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Simple moving average based capacity optimization for VRLA battery in PV power smoothing application using MCTLBO

机译:基于MCTLBO的PVLA平滑应用中VRLA电池的基于移动平均的简单容量优化

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Rapid depletion of fossil fuel reserves and alarming increase of environmental pollution shift the researchers’ attention towards renewable energy sources technologies like solar photovoltaic (PV). But solar radiation being affected by natural factors, result in uncertain power generation which leads to lower power system reliability. This paper proposes a smoothing strategy of generated PV power using gelled electrolyte valve regulated lead acid (VRLA) type battery energy storage system (BESS). The BESS stores the excess energy and releases it to meet the load demand in case of power surplus and deficit, respectively. The IEEE-RBTS is considered as the basic system for the study. But using large BESS incur humungous cost. Hence Multi-course teaching learning based multi-objective optimization technique (MCTLBO) is utilized to find out the optimal size of the PV panel, the BESS and the smoothening duration. Here, the objectives are to obtain minimum financial loss due to power outage as well as minimum BESS life cycle cost. MCTLBO is proposed here to improve the performance of the traditional teaching learning based optimization technique and it shows promising results. Factors affecting the power output of the PV panels are also considered here. The simulation is performed considering real time solar irradiance and temperature data of a city located on the eastern coast of India and the results obtained are both technically and economically viable in Indian context.
机译:化石燃料储备的迅速枯竭和环境污染的惊人增加使研究人员的注意力转向了可再生能源技术,例如太阳能光伏(PV)。但是太阳辐射受自然因素的影响,导致发电不确定,从而降低了电力系统的可靠性。本文提出了一种使用胶凝电解质阀调节铅酸(VRLA)型电池储能系统(BESS)的光伏发电平滑策略。 BESS会存储多余的能量,并释放它们以满足电力过剩和不足的情况下的负载需求。 IEEE-RBTS被认为是该研究的基本系统。但是使用大的BESS会产生巨大的成本。因此,利用基于多课程教学学习的多目标优化技术(MCTLBO)来找出PV面板的最佳尺寸,BESS和平滑持续时间。在这里,目标是获得因断电而产生的最小财务损失以及最低的BESS生命周期成本。本文提出了MCTLBO,以提高传统的基于教学学习的优化技术的性能,并显示出令人鼓舞的结果。这里还考虑了影响光伏面板功率输出的因素。该模拟是考虑到位于印度东海岸的一个城市的实时太阳辐照度和温度数据而进行的,所获得的结果在印度范围内在技术上和经济上都是可行的。

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