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Very-Short-Term Power Prediction for PV Power Plants Using a Simple and Effective RCC-LSTM Model Based on Short Term Multivariate Historical Datasets

机译:基于短期多变量历史数据集的简单有效的RCC-LSTM模型,使用简单且有效的RCC-LSTM模型对PV发电厂的非常短期功率预测

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Improving the accuracy of very-short-term (VST) photovoltaic (PV) power generation prediction can effectively enhance the quality of operational scheduling of PV power plants, and provide a reference for PV maintenance and emergency response. In this paper, the effects of different meteorological factors on PV power generation as well as the degree of impact at different time periods are analyzed. Secondly, according to the characteristics of radiation coordinate, a simple radiation classification coordinate (RCC) method is proposed to classify and select similar time periods. Based on the characteristics of PV power time-series, the selected similar time period dataset (include power output and multivariate meteorological factors data) is reconstructed as the training dataset. Then, the long short-term memory (LSTM) recurrent neural network is applied as the learning network of the proposed model. The proposed model is tested on two independent PV systems from the Desert Knowledge Australia Solar Centre (DKASC) PV data. The proposed model achieving mean absolute percentage error of 2.74-7.25%, and according to four error metrics, the results show that the robustness and accuracy of the RCC-LSTM model are better than the other four comparison models.
机译:提高非常短期(VST)光伏(PV)发电预测的精度可以有效提高光伏发电厂的运行调度的质量,并提供PV维护和应急响应的参考。本文分析了不同气象因素对PV发电以及不同时间段的影响程度的影响。其次,根据辐射坐标的特征,提出了一种简单的放射线分类坐标(RCC)方法来分类和选择类似的时间段。基于PV电源时间序列的特性,将所选类似的时间段数据集(包括电源输出和多变量气象因子数据)作为训练数据集重建。然后,将长的短期存储器(LSTM)复发性神经网络应用为所提出的模型的学习网络。拟议的模型是在来自沙漠知识澳大利亚太阳能中心(Dkasc)PV数据的两个独立光伏系统上进行测试。所提出的模型实现平均绝对百分比误差为2.74-7.25%,并根据四个错误指标,结果表明,RCC-LSTM模型的鲁棒性和准确性优于其他四个比较模型。

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