Mohamed Shazly A, Shaheen Abdullah M, Alqahtani Mohammed H, Al Faiya Badr M
Electrical Engineering Department, Faculty of Engineering, South Valley University, Qena, 83523, Egypt.
Department of Electrical Engineering, Faculty of Engineering, Suez University, P.O. Box: 43221, Suez, Egypt.
Sci Rep. 2025 Jul 1;15(1):21166. doi: 10.1038/s41598-025-04589-x.
Accurate parameter estimation in photovoltaic (PV) models is essential for optimizing solar energy systems, enhancing their efficiency, and ensuring precise performance predictions. This paper proposes a novel Improved version of Rime Metaheuristic Optimization (RMO) influenced by rime growth and combined with Quadratic Interpolation Learning (QIL) technique for the simulation and design of the triple-Diode Model (DM). This novel combination seeks to provide a more accurate perspective in the field of solar energy optimization by managing the complexities of PV module characterization with greater flexibility and resilience. By meticulously replicating the distinctive features of both processes, the hard-rime puncture and soft-rime searching are disclosed. The QIL technique improves the search process by selecting three different rime particles rather than relying solely on the current best solution. This selection allows for a more diverse set of candidate solutions, fostering better exploration and reducing premature convergence to local optima. By leveraging quadratic interpolation, QIL adjusts the solution updates in a flexible and nonlinear manner, enabling a more precise and adaptive parameter estimation process. QIL's capacity to adjust its quadratic function in a flexible and non-linear way makes it easier to navigate complex terrain. The novel IRMO as well as the original RMO are developed for predicting PV parameters for the triple-diode model (DM) of the three distinct PV modules which are Photowatt PWP201, STM6-40/36, and R.T.C France. In accordance with other published publications, the results of the suggested IRMO are also compared with those of contemporary algorithms. According to the results of the simulation, the upgraded IRMO shows significant average improvements of 49.56%, 62.56%, and 34.15% for the three modules, correspondingly.
光伏(PV)模型中的准确参数估计对于优化太阳能系统、提高其效率以及确保精确的性能预测至关重要。本文提出了一种受霜生长影响的新型改进版霜元启发式优化(RMO),并与二次插值学习(QIL)技术相结合,用于三二极管模型(DM)的仿真和设计。这种新颖的组合旨在通过更灵活、更有弹性地处理光伏模块特性的复杂性,在太阳能优化领域提供更准确的视角。通过精心复制这两个过程的独特特征,揭示了硬霜穿刺和软霜搜索。QIL技术通过选择三种不同的霜粒子而不是仅仅依赖当前的最佳解决方案来改进搜索过程。这种选择允许有更多样化的候选解决方案集,促进更好的探索并减少过早收敛到局部最优。通过利用二次插值,QIL以灵活且非线性的方式调整解决方案更新,实现更精确和自适应的参数估计过程。QIL以灵活且非线性的方式调整其二次函数的能力使其更容易在复杂地形中导航。新型IRMO以及原始RMO被开发用于预测三种不同光伏模块(即Photowatt PWP201、STM6 - 40/36和法国R.T.C)的三二极管模型(DM)的光伏参数。根据其他已发表的文献,还将所提出的IRMO的结果与当代算法的结果进行了比较。根据仿真结果,升级后的IRMO对于这三个模块分别显示出显著的平均改进,分别为49.56%、62.56%和34.15%。