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A data lens into MPPT efficiency and PV power prediction

机译:数据镜头进入MPPT效率和PV功率预测

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Condition monitoring and forecasting applications require accurate PV models that can predict power from weather parameters. However PV output is also dependent on the potentially suboptimal behavior of the MPPT controller, which can introduce both inefficiencies and prediction challenges. In this work, we use a data-driven approach to show that MPPT controllers do not always operate at the optimal knee point of the I-V curve and propose methods to quantify these inefficiencies. Based on these findings, we develop novel machine learning PV models that predict current and voltage separately and capture the behavior of the MPPT system more accurately. We present evaluation results using data collected from a large solar farm, which shows that the proposed models can reduce estimation errors significantly as compared to state of the art methods.
机译:状态监控和预测应用需要精确的PV型号,可以预测天气参数的电力。然而,光伏输出也取决于MPPT控制器的潜在次优行为,这可以引入效率低下和预测挑战。在这项工作中,我们使用数据驱动方法来表明MPPT控制器并不总是在I-V曲线的最佳膝关点处运行,并提出定量这些效率的方法。基于这些调查结果,我们开发了新颖的机器学习PV型号,可单独预测电流和电压并更准确地捕获MPPT系统的行为。我们使用从大型太阳能电池场收集的数据显示评估结果,表明所提出的模型可以与现有技术相比显着降低估计误差。

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