Estimation of Photovoltaic Power Generation by Using Deep Learning-based Method

Yu-Jen Liu, Cheng-Yu Lee, Po-Yu Hou, Pei-Hao Sun
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Abstract

It is important to predict the power output of distributed energy resources (DERs) like solar photovoltaic (PV) so as to prevent the power variation impact to power systems. In this paper, the techniques of using weather graphs have been introduced for the estimation of PV power generation. First, traditional Heliosat method is introduced. Secondly, a cloud-type method based on several cloud groups classified by different cloud top altitudes and rainfall intensities is presented and integrates with look-up-table mechanism to determine the PV power generation. Finally, this paper further proposed a deep learning-based method for overcoming the limitations of using above-mentioned methods. In proposed method, not only BILSTM neuron network but also a time mark technique are considered. To validate the performance of proposed method, Experiments based on the PV power generation data collected from a real PV site are included. Analysis results show nRMSE of cloud-type method is 16.83%, which is not better than Heliosat method of nRMSE 6.61%. On the contrary, the nRMSE of 4.67% is obtained from proposed deep learning method that presents the excellent performance among all methods.
基于深度学习的光伏发电估算方法
对太阳能光伏等分布式能源的输出功率进行预测,以防止其功率变化对电力系统的影响。本文介绍了利用天气图进行光伏发电估算的技术。首先,介绍了传统的Heliosat方法。其次,提出了一种基于不同云顶高度和降雨强度划分的云组云型方法,并结合查表机制确定光伏发电;最后,本文进一步提出了一种基于深度学习的方法来克服上述方法的局限性。该方法不仅考虑了BILSTM神经元网络,还考虑了时间标记技术。为了验证所提出方法的性能,在实际光伏电站现场进行了基于光伏发电数据的实验。分析结果表明,云型法的nRMSE为16.83%,不优于Heliosat法的nRMSE 6.61%。相反,该深度学习方法的nRMSE为4.67%,在所有方法中表现优异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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