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Research on a Novel RBF Neural Network and Its Application in Fault Diagnosis

机译:新型RBF神经网络的研究及其在故障诊断中的应用

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摘要

The limitations of Back Propagation (BP) neural network (NN) are analyzed. The model, transfer function and training process of Radial Basis Function (RBF) NN are introduced in details. The contrasts between BP NN and RBF NN on the mathematical explanation, the function of the neurons in hidden layer and the training speed are made. To avoid the architecture design only with experiences, a RBF NN is proposed by the way that the nodes in hidden layer are automatically chosen. Meanwhile, the average square error is minimal. The training speed of this RBF NN is greatly improved, while the approximation is still accurate. The RBF NN is used for fault diagnosis of refrigeration system in a sailer, which illustrates the effectiveness of the network designed.
机译:分析了后传播(BP)神经网络(NN)的局限性。详细介绍了径向基函数(RBF)Nn的模型,传递函数和训练过程。 BP NN和RBF NN在数学解释中的对比度,使隐式层中的神经元的功能和训练速度进行。为避免仅具有经验的架构设计,通过自动选择隐藏层中的节点的方式提出了RBF NN。同时,平均方误差最小。这种RBF NN的训练速度大大提高,而近似仍然准确。 RBF NN用于帆船中的制冷系统的故障诊断,说明了网络设计的有效性。

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