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Grey-Box Identification for Photovoltaic Power Systems Via Particle-Swarm Algorithm

机译:基于粒子群算法的光伏发电系统灰盒识别

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摘要

Amongst renewable generators, photovoltaics (PV) are becoming more popular as the appropriate low cost solution to meet increasing energy demands. However, the integration of renewable energy sources to the electricity grid possesses many challenges. The intermittency of these non-conventional sources often requires accurate forecast, planning and optimal management. Many attempts have been made to tackle these challenges; nonetheless, existing methods fail to accurately capture the underlying characteristics of the system. There exists scope to improve present PV yield forecasting models and methods. This paper explores the use of apriori knowledge of PV systems to build clear box models and identify uncertain parameters via heuristic algorithms. The model is further enhanced by incorporating black box models to account for unmodeled uncertainties in a novel grey-box forecasting and modeling of PV systems.
机译:在可再生发电机中,光伏(PV)作为满足不断增长的能源需求的合适的低成本解决方案正变得越来越流行。然而,将可再生能源整合到电网面临许多挑战。这些非常规来源的间歇性通常需要准确的预测,计划和最佳管理。为了应对这些挑战,已经进行了许多尝试。但是,现有方法无法准确地捕获系统的基本特征。存在改进现有光伏产量预测模型和方法的范围。本文探索了利用光伏系统先验知识来建立清晰的盒子模型并通过启发式算法识别不确定的参数。通过在光伏系统的新型灰箱预测和建模中纳入黑匣子模型来解决未​​建模的不确定性,可以进一步增强该模型。

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