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Application and Research of the Train Fault Diagnosis Based on Improved BP Neural Network Algorithm

机译:基于改进BP神经网络算法的列车故障诊断的应用与研究

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Traditional BP model of neural network is easy to get a local minimum rather than the global optimal solution. As the training times increases, the learning efficiency is falling low, so as the convergence rate. Improvement on the traditional model of BP neural network algorithm improves the convergence rate of the neural network, and reduces the training times, so that the output of the neural network can not only determine the type of the train failure occurred, to improve the accuracy of diagnostic results, but also to diagnose within a certain range even the fault does not appear, to make the fault of train intelligent and simple. The simulation results show that the improved algorithm is effective.
机译:传统的神经网络模型很容易获得最低限度而不是全局最优解决方案。 随着训练时间的增加,学习效率下降,因此收敛速度。 改进了传统的BP神经网络算法模型,提高了神经网络的收敛速度,减少了训练时间,使神经网络的输出不仅可以确定火车故障的类型,提高了提高的准确性 诊断结果,还要在某个范围内诊断甚至出现故障,使火车的故障智能简单。 仿真结果表明,改进的算法是有效的。

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