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Fusion of heterogeneous data for robust degradation prognostics

Fusion of heterogeneous data for robust degradation prognostics

来源:Arxiv_logoArxiv
英文摘要

Assessing the degradation state of an industrial asset first requires evaluating its current condition and then to project the forecast model trajectory to a predefined prognostic threshold, thereby estimating its remaining useful life (RUL). Depending on the available information, two primary categories of forecasting models may be used: physics-based simulation codes and datadriven (machine learning) approaches. Combining both modelling approaches may enhance prediction robustness, especially with respect to their individual uncertainties. This paper introduces a methodology for fusion of heterogeneous data in degradation prognostics. The proposed approach acts iteratively on a computer model's uncertain input variables by combining kernel-based sensitivity analysis for variable ranking with a Bayesian framework to inform the priors with the heterogeneous data. Additionally, we propose an integration of an aggregate surrogate modeling strategy for computationally expensive degradation simulation codes. The methodology updates the knowledge of the computer code input probabilistic model and reduces the output uncertainty. As an application, we illustrate this methodology on a toy model from crack propagation based on Paris law as well as a complex industrial clogging simulation model for nuclear power plant steam generators, where data is intermittently available over time.

Edgar Jaber、Emmanuel Remy、Vincent Chabridon、Mathilde Mougeot、Didier Lucor

EDF R\&D PRISME, CB, DATAFLOTEDF R\&D PRISMEEDF R\&D PRISMEENSIIE, CBDATAFLOT

计算技术、计算机技术自动化技术、自动化技术设备

Edgar Jaber,Emmanuel Remy,Vincent Chabridon,Mathilde Mougeot,Didier Lucor.Fusion of heterogeneous data for robust degradation prognostics[EB/OL].(2025-06-06)[2025-06-15].https://arxiv.org/abs/2506.05882.点此复制

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