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A hybrid metaheuritic technique developed for hourly load forecasting

Version 2 2024-06-13, 09:52
Version 1 2016-07-06, 10:18
journal contribution
posted on 2024-06-13, 09:52 authored by M Mahrami, R Rahmani, M Seyedmahmoudian, R Mashayekhi, H Karimi, E Hosseini
Electricity load forecasting has become one of the most functioning tools in energy efficiency and load management and utility companies which has been made very complex due to deregulation. Due to the importance of providing a secure and economic electricty for the consumers, having a reliable and robust enough forecast engine in short-term load management is very needful. Fuzzy inference system is one of primal branches of Artificial Intelligence techniques which has been widely used for different applications of decision making in complex systems. This paper aims to develop a Fuzzy inference system as a main forecast engine for Short term Load Forecasting (STLF) of a city in Iran. However, the optimization of this platform for this special case remains a basic problem. Hence, to address this issue, the Radial Movement Optimization (RMO) technique is proposed to optimize the whole Fuzzy platform. To support this idea, the accuracy of the proposed model is analyzed using MAPE index and an average error of 1.38% is obtained for the forecast load demand which represents the reliability of the proposed method. Finally, results achieved by this method, demonstrate that an adaptive two-stage hybrid system consisting of Fuzzy & RMO can be an accurate and robust enough choice for STLF problems.

History

Journal

Complexity

Volume

21

Pagination

521-532

Location

Chichester, Eng.

ISSN

1076-2787

eISSN

1099-0526

Language

eng

Publication classification

C Journal article, C1 Refereed article in a scholarly journal

Copyright notice

2016, Wiley Periodicals

Issue

S1

Publisher

John Wiley & Sons