Optimization of Multipurpose Reservoir Operation with Application Particle Swarm Optimization Algorithm

Optimal operation of multipurpose reservoirs is one of the complex and sometimes nonlinear problems in the field of multi-objective optimization. Evolutionary algorithms are optimization tools that search decision space using simulation of natural biological evolution and present a set of points as...

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Bibliographic Details
Main Authors: Elahe Fallah Mehdipour, Omid Bozorg Haddad
Format: Article
Language:English
Published: Water and Wastewater Consulting Engineers Research Development 2012-12-01
Series:آب و فاضلاب
Subjects:
Online Access:http://www.wwjournal.ir/article_2469_7c5f16c9e1181d8fc147abe3a7ade94e.pdf
Description
Summary:Optimal operation of multipurpose reservoirs is one of the complex and sometimes nonlinear problems in the field of multi-objective optimization. Evolutionary algorithms are optimization tools that search decision space using simulation of natural biological evolution and present a set of points as the optimum solutions of problem. In this research, application of multi-objective particle swarm optimization (MOPSO) in optimal operation of Bazoft reservoir with different objectives, including generating hydropower energy, supplying downstream demands (drinking, industry and agriculture), recreation and flood control have been considered. In this regard, solution sets of the MOPSO algorithm in bi-combination of objectives and compromise programming (CP) using different weighting and power coefficients have been first compared that the MOPSO algorithm in all combinations of objectives is more capable than the CP to find solution with appropriate distribution and these solutions have dominated the CP solutions. Then, ending points of solution set from the MOPSO algorithm and nonlinear programming (NLP) results have been compared. Results showed that the MOPSO algorithm with 0.3 percent difference from the NLP results has more capability to present optimum solutions in the ending points of solution set.
ISSN:1024-5936
2383-0905