Dam and Reservoir System Management based on Genetic Algorithms | ||
Anbar Journal of Engineering Sciences | ||
Article 5, Volume 13, Issue 1, May 2022, Pages 46-52 PDF (867.38 K) | ||
Document Type: Research Paper | ||
DOI: 10.37649/aengs.2022.175879 | ||
Author | ||
Mohammed Lateef Ahmed* | ||
Dams and Water Resources Engineering Department, College of Engineering, University of Anbar, Ramadi, Iraq. | ||
Abstract | ||
Indeed, there are many hydrology variables influence on the operating of dam and reservoir system. Thus, modelling of dam operation is a complicated issue due to the nonlinearity of such hydrological parameters. Hence, the identification of a modern model with a high capacity to cope with the operation of the dam is extremely important. The current research introduced good an optimization algorithm, namely Genetic Algorithm (GA) to find best operation rules. The main aim of the suggested algorithm is to minimize the difference between irrigation demand and water release value. The developed algorithm was applied to find operation rules for Timah Tasoh Dam, Malaysia. This research used significant evaluation indexes to examine the algorithms' performance. The results indicated that the GA method achieved low Vulnerability, high Resilience and Reliability. It has been demonstrated that the GA method will be a promising tool in dealing with the problem of dam operation. | ||
Keywords | ||
Dam Operation; Grey Wolf Optimization; Operation Policies | ||
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