基于电操作条件依赖性的光伏组件热模型增强

IF 6.3 2区 材料科学 Q2 ENERGY & FUELS
Giuseppe Marco Tina , Amr Osama , Antonio Gagliano , Gaetano Mannino , Francisco José Munoz-Rodríguez , Gabino Jiménez-Castillo
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引用次数: 0

摘要

光伏发电系统的日益普及对电力系统的可靠性和充分性提出了挑战。为了支持电网的稳定性,光伏系统必须发展到能够提供频率调节和储备服务——不仅包括下行频率储备,还包括上行储备。后一种服务要求光伏模块在远离其最大功率点(MPP)的情况下运行,这就需要加强光伏模块的热行为评估。因此,越来越需要考虑电气操作条件的先进热模型,以确保在所有操作场景下准确预测温度。虽然传统的热模型主要依赖于气象输入,但它们通常忽略了电力运行状态(EOS)。忽略这个问题可能会导致严重的预测误差-高达5-7°c -特别是在远离MPP的操作期间。通过将MPP时测量电流与计算电流的比值作为额外输入,提出了一个包含EOS依赖性的增强热模型。采用遗传算法、粒子群算法、非线性最小二乘法和多项式回归对Faiman和Sandia两种模型进行了优化。优化使用三个相同的光伏系统在参考EOS条件下运行:开路、短路和MPP。结果表明,集成了eos的模型显著提高了温度预测精度。EOS敏感模型的预测误差低至0.1 - 1.13%,R2值高于0.91,优于传统模型的2 - 29%的预测误差。这些发现支持了在现代光伏系统设计和运行中对eos敏感的热建模的必要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhanced thermal models of photovoltaic modules by electrical operating conditions dependency
The increasing penetration of photovoltaic (PV) systems poses challenges to the reliability and adequacy of power systems. To support grid stability, PV systems must evolve to be capable of providing frequency regulation and reserve services—including not only down frequency reserve but also up reserve. This latter service requires PV modules to operate away from their maximum power point (MPP), a condition that requires an enhancement in PV module thermal behavior assessment. Consequently, there is a growing need for advanced thermal models that account for electrical operating conditions to ensure accurate temperature prediction under all operating scenarios. While traditional thermal models primarily depend on meteorological inputs, they typically neglect the Electrical Operating Status (EOS). Overlooking this issue can lead to significant prediction errors—up to 5–7 °C—especially during operation away from MPP. The proposed investigation developed an enhanced thermal model incorporating EOS dependency by including the ratio of measured current to the calculated current at MPP as an additional input. Two cases of the Faiman and Sandia models were optimized using Genetic Algorithm, Particle Swarm Optimization, non-linear least squares, and polynomial regression. Optimization is performed using three identical PV systems operating under reference EOS conditions: open circuit, short circuit, and MPP. Results demonstrate that EOS-integrated models significantly improve temperature prediction accuracy. The EOS sensitive models achieved prediction errors as low as 0.1–1.13 % and R2 values above 0.91, outperforming traditional models that exhibited errors from 2 to 29 %. These findings support the need for EOS-aware thermal modelling in modern PV system design and operation.
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来源期刊
Solar Energy Materials and Solar Cells
Solar Energy Materials and Solar Cells 工程技术-材料科学:综合
CiteScore
12.60
自引率
11.60%
发文量
513
审稿时长
47 days
期刊介绍: Solar Energy Materials & Solar Cells is intended as a vehicle for the dissemination of research results on materials science and technology related to photovoltaic, photothermal and photoelectrochemical solar energy conversion. Materials science is taken in the broadest possible sense and encompasses physics, chemistry, optics, materials fabrication and analysis for all types of materials.
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