基于遗传算法的水文时间序列预测混合神经网络模型

Ganji Huang, Lingzhi Wang
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引用次数: 14

摘要

水文时间序列预报是水资源研究的一个重要领域。基于降雨径流时间序列的多时间尺度和非线性特征,采用遗传算法选择输入变量的时间序列滞后期,优化神经网络结构和连接权值,提出了一种新的混合神经网络。然后将进化后的神经网络结构和连接权值输入到新的神经网络中。该神经网络采用反向传播(BP)算法进行水文时间序列预测训练。集成策略采用二次规划实现。该模型吸收了遗传算法和人工神经网络的优点。对水文时间序列的短期和长期预测进行了实例研究。对比结果表明,该模型可以提高预测精度,延长预测时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid Neural Network Models for Hydrologic Time Series Forecasting Based on Genetic Algorithm
Hydrologic time series forecasting is very an important area in water resource. Based on the multi-time scale and the nonlinear characteristics of the rainfall-runoff time series, a new hybrid neural network (NN) has been suggested by Genetic Algorithm (GA) selection the lag period of time series for NN input variables, optimization neural network architecture and connection weights. The evolved neural network architecture and connection weights are then input into a new neural network. The new neural network is trained using back -- propagation (BP) algorithm for hydrologic time series forecasting. The ensemble strategy is implemented using the quadratic programming. The present model absorbs some merits of GA and artificial neural network. Case studies, the short and long term prediction of hydrological time series, have been researched. The comparison results revealed that the suggested model could increase the forecasted accuracy and prolong the length time of prediction.
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