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Design considerations for a motor fault detection artificial neural network

机译:电机故障检测人工神经网络的设计注意事项

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The authors discuss the design considerations for a motor fault detection artificial neural network in terms of determining the input/output training data, the size of the training data set, network accuracy, robustness, implementation feasibility, and the number of input and hidden nodes to be used. A fuzzy logic approach to automating the network configuration process while simultaneously considering the accuracy, training time, sensitivity, and the number of neurons used in the implementation is also presented. Successful results have been obtained using artificial neural networks for motor fault detection and fuzzy logic in the network configuration design. A feedforward neural network for performing fault detection in a split-phase squirrel-cage induction motor is used for illustration purposes.
机译:作者从确定输入/输出训练数据,训练数据集的大小,网络精度,鲁棒性,实现可行性以及输入和隐藏节点的数量等方面讨论了电动机故障检测人工神经网络的设计注意事项。使用。还提出了一种模糊逻辑方法,可自动执行网络配置过程,同时考虑准确性,训练时间,灵敏度和实现中使用的神经元数量。使用人工神经网络进行电机故障检测和网络配置设计中的模糊逻辑已获得成功的结果。为了说明目的,使用在分离相鼠笼式感应电动机中执行故障检测的前馈神经网络。

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