摘要
文章分析了影响电价的主要因素及电价的变化特点,讨论了电价预测模型中必需引入的影响电价的因素。在比较常用的几种电价预测方法的优缺点后,作者采用径向基函数神经网络(radial basis function neural networks,RBF)建立短期边际电价预测模型,用递阶遗传算法(HGA)同时训练RBF网络结构和参数。并以美国New England ISO公布的2002年历史电价数据进行训练和测试,与传统的BP网络预测模型相比较, 测试结果证明该模型的预测精确度是令人满意的。
The main factors influencing electricity price and the variation features of electricity price are analyzed, the factors that must be led into electricity price forecasting model are researched. After comparing the advantages and defects of electricity price forecasting methods in common use, a short-term marginal price forecasting model is proposed by use of radial basis function (RBF) neural network, and the structure and parameters of RBF neural network are simultaneously trained by hierarchical genetic algorithm (HGA). The proposed RBF neural network is trained and tested by historical data in the year of 2002 published by ISO of New England power grid. Test results show that the forecasted marginal electricity prices by the proposed model are satisfied and more accurate than those by traditional BP network.
出处
《电网技术》
EI
CSCD
北大核心
2006年第7期18-21,25,共5页
Power System Technology
关键词
短期边际电价
RBF网络
递阶遗传算法
电力市场
short-term marginal electricity price
RBF neura
network
hierarchical genetic algorithm
electricity market