Design Optimization Analysis Based On Demand Side Management of a Stand-alone Hybrid Power System Using Genetic Algorithm for Remote Rural Electrification

Arbogast Nyandwi, Anurag Gupta, Dinesh Kumar, A. Ved
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Abstract

The utilization of diesel generators to provide power to the load demand on remote rural areas in Tanzania has extensively spread which results in a shortage of energy facilities. With increments in oil cost and the stresses over an unnatural weather change, the hybridization of the accessible sustainable assets with diesel generator has become a powerful answer for increment framework reliability for supplying the load demand. This work proposes an Adaptive Genetic Algorithm (AGA) based new methodology for the ideal structure of hybrid energy framework involving sunlight based PV, diesel generator, and battery associated frameworks for providing the electrical energy in remote rural areas. The proposed framework utilizes the meteorological information of sun-powered illuminations and temperature gathered from the meteorological site of Tanzania and real-time data from HOMER programming created by the National Renewable Energy Laboratory (NREL). Improvement of the Hybrid Energy System (HES) incorporates minimization of net present cost (NPC), diminished emanations of harmful gases in terms of CO2, NOx, and SOx which makes the system more economical as well as reliable for the residential household applications for remote rural areas. The optimized results were accomplished by utilizing AGA, which utilizes the factors, such as PV cluster ratings in terms of irradiation and temperature data, the number of battery banks, diesel generator appraised power, fuel cost, framework initialization cost, operation, and maintenance cost and emission constraints are considered as the input information chromosomes for the calculation. A reasonable AGA program based demand-side management (DSM) was defined utilizing MATLAB tool kit with the target capacity of limiting the net present expense and emissions of gases which leads to maximization of system reliability of the proposed HES for electrifying the rural areas in independent applications.
基于遗传算法的偏远农村电气化单机混合动力系统需求侧管理设计优化分析
利用柴油发电机为坦桑尼亚偏远农村地区的负荷需求提供电力的做法已广泛普及,造成能源设施短缺。随着石油成本的增加和非自然天气变化带来的压力,可获得的可持续资产与柴油发电机的混合已成为增加框架可靠性以满足负载需求的有力答案。这项工作提出了一种基于自适应遗传算法(AGA)的新方法,用于混合能源框架的理想结构,包括太阳能光伏,柴油发电机和电池相关框架,用于在偏远农村地区提供电能。提出的框架利用了从坦桑尼亚气象站收集的太阳能照明和温度的气象信息,以及由国家可再生能源实验室(NREL)创建的HOMER程序的实时数据。混合能源系统(HES)的改进包括将净当前成本(NPC)最小化,减少二氧化碳、氮氧化物和硫氧化物等有害气体的排放,这使得该系统在偏远农村地区的住宅应用中更加经济可靠。利用遗传算法,将光伏集群辐照和温度等级数据、电池组数量、柴油发电机评估功率、燃料成本、框架初始化成本、运行和维护成本以及排放约束等因素作为输入信息染色体进行计算,从而获得优化结果。利用MATLAB工具定义了一种合理的基于需求侧管理(DSM)的AGA方案,其目标能力是限制净现值费用和气体排放,从而使所提出的农村地区电气化HES在独立应用中系统可靠性最大化。
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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