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Genetic Algorithm Based on New Evaluation Function and Mutation Model for Training of BPNN

机译:基于新评估函数和变异模型的BP神经网络遗传算法训练

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摘要

A local minimum is frequently encountered in the training of back propagation neural networks (BPNN), which sharply slows the training process. In this paper, an analysis of the formation of local minima is presented, and an improved genetic algorithm (GA) is introduced to overcome local minima. The Sigmoid function is generally used as the activation function of BPNN nodes. It is the flat characteristic of the Sigmoid function that results in the formation of local minima. In the improved GA, pertinent modifications are made to the evaluation function and the mutation model. The evaluation of the solution is associated with both the training error and gradient. The sensitivity of the error function to network parameters is used to form a self-adapting mutation model. An example of industrial application shows the advantage of the improved GA to overcome local minima.
机译:在回到传播神经网络(BPNN)的训练中经常遇到局部最小值,这急剧减慢培训过程。本文提出了对局部最小值形成的分析,并引入了改进的遗传算法(GA)以克服局部最小值。 SIGMOID函数通常用作BPNN节点的激活功能。它是符合矩形功能的平面特性,导致局部最小值的形成。在改进的GA中,对评估函数和突变模型进行了相关的修改。解决方案的评估与训练误差和梯度都相关联。错误函数对网络参数的敏感性用于形成自适应突变模型。工业应用的一个例子显示了改进的GA克服局部最小值的优势。

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