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Industrial fault detection and isolation using Dominant Feature Identification

机译:使用优势特征识别的工业故障检测和隔离

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In this paper, we show how to find a reduced feature subset which is optimal in both estimation and clustering least square errors using two new Dominant Feature Identification (DFI) methods. We apply DFI to to identify the important features in a given set of faults, and a Neural Network (NN) is used for online fault classification based on the determined reduced feature set in the proposed two-stage framework. Our experimental results on an industrial machine fault simulator show the effectiveness in fault diagnosis and classification. Accuracy of 99.4% for fault identification is observed when using proposed new DFI followed by NN classification, reducing the number of required features from 120 to 13 and the number of sensors from 8 to 4.
机译:在本文中,我们展示了如何使用两种新的优势特征识别(DFI)方法找到在估计和聚类最小二乘误差方面均最佳的简化特征子集。我们应用DFI来识别给定故障集中的重要特征,并基于所提出的两阶段框架中确定的简化特征集,将神经网络(NN)用于在线故障分类。我们在工业机器故障模拟器上的实验结果表明了在故障诊断和分类中的有效性。当使用提议的新DFI进行NN分类时,观察到的故障识别准确率达到99.4%,所需功能的数量从120个减少到13个,传感器的数量从8个减少到4个。

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