Performance improvement of PV systems during dynamic partial shading conditions using optimization algorithms

Keerthi Sonam Soma, B. R., Karuppiah N.
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Abstract

PV power plants encounter varying levels of irradiance, temperature fluctuations, and partial shading because of the differences in sunlight conditions. Partial shading can cause an increase in the power loss, leading to a reduction in efficiency. Maximum Power Point Tracking (MPPT) is of utmost importance in the functioning of photovoltaic (PV) systems for electricity generation because it is indispensable for maximizing power extraction from PV modules, thereby increasing the overall power output. In situations where partial shading is present, the utilization of MPPT algorithms to achieve maximum power output becomes complex because of the existence of multiple distinct peak power points, each having a unique local optimum. To overcome this issue, a method is proposed that uses Darts Game Optimization (DGO), a game-based optimization process, to efficiently determine and extract the maximum power from various local optimal peaks. A population-based optimization method known as the Darts Game Optimization algorithm exists. In this approach, the optimization process begins by creating a population of random players. Then, the algorithm iteratively updates and improves the population to search for the best player or solution. In this study, the DGO algorithm was applied to the MPPT process for voltage optimization in the PV procedure. The DC-DC converter is utilized to capture the maximum available power, and the findings demonstrate that the DGO algorithm efficiently identifies the global maximum, resulting in accelerated convergence, reduced settling time, and minimized power oscillation. Through simulations, the feasibility and effectiveness of the DGO centered MPPT approach was confirmed and compared with MPPT algorithms relying on perturb and observe (P&O) and Particle Swarm Optimization (PSO). The simulation results offer compelling evidence that the DGO algorithm, as proposed in this study, proficiently traces the global maximum, thereby substantiating its practicality and efficiency.
利用优化算法提高光伏系统在动态部分遮阳条件下的性能
由于日照条件不同,光伏电站会遇到不同程度的辐照、温度波动和部分遮阳。部分遮挡会导致功率损耗增加,从而降低效率。最大功率点跟踪(MPPT)对于光伏(PV)发电系统的运行至关重要,因为它是最大限度地从光伏组件中提取电能,从而提高整体功率输出所不可或缺的。在存在部分遮挡的情况下,利用 MPPT 算法实现最大功率输出变得复杂,因为存在多个不同的峰值功率点,每个峰值功率点都有一个独特的局部最优点。为了解决这个问题,我们提出了一种方法,利用基于游戏的优化过程 Darts Game Optimization (DGO),有效地确定并从各种局部最优峰值中提取最大功率。目前已有一种基于群体的优化方法,即飞镖游戏优化算法。在这种方法中,优化过程首先是创建一个随机玩家群体。然后,算法对群体进行迭代更新和改进,以寻找最佳玩家或解决方案。在本研究中,DGO 算法被应用于光伏程序中的电压优化 MPPT 过程。研究结果表明,DGO 算法能有效识别全局最大值,从而加快收敛速度,减少沉淀时间,并将功率振荡降至最低。通过仿真,证实了以 DGO 为中心的 MPPT 方法的可行性和有效性,并将其与依靠扰动和观测(P&O)和粒子群优化(PSO)的 MPPT 算法进行了比较。仿真结果令人信服地证明,本研究提出的 DGO 算法能有效追踪全局最大值,从而证实了其实用性和高效性。
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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