Towards spatial-temporal meta-hypergraph learning for multimodal few-shot fault diagnosis

IF 10.4 1区 计算机科学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Jinze Wang , Jiong Jin , Lu Zhang , Hong-Ning Dai , Adriano Di Pietro , Tiehua Zhang
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引用次数: 0

Abstract

Fault diagnosis is essential for maintaining equipment safety and reliability in smart industrial environments. Early identification of issues through intelligent maintenance systems helps prevent downtime, enhance productivity, and mitigate hazards. However, two major challenges exist: first, when machines exhibit faults, they are typically deactivated for safety, resulting in scarce fault data; second, existing methods disregard high-order relationships between working conditions, while failing to simultaneously consider signal heterogeneity and spatial–temporal correlations. To address these challenges, we propose a spatial–temporal meta-hypergraph learning for multimodal few-shot fault diagnosis (MetaSTH-FD) by integrating dynamic spatial–temporal hypergraph construction into meta-learning. The framework first decomposes vibration signals into multimodal features, then constructs hypergraphs to capture complex relationships. Our approach enables quick adaptation to new conditions with limited samples, while the hypergraph structure models complex relationships in multimodal signal data. Experimental results demonstrate significant performance improvements across various working conditions and noise levels, thereby providing new insights for intelligent maintenance in smart manufacturing.
面向多模态小故障诊断的时空元超图学习
在智能工业环境中,故障诊断对于维护设备的安全性和可靠性至关重要。通过智能维护系统早期识别问题有助于防止停机,提高生产力并减轻危害。然而,存在两个主要挑战:首先,当机器出现故障时,通常会出于安全考虑停用它们,导致故障数据稀缺;其次,现有的方法忽略了工作条件之间的高阶关系,而未能同时考虑信号异质性和时空相关性。为了解决这些挑战,我们将动态时空超图构建集成到元学习中,提出了一种用于多模态少次故障诊断的时空元超图学习(MetaSTH-FD)。该框架首先将振动信号分解为多模态特征,然后构建超图来捕获复杂关系。我们的方法可以快速适应有限样本的新条件,而超图结构可以模拟多模态信号数据中的复杂关系。实验结果表明,在各种工作条件和噪音水平下,性能都有了显著提高,从而为智能制造中的智能维护提供了新的见解。
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来源期刊
Journal of Industrial Information Integration
Journal of Industrial Information Integration Decision Sciences-Information Systems and Management
CiteScore
22.30
自引率
13.40%
发文量
100
期刊介绍: The Journal of Industrial Information Integration focuses on the industry's transition towards industrial integration and informatization, covering not only hardware and software but also information integration. It serves as a platform for promoting advances in industrial information integration, addressing challenges, issues, and solutions in an interdisciplinary forum for researchers, practitioners, and policy makers. The Journal of Industrial Information Integration welcomes papers on foundational, technical, and practical aspects of industrial information integration, emphasizing the complex and cross-disciplinary topics that arise in industrial integration. Techniques from mathematical science, computer science, computer engineering, electrical and electronic engineering, manufacturing engineering, and engineering management are crucial in this context.
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