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基于灰色关联度与 LSSVM 组合的月度负荷预测
引用本文:刘文颖,门德月,梁纪峰,王维洲.基于灰色关联度与 LSSVM 组合的月度负荷预测[J].电网技术,2012(8):228-232.
作者姓名:刘文颖  门德月  梁纪峰  王维洲
作者单位:1. 新能源电力系统国家重点实验室华北电力大学,北京市昌平区102206
2. 甘肃电力科学研究院,甘肃省兰州市730050
基金项目:国家863高技术基金项目(SQ2010AA0523193001)~~
摘    要:由于月度负荷的二重趋势特性,其变化呈现出复杂的非线性组合特征,使预测精度一直不能达到令人满意的结果.针对月负荷的二重趋势特性和最小二乘支持向量机(least squares support vector machine,LSSVM)存在的数据输入维数大、训练时间长等缺点,提出一种基于灰色关联度与LSSVM 组合的月度负荷预测方法.该方法通过计算灰色关联度来选择训练样本,选取 LSSVM 进行样本训练;将与待预测月高度相似的历史月负荷作为 LSSVM 的训练样本输入,剔除了冗余数据,减少了输入维数,提高了预测精度.通过实例验证和结果对比,证明了该方法可显著提高月负荷预测的精度.

关 键 词:月负荷预测  灰色关联度  最小二乘支持向量机  组合预测

Monthly Load Forecasting Based on Grey Relational Degree and Least Squares Support Vector Machine
LIU Wenying,MEN Deyue,LIANG Jifeng,WANG Weizhou.Monthly Load Forecasting Based on Grey Relational Degree and Least Squares Support Vector Machine[J].Power System Technology,2012(8):228-232.
Authors:LIU Wenying  MEN Deyue  LIANG Jifeng  WANG Weizhou
Affiliation:1.State Key Laboratory of Alternate Electrical Power System with Renewable Energy Sources(North China Electric Power University),Changping District,Beijing 102206,China; 2.Electric Power Research Institute of Gansu Province,Lanzhou 730050,Gansu Province,China)
Abstract:Due to the dual trends of monthly load,i.e.,the increasing and fluctuation,its variation is indicative of the feature of complex nonlinear combination,so its forecasting accuracy cannot be satisfactory.In allusion to the duplicity of monthly load and in view of such defects in least squares support vector machine(LSSVM) as high dimensionality and long training period,combining grey relational degree with LSSVM a method to forecast monthly load is proposed.In the proposed method,by means of calculating grey relational degree the training samples are determined and LSSVM is chosen to train the samples;historical monthly load data,that is highly similar to the to be forecasted monthly load,is taken as the input and by means of rejecting redundant data the dimensionality of the input is reduced,thus the forecasting accuracy can be improved.Utilizing LSSVM toolkit in Matlab 7.0,a simulation model of the proposed method is built;the RBF is chosen as the kernel function of LSSVM and through the modeling training by kernel function and paramters a final LSSVM model is achieved,then the to be trained samples chosen by grey relational degree is input into the final LSSVM model to perform the training;and then the maximum daily load of the forecasted month can be obtained.Comparing the forecasted results by the proposed method with forecasted results from only using LSSVM,it is proved that the accuracy of mothely load forecasting can be evidently improved by the proposed method.
Keywords:monthly load forecasting  grey relational degree  least squares support vector machine(LSSVM)  combination forecasting
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