Hybrid Grey Wolf Optimizer for Efficient Maximum Power Point Tracking to Improve Photovoltaic Efficiency

Nabeel S. Alsharafa, S. Shanmugam, Bojja Vani, Balaji P, Gokulraj S, Srinivas P.V.V.S
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Abstract

Today, the demand for Renewable Energy (RE) sources has increased a lot; out of all Renewable Energy Sources (RES), Solar Energy (SE) has emerged as a better solution due to its sustainability and abundance. However, energy sources from the sun directly depend on the efficiency of the photovoltaic (PV) systems employed, whose efficiency depends on the variability of solar irradiance and temperature. So harvesting the maximum output from PV panels requires optimized Maximum Power Point Tracking (MPPT) systems. The traditional MPPT systems that involved Perturb and Observe (P&O) and Incremental Conductance (IncCond) are the most widely used models. However, those models have limited efficiency due to rapidly changing environmental conditions and their tendency to oscillate around the Maximum PowerPoint (MPP). This paper proposes a Hybrid Heuristic Model (HHM) called the Hybrid Grey Wolf Optimizer (HGWO) Algorithm, which employs the Genetic Algorithm (GA) model for optimizing the Grey Wolf Optimizer (GWO) algorithm for effectively utilizing MPPT in PV systems. The simulation decreases fluctuation, boosting how the system responds to shifts in the surrounding atmosphere. The framework evolved through several experiments, and its ability to perform was assessed concerning the results of different models for the factors that were considered seriously throughout several solar radiation and temperature scenarios. During all of the tests, the recommended HGWO model scored more effectively than the other models. This succeeded by accurately following the MPP and boosting the power supply.
用于高效最大功率点跟踪以提高光伏效率的混合灰狼优化器
如今,对可再生能源(RE)的需求大幅增加;在所有可再生能源(RES)中,太阳能(SE)因其可持续性和丰富性而成为更好的解决方案。然而,来自太阳的能源直接取决于所采用的光伏(PV)系统的效率,其效率取决于太阳辐照度和温度的变化。因此,要从光伏电池板获取最大输出功率,就需要优化最大功率点跟踪(MPPT)系统。传统的 MPPT 系统包括扰动和观测(P&O)和增量传导(IncCond),是应用最广泛的模型。然而,由于环境条件瞬息万变,这些模型的效率有限,而且容易在最大功率点(MPP)附近振荡。本文提出了一种混合启发式模型(HHM),称为混合灰狼优化算法(HGWO),它采用遗传算法(GA)模型来优化灰狼优化算法(GWO),以有效利用光伏系统中的 MPPT。模拟减少了波动,提高了系统对周围大气变化的响应速度。该框架通过多次实验不断发展,其执行能力根据不同模型的结果进行评估,这些模型针对的是在多个太阳辐射和温度场景中被认真考虑的因素。在所有测试中,推荐的 HGWO 模型都比其他模型更有效。该模型通过准确跟踪 MPP 和提高供电能力取得了成功。
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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CiteScore
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