Applied Sciences (Apr 2024)

Fatigue Crack and Residual Life Prediction Based on an Adaptive Dynamic Bayesian Network

  • Shuai Chen,
  • Yinwei Ma,
  • Zhongshu Wang,
  • Minjing Liu,
  • Zhanjun Wu

DOI
https://doi.org/10.3390/app14093808
Journal volume & issue
Vol. 14, no. 9
p. 3808

Abstract

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Monitoring the health status of aerospace structures during their service lives is a critical endeavor, aimed at precisely evaluating their operational condition through observation data and physical modeling. This study proposes a probabilistic assessment approach utilizing Dynamic Bayesian Networks (DBNs), enhanced by an improved adaptive particle filtering technique. This approach combines physical modeling with various predictive sources, encompassing cognitive uncertainties inherent in stochastic predictions and crack propagation forecasts. By employing crack observation data, it facilitates predictions of crack growth and the residual life of metal structure. To demonstrate the efficacy of this method, the research leverages data from three-point bending and single-edge tension fatigue tests. It gathers data on crack length during the fatigue crack progression, integrating these findings with digital twin theory to forecast the residual fatigue life of the specimens. The outcomes show that the adaptive DBN model can precisely predict fatigue crack propagation in test specimens, offering a potential tool for the online health assessment and life evaluation for aerospace structures.

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