新故障分类诊断的高斯混合模型

Junhong Zhou, C. Pang, Weili Yan
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引用次数: 4

摘要

故障诊断是提高维修效率的重要手段。油气行业面临着收集包括所有类型故障的历史数据的挑战。为了克服传统诊断方法将新故障类型从训练中错误地分类到现有故障类别的局限性,本文提出了无监督高斯混合模型(GMM)和半监督高斯混合模型诊断框架,以有效地检测新故障类别。对于无监督GMM框架,构件个数已知,采用硬分配方法对新故障类型进行分类。对于半监督GMM框架,可以自动选择部件编号,软分配能够首先检测是否出现新的故障类型,并通过GMM更新进一步对其进行详细分类。在旋转机械工业故障模拟器上验证了这两种故障诊断框架的有效性。与现有的硬聚类方法相比,半监督GMM框架在不产生新故障类别的情况下,平均诊断准确率达到99.3%,对新故障类别的诊断准确率达到94.0%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gaussian mixture model for new fault categories diagnosis
Fault diagnosis plays an important role to improve maintenance efficiency. The industry faces the challenges to collect history data that include all type of failures. To overcome the limitation of conventional diagnosis approaches, which misclassify new types of faults into existing categories from training, the unsupervised Gaussian mixture model (GMM) and the semi-supervised GMM diagnosis frameworks are presented in this paper for effective detection on new fault categories. For the unsupervised GMM framework, the component number is known and the hard assignment is applied to classify the new types of faults. For the semi-supervised GMM framework, the component number can be auto selected, and the soft assignment is able to first detect whether new types of faults occur and further categorize them in detail via the GMM update. The effectiveness of the two fault diagnosis frameworks is testified on an industrial fault simulator of rotary machine. Compared with existing hard clustering approaches, the semi-supervised GMM framework is able to achieve an average diagnosis accuracy of 99.3% without new fault categories and it can also classify new fault categories with diagnosis accuracy of 94.0%.
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