Leveraging PSO algorithms to achieve optimal stand-alone microgrid performance with a focus on battery lifetime

Vicky Andria Kusuma, Aji Akbar Firdaus, S. S. Suprapto, D. F. U. Putra, Y. Prasetyo, Firillia Filliana
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Abstract

This research endeavors to increase the lifespan of a battery utilized in a standalone microgrid system, a self-sufficient electrical system that consists of multiple generators that are not connected to the main power grid. This type of system is ideal for use in remote locations or areas where the grid connection is not possible. The sources of energy for this system include photovoltaic panels, wind turbines, diesel generators, and batteries. The state of charge (SOC) of the battery is used to determine the amount of energy stored in it. The particle swarm optimization (PSO) method is applied to minimize energy generation costs and maximize battery life. The results show that battery optimization can decrease energy generation costs from Rp 5,271,523.03 ($338.64 in USD) to Rp 13,064,979.20 ($839.30 in USD) while increasing the battery's lifespan by 0.42%, with losses of 7.22 kW and 433.29 kVAR, and also a life loss cost of Rp 5,499/$0.35.
利用PSO算法实现最佳的独立微电网性能,重点关注电池寿命
这项研究致力于增加独立微电网系统中使用的电池的寿命,微电网是一种自给自足的电力系统,由多个不连接到主电网的发电机组成。这种类型的系统非常适合在偏远地区或电网连接不可能的地区使用。该系统的能源来源包括光伏板、风力涡轮机、柴油发电机和电池。电池的充电状态(SOC)用于确定其存储的能量量。采用粒子群优化(PSO)方法实现发电成本最小化和电池寿命最大化。结果表明,电池优化可以将发电成本从5,271,523.03卢比(338.64美元)降低到13,064,979.20卢比(839.30美元),同时将电池的寿命延长0.42%,损失为7.22 kW和433.29 kVAR,寿命损失成本为5,499卢比/ 0.35美元。
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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