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On fault classification in rotating machines using fourier domain features and neural networks

机译:傅立叶域特征和神经网络旋转机器故障分类

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The paper addresses the problem of classifying mechanical faults in rotating machines. In this context, three operational classes are considered, namely: normal (where the machine has no fault), unbalance (where the machine load has its weight not equally distributed), and misalignment (where the rotor and machine axes are dislocated from its natural concentric position). A large dataset consisting of 606 distinct scenarios is developed for system training and testing, along with a preprocessing strategy that improves data distribution among the three classes considered. A classifier based on an artificial neural network is described, achieving a global accuracy rate of 93.5%.
机译:本文解决了旋转机器中机械故障进行分类的问题。在这种情况下,考虑了三个操作类,即:正常(机器没有故障的位置),不平衡(机器负载的重量不同等分布),并且在转子和机器轴从其自然脱臼时同心位置)。为系统培训和测试开发了由606个不同方案组成的大型数据集,以及一种预处理策略,可以提高三个课程中的数据分布。描述了一种基于人工神经网络的分类器,实现了93.5%的全球精度率。

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