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以神经网络与模糊逻辑互补的电力系统短期负荷预测模型及方法
引用本文:程其云,孙才新,张晓星,周湶,杜鹏. 以神经网络与模糊逻辑互补的电力系统短期负荷预测模型及方法[J]. 电工技术学报, 2004, 19(10): 53-58
作者姓名:程其云  孙才新  张晓星  周湶  杜鹏
作者单位:重庆大学电气工程学院,重庆,400044;中国南方电网有限责任公司,广州,510620
摘    要:根据电力系统短期负荷预测的特点,采用神经网络与模糊逻辑互补的方法建立了负荷预测模型.通过粗糙集理论中的信息熵概念对神经网络的输入参数进行了筛选,以与待预测量相关性大的参数作为输入,不仅减少了神经网络的工作量,缩短了计算时间,而且提高了预测的准确性;在神经网络中,通过引进动量系数和遗忘系数优化网络,提高了ANN的收敛速度;在模糊逻辑中,充分利用了人们对负荷变化取得的主观经验,引进不平均隶属函数,来反映负荷对温度的敏感性.

关 键 词:短期负荷预测  信息熵  神经网络  模糊逻辑
修稿时间:2003-12-29

Short-Term Load Forecasting Model and Method for Power System Based on Complementation of Neural Network and Fuzzy Logic
Cheng Qiyun Sun Caixin Zhang Xiaoxing Zhou Quan Du peng. Short-Term Load Forecasting Model and Method for Power System Based on Complementation of Neural Network and Fuzzy Logic[J]. Transactions of China Electrotechnical Society, 2004, 19(10): 53-58
Authors:Cheng Qiyun Sun Caixin Zhang Xiaoxing Zhou Quan Du peng
Affiliation:1. Chongqing University Chongqing 400044 China 2. China Sothern Power Grid Co.LTD Guangzhou 510620 China
Abstract:According to the characteristics of electric short-term load forecasting, a complementation method based on artificial neural network (ANN) and fuzzy logic is proposed to establish a load prediction model, which separates the forecasting job into two parts: one is basic load component, and the other is the component under temperature and holiday situation. The basic load component is forecasted by ANN without considering the effect of temperature and holiday, which reduces the work of ANN and simplifies its structures. The revision of basic load is finished by Fuzzy logic, only considering the influence of temperature and holidays. It makes full use of expert experience, and the final load forecasting result is obtained. By using Rough Set Theory, knowledge entropy is introduced to choose ANNs input parameters. Parameters with a high correlation are used for input ,which reduce the work and calculation time of ANN and improve the accuracy of prediction. Convergence speed of ANN is improved by using momentum factors and oblivion factors. While in the fuzzy logic aspect, an uneven membership function is used to describe loads sensitivity to temperature on the base of subjective experience of load variation.
Keywords:Short-term load forecasting  knowledge entropy  neural network  fuzzy logic
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