Building a Fuzzy Expert System for Electric Load Forecasting Using a Hybrid Neural Network

نویسنده

  • A. C. LIEW
چکیده

This paper presents the development of a hybrid neural network to model a fuzzy expert system for time series forecasting of electricc load. The hybrid neural network is trained to develop fuzzy logic rules andjind optimal inputloutput membership values of load and weather parameters. A hybrid learning algorithm consisting of unsupervised and supervised learning phases is used for training the fuzzifred neural network. In the supervised learning phase, both back-propagation and linear Kalman jilter algorithms are used for the adjustment of weights and membership functions. Extensive tests have been performed on a 2-year utility data for the generation of peak and average loadprojiles in 24 h. 48 h. and 168 h ahead time frame during summer and winter seasons. From the simulation results, it is observed that the fuzzy expert system using the Kalman $lter-based algorithm gives faster convergence and more accurate prediction of a load time series.

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تاریخ انتشار 2003