4.7 Article

On integrating prior knowledge into Gaussian processes for prognostic health monitoring

期刊

出版社

ACADEMIC PRESS LTD- ELSEVIER SCIENCE LTD
DOI: 10.1016/j.ymssp.2022.108917

关键词

Gaussian processes; Physics-informed Gaussian processes; Prognostic health monitoring; Fatigue damage prognosis; Probabilistic predictions

资金

  1. Federal Ministry for Economic Affairs and Energy, Germany based on a decision by the German Bundestag

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This paper proposes a method to improve the predictive capabilities of Gaussian processes by integrating prior knowledge and deriving mean and covariance functions from previous data. This approach has been demonstrated to significantly increase look-ahead time and accuracy while reducing computation effort for training.
Gaussian process regression is a powerful method for predicting states based on given data. It has been successfully applied for probabilistic predictions of structural systems to quantify, for example, the crack growth in mechanical structures. Typically, predefined mean and covariance functions are employed to construct the Gaussian process model. Then, the model is updated using current data during operation while prior information based on previous data is ignored. However, predefined mean and covariance functions without prior information reduce the potential of Gaussian processes.This paper proposes a method to improve the predictive capabilities of Gaussian processes. We integrate prior knowledge by deriving the mean and covariance functions from previous data. More specifically, we first approximate previous data by a weighted sum of basis functions and then derive the mean and covariance functions directly from the estimated weight coefficients. Basis functions may be either estimated or derived from problem-specific governing equations to incorporate physical information.The applicability and effectiveness of this approach are demonstrated for fatigue crack growth, laser degradation, and milling machine wear data. We show that well-chosen mean and covariance functions, like those based on previous data, significantly increase look-ahead time and accuracy. Using physical basis functions further improves accuracy. In addition, computation effort for training is significantly reduced.

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