Improved differential evolution based BP neural network for prediction of groundwater table

Jihong Qu, Yuepeng Li, Juan Zhou
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引用次数: 1

Abstract

Groundwater table often shows complex nonlinear characteristic. Back Propagation (BP) neural network is increasingly used to predict groundwater table. However man-made selecting the structure of BP neural network has blindness and expends much time, so differential evolution (DE) algorithm was adopted to automatically search BP neural network weight matrix and threshold matrix. In order to improve the convergence of DE algorithm, a chaotic sequence based on logistic map was introduced to self-adaptively adjust mutation factor. Furthermore, a self-adapting crossover probability factor was presented to improve the population's diversity and the ability of escaping from the local optimum. Study case shows that, compared with groundwater level prediction model based on traditional BP neural network, the new prediction model based on DE and BP neural network can greatly improve the convergence speed and prediction precision.
基于改进差分演化的BP神经网络地下水位预测
地下水位往往表现出复杂的非线性特征。BP神经网络在地下水位预测中的应用越来越广泛。但人工选择BP神经网络结构具有盲目性,且耗时长,因此采用差分进化算法自动搜索BP神经网络权矩阵和阈值矩阵。为了提高遗传算法的收敛性,引入了一种基于逻辑映射的混沌序列自适应调整突变因子。在此基础上,提出了一种自适应交叉概率因子,以提高种群的多样性和逃离局部最优的能力。研究实例表明,与基于传统BP神经网络的地下水位预测模型相比,基于DE和BP神经网络的预测模型可以大大提高收敛速度和预测精度。
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