概化理论
计算机科学
人工智能
机器学习
杠杆(统计)
稳健性(进化)
深度学习
原始数据
领域知识
过程(计算)
数据挖掘
操作系统
程序设计语言
化学
统计
基因
生物化学
数学
作者
Yunsheng Su,Luojie Shi,Kai Zhou,Guangxing Bai,Zequn Wang
标识
DOI:10.1016/j.ress.2023.109863
摘要
Effective fault defection is of critical importance in condition-based maintenance to improve the reliability of engineered systems and reduce operational cost. This paper introduces a knowledge-informed deep learning approach to fuse prior knowledge and critical health information extracted from raw monitoring data for robust fault diagnosis of rolling bearings. A set of knowledge-based features is first extracted based on prior knowledge of engineered systems. A knowledge-informed deep network (KIDN) is then designed to leverage these knowledge-based features with data-driven machine learning for the accurate prediction of bearing faults. To further enhance the generalizability of deep networks for fault diagnosis and alleviate extensive tuning efforts, a novel generalizability-based adaptive network design strategy is developed based on constrained Gaussian process (CGP) to quickly obtain the promising architectures for the development of knowledge-informed deep networks. Specifically, it involves the training of a constrained Gaussian process (CGP) surrogate model to predict the generalizability of KIDN and seeking potential improvements by exploring alternative network architectures within a vast design space. Four experimental case studies are implemented to validate the proposed methodology.
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