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基于多时段气象数据判断相似日的日负荷曲线预测研究
引用本文:周晖,王玮,秦海超,王书春,姜红.基于多时段气象数据判断相似日的日负荷曲线预测研究[J].电力系统保护与控制,2005,33(23):41-45.
作者姓名:周晖  王玮  秦海超  王书春  姜红
作者单位:1.北京交通大学电气工程学院,北京 100044;2.长春供电公司调度所,吉林 长春 130051
摘    要:日负荷曲线预测是电力市场运营的基本内容。而短期负荷预测应用中较为成功的人工神经网络方法ANN(artific ial neural network),在很大程度上取决于训练样本以及输入变量的合理选取,它关系到算法的收敛性、计算速度以及预测的精度。通过对长春地区日负荷数据与日气象数据的基础分析,提出了选用多时段气象数据以及日类型作为相似日判别要素,并运用灰色关联理论,计算出预测日和诸多历史日的关联度,来确定ANN的训练样本,从而建立起适应性较强的日电量的预测模型。然后由日电量预测的结果,采用96点的波形系数

关 键 词:日负荷曲线预测    相似日    多时段气象数据    灰色关联理论    波形系数法
文章编号:1003-4897(2005)23-0041-05
收稿时间:2005-03-17
修稿时间:2005-06-02

Study of next-day load curve prediction based on similar days determined by daily multi-intervals meteorological data
ZHOU Hui, WANG Wei, QIN Hai-chao, WANG Shu-chun, JIANG Hong.Study of next-day load curve prediction based on similar days determined by daily multi-intervals meteorological data[J].Power System Protection and Control,2005,33(23):41-45.
Authors:ZHOU Hui  WANG Wei  QIN Hai-chao  WANG Shu-chun  JIANG Hong
Affiliation:1. School of Electrical Engineering, Beijing Jiaotong University,Beijing 100044,China; 2. Changchun Power Supply Company, Changchun 130051, China
Abstract:Next-day load curve prediction is the important items of electricity market operation system. The algorithm of artificial neural network, which is applied in short-term load forecast successfully, depends on how to select the trained samples and input variables to a great extend, as it has great relation with the convergence, calculation speed and calculation precision. Based on overall analysis of daily load data and daily meteorological data in Changchun, this paper proposes the set of multi-intervals meteorologicals data and date type involved is considered as the criterion of determination of similar days. With Grey incidence theory, the incidence degree of temperature variation curve in historical days and that of forecast days is obtained. The days which has similar meteorological condition to future day is selected as the sample of ANN ,and daily forecast model of electricity amount which has good adaptive characteristics is constructed. By wave coefficient of daily load curve, the estimated load magnitude of 96 points per day is gotten. Verified by continuous prediction in practice system, the result is satisfactory.
Keywords:next-day load curve prediction  similar days  daily multi-intervals meteorological data  Grey incidence theory  wave coefficient
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