基于半监督约束传播的故障诊断方法

Guobo Liao, Han Zhou, Yanxia Li, H. Yin, Y. Chai
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引用次数: 1

摘要

故障检测和识别可以最大限度地减少系统的意外退化,进一步避免危险情况的发生。由于传感器技术和互联网的快速发展,可以收集到指数数据,基于数据驱动的故障诊断方法越来越受到重视。然而,大多数作品往往学习低维表示,无法保留原始数据的真实局部几何结构。这可能会降低故障诊断能力。提出了一种基于半监督约束传播的故障诊断方法。关键是通过约束传播将有监督数据的链接信息传播给相邻数据。因此,传播的相似矩阵可以正确地反映样品的结构。进一步,借助传播矩阵,通过奇异值分解学习样本指标,利用支持向量机识别故障类型。实验结果证明了该方法的有效性,并与其他常用的故障诊断方法进行了比较。
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A Semi-supervised Constraints Propagation Based Method for Fault Diagnosis
Fault detection and identification could minimize unexpected degradation of system and further avoid dangerous situation. Due to the rapid development of sensor technology as well as the Internet, exponential data could be collected, resulting in that data-driven based fault diagnosis method receives increasing attention. However, most works often learned low dimensional representations so that they couldn't preserve the real local geometric structure of original data. This might degrade fault diagnosis capabilities. In this paper, a novel semi-supervised constraints propagation based approach for fault diagnosis was proposed. The key point was to spread the linking information of supervised data to its neighbors via constraints propagation. Accordingly, the propagated similarity matrix could correctly reflect the structure of the samples. Further, with the aid of propagated matrix, sample indexes were learned via singular value decomposition and support vector machine were utilized to identify the type of faults. The effectiveness of the proposed methods was demonstrated through the experimental results, compared with other popular fault diagnosis methods.
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