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Development of Neural Networks module for fault identification in asynchronous machine using various types of reference signals

机译:使用各种类型参考信号的异步机器故障识别神经网络模块的开发

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In the article is told about the device of automatic diagnostic of asynchronous motor. This diagnostic system is based on Artificial Neural Network (ANN), in order to find the different defects by classification. The machine health identification process is mainly based on recognition and comparison of real-time captured standard signature as stator current, rotation speed of machine. The features extraction of the instantaneous signals will then input to an Artificial Neural Networks (ANN) for recognition and identification. The output of the neural network was trained to generate a healthy index that indicates the machine health condition. In this work, the entries used in the neural network were the various types of signals: the instantaneous values and the effective values (root mean square) of the machine parameters.
机译:在文章中,讲述了异步电动机的自动诊断设备。该诊断系统基于人工神经网络(ANN),以便通过分类找到不同的缺陷。机器健康识别过程主要基于实时捕获标准签名作为定子电流,机器转速的识别和比较。然后将瞬时信号提取的特征输入到人工神经网络(ANN)中,以识别和识别。培训神经网络的输出,以产生一个健康指数,表示机器健康状况。在这项工作中,神经网络中使用的条目是各种类型的信号:机器参数的瞬时值和有效值(根均线)。

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