Zero-shot intelligent fault diagnosis via semantic fusion embedding

Honghua Xu, Zijian Hu, Ziqiang Xu, Qilong Qian
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引用次数: 0

Abstract

Most fault diagnosis studies rely on the man-made data collected in laboratory where the operation conditions are under control and stable. However, they can hardly adapt to the practical conditions since the man-made data can hardly model the fault patterns across domains. Aiming to solve this problem, this paper proposes a novel deep fault semantic fusion embedding model (DFSFEM) to realize zero-shot intelligent fault diagnosis. The novelties of DFSFEM lie in two aspects. On the one hand, a novel semantic fusion embedding module is proposed to enhance the representability and adaptability of the feature learning across domains. On the other hand, a neural network-based metric module is designed to replace traditional distance measurements, enhancing the transferring capability between domains. These novelties jointly help DFSFEM provide prominent faithful diagnosis on unseen fault types. Experiments on bearing datasets are conducted to evaluate the zero-shot intelligent fault diagnosis performance. Extensive experimental results and comprehensive analysis demonstrate the superiority of the proposed DFSFEM in terms of diagnosis correctness and adaptability.
基于语义融合嵌入的零间隔智能故障诊断
大多数故障诊断研究依赖于实验室采集的人工数据,实验室的运行条件是可控和稳定的。然而,由于人工数据难以跨域模拟断层模式,因此难以适应实际情况。针对这一问题,本文提出了一种新的深断层语义融合嵌入模型(DFSFEM)来实现零距智能故障诊断。DFSFEM的新颖之处在于两个方面。一方面,提出了一种新的语义融合嵌入模块,增强了特征学习的可表征性和跨域适应性;另一方面,设计了基于神经网络的度量模块来取代传统的距离度量,增强了域间的传递能力。这些新特性共同帮助DFSFEM对未见过的故障类型提供突出的可靠诊断。在轴承数据集上进行了实验,以评估零射击智能故障诊断的性能。大量的实验结果和综合分析证明了所提出的DFSFEM在诊断正确性和适应性方面的优越性。
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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CiteScore
8.40
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