Optimized Photovoltaic Energy System for Tier 2 Electricity Access

Sahin Gullu, I. Batarseh, M. Salameh, S. Al-Hallaj
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Abstract

In the world, there are more than one billion people who have not accessed to electricity. IEEE Empower a Billion Lives has been initiated. The goal is to provide at least Tier 2 electricity access that is defined by ESMAP (Energy Sector Assistance Program). For a solution, the Solar Off-grid System (SOS) is introduced in this paper. It is the system that has a microinverter and lithium-ion battery pack integrated at the back of photovoltaic (PV) panel. The optimum PV panel power and battery capacity are simulated by considering eight power flow scenarios. As a result, the optimum size for PV panel is 60W and the battery capacity is SOWh. Then, the state-of-charge (SoC) estimation method is explained based on the battery modeling, and its parameters are experimentally extracted. After that, a thermal management strategy is discussed and decided to be PCM (Phase Change Material) by considering a PV temperature model and a battery thermal model. Thus, this paper presents an optimized PV energy system for Tier 2 electricity access by researching its feasibility by adding theoretical and experimental results to make the system safe and cost effective.
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面向二级电力接入的优化光伏能源系统
在世界上,有超过10亿人没有用上电。IEEE Empower a Billion Lives已经启动。目标是至少提供ESMAP(能源部门援助计划)定义的第2级电力接入。为此,本文介绍了太阳能离网系统(SOS)。该系统将微型逆变器和锂离子电池组集成在光伏(PV)面板的背面。考虑八种潮流情况,对光伏板的最佳功率和电池容量进行了仿真。因此,光伏板的最佳尺寸为60W,电池容量为SOWh。在此基础上,阐述了基于电池模型的荷电状态估计方法,并对其参数进行了实验提取。在此之后,通过考虑PV温度模型和电池热模型,讨论并确定了相变材料(PCM)的热管理策略。因此,本文提出了一种优化的二级电力接入光伏能源系统,并结合理论和实验结果对其可行性进行了研究,以保证系统的安全性和成本效益。
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