 8 (03): : 926 - 958
  • [13] Korali: Efficient and scalable software framework for Bayesian uncertainty quantification and stochastic optimization
    Martin, Sergio M.
    Waelchli, Daniel
    Arampatzis, Georgios
    Economides, Athena E.
    Karnakov, Petr
    Koumoutsakos, Petros
    COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2022, 389
  • [14] Uncertainty Quantification Accounting for Model Discrepancy Within a Random Effects Bayesian Framework
    Ricciardi, Denielle E.
    Chkrebtii, Oksana A.
    Niezgoda, Stephen R.
    INTEGRATING MATERIALS AND MANUFACTURING INNOVATION, 2020, 9 (02) : 181 - 198
  • [15] A Bayesian Deep Learning Framework for RUL Prediction Incorporating Uncertainty Quantification and Calibration
    Lin, Yan-Hui
    Li, Gang-Hui
    IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS, 2022, 18 (10) : 7274 - 7284
  • [16] Uncertainty Quantification Accounting for Model Discrepancy Within a Random Effects Bayesian Framework
    Denielle E. Ricciardi
    Oksana A. Chkrebtii
    Stephen R. Niezgoda
    Integrating Materials and Manufacturing Innovation, 2020, 9 : 181 - 198
  • [17] BAYESIAN DEEP LEARNING FRAMEWORK FOR UNCERTAINTY QUANTIFICATION IN STOCHASTIC PARTIAL DIFFERENTIAL EQUATIONS
    Jung, Jeahan
    Shin, Hyomin
    Choi, Minseok
    SIAM JOURNAL ON SCIENTIFIC COMPUTING, 2024, 46 (01): : C57 - C76
  • [18] Bayesian integration of flux tower data into a process-based simulator for quantifying uncertainty in simulated output
    Raj, Rahul
    van der Tol, Christiaan
    Hamm, Nicholas Alexander Samuel
    Stein, Alfred
    GEOSCIENTIFIC MODEL DEVELOPMENT, 2018, 11 (01) : 83 - 101
  • [19] Stereo-DIC Uncertainty Quantification based on Simulated Images
    R. Balcaen
    P.L. Reu
    P. Lava
    D. Debruyne
    Experimental Mechanics, 2017, 57 : 939 - 951
  • [20] Stereo-DIC Uncertainty Quantification based on Simulated Images
    Balcaen, R.
    Reu, P. L.
    Lava, P.
    Debruyne, D.
    EXPERIMENTAL MECHANICS, 2017, 57 (06) : 939 - 951