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基于预测误差分布特性统计分析的概率性短期负荷预测
杨文佳 ; 康重庆 ; 夏清 ; 刘润生 ; 唐涛南 ; 王鹏 ; 张丽 ; YANG Wenjia ; KANG Chongqing ; XIA Qing ; LIU Runsheng ; TANG Taonan ; WANG Peng ; ZHANG Li
2010-06-10 ; 2010-06-10
关键词短期负荷预测 预测误差 概率性预测 置信区间 short-term load forecasting forecasting errors probabilistic forecasting confidence interval TM715
其他题名Short Term Probabilistic Load Forecasting Based on Statistics of Probability Distribution of Forecasting Errors
中文摘要现有短期负荷预测方法一般只能给出确定性负荷预测结果,难以满足电力市场中不确定性风险分析决策的要求。文中提出了一种基于负荷预测误差特性的统计分析的概率性预测方法。该方法首先从时段与负荷水平2个联合维度上建立了对预测误差分布规律进行统计分析的模型,并提出了检验该统计规律有效性的原则和方法;将验证后的预测误差统计分布规律与确定性的负荷预测结果相结合,即可得到概率性的负荷预测结果。基于该结果,还能求取某一置信水平下的预测负荷曲线的包络线。结合实际电网数据验证了所提出方法的有效性和实用性,为概率性短期负荷预测提供了一条可行的新思路。; As the existing deterministic short-term load forecasting methods hardly meet the demands of uncertain risk analysis and decision-making in electricity market, a probabilistic load forecasting method based on the statistics of load forecasting errors' characteristic is presented at length. First, a statistic analysis model for the distribution regularities of forecasting error is established in two dimensions. The principle and method to verify the validity of statistical regularity is then proposed. At last, by combining the verified distribution regularity and the deterministic load forecasting result, the probability distribution of load forecasting can be gained. According to the result, envelopes of load forecasting curve under certain confidence level can also be obtained. The validity and practicability of the proposed method are tested with the actual data. It is expected that the proposed approach can provide a new feasible solution for the probabilistic short-term load forecasting.; 国家自然科学基金资助项目(50377016); 霍英东教育基金会资助项目(104020)
语种中文 ; 中文
内容类型期刊论文
源URL[http://hdl.handle.net/123456789/62224]  
专题清华大学
推荐引用方式
GB/T 7714
杨文佳,康重庆,夏清,等. 基于预测误差分布特性统计分析的概率性短期负荷预测[J],2010, 2010.
APA 杨文佳.,康重庆.,夏清.,刘润生.,唐涛南.,...&ZHANG Li.(2010).基于预测误差分布特性统计分析的概率性短期负荷预测..
MLA 杨文佳,et al."基于预测误差分布特性统计分析的概率性短期负荷预测".(2010).
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