支持光伏功率估算的模块参数识别的改进型开普勒优化算法。

IF 3.4 3区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES Heliyon Pub Date : 2024-10-30 eCollection Date: 2024-11-15 DOI:10.1016/j.heliyon.2024.e39902
Ghareeb Moustafa, Hashim Alnami, Ahmed R Ginidi, Abdullah M Shaheen
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引用次数: 0

摘要

如今,识别太阳能系统中的光伏(PV)模块特性是优化光伏功率估算的一项重要任务。本文使用一种新颖先进的开普勒优化算法(KOA)对这一挑战任务进行了研究。本文采用了标准版 KOA,并对其进行了评估,以获得光伏三二极管模型(3DM)的九个参数,并考虑了三种不同的实用光伏模块。KOA 利用开普勒行星运动原理预测行星在任何特定时刻的位置和速度。然而,KOA 的成功率并不理想,其效率有待提高。因此,我们创建了改进的 KOA(IKOA),它采用了先进的 "局部逃逸操作器"(LEO)机制,从而改进了搜索过程,避开了局部最优。这种机制意味着,从迭代历程的初始阶段开始,每次迭代中都会有大约一半的解决方案会被利用方法激活。除标准 KOA 外,建议的 IKOA 还用于预测三种不同光伏组件的光伏参数,即 Photowatt PWP201、R.T.C France 和 STM6-40/36。最新算法的结果也与建议的 IKOA 进行了比较。模拟结果显示,建议的 IKOA 对三个模块的平均改进率分别为 62.27%、55.1% 和 32.12%。此外,建议的 IKOA 比以前报告的结果具有显著的优越性和鲁棒性。
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An improved Kepler optimization algorithm for module parameter identification supporting PV power estimation.

Identification of photovoltaic (PV) module characteristics in solar systems is a vital task, nowadays, for optimal PV power estimation. In this paper, this challenge task has been studied using a novel advanced Kepler optimization algorithm (KOA). The standard version of KOA is adopted and assessed for getting the nine parameters of the PV triple diode model (3DM) considering three different practical PV modules. Kepler's principles of planetary motion are used by KOA to forecast the location and velocity of planets at any particular moment. However, the success rate of the KOA is not compatible, and its efficiency needs to be enhanced. As a result, an Improved KOA (IKOA) is created by incorporating an advanced mechanism of Local Escaping Operator (LEO), resulting in improved process of searching with evading local optima. This mechanism means that the exploitation approach will activate with around half of the solutions for every iteration starting at the initial phase of the iteration journey. The suggested IKOA besides the standard KOA are developed for predicting PV parameters for three distinct PV modules which are Photowatt PWP201, R.T.C France and STM6-40/36. The results corresponding to the latest algorithms are also compared with the proposed IKOA about different published works. The simulation findings reveal that the suggested IKOA exhibits notable average improvement rates for the three modules of 62.27 %, 55.1 %, and 32.12 %, respectively. Furthermore, the suggested IKOA asserts significant superiority and robustness over previously reported results.

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来源期刊
Heliyon
Heliyon MULTIDISCIPLINARY SCIENCES-
CiteScore
4.50
自引率
2.50%
发文量
2793
期刊介绍: Heliyon is an all-science, open access journal that is part of the Cell Press family. Any paper reporting scientifically accurate and valuable research, which adheres to accepted ethical and scientific publishing standards, will be considered for publication. Our growing team of dedicated section editors, along with our in-house team, handle your paper and manage the publication process end-to-end, giving your research the editorial support it deserves.
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