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多策略改进的龙格-库塔优化器及其在估计太阳能光伏模块模型参数方面的前景

Multi-strategy improved runge kutta optimizer and its promise to estimate the model parameters of solar photovoltaic modules.

作者信息

Ekinci Serdar, Rizk-Allah Rizk M, Izci Davut, Çelik Emre

机构信息

Department of Computer Engineering, Batman University, Batman, 72100, Turkey.

Basic Engineering Science Department, Faculty of Engineering, Menoufia University, Shebin El-Kom, 32511, Egypt.

出版信息

Heliyon. 2024 Oct 12;10(20):e39301. doi: 10.1016/j.heliyon.2024.e39301. eCollection 2024 Oct 30.

DOI:10.1016/j.heliyon.2024.e39301
PMID:39640812
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11620237/
Abstract

Harnessing the potential of solar photovoltaic (PV) technology relies heavily on accurately estimating the model parameters of PV cells/modules using real current-voltage (I-V) data. Achieving optimal parameter values is essential for the performance and efficiency of PV systems, necessitating the use of advanced optimization techniques. In our endeavor, we introduce a multi-strategy improvement approach for the Runge Kutta (RUN) optimizer, a cutting-edge tool used for tackling this critical task in both single-diode and double-diode PV unit models. By aligning experimental and model-based estimated data, our approach seeks to reduce errors and improve the accuracy of PV system performance. We conduct meticulous analyses of two compelling case studies and the CEC 2020 test suite to showcase the versatility and effectiveness of our improved RUN (IRUN) algorithm. The first case study involves a standard dataset derived from the well-known R.T.C. France silicon solar cell, where IRUN performs favorably compared to competing methods, demonstrating its effectiveness. IRUN effectively manages the complex task of defining model parameters for an industrial PV module situated at the Engineering Faculty of Düzce University in Turkey. The real-world I-V data, obtained under optimal conditions with a temperature of and solar radiance of , provide strong evidence of the practical applicability and real-world benefits of our innovative method. Additional analyses through three-diode and PV module models further confirm the efficacy of the IRUN. A mean absolute error of down to 6.5E-04 and root mean square error of down to 7.3668E-04 are achieved. Our approach provides a practical and efficient tool for improving the accuracy of PV systems, enhancing their performance when compared to existing methods.

摘要

充分利用太阳能光伏(PV)技术的潜力在很大程度上依赖于使用实际电流 - 电压(I - V)数据准确估计光伏电池/组件的模型参数。实现最佳参数值对于光伏系统的性能和效率至关重要,这就需要使用先进的优化技术。在我们的研究中,我们为龙格 - 库塔(RUN)优化器引入了一种多策略改进方法,RUN优化器是一种前沿工具,用于处理单二极管和双二极管光伏单元模型中的这一关键任务。通过使实验数据和基于模型的估计数据对齐,我们的方法旨在减少误差并提高光伏系统性能的准确性。我们对两个引人注目的案例研究和CEC 2020测试套件进行了细致分析,以展示我们改进后的RUN(IRUN)算法的通用性和有效性。第一个案例研究涉及一个源自著名的法国R.T.C.硅太阳能电池的标准数据集,在该数据集中,IRUN与其他竞争方法相比表现出色,证明了其有效性。IRUN有效地管理了为位于土耳其杜兹大学工程学院的一个工业光伏模块定义模型参数的复杂任务。在温度为 且太阳辐射为 的最佳条件下获得的实际I - V数据,有力地证明了我们创新方法的实际适用性和现实世界中的益处。通过三二极管和光伏组件模型进行的进一步分析进一步证实了IRUN的有效性。实现了低至6.5E - 04的平均绝对误差和低至7.3668E - 04的均方根误差。我们的方法为提高光伏系统的准确性提供了一种实用且高效的工具,与现有方法相比,提高了它们的性能。

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