Optimal design of hybrid renewable-energy microgrid system: a techno–economic–environment–social–reliability perspective

IF 2.9 4区 环境科学与生态学 Q3 ENERGY & FUELS
Clean Energy Pub Date : 2024-01-09 DOI:10.1093/ce/zkad069
Manoj Gupta, Annapurna Bhargava
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Abstract

The main objective of this paper is to select the optimal model of a hybrid renewable-energy microgrid (MG) system for a village in India. The MG comprises solar photovoltaic (PV) modules, a wind turbine generator, a biomass generator, a battery bank, a diesel generator and an electric vehicle. The optimal model selection is based on technical, economic, environmental, social and reliability parameters. A novel spoonbill swarm optimization algorithm is proposed to select the best hybrid MG system. The optimization results are compared with particle swarm optimization, the genetic algorithm and the grasshopper optimization algorithm. The number or size of components of the optimized MG system is 215 PV modules, 92 kW of wind turbine generation, 25 kW of biomass generation, 267 batteries, 22 kW of electric vehicles and 30 kW of diesel generation. The optimized system was selected based on technical factors such as renewable dispersion (93.5%), the duty factor (5.85) and excess energy (15 975 kWh/year) as well as economic considerations including the net present cost (Rs. 34 686 622) and the cost of energy (9.3 Rs./kWh). Furthermore, environmental factors such as carbon emissions (396 348 kg/year) and atmospheric particulate matter (22.686 kg/year); social factors such as the human progress index (0.68411), the employment generation factor (0.0389) and local employment generation (15.64643); and reliability parameters including loss of power supply probability (0.01%) and availability index (99.99%) were considered during the selection process. The spoonbill swarm optimization algorithm has reduced the convergence time by 1.2 times and decreased the number of iterations by 0.83 times compared with other algorithms. The performance of the MG system is validated in the MATLAB® environment. The results show that the MG system is the optimal system considering technical, economic, environmental, social and reliability parameters. Additionally, the spoonbill swarm optimization algorithm is found to be more efficient than the other algorithms in terms of iteration time and convergence time.
可再生能源混合微电网系统的优化设计:技术-经济-环境-社会-可靠性视角
本文的主要目的是为印度的一个村庄选择混合可再生能源微电网(MG)系统的最佳模型。微电网由太阳能光伏组件、风力涡轮发电机、生物质发电机、蓄电池组、柴油发电机和电动汽车组成。优化模型的选择基于技术、经济、环境、社会和可靠性参数。为选择最佳混合 MG 系统,提出了一种新颖的琵鹭群优化算法。优化结果与粒子群优化、遗传算法和蚱蜢优化算法进行了比较。优化后的 MG 系统的组件数量或规模为 215 个光伏组件、92 kW 风力涡轮机发电、25 kW 生物质发电、267 个电池、22 kW 电动汽车和 30 kW 柴油发电。优化系统的选择基于技术因素,如可再生分布(93.5%)、占空比(5.85)和过剩能源(15 975 千瓦时/年),以及经济因素,包括净现值成本(34 686 622 卢比)和能源成本(9.3 卢比/千瓦时)。此外,在选择过程中还考虑了环境因素,如碳排放量(396 348 千克/年)和大气颗粒物(22.686 千克/年);社会因素,如人类进步指数(0.68411)、创造就业因子(0.0389)和当地创造就业(15.64643);以及可靠性参数,包括供电损失概率(0.01%)和可用性指数(99.99%)。与其他算法相比,琵鹭群优化算法收敛时间缩短了 1.2 倍,迭代次数减少了 0.83 倍。在 MATLAB® 环境中对 MG 系统的性能进行了验证。结果表明,考虑到技术、经济、环境、社会和可靠性参数,MG 系统是最佳系统。此外,从迭代时间和收敛时间来看,琵鹭群优化算法比其他算法更有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Clean Energy
Clean Energy Environmental Science-Management, Monitoring, Policy and Law
CiteScore
4.00
自引率
13.00%
发文量
55
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