Automatic fuzzy model identification for short-term load forecast

Authors
Citation
Hc. Wu et Cn. Lu, Automatic fuzzy model identification for short-term load forecast, IEE P-GEN T, 146(5), 1999, pp. 477-482
Citations number
15
Categorie Soggetti
Eletrical & Eletronics Engineeing
Journal title
IEE PROCEEDINGS-GENERATION TRANSMISSION AND DISTRIBUTION
ISSN journal
13502360 → ACNP
Volume
146
Issue
5
Year of publication
1999
Pages
477 - 482
Database
ISI
SICI code
1350-2360(199909)146:5<477:AFMIFS>2.0.ZU;2-J
Abstract
The conventional fuzzy modelling of short-term load forecasting has a drawb ack in that the fuzzy rules or the fuzzy membership functions are determine d by trial and error. An automatic model identification procedure is propos ed to construct the fuzzy model for short-term load forecast. An analysis o f variance is used to identify the influential variables of the system load . To set up the fuzzy rules, a cluster estimation method is adopted to dete rmine the number of rules and the membership functions of variables involve d in the premises of the rules. A recursive least squares method is then us ed to determine the coefficients in the concluding parts of the rules. None of these steps involves nonlinear optimisation and all steps have well bou nded computation time. This method was tested on the Taiwan Power Company's (Taipower) load data and the performance of the proposed method is compare d to those of Box-Jenkins (B J) transfer function and artificial neural net work (ANN) models.