Abstract

In recent industrial applications, machine learning technology is proving useful in preventing equipment failures in advance through early failure diagnosis. In particular, we show that different domains can be linked through adversarial learning with data available in different working conditions to facilitate the training of the model, as it is impractical to acquire data for all conditions in real-world applications. Nevertheless, the initial failure is a difficult problem to diagnose because it does not show a significant difference from the normal data between different conditions. Moreover, if only the domain discriminator is judged when adapting the domain, it tends to easily cause misclassification, so the reliability of the detection result needs to be improved. In this study, we propose a new learning method that improves classification performance by sharing the classification characteristics of the classifier for each task with the target domain characteristic generator. The proposed mechanism uses spatial attention to extract the focused partial information of the feature generator and discriminator, and further enhances task-specific features using the attention mechanism between the two extracted information types. Addresses the challenge of implementing both domain adaptation and classification. Extensive experimentation demonstrates efficiency and improved classification performance on benchmark and real-world application datasets. In real machine cases, the classification accuracy is improved by almost 4%. In addition, the negative impact on false alarms was lowered by increasing the classification accuracy of minimum failures. Convincingly demonstrate model effectiveness by performing an empirical analysis of the method through ablation analysis and visualization.

Highlights

  • With the success of many machines learning tasks, machine learning has become widely used in fault diagnosis for real applications [1], [2]

  • We propose a model that can maintain fault classification performance even in the target domain by combining the adversarial domain adaptation model and attention mechanism to share the discriminative feature region directly related to the fault of the input signal

  • The proposed algorithm solves the difficult problem of obtaining sufficient samples for various operating conditions, one of the main challenges in domain adaptation for fault diagnosis

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Summary

Introduction

With the success of many machines learning tasks, machine learning has become widely used in fault diagnosis for real applications [1], [2]. In real-world applications, collecting training instances given the enormous domain or labeling costs is challenging. Domain adaptation is performed using available labeled source data to address the lack of labeled target domain data [3]. Even if the model is designed to share the same label space for the source and target operations, domain adaptation still suffers from data distribution changes. Maintaining the classifier performance while satisfying domain adaptation is a challenging problem [4]. The main goal of domain adaptation is to extract the domain-invariant features so that task classifiers can learn from the source data and be readily applied to the target domain

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