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粒子群优化算法在城市需水量预测中的应用
引用本文:岳琳,张宏伟,王亮.粒子群优化算法在城市需水量预测中的应用[J].天津大学学报(自然科学与工程技术版),2007,40(6):742-746.
作者姓名:岳琳  张宏伟  王亮
作者单位:天津大学环境科学与工程学院,天津大学环境科学与工程学院,天津工业大学材料科学与化工学院 天津300072,天津300072,天津工业大学材料科学与化工学院,天津300160,天津300160
摘    要:在对天津市需水量现状进行调查的基础上,分析需水量与相关因素的变化规律,建立天津市需水量预测模型.应用粒子群优化算法(PSO)对神经网络权值进行优化,建立PSO-BP神经网络,应用于需水量预测模型的求解.将PSO-BP法与传统的BP神经网络法的计算结果进行对比,前者的预测平均相对误差比后者低500/.结果证明,该预测模型能够较好地拟合天津市需水量变化趋势,PSO-BP方法比BP方法具有更高的收敛速度和精度.

关 键 词:城市需水量  粒子群优化算法  人工神经网络  预测模型
文章编号:0493-2137(2007)06-0742-05
修稿时间:2006-07-27

Application of Particle Swarm Optimization in Urban Water Demand Prediction
YUE Lin,ZHANG Hong-wei,WANG Liang.Application of Particle Swarm Optimization in Urban Water Demand Prediction[J].Journal of Tianjin University(Science and Technology),2007,40(6):742-746.
Authors:YUE Lin  ZHANG Hong-wei  WANG Liang
Institution:1. School of Environmental Science and Engineering, Tianjin University, Tianjin 300072, China; 2. School of Material Science and Chemical Engineering, Polytechnic Tianjin University, Tianjin 300160, China
Abstract:Based on the investigation of the present data of Tianjin,forecast model for municipal water resource demand in Tianjin was set up through analyzing water demand and its influencing factors.The power value of artificial neural network is optimized by particle swarm optimization(PSO) to set up PSO-BP network to find the solution between the model.The results between the PSO-BP and classical BP were compared,and the average prediction error was reduced by 50/_0.The example showed that PSO-BP network was more fit for urban water demand prediction in Tianjin and had higher forecasting precision than BP method.
Keywords:urban water demand  particle swarm optimization  artificial neural network  prediction model
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