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两种短期电力负荷预测模型的比较
引用本文:朱祥和,沈敏.两种短期电力负荷预测模型的比较[J].黄冈师范学院学报,2012,32(3):15-19.
作者姓名:朱祥和  沈敏
作者单位:1. 华中科技大学武昌分校基础科学部,湖北武汉,430064
2. 湖北省电力勘测设计院,湖北武汉,430040
摘    要:负荷预测是电力系统规划、计划、用电、调度等部门的基础工作,电力负荷是影响电网寿命和可靠度的一个重要因素。结合某省电网近五年来总电力负荷数据,对电力负荷数据进行分析与预处理,分别运用ARIMA模型与灰色GM(1,1)模型针对该省的电力总负荷分别做未来3天和10天两种情况下的短期预测,重点比较了所用两种方法的优缺点和精准度,得到3天的预测精度上GM(1,1)模型效果高于ARIMA模型,10天的预测精度上ARIMA模型相对较好。

关 键 词:ARIMA模型  灰色模型  负荷建模  短期负荷预测

The comparison between two kinds of short-term power load forecast models
ZHU Xiang-he , SHEN Min.The comparison between two kinds of short-term power load forecast models[J].Journal of Huanggang Normal University,2012,32(3):15-19.
Authors:ZHU Xiang-he  SHEN Min
Institution:1.Dep.of Basic Science,Wuchang Branch of HUST,Wuhan 430064,China;2.Hubei Electric Power Survey & Design Institute,Wuhan 430024,China)
Abstract:The load forecasting for power system in planning,supply,scheduling and other departments is fundamental.Power load influences the life and reliability of its grid.According to the total power data of a provincial grid over the past five years,the load data analysis and pretreatment are conducted.By using ARIMA model and grey GM(1,1) model the total electricity load of the grid is divided in two cases: 3 days and 10 days,to make short-term prediction.Compared with the accuracy,advantages and disadvantages of the two methods.The precision of 3-day forecast in GM(1,1) model is more effective than that in ARIMA model.The precision of 10-day forecast is relatively higher in ARIMA model.
Keywords:ARIMA model  Grey model  load modeling  short-term load forecasting
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