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Fault Diagnosis Analysis of Rotor System Based on RBF Neural Network and Dynamic Systems

机译:基于RBF神经网络和动态系统的转子系统故障诊断分析

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The RBF network was applied in the rotor system to realize the fault diagnosis aiming the mapping complexity between fault symptoms and fault patterns. It can overcome the problems of low learning rates of convergence and falling easily into part minimums in BP algorithm, and improve the precision of diagnosis. The normalized values of seven frequency ranges in amplitude spectrum were used as the fault characteristic quantity, the RBF network was trained to diagnose the faults of rotor system. The results show that RBF neural network is a valid method of diagnosis of mechanical failure.
机译:RBF网络应用于转子系统中,以实现故障诊断,以故障症状和故障模式之间的映射复杂度。它可以克服收敛性低学习率和容易下降的问题,并在BP算法中容易下降,提高诊断的精度。振幅频谱中七个频率范围的归一化值被用作故障特征量,RBF网络训练以诊断转子系统的故障。结果表明,RBF神经网络是诊断机械故障的有效方法。

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