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通过通用知识与无监督学习融合的健康指数估计

Health index estimation through integration of general knowledge with unsupervised learning

Reliability Engineering and System Safety · 2024
被引 34
ABS 3

中文导读

提出一种融合通用退化知识的无监督混合方法,利用卷积自编码器从监测数据中估计健康指数,在涡扇发动机和锂电池两个案例中优于残差法等替代方法,且性能接近有监督模型。

Abstract

Accurately estimating a Health Index (HI) from condition monitoring data (CM) is essential for reliable and interpretable prognostics and health management (PHM) in complex systems. In most scenarios, complex systems operate under varying operating conditions and can exhibit different fault modes, making unsupervised inference of an HI from CM data a significant challenge. Hybrid models combining prior knowledge about degradation with deep learning models have been proposed to overcome this challenge. However, previously suggested hybrid models for HI estimation usually rely heavily on system-specific information, limiting their transferability to other systems. In this work, we propose an unsupervised hybrid method for HI estimation that integrates general knowledge about degradation into the convolutional autoencoder’s model architecture and learning algorithm, enhancing its applicability across various systems. The effectiveness of the proposed method is demonstrated in two case studies from different domains: turbofan engines and lithium batteries. The results show that the proposed method outperforms other competitive alternatives, including residual-based methods, in terms of HI quality and their utility for Remaining Useful Life (RUL) predictions. The case studies also highlight the comparable performance of our proposed method with a supervised model trained with HI labels.

预测与健康管理深度学习无监督学习故障诊断