IEEE Access (Jan 2020)

An Optimal Stacking Ensemble for Remaining Useful Life Estimation of Systems Under Multi-Operating Conditions

  • Fei Li,
  • Li Zhang,
  • Bin Chen,
  • Dianzhu Gao,
  • Yijun Cheng,
  • Xiaoyong Zhang,
  • Yingze Yang,
  • Kai Gao,
  • Zhiwu Huang

DOI
https://doi.org/10.1109/ACCESS.2020.2973500
Journal volume & issue
Vol. 8
pp. 31854 – 31868

Abstract

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Remaining useful life (RUL) estimation is expected to provide appropriate maintenance for components or systems in industry to improve the reliability of the systems. Most data-based methods are limited to a single model, which is susceptible to various factors like environmental variability and diversity of operating conditions. In this paper, we propose an optimal stacking ensemble method combining different learning algorithms as meta-learners to mitigate the impact of multi-operating conditions. The selection of meta-learners follows a multi-objective evolutionary algorithm named non-dominated sorting genetic algorithms-II to balance the two conflicting objectives in terms of accuracy and diversity. Then the eventually evolved meta-learners are integrated by the meta-classifier for RUL estimation. In addition, a long-short-term feature extraction strategy is proposed to capture more degradation information from lifecycle data dynamically. Extensive experiments are performed on aero-engine dataset and battery dataset provided by NASA, which achieves the higher prognostic accuracy compared with the single models and existing methods.

Keywords