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基于双修正因子的模糊时间序列日最大负荷预测
引用本文:刘晓娟,方建安. 基于双修正因子的模糊时间序列日最大负荷预测[J]. 电力技术, 2013, 0(10): 115-118
作者姓名:刘晓娟  方建安
作者单位:[1]东华大学信息科学与技术学院上海201620;上海电力学院数理学院,上海201300 [2]东华大学信息科学与技术学院,上海201620
基金项目:国家自然科学基金青年项目(61203006)
摘    要:天气温度变化是影响短期电力负荷预测的主要因素.为提高预测精度,引入负荷变化影响因子和气温影响因子,提出基于双修正因子的模糊时间序列预测算法.根据负荷变化趋势,提出分段预测的思想,在拐点处用负荷变化因子进行修正,然后用气温影响因子对预测结果进行二次修正.将改进的算法用于某电网夏季最大负荷的预测.数值结果表明该算法具有较高的预测精度.

关 键 词:电力系统  负荷预测  模糊时间序列  负荷变化影响因子  气温影响因子

Maximum Load Forecasting Based on a Bi-Factor Revised Fuzzy Time Series Model
LIU Xiao-juanCollege of Information Science & Technology,Donghua University,Shanghai,China;School of Mathematics and Physics,Shanghai University of Electric Power,Shanghai,China FANG Jian-an. Maximum Load Forecasting Based on a Bi-Factor Revised Fuzzy Time Series Model[J]. , 2013, 0(10): 115-118
Authors:LIU Xiao-juanCollege of Information Science & Technology,Donghua University,Shanghai,China  School of Mathematics  Physics,Shanghai University of Electric Power,Shanghai,China FANG Jian-an
Affiliation:LIU Xiao-juan(College of Information Science & Technology, Donghua University, Shanghai 201620, China;School of Mathematics and Physics, Shanghai University of Electric Power, Shanghai 201300, China) FANG Jian-an(College of Information Science & Technology, Donghua University, Shanghai 201620, China)
Abstract:Weather temperature is the main factor to affect the short-term power load forecasting.In order to improve the accuracy of the forecast,a bi-factor revised fuzzy time series model is proposed for maximum load forecasting.The influence factors of power load trend and temperature are introduced into the conventional fuzzy time series forecasting algorithms to correct the forecasting results.The segmented prediction idea is proposed in accordance with the trend of the load changes.Correction is made at the inflection point by load trend factor,and temperature influence factor is used for secondary correction on the predicted results.The model was applied to the Suzhou Grid for the maximum load prediction in summer and the results show that the model has a better prediction accuracy.
Keywords:electric power system  load forecasting  fuzzy time series  load trend factor  weather temperature influence factor
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