可解释性
计算机科学
图形
复杂系统
机电一体化
卷积(计算机科学)
人工智能
数据挖掘
特征(语言学)
机器学习
故障检测与隔离
人工神经网络
理论计算机科学
语言学
哲学
执行机构
作者
Shuwen Zheng,Chong Wang,Enrico Zio,Jie Liu
标识
DOI:10.1016/j.ress.2023.109872
摘要
Fault detection in mechatronic systems is crucial for their maintainability and safety. However, the systems monitoring variables are often abundant, with intricate connections. It is difficult to characterize their relationships and to extract effective features. In this paper, a hierarchical graph convolution attention network based on causal paths (HGCAN) is developed to improve the performance and interpretability of data-driven fault detection models in complex mechatronic systems. A hybrid causal discovery algorithm is introduced to discover the inherit causality among monitoring variables. The causal paths that sequentially connect the cause-effect variables serve as the reception fields to extract features using multiscale convolution. Different levels of the features are aggregated based on a hierarchical attention mechanism, which assigns adaptive weights considering the varied feature importance. To verify the effectiveness of the proposed method, a dataset of real high-speed train braking systems is considered. Experimental results demonstrate promising performance improvement of the proposed method, and analysis on interpretability indicates its potential to facilitate practical decision-making.
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