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Optimal Battery Sizing of a Grid-Connected Residential Photovoltaic System for Cost Minimization using PSO Algorithm

机译:使用PSO算法的并网住宅光伏系统的最佳电池尺寸以最小化成本

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This paper proposes a new optimization technique that uses Particle Swarm Optimization (PSO) in residential grid-connected photovoltaic systems. The optimization technique targets the sizing of the battery storage system. With the liberation of power systems, the residential grid-connected photovoltaic system can supply power to the grid during peak hours or charge the battery during non-peak hours for later domestic use or for selling back to the grid during peak hours. However, this can only be achieved when the battery energy system in the residential photovoltaic system is optimized. The developed PSO algorithm aims at optimizing the battery capacity that will lower the operation cost of the system. The computational efficiency of the developed algorithm is demonstrated using real PV data from Strathmore University. A comparative study of a PV system with and without battery energy storage is carried out and the simulation results demonstrate that PV system with battery is more efficient when optimized with PSO.
机译:本文提出了一种新的优化技术,该技术在住宅并网光伏系统中使用粒子群优化(PSO)。优化技术的目标是电池存储系统的大小。随着电力系统的解放,与居民并网的光伏系统可以在高峰时段为电网供电,或者在非高峰时段为电池充电,供以后家庭使用或在高峰时段回卖给电网。但是,这只有在优化住宅光伏系统中的电池能量系统时才能实现。研发的PSO算法旨在优化电池容量,从而降低系统的运行成本。使用Strathmore University的真实PV数据证明了开发算法的计算效率。进行了带和不带电池储能的光伏系统的比较研究,仿真结果表明,带PSO的带电池的光伏系统效率更高。

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