@inproceedings{2eae1450c059410fb2ebcbc62cc2d022,
title = "BMF fuzzy neural network with genetic algorithm for forecasting electric load",
abstract = "Electricity is widely applied in many aspects of modern life. Precise forecasting of electricity consumption may not only reduce operational and maintenance cost for power companies but also enhance the reliability of power supply systems, as well as avoid shortage of supply that causes damage and inconvenience to customers. In this paper, load forecasting is facilitated by a so-called BMF Fuzzy neural network, which features a structure adjusted by genetic algorithm. The purpose is to obtain better control points and weights, so as to ensure sound performance. Seven networks are constructed in correspondence with the seven different electrical loading models from Monday to Sunday. Results of the simulation reflect the forecasted loading in winter and summer months.",
keywords = "Fuzzy neural network, Genetic algorithm, Load forecasting",
author = "Lee, {Yuang Shung} and Kao, {Chia Hui} and Wang, {Wei Yen}",
year = "2005",
language = "English",
isbn = "0780392965",
series = "Proceedings of the International Conference on Power Electronics and Drive Systems",
pages = "1662--1666",
booktitle = "Proceedings of the International Conference on Power Electronics and Drive Systems",
note = "Sixth International Conference on Power Electronics and Drive Systems, PEDS 2005 ; Conference date: 28-11-2005 Through 01-12-2005",
}