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Physical and hybrid methods comparison for the day ahead PV output power forecast

机译:物理和混合方法比较,以进行前一天的光伏输出功率预测

摘要

An accurate forecast of the exploitable energy from Renewable Energy Sources, provided 24 h in advance, is becoming more and more important in the context of the smart grids, both for their stability issues and the reliability of the bidding markets. This work presents a comparison of the PV output power day-ahead forecasts performed by deterministic and stochastic models aiming to find out the best performance conditions. In particular, we have compared the results of two deterministic models, based on three and five parameters electric equivalent circuit, and a hybrid method based on artificial neural network. The forecasts are evaluated against real data measured for one year in an existing PV plant located at SolarTechlab in Milan, Italy. In general, there is no significant difference between the two deterministic models, being the three-parameter approach slightly more accurate (NMAE three-parameter 8.5% vs. NMAE five-parameter 9.0%). The artificial neural network, combined with clear sky solar radiation, generally achieves the best forecasting results (NMAE 5.6%) and only few days of training are necessary to provide accurate forecasts.
机译:提前24小时提供对可再生能源可利用能源的准确预测,对于智能电网而言,就其稳定性问题和竞标市场的可靠性而言,变得越来越重要。这项工作提出了确定性和随机模型进行的光伏输出功率日前预测的比较,旨在找出最佳性能条件。特别是,我们比较了基于三个和五个参数电气等效电路的两个确定性模型的结果以及基于人工神经网络的混合方法的结果。这些预测是根据位于意大利米兰的SolarTechlab的现有光伏电站中一年中测得的实际数据进行评估的。通常,两个确定性模型之间没有显着差异,因为三参数方法的准确性更高(NMAE三参数8.5%与NMAE五参数9.0%)。人工神经网络与晴朗的太阳辐射相结合,通常可以达到最佳的预测结果(NMAE 5.6%),仅需几天的训练就可以提供准确的预测。

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