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基于D-S证据理论的短期负荷预测模型融合
引用本文:吴京秋,孙奇,杨伟,杨杰. 基于D-S证据理论的短期负荷预测模型融合[J]. 电力自动化设备, 2009, 29(4)
作者姓名:吴京秋  孙奇  杨伟  杨杰
作者单位:南京工程学院工程基础实验与训练中心,江苏南京,211167;南京理工大学动力工程学院,江苏南京,210094;南京理工大学总务处,江苏南京,210094
摘    要:在各种预测模型融合时确定各种模型的权重直接影响到预测精度.对3种不同的神经网络负荷预测模型分别建立了权重提取和权重融合的数学模型,并运用证据理论对3种预测模型的权重进行融合.通过对历史预测数据的分析,提取了证据理论的融合样本,并将信度函数的多重融合结果作为负荷预测模型权重,得到权重融合后待预测日的负荷预测结果.将权重融合模型的预测结果与单一模型的预测结果进行比较,结果表明权重融合后的模型具有更高的预测精度,提高了负荷预测的准确性.

关 键 词:D-S证据理论  神经网络  负荷预测  权重  合成法则

Short-term load forecast model fusion based on D-S evidence theory
WU Jingqiu,SUN Qi,YANG Wei,YANG Jie. Short-term load forecast model fusion based on D-S evidence theory[J]. Electric Power Automation Equipment, 2009, 29(4)
Authors:WU Jingqiu  SUN Qi  YANG Wei  YANG Jie
Affiliation:1.Nanjing Institute of Technology;Nanjing 211167;China;2.College of Power Engineering;Nanjing University of Science & Technology;Nanjing 210094;3.General Affair Department;China
Abstract:The determination of weights in forecast model fusion affects greatly the forecast precision.The weight extraction model and weight fusion model are established respectively for three neural network load forecast models and fused by using evidence theory.The fusion samples of evidence theory are extracted based on the analysis of historical forecasts and the multi-fusion result of belief function is taken as the weight of load forecast model,by which the day load is forecasted.The load forecasted is compare...
Keywords:D-S evidence theory  neural network  load forecast  weight  synthesis rule  
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