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Study of genetic algorithm to fully automate the design and training of artificial neural network

机译:完全自动化人工神经网络设计和训练的遗传算法研究

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Optimization of artificial neural network (ANN) parameters design for full-automation ability is an extremely important task, therefore it is challenging and daunting task to find out which is effective and accurate method for ANN prediction and optimization. This paper presents different procedures for the optimization of ANN with aim to: solve the time-consuming of learning process, enhancing generalizing ability, achieving robust and accurate model, and to reduce the computational complexity. A Genetic Algorithm (GA) has been used to optimize operational parameters (input variables), and we plan to optimize neural network architecture (i.e. number of hidden layer and neurons per layer), weight, types, training algorithms, activation functions, learning rate, momentum rate, number of iterations, and dataset partitioning ratio. A hybrid neural network and genetic algorithm model for the determination of optimal operational parameter settings based on the proposed approach was developed. The preliminary result of the model has indicated that the new model can optimize operational parameters precisely and quickly, subsequently, satisfactory performance.
机译:为实现全自动能力而优化人工神经网络(ANN)参数设计是一项极为重要的任务,因此,找出哪种有效,准确的ANN预测和优化方法是一项艰巨而艰巨的任务。本文提出了用于神经网络优化的不同程序,目的是:解决学习过程的耗时,增强泛化能力,建立鲁棒而准确的模型以及降低计算复杂度。遗传算法(GA)已用于优化操作参数(输入变量),并且我们计划优化神经网络架构(即,隐藏层的数量和每层神经元),权重,类型,训练算法,激活函数,学习率,动量率,迭代次数和数据集分区率。建立了基于混合神经网络和遗传算法的最优操作参数设置确定模型。该模型的初步结果表明,新模型可以精确,快速地优化运行参数,从而获得令人满意的性能。

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