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Data-Driven Photovoltaic System Modeling Based on Nonlinear System Identification

机译:基于非线性系统识别的数据驱动光伏系统建模

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Solar photovoltaic (PV) energy sources are rapidly gaining potential growth and popularity compared to conventional fossil fuel sources. As the merging of PV systems with existing power sources increases, reliable and accurate PV system identification is essential, to address the highly nonlinear change in PV system dynamic and operational characteristics. This paper deals with the identification of a PV system characteristic with a switch-mode power converter. Measured input-output data are collected from a real PV panel to be used for the identification. The data are divided into estimation and validation sets. The identification methodology is discussed. A Hammerstein-Wiener model is identified and selected due to its suitability to best capture the PV system dynamics, and results and discussion are provided to demonstrate the accuracy of the selected model structure.
机译:与传统化石燃料源相比,太阳能光伏(PV)能源迅速增长和普及。 随着使用现有电源的PV系统的合并增加,可靠且精确的PV系统识别是必不可少的,以解决光伏系统动态和操作特性的高度非线性变化。 本文涉及用开关模式功率转换器识别PV系统特性。 从真实的PV面板收集测量的输入输出数据以用于识别。 数据分为估计和验证集。 讨论了识别方法。 由于其适用于最佳捕获光伏系统动态,因此确定并选择了HAMMerstein-Wiener模型,并提供了结果和讨论以证明所选模型结构的准确性。

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