An Intelligent Runoff Forecasting Method Based on Fuzzy sets, Neural network and Genetic Algorithm

Qingguo Li, Shouyu Chen, Dagang Wang
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引用次数: 6

Abstract

Based on the fuzzy optimum theory, neural network and genetic algorithm, an intelligent forecasting method for medium-and-long term runoff forecast is proposed. Firstly, a fuzzy optimum model is integrated with BP neural network to construct a new fuzzy neural network describing the complicated relations between forecast factors and runoff. The network may fall into local minimum during the training process. To overcome the shortcoming and improve training efficiency, an improved genetic algorithm, RAGA, is introduced to optimize the network weights. Finally, a case proves that the intelligent forecast methodology is efficient and has accuracy forecasting results
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基于模糊集、神经网络和遗传算法的径流智能预测方法
基于模糊优化理论、神经网络和遗传算法,提出了一种中长期径流预测的智能预测方法。首先,将模糊优化模型与BP神经网络相结合,构建新的模糊神经网络,描述预报因子与径流之间的复杂关系;在训练过程中,网络可能陷入局部最小值。为了克服这种缺点,提高训练效率,引入了一种改进的遗传算法RAGA来优化网络权值。最后通过实例验证了智能预测方法的有效性和预测结果的准确性
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