A novel fault diagnosis method for imbalanced datasets based on MCNN‐Transformer model in industrial processes

IF 3.9 4区 计算机科学 Q2 AUTOMATION & CONTROL SYSTEMS
Rongyang Lu
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引用次数: 0

Abstract

SummaryFault diagnosis methods based on deep learning have been extensively applied to the fault classification of rolling bearings, yielding favorable results. However, many of these methods still have substantial room for improvement in practical industrial scenarios. This article addresses the issue of imbalanced fault data categories commonly encountered in real‐world contexts and discusses the characteristics of long time series data in fault signals. To tackle these challenges, a model based on multi‐scale convolutional neural networks and transformer (MCNNT) is proposed. First, in the data processing stage, a diffusion model is introduced to handle the problem of data imbalance. This model learns the distribution of minority samples and generates new samples. Second, the proposed model incorporates an attention mechanism, enabling it to capture the global information of the data during the feature learning stage and effectively utilize the relationships between preceding and subsequent elements in long sequential data. This allows the model to accurately focus on key features. Experimental results demonstrate the exceptional performance of the proposed method, which is capable of generating high‐quality samples and providing a solution to address challenges in practical industrial scenarios. Consequently, the proposed method exhibits significant potential for further development.
基于 MCNN-Transformer 模型的工业流程不平衡数据集故障诊断新方法
摘要基于深度学习的故障诊断方法已被广泛应用于滚动轴承的故障分类,并取得了良好的效果。然而,在实际工业场景中,这些方法中的许多仍有很大的改进空间。本文探讨了现实世界中常见的不平衡故障数据类别问题,并讨论了故障信号中长时间序列数据的特点。为了应对这些挑战,本文提出了一种基于多尺度卷积神经网络和变压器(MCNNT)的模型。首先,在数据处理阶段,引入扩散模型来处理数据不平衡问题。该模型可学习少数样本的分布并生成新样本。其次,所提出的模型结合了注意力机制,使其能够在特征学习阶段捕捉数据的全局信息,并有效利用长序列数据中前后元素之间的关系。这样,模型就能准确地关注关键特征。实验结果表明,所提出的方法性能卓越,能够生成高质量的样本,为应对实际工业场景中的挑战提供了解决方案。因此,该方法具有进一步发展的巨大潜力。
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来源期刊
CiteScore
5.30
自引率
16.10%
发文量
163
审稿时长
5 months
期刊介绍: The International Journal of Adaptive Control and Signal Processing is concerned with the design, synthesis and application of estimators or controllers where adaptive features are needed to cope with uncertainties.Papers on signal processing should also have some relevance to adaptive systems. The journal focus is on model based control design approaches rather than heuristic or rule based control design methods. All papers will be expected to include significant novel material. Both the theory and application of adaptive systems and system identification are areas of interest. Papers on applications can include problems in the implementation of algorithms for real time signal processing and control. The stability, convergence, robustness and numerical aspects of adaptive algorithms are also suitable topics. The related subjects of controller tuning, filtering, networks and switching theory are also of interest. Principal areas to be addressed include: Auto-Tuning, Self-Tuning and Model Reference Adaptive Controllers Nonlinear, Robust and Intelligent Adaptive Controllers Linear and Nonlinear Multivariable System Identification and Estimation Identification of Linear Parameter Varying, Distributed and Hybrid Systems Multiple Model Adaptive Control Adaptive Signal processing Theory and Algorithms Adaptation in Multi-Agent Systems Condition Monitoring Systems Fault Detection and Isolation Methods Fault Detection and Isolation Methods Fault-Tolerant Control (system supervision and diagnosis) Learning Systems and Adaptive Modelling Real Time Algorithms for Adaptive Signal Processing and Control Adaptive Signal Processing and Control Applications Adaptive Cloud Architectures and Networking Adaptive Mechanisms for Internet of Things Adaptive Sliding Mode Control.
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