基于粒子群优化的北坎彭恒河降雨径流预测模型的建立

M. R. M. Romlay, Muhammad Mahbubur Rashid, S. Toha
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引用次数: 10

摘要

洪水是全世界每年都会发生的一种自然灾害。这场灾难和其他自然灾害一样,只能减轻而不能完全解决。径流预测在预淹管理系统中起着至关重要的作用。近年来,人工神经网络已被应用于各种水文系统预测模型中。提出了对北坎彭亨河降雨-径流系统进行模拟的方法。以5个水文站的平均降雨量数据为输入,水位数据为输出。采用粒子群算法对人工神经网络进行训练。用Ackley代价函数值来衡量人工神经网络的性能。最大迭代次数450次、粒子个数6个、全局最优粒子群优化参数常数(c1)和个人最优粒子群优化常数(c2)分别为1.9和2.0值的神经网络配置显示出最高的全局最优函数值。最大迭代次数为300次,粒子个数为3个,(c1)和(c2)值为2.2的神经网络配置产生最小的全局最优函数值。结果表明,采用粒子群算法训练的人工神经网络可以成功地模拟降雨径流。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of Particle Swarm Optimization Based Rainfall-Runoff Prediction Model for Pahang River, Pekan
Flooding is a natural disaster which has been occurring annually throughout the whole world. The disaster, such as other natural catastrophe could only be mitigated rather than it being completely solved. Runoff prediction proved to be very vital in pre-flooding management system. In recent years, Artificial Neural Network has been applied in various prediction models of hydrological system. It is proposed to model the rainfall-runoff system of Pahang River in Pekan. Mean rainfall data of 5 hydrological stations are used as the input and water level data as the output. The Artificial Neural Networks are trained with Particle Swarm Optimization. The performances of Artificial Neural Networks were measured with Ackley cost function value. Neural network configuration of 450 number of maximum iteration, 6 number of particles and 1.9 and 2.0 values of Particle Swarm Optimization parameter constant for global best (c1) and Particle Swarm Optimization constant for personal best (c2) respectively shows the highest global best function value. The neural network configuration of 300 number of maximum iteration, 3 numbers of particles and 2.2 value of (c1) and (c2) produces lowest global best function value. The output shows Artificial Neural Network trained by Particle Swarm Optimization can successfully model rainfall-runoff.
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