Causal Disentanglement Hidden Markov Model for Fault Diagnosis

08/06/2023
by   Rihao Chang, et al.
0

In modern industries, fault diagnosis has been widely applied with the goal of realizing predictive maintenance. The key issue for the fault diagnosis system is to extract representative characteristics of the fault signal and then accurately predict the fault type. In this paper, we propose a Causal Disentanglement Hidden Markov model (CDHM) to learn the causality in the bearing fault mechanism and thus, capture their characteristics to achieve a more robust representation. Specifically, we make full use of the time-series data and progressively disentangle the vibration signal into fault-relevant and fault-irrelevant factors. The ELBO is reformulated to optimize the learning of the causal disentanglement Markov model. Moreover, to expand the scope of the application, we adopt unsupervised domain adaptation to transfer the learned disentangled representations to other working environments. Experiments were conducted on the CWRU dataset and IMS dataset. Relevant results validate the superiority of the proposed method.

READ FULL TEXT
research
05/15/2019

Domain Adaptive Transfer Learning for Fault Diagnosis

Thanks to digitization of industrial assets in fleets, the ambitious goa...
research
08/22/2023

Multi-Source Domain Adaptation for Cross-Domain Fault Diagnosis of Chemical Processes

Fault diagnosis is an essential component in process supervision. Indeed...
research
04/23/2022

Logistic-ELM: A Novel Fault Diagnosis Method for Rolling Bearings

The fault diagnosis of rolling bearings is a critical technique to reali...
research
10/13/2019

Causal Mechanism Transfer Network for Time Series Domain Adaptation in Mechanical Systems

Data-driven models are becoming essential parts in modern mechanical sys...
research
08/29/2023

Constructive Incremental Learning for Fault Diagnosis of Rolling Bearings with Ensemble Domain Adaptation

Given the prevalence of rolling bearing fault diagnosis as a practical i...
research
12/03/2021

A Novel Deep Parallel Time-series Relation Network for Fault Diagnosis

Considering the models that apply the contextual information of time-ser...

Please sign up or login with your details

Forgot password? Click here to reset