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Effect of Prediction Error of Machine Learning Schemes on Photovoltaic Power Trading Based on Energy Storage Systems

机译:机床学习方案预测误差对基于能量存储系统的光伏电力交易的影响

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摘要

Photovoltaic (PV) output power inherently exhibits an intermittent property depending on the variation of weather conditions. Since PV power producers may be charged to large penalties in forthcoming energy markets due to the uncertainty of PV power generation, they need a more accurate PV power prediction scheme in energy market operation. In this paper, we characterize the effect of PV power prediction errors on energy storage system (ESS)-based PV power trading in energy markets. First, we analyze the prediction accuracy of two machine learning (ML) schemes for the PV output power and estimate their error distributions. We propose an efficient ESS management scheme for charging and discharging operation of ESS in order to reduce the deviations between the day-ahead (DA) and real-time (RT) dispatch in energy markets. In addition, we estimate the capacity of ESSs, which can absorb the prediction errors and then compare the PV power producer’s profit according to ML-based prediction schemes with/without ESS. In case of ML-based prediction schemes with ESS, the ANN and SVM schemes yield a decrease in the deviation penalty by up to 87% and 74%, respectively, compared with the profit of those schemes without ESS.
机译:光伏(PV)输出功率固有地表现出间歇性的性能,这取决于天气条件的变化。由于光伏电力生产者在即将到来的能量市场由于光伏发电的不确定性而在即将到来的能量市场上,因此在能源市场运行中需要更加精确的PV电力预测方案。在本文中,我们的表征了PV功率预测误差对能量储存系统(ESS)的储能系统(ESS)的影响。首先,我们分析PV输出功率的两种机器学习(ML)方案的预测精度,并估计其错误分布。我们提出了一种有效的ESS管理方案,用于对ESS的充电和放电操作,以减少能量市场中的一天(DA)和实时(RT)派遣之间的偏差。此外,我们估计了ESS的能力,可以吸收预测误差,然后根据与ESS /无ESS的ML的预测方案进行比较PV电力生产商的利润。在ML的预测方案与ESS的情况下,ANN和SVM方案分别产生高达87%和74%的偏差降低,而与无ESS的这些计划的利润相比。

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