The Using of Curve Fitting Prediction Optimized by Genetic Algorithms for Short-Term Load Forecasting

Faculty Science Year: 2012
Type of Publication: Article Pages: 6209-6215
Authors:
Journal: INTERNATIONAL REVIEW OF ELECTRICAL ENGINEERING-IREE PRAISE WORTHY PRIZE SRL Volume: 7
Research Area: Engineering ISSN ISI:000315313300010
Keywords : Load Forecasting, Curve Fitting Prediction, Genetic Algorithms, Short-Term    
Abstract:
This paper presents a new approach for short-term load forecasting. Curve fitting prediction and time series models are used for hourly loads forecasting of the week days. The curve fitting prediction technique combined with genetic algorithms is used for obtaining the optimum parameters of Gaussian model to obtain a minimum error between actual and forecasted load. A new technique for selecting the training vectors is introduced. The proposed model is simple, fast, and accurate. It is shown that the proposed approach provide very accurate hourly load forecast. Also it is shown that the proposed method can provide more accurate results. The mean percent relative error of the model is less than 1 \%. Copyright (C) 2012 Praise Worthy Prize S.r.l. - All rights reserved.
   
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