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Research on Improving Training Speed of LMBP Algorithm and its Simulation in Application

机译:提高LMBP算法训练速度及其应用中的培训速度研究

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This paper analyzes the rudimental principle and cyber-realization of LMBP(Levenberg Marquardt Back Propagation) algorithm and finds out the main factors which restrict the training speed of this algorithm. One method of quickening the training speed is proposed and applied into the basic LMBP algorithm. When calculating the increment of weights and biases, the calculating speed is three times of that of the basic LMBP algorithm. At last, this paper applies this ameliorated LMBP algorithm into the training simulation of fault diagnosis based on some device''s gearbox. The result indicates that the total training speed of single-hidden layer BP neural network based on the improved LMBP algorithm is approximately three times of that of the basic LMBP algorithm.
机译:本文分析了LMBP(Levenberg Marquardt Back传播)算法的粗大原理和网络实现,并找到了限制该算法训练速度的主要因素。提出了一种快速训练速度的方法,并应用于基本LMBP算法。计算权重和偏置的增量时,计算速度是基本LMBP算法的三倍。最后,本文将这种改善的LMBP算法应用于基于某些设备变速箱的故障诊断训练仿真。结果表明,基于改进的LMBP算法的单隐层BP神经网络的总训练速度大约是基本LMBP算法的三倍。

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