基于潜空间配准的域适应(LSADA)用于旋转机械的故障诊断

IF 8 1区 工程技术 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Yong Chae Kim , Jin Uk Ko , Jinwook Lee , Taehun Kim , Joon Ha Jung , Byeng D. Youn
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引用次数: 0

摘要

旋转机械的故障诊断对于尽量减少工业领域的损坏和停机时间至关重要。随着人工智能的发展,基于深度学习的故障诊断受到了广泛关注。然而,在不同条件下运行的机械数据分布的变化导致诊断准确性不足。此外,工业环境中标注数据的缺乏也影响了这些深度学习算法的性能。为了解决这些问题,人们越来越多地探索基于无监督领域适应(UDA)的故障诊断方法,以便在不同条件下进行稳健诊断。然而,传统的 UDA 方法很难适应难以适应的类别,因为它们只关注减少全局分布差异,从而导致对这些类别的错误分类和性能降低。在本文中,我们提出了一种基于潜空间配准的领域适应(LSADA)方法来克服这一局限。LSADA 通过依次对齐少数区域和最小化高维潜空间中源数据与目标数据之间的距离来减少局部分布差异。此外,LSADA 中的特征提取器和预测器通过从未标明的目标数据中生成可靠的伪标签来实现同步。我们利用开源数据集和实验数据集对所提出的方法进行了验证,结果表明 LSADA 优于现有的基于 UDA 的故障诊断算法。此外,对该方法的物理分析解决了深度学习方法的常见局限--黑箱问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Latent space alignment based domain adaptation (LSADA) for fault diagnosis of rotating machinery
Fault diagnosis of rotating machinery is essential to minimize damage and downtime in industrial fields. With the development of artificial intelligence, deep-learning-based fault diagnosis has gained significant attention. However, changes in the data distribution from machinery operating under different conditions have led to insufficient diagnostic accuracy. Additionally, the lack of labeled data in industrial settings hampers the performance of these deep-learning algorithms. To address these issues, unsupervised domain adaptation (UDA)-based fault diagnosis methods have been increasingly explored for robust diagnosis under varying conditions. Traditional UDA methods, however, struggle to adapt to hard-to-adapt classes as they focus only on reducing global distribution discrepancies, leading to misclassification and reduced performance for these classes. In this paper, we propose a latent space alignment based domain adaptation (LSADA) approach to overcome this limitation. LSADA reduces local distribution discrepancies by sequentially aligning minority regions and minimizing the distance between source and target data in high-dimensional latent space. Additionally, the feature extractor and predictor in LSADA are synchronized by generating reliable pseudo labels from unlabeled target data. The proposed method is validated using both open-source and experimental datasets, demonstrating that LSADA outperforms existing UDA-based fault-diagnosis algorithms. Moreover, a physical analysis of the method addresses the black-box issue, a common limitation of deep-learning approaches.
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来源期刊
Advanced Engineering Informatics
Advanced Engineering Informatics 工程技术-工程:综合
CiteScore
12.40
自引率
18.20%
发文量
292
审稿时长
45 days
期刊介绍: Advanced Engineering Informatics is an international Journal that solicits research papers with an emphasis on 'knowledge' and 'engineering applications'. The Journal seeks original papers that report progress in applying methods of engineering informatics. These papers should have engineering relevance and help provide a scientific base for more reliable, spontaneous, and creative engineering decision-making. Additionally, papers should demonstrate the science of supporting knowledge-intensive engineering tasks and validate the generality, power, and scalability of new methods through rigorous evaluation, preferably both qualitatively and quantitatively. Abstracting and indexing for Advanced Engineering Informatics include Science Citation Index Expanded, Scopus and INSPEC.
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