引用本文:刘亚南,卫志农,朱 艳,孙国强,孙永辉,杨友情,钱 瑛,周 军.基于D-S证据理论的短期风速预测模型[J].电力自动化设备,2013,33(8):
LIU Yanan,WEI Zhinong,ZHU Yan,SUN Guoqiang,SUN Yonghui,YANG Youqing,QIAN Ying,ZHOU Jun.Short-term wind speed forecasting model based on D-S evidence theory[J].Electric Power Automation Equipment,2013,33(8):
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基于D-S证据理论的短期风速预测模型
刘亚南1, 卫志农1, 朱 艳2, 孙国强1, 孙永辉1, 杨友情3, 钱 瑛3, 周 军3
1.河海大学 可再生能源发电技术教育部工程研究中心,江苏 南京 210098;2.国电南瑞科技股份有限公司,江苏 南京 210061;3.安徽省电力公司池州供电公司,安徽 池州 247000
摘要:
提出一种基于D-S证据理论的短期风速组合预测模型。分别采用时间序列、BP神经网络和支持向量机预测模型对风速进行预测,通过对预测误差的分析,借助D-S证据理论对3种模型进行融合。选取待测日前几日的风速数据作为融合样本,计算出相应的基本信任分配函数,同时将函数进行融合,并将融合结果作为风速预测模型的权重,得到待预测日的风速预测结果。仿真结果表明,所提组合预测模型的预测误差更小,效果更好。
关键词:  风电  时间序列  BP神经网络  支持向量机  D-S证据理论  预测  模型
DOI:
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基金项目:
Short-term wind speed forecasting model based on D-S evidence theory
LIU Yanan1, WEI Zhinong1, ZHU Yan2, SUN Guoqiang1, SUN Yonghui1, YANG Youqing3, QIAN Ying3, ZHOU Jun3
1.Research Center for Renewable Energy Generation Engineering of Ministry of Education,Hohai University,Nanjing 210098,China;2.NARI Technology Development Co.,Ltd.,Nanjing 210061,China;3.Chizhou Power Supply Company of Anhui Electric Power Company,Chizhou 247000,China
Abstract:
A combined short-term wind speed forecasting model based on D-S evidence theory is proposed. The forecasting models of time series,BP neural network and support vector machine are adopted to respectively forecast the wind speed. Based on the analysis of forecast errors,D-S evidence theory is applied to fuse these three models. The wind speed data for several days before are taken as the fusion samples to calculate the corresponding basic trust distribution functions,which are then fused. The results of fusion are taken as the weights of the wind speed forecasting model and the wind speed of the day to be forecasted is calculated. Simulative results show that,the proposed combined forecasting model has smaller forecasting error and better effect.
Key words:  wind power  time series  BP neural network  support vector machines  D-S evidence theory  forecasting  models

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