Application of the Grasshopper Optimization Algorithm (GOA) to the Optimal Operation of Hydropower Reservoir Systems Under Climate Change

被引:0
作者
Kobra Rahmati
Parisa-Sadat Ashofteh
Hugo A. Loáiciga
机构
[1] University of Qom,Department of Civil Engineering
[2] University of California,Department of Geography
来源
Water Resources Management | 2021年 / 35卷
关键词
Grasshopper optimization algorithm; Climate change; Hydropower multi-reservoir system; Particle swarm algorithm;
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中图分类号
学科分类号
摘要
Hydropower is a low-carbon energy source, which may be adversely impacted by climate change. This work applies the Grasshopper Optimization Algorithm (GOA) to optimize hydropower multi-reservoir systems. Performance of GOA is compared with that of particle swarm optimization (PSO). GOA is applied to hydropower, three-reservoir system (Seymareh, Sazbon, and Karkheh), located in the Karkheh basin (Iran) for baseline period 1976–2005 and two future periods (2040–2069) and (2070–2099) under greenhouse gases pathway scenarios RCP2.6, RCP4.5, and RCP8.5. GOA minimizes the shortage of hydropower energy generation. Results from GOA optimization of Seymareh reservoir show that average objective function in baseline is 85 and minimum value of average objective function in 2040–2069 would be under RCP2.6 (equal to 0.278). Optimization of Seymareh-reservoir based on PSO shows that average value of objective function in baseline is less (that is, better) than value obtained with GOA (10.953). Optimization results for two-reservoir system (Sazbon and Karkheh) based on GOA optimization show that objective function in baseline is 5.44 times corresponding value obtained with PSO, standard deviation is 2.3 times that calculated with PSO, and run-time is 1.5 times PSO’s. Concerning three-reservoir systems it was determined that objective function based on PSO had the best value (the lowest energy deficit), especially in future. GOA converges close to the best objective function, especially in future-periods optimization, and convergence to solutions is more stable than PSO’s. A comparison of performance of GOA and PSO indicates PSO converges faster to optimal solution, and produces better objective function than GOA.
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页码:4325 / 4348
页数:23
相关论文
共 75 条
[1]  
Ahmadianfar I(2017)Extracting optimal policies of hydropower multi-reservoir systems utilizing enhanced differential evolution algorithm Water Resour Manag 31 4375-4397
[2]  
Samadi-Koucheksaraee A(2019)Optimizing multiple linear rules for multi-reservoir hydropower systems using an optimization method with an adaptation strategy Water Resour Manag 33 4265-4286
[3]  
Bozorg-Haddad O(2021)Application of bi-objective genetic programming (BO-GP) for optimizing irrigation rules using two reservoir performance criteria Int J River Basin Manag 147 04021054-751
[4]  
Ahmadianfar I(2021)Simulation-optimization of reservoir water quality under climate change J Water Resour Plan Manag 142 04015034-897
[5]  
Bozorg-Haddad O(2016)Biogeography-based optimization algorithm for optimal operation of reservoir systems J Water Resour Plan Manag 19 734-12850
[6]  
Chu X(2017)Extended multi-objective firefly algorithm for hydropower energy generation J Hydroinform 160 886-3769
[7]  
Ashofteh P-S(2018)Hydropower plant operation rules optimization response to climate change Energy 77 453-18
[8]  
Bozorg-Haddad O(2018)Calculation of multi-objective optimal tradeoffs between environmental flows and hydropower generation Environ Earth Sci 27 12842-47
[9]  
Loáiciga HA(2020)Multi-objective optimized scheduling model for hydropower reservoir based on improved particle swarm optimization algorithm Environ Sci Pollut Res 208 106461-3934
[10]  
Azadi F(2020)A modified sine cosine algorithm for accurate global optimization of numerical functions and multiple hydropower reservoirs operation Knowl-Based Syst 142 04016029-332