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首页> 外文期刊>Environmental progress >Optimal Sizing of a Hybrid Solar Energy System Using Particle Swarm Optimization Algorithm Based on Cost and Pollution Criteria
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Optimal Sizing of a Hybrid Solar Energy System Using Particle Swarm Optimization Algorithm Based on Cost and Pollution Criteria

机译:基于成本和污染准则的粒子群优化算法的混合太阳能系统最优尺寸

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摘要

Sizing of hybrid energy systems is primarily determined based on either cost criterion or produced pollution criterion. Optimization of a hybrid energy system for a typical house in Tunisia is investigated using particle swarm optimization (PSO). To the best of our knowledge, PSO algorithm has not been used for PV/batteries bank/diesel generator energy system optimization. Different parametersnamely, cost, required maintenance of the parts, lifetime of each components, and pollution produced by the diesel generatorare investigated simultaneously as objectives for optimal design of the hybrid system. Different designs are considered for the hybrid system where CO2 emission is measured and system total cost is calculated. It is crucial to choose proper ranges of the parameters used in the PSO algorithm to achieve stable and global optimal solution. It is found that the cost of the system optimized using minimum pollution criterion has about 0.3% extra overall cost compared to the system optimized using minimum overall system cost criterion. New and simple method is proposed in this work to select the range of the PV panels' number to achieve optimal solution of PSO algorithm. This method is based on calculating the number of PV panels under different conditions of solar radiation and load values. The considered conditions are maximum solar radiation, 50% of maximum radiation, and the radiation at 9:00 AM for maximum and minimum load values. The choice of these conditions was arbitrary and contemplated to cover a wide range of different possible solar radiation in the year. (c) 2018 American Institute of Chemical Engineers Environ Prog, 38:e13055, 2019
机译:混合能源系统的规模主要取决于成本标准或产生的污染标准。使用粒子群优化(PSO)研究了突尼斯典型房屋的混合能源系统的优化。据我们所知,PSO算法尚未用于光伏/电池组/柴油发电机能源系统优化。作为混合动力系统最佳设计的目标,同时研究了不同的参数,即成本,零件所需的维护,每个零件的寿命以及柴油发电机产生的污染。对于混合系统,要考虑不同的设计,在该系统中要测量CO2排放并计算系统总成本。选择在PSO算法中使用的参数的适当范围对于实现稳定且全局的最佳解决方案至关重要。发现使用最小污染标准优化的系统的成本与使用最小总体系统成本标准优化的系统相比,总成本高出约0.3%。提出了一种新的,简单的方法来选择光伏电池板的数量范围,以实现PSO算法的最优解。该方法基于计算在不同太阳辐射和负载值条件下的光伏面板数量。考虑的条件是最大太阳辐射,最大辐射的50%,以及最大和最小负载值在9:00 AM的辐射。这些条件的选择是任意的,可以考虑覆盖一年中各种不同的太阳辐射。 (c)2018年美国化学工程师学会Environ Prog,38:e13055,2019

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