Long term energy demand forecasting based on hybrid, optimization: Comparative study
The objective of this research is to develop a long term energy demand forecasting model that used hybrid optimization.To accomplish this goal, a hybrid algorithm that combined a genetic algorithm and a local search algorithm method has been developed to overcome premature convergence.Model performa...
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my.uum.repo.69582013-01-16T02:31:48Z http://repo.uum.edu.my/6958/ Long term energy demand forecasting based on hybrid, optimization: Comparative study Musa, Wahab Ku-Mahamud, Ku Ruhana Yasin, Azman QA76 Computer software The objective of this research is to develop a long term energy demand forecasting model that used hybrid optimization.To accomplish this goal, a hybrid algorithm that combined a genetic algorithm and a local search algorithm method has been developed to overcome premature convergence.Model performances of hybrid algorithm were compared with former single algorithm model in estimating parameter values of an objective function to measure the goodness-of-fit between the observed data and simulated results.Averages error between two models was adopt to select the proper model for future projection of energy demand. JSCSE 2012-08-25 Article PeerReviewed application/pdf en http://repo.uum.edu.my/6958/1/J3_-_IJSCSE.pdf Musa, Wahab and Ku-Mahamud, Ku Ruhana and Yasin, Azman (2012) Long term energy demand forecasting based on hybrid, optimization: Comparative study. International Journal of Soft Computing and Software Engineering (JSCSE), 2 (8). p. 28. ISSN 2251-7545 http://www.jscse.com |
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QA76 Computer software Musa, Wahab Ku-Mahamud, Ku Ruhana Yasin, Azman Long term energy demand forecasting based on hybrid, optimization: Comparative study |
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The objective of this research is to develop a long term energy demand forecasting model that used hybrid optimization.To accomplish this goal, a hybrid algorithm that combined a genetic algorithm and a local search algorithm method has been developed to overcome premature convergence.Model performances of hybrid algorithm were compared with former single algorithm model in estimating parameter values of an objective function to measure the goodness-of-fit between the observed data and simulated results.Averages error between two models was adopt to select the proper model for future projection of energy demand. |
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Article |
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Musa, Wahab Ku-Mahamud, Ku Ruhana Yasin, Azman |
author_facet |
Musa, Wahab Ku-Mahamud, Ku Ruhana Yasin, Azman |
author_sort |
Musa, Wahab |
title |
Long term energy demand forecasting based on hybrid, optimization: Comparative study |
title_short |
Long term energy demand forecasting based on hybrid, optimization: Comparative study |
title_full |
Long term energy demand forecasting based on hybrid, optimization: Comparative study |
title_fullStr |
Long term energy demand forecasting based on hybrid, optimization: Comparative study |
title_full_unstemmed |
Long term energy demand forecasting based on hybrid, optimization: Comparative study |
title_sort |
long term energy demand forecasting based on hybrid, optimization: comparative study |
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JSCSE |
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2012 |
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http://repo.uum.edu.my/6958/1/J3_-_IJSCSE.pdf http://repo.uum.edu.my/6958/ http://www.jscse.com |
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