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Feature Extraction and Classification of the Electric Current Signal of an Induction Motor for Condition Monitoring Purposes

机译:感应电动机电流信号的特征提取和分类,用于条件监测目的

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A high availability of machines has always been important in production. One way to increase it is to avoid unscheduled production stops by detecting the onset of machine faults and to conduct preventative repairs. The detection part consists of the three steps signal acquisition, feature extraction and classification. This paper focuses on the last two steps through the example of an induction motor. Based on a publicly available motor current data set, features were extracted using the continuous wavelet transform. In the subsequent classification step eight different classification methods were compared with each other. It was found, that the accuracy of the classifiers varied significantly in a range from 20.6% to 92.8%. Moreover, the supportive vector machine, scoring an accuracy of 92.8%, was the only classifier with an accuracy above 55.0%.
机译:高可用性的机器在生产方面一直很重要。增加它的一种方法是通过检测机器故障的发作并进行预防性修复,避免出型生产停止。检测部分由三个步骤信号采集,特征提取和分类组成。本文通过电动机的示例侧重于最后两个步骤。基于可公开的电机电流数据集,使用连续小波变换提取功能。在随后的分类步骤中,八种不同的分类方法彼此进行比较。发现,分类器的准确性显着变化,范围为20.6%至92.8%。此外,支撑载体机,评分为92.8%的精度,是唯一的分类器,精度高于55.0%。

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