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基于改进粒子群算法的神经网络在月降水预报中应用
引用本文:蒋林利,李 洁.基于改进粒子群算法的神经网络在月降水预报中应用[J].柳州师专学报,2014(1):126-130.
作者姓名:蒋林利  李 洁
作者单位:柳州师范高等专科学校数学与计算机科学系,广西柳州545004
基金项目:广西高校科学技术研究项目(2013YB281);柳州师范高等专科学校基金资助项目(LSZ20128005)
摘    要:针对粒子群算法易陷入局部最优和寻优精度比较低等缺点,提出一种基于随机惯性权重和异步变化策略的学习因子的粒子群算法优化神经网络连接权重和阈值,并以此建立月降水预报建模研究.以广西桂北地区的月降水量实例分析,并与标准粒子群优化神经网络模型、随机权重的粒子群神经网络模型和神经网络模型对比,结果表明,该方法学习能力强和预测精度高,是一种有效的建模预报方法.

关 键 词:粒子群优化算法  人工神经网络  月降水预报

Neural Network Model Based on Improved Particle Swarm Optimization and Its Application in Runoff Forecasting
JIANG Linli,LI Jie.Neural Network Model Based on Improved Particle Swarm Optimization and Its Application in Runoff Forecasting[J].Journal of Liuzhou Teachers College,2014(1):126-130.
Authors:JIANG Linli  LI Jie
Institution:(Department of Mathematics and Computer, Liuzhou Teachers College, Liuzhou, Guangxi, 545004 China)
Abstract:As the particle swarm algorithm is easy to fall into local optimum and the disadvantages of optimization low accuracy, this paper puts forward the evolving neural network connection weights and thresholds(or bias) based on random inertia weight and asynchro- nous changes' leaning factors of particle swarm algorithm (PSO), which establish monthly rainfall forecasting mode. The applied exanlple analysis is built with the monthly rainfall in the area of north of Guilin in Guangxi, the new method has been compared with others forecast- ing models, such as SPSO-TFNN and TFNN etc. The experimental results show the presented approach has strong learning ability and high generalization performance in rainfall forecasting, and is an effective tool for runoff forecasting.
Keywords:Particle Swarm Optimization  Artificial Neural Network  Monthly Runoff Forecasting
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