Economic optimization of hybrid renewable energy resources for rural electrification

I. Adebayo, Yanxia Sun, Umar Awal
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Abstract

In rural areas, grid expansions and diesel generators are commonly used to provide electricity, but their high maintenance costs and CO2 emissions make renewable energy sources (RES) a more practical alternative. Traditional methods such as analytical, statistical, and numerical-based techniques are inadequate for designing an energy-efficient RES. Therefore, this study utilized the bat algorithm (BA) to optimize the use of hybrid RES for rural electrification. A feasibility study was conducted in the village of Kalema to assess energy consumption, and a diesel-only system was modeled to serve the entire community. The BA was used to determine the optimal size and cost-effectiveness of the hybrid RES, with MATLAB R (2021a) utilized for simulation. The BA's performance was compared with diesel only and GA using cost of energy (COE) and CO2 emissions as metrics. Diesel generators only produced a COE of $6,562,000 and 1679.6 lb/hr of CO2 emissions. COE with BA was $356,9781.37 (a 45.6% reduction) and CO2 emissions were 635.29 lb/hr (a 62.2% drop). Genetic algorithm (GA) resulted in $364,3122.46 COE and 652.69 lb/hr CO2 emissions, indicating 61.1% and 44.5% decreases, respectively. BA significantly reduced COE and CO2 emissions over GA, according to the analysis.
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混合可再生能源资源用于农村电气化的经济优化
在农村地区,通常使用电网扩建和柴油发电机供电,但其高昂的维护成本和二氧化碳排放量使可再生能源(RES)成为更实用的替代品。传统方法,如分析、统计和基于数值的技术,不足以设计出节能的可再生能源。因此,本研究利用蝙蝠算法(BA)来优化混合可再生能源在农村电气化中的应用。在卡莱马村进行了一项可行性研究,以评估能源消耗,并模拟了一个纯柴油系统,为整个社区提供服务。BA 用于确定混合可再生能源系统的最佳规模和成本效益,并使用 MATLAB R (2021a) 进行模拟。以能源成本(COE)和二氧化碳排放量为指标,对 BA 的性能与柴油发电机和 GA 进行了比较。仅柴油发电机产生的 COE 为 656.2 万美元,二氧化碳排放量为 1679.6 磅/小时。使用 BA 的 COE 为 3569781.37 美元(减少 45.6%),二氧化碳排放量为 635.29 磅/小时(减少 62.2%)。遗传算法(GA)的 COE 为 364,3122.46 美元,二氧化碳排放量为 652.69 磅/小时,分别减少了 61.1%和 44.5%。根据分析,BA 比 GA 大幅降低了 COE 和 CO2 排放量。
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