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An intelligent hybrid short-term load forecasting model for smart power grids

Version 2 2024-06-13, 11:21
Version 1 2018-03-02, 15:37
journal contribution
posted on 2024-06-13, 11:21 authored by MQ Raza, M Nadarajah, QH Duong, Z Baharudin
An accurate load forecasting is always particularly important for optimal planning and energy management in smart buildings and power systems. Millions of dollars can be saved annually by increasing a small degree of improvement in prediction accuracy. However, forecasting load demand accurately is a challenging task due to multiple factors such as meteorological and exogenous variables. This paper develops a novel load forecasting model, which is based on a feed-forward artificial neural network (ANN), to predict hourly load demand for various seasons of a year. In this model, a global best particle swarm optimization (GPSO) algorithm is applied as a new training technique to enhance the performance of ANN prediction. The fitness function is defined and a weight bias encoding/decoding scheme is presented to improve network training. Influential meteorological and exogenous variables along with correlated lagged load data are also empolyed as inputs in the presented model. The data of an ISO New England grid are used to validate the performance of the developed model. The results demonstrate that the proposed forecasting model can provide significanly better forecast accuracy, training performances and convergence characteristics than contemporary techniques found in the literature.

History

Journal

Sustainable Cities and Society

Volume

31

Pagination

264-275

Location

Amsterdam, The Netherlands

ISSN

2210-6707

eISSN

2210-6715

Language

eng

Publication classification

C Journal article, C1 Refereed article in a scholarly journal

Copyright notice

2016, Elsevier

Publisher

Elsevier