Incipient fault detection enhancement based on spatial-temporal multi-mode siamese feature contrast learning for industrial dynamic process

IF 8.2 1区 计算机科学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Yan Liu , Zuhua Xu , Kai Wang , Jun Zhao , Chunyue Song , Zhijiang Shao
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引用次数: 0

Abstract

Incipient faults are characterized by low-amplitude, unclear fault features, which are susceptible to unknown disturbances, leading to unsatisfactory detection performance. In this paper, an incipient fault detection enhancement method based on siamese spatial-temporal multi-mode feature contrast learning method is proposed. Firstly, we design a novel siamese spatial-temporal multi-mode convolutional neural network model consisting of two weight-shared spatial-temporal multi-mode convolutional neural networks and one feature discrimination measure operator, which are then used to extract the spatial-temporal multi-mode features of two datasets and to measure the distance between them. Then, an incipient fault feature discrimination intensification training strategy is developed to enhance the incipient fault detection performance. Specifically, this strategy intends to maximize the feature distance between the normal data and the incipient fault data, as well as that between different incipient faults, while minimizing the feature distance between the normal data and between the same incipient faults. Moreover, due to the long-term slow change characteristic of the incipient fault, the multi-head self-attention Long Short-Term Memory is presented as a dynamic feature learning model to further lopsidedly learn the incipient fault temporal long-term dependency according to attention weights utilizing the scaled dot-product multi-head self-attention mechanism. Finally, the performance of the proposed method is demonstrated on two industrial cases.

基于时空多模式连体特征对比学习的工业动态过程初期故障检测增强技术
初期故障的特点是低振幅、故障特征不清晰,容易受到未知干扰的影响,导致检测效果不理想。本文提出了一种基于连体时空多模式特征对比学习方法的初期故障检测增强方法。首先,我们设计了一个新颖的连体时空多模卷积神经网络模型,该模型由两个权重共享的时空多模卷积神经网络和一个特征判别度量算子组成,然后利用该模型提取两个数据集的时空多模特征并度量它们之间的距离。然后,开发了一种初期故障特征判别强化训练策略,以提高初期故障检测性能。具体来说,该策略旨在最大化正常数据与初期故障数据之间以及不同初期故障之间的特征距离,同时最小化正常数据之间以及相同初期故障之间的特征距离。此外,由于初发故障具有长期缓慢变化的特点,因此提出了多头自注意长短期记忆作为动态特征学习模型,利用缩放点积多头自注意机制,根据注意权重进一步片面地学习初发故障的时间长期依赖性。最后,在两个工业案例中演示了所提方法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Computers in Industry
Computers in Industry 工程技术-计算机:跨学科应用
CiteScore
18.90
自引率
8.00%
发文量
152
审稿时长
22 days
期刊介绍: The objective of Computers in Industry is to present original, high-quality, application-oriented research papers that: • Illuminate emerging trends and possibilities in the utilization of Information and Communication Technology in industry; • Establish connections or integrations across various technology domains within the expansive realm of computer applications for industry; • Foster connections or integrations across diverse application areas of ICT in industry.
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