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Hierarchical cognize framework for the multi-fault diagnosis of the interconnected system based on domain knowledge and data fusion

  • Tong Zhang
  • , Laifa Tao
  • , Xiaoding Wang
  • , Cong Zhang
  • , Shangyu Li
  • , Jie Hao
  • , Chen Lu
  • , Mingliang Suo*
  • *此作品的通讯作者
  • Beihang University
  • Science & Technology on Reliability & Environmental Engineering Laboratory
  • China Aerospace Science and Technology Corporation

科研成果: 期刊稿件文章同行评审

摘要

An interconnected system (ICS) is a complex industry system with multiple sensors, multiple tasks, and massive interaction. It is also of great importance for conducting the fault diagnosis technology research. Multi-fault diagnosis (MFD) is an urgent problem in engineering, while the complex mapping relationships among the system sensors, data patterns in single sensors, and fault modes in ICSs bringing severe challenges. The faults of ICS are similar to human disease in multiple dimensions. Enlightening the understanding of diseases in medicine guides us: hierarchical cognition and knowledge-data-fusion are important systematic ideas. Inspired by these, we propose a hierarchical cognize framework (HCF), which covers the cognition of sensors, data patterns in single sensors, and data climates. Subsequently, we propose a fuzzy neighbourhood three-way decision (FN3WD), experience fused self-adaptation Gaussian-mixture-model (EFSA-GMM), and coding-with-knowledge-discrimination (CWKD) to construct an HCF. To comprehensively verify the HCF, we successfully apply the HCF to the MFD of a satellite power system. Classic models of two-mainstream strategies are introduced as comparisons, specifically, MC-DCNN, MC-SVM, ML-DCNN, and ML-SVM. Compared to the comparative models, the HCF performs an increase of 12.35%, 7.72%, 6.90%, and 8.10% at least in accuracy, precision, recall, and F1-score, respectively, in 10 times cross-validation. Benefitting from the fusion of knowledge, the HCF has cognitive advantages in obtaining a high accuracy and precision diagnosis results. Meanwhile, the time consumption of the HCF is approximately 130 s, which is considerably reduced by as much as 50% compared with the deep learning models.

源语言英语
文章编号116503
期刊Expert Systems with Applications
193
DOI
出版状态已出版 - 1 5月 2022

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    可持续发展目标 3 良好健康与福祉

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