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Information Journal Paper

Title

Optimization Reservoir Operation Policy with Approach reduces probability of inflow Using Genetic Algorithm (The case study: Mahabad Reservoir Dam)

Pages

  34-43

Abstract

 In the management water resources science, optimal Operation of existing water systems, such as dams, every day is more important. Due to budget and operational water resources limitations and environmental problems, optimize operation of these systems are gradually replaced by new systems are constructed. Optimal Operation of water resources is a Complex, nonlinear, multi-constraint and multidimensional Optimization Problem, so to solve them robust Optimization techniques needs are needed. In this study Genetic algorithm Optimization has been used in operation of the Mahabad reservoir Dam in Northwest of Iran. The objective function is minimization of difference between downstream monthly demand and release. Early; Sensitivity analysis of GA model performed by considering of various parameters. Then the method was applied considering the reduce probability of inflow to dam for period 24months in the different scenarios. The results show that, the critical condition of drought could managed by the GA model, the optimized model could satisfy downstream watery demand.

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    APA: Copy

    SABER CHENARI, K., ABGHARI, H., ERFANIAN, M., GHADERI, M., SALMANI, H., & Asadi Nalivan, O.. (2016). Optimization Reservoir Operation Policy with Approach reduces probability of inflow Using Genetic Algorithm (The case study: Mahabad Reservoir Dam). WATERSHED MANAGEMENT RESEARCHES (PAJOUHESH-VA-SAZANDEGI), 29(111 ), 34-43. SID. https://sid.ir/paper/200719/en

    Vancouver: Copy

    SABER CHENARI K., ABGHARI H., ERFANIAN M., GHADERI M., SALMANI H., Asadi Nalivan O.. Optimization Reservoir Operation Policy with Approach reduces probability of inflow Using Genetic Algorithm (The case study: Mahabad Reservoir Dam). WATERSHED MANAGEMENT RESEARCHES (PAJOUHESH-VA-SAZANDEGI)[Internet]. 2016;29(111 ):34-43. Available from: https://sid.ir/paper/200719/en

    IEEE: Copy

    K. SABER CHENARI, H. ABGHARI, M. ERFANIAN, M. GHADERI, H. SALMANI, and O. Asadi Nalivan, “Optimization Reservoir Operation Policy with Approach reduces probability of inflow Using Genetic Algorithm (The case study: Mahabad Reservoir Dam),” WATERSHED MANAGEMENT RESEARCHES (PAJOUHESH-VA-SAZANDEGI), vol. 29, no. 111 , pp. 34–43, 2016, [Online]. Available: https://sid.ir/paper/200719/en

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