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Study on Self-Configuration Method of Neural Network Model for Grinding Troubles on-line Monitoring

机译:磨削故障在线监测的神经网络模型自配置方法研究

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摘要

A grinding trouble on-line monitoring mode is presented based on the nonlinear building mode principle of neural network. The input units were the peak of the FFT, the peak of RMS, and the standard deviation of AE signals. The outputs were the troubles of the grinding burning, grinding chatter, and grinding wheel dull. The structure of neural network is established by self-configuration method. The network mode is trained and tested by using the experiment data, and the results indicate that the neural network mode obtained by self-configuration method has high recognize rate for grinding troubles, and can be used to monitor grinding troubles on-line.
机译:基于神经网络的非线性构建模式原理,提出了一种磨削故障在线监测模式。输入单位是FFT的峰值,RMS的峰值和AE信号的标准偏差。输出的是磨削燃烧,磨削颤振和砂轮钝化的麻烦。通过自配置方法建立神经网络的结构。利用实验数据对网络模式进行了训练和测试,结果表明,通过自配置方法获得的神经网络模式对磨削故障的识别率较高,可用于在线监测磨削故障。

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