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Regional forecasts of photovoltaic power generation according to different data availability scenarios: a study of four methods

机译:根据不同数据可用性情景对光伏发电进行区域预测:四种方法的研究

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The development of methods to forecast photovoltaic (PV) power generation regionally is of utmost importance to support the spread of such power systems in current power grids. The objective of this study is to propose and to evaluate methods to forecast regional PV power 1 day ahead of time and to compare their performances. Four forecast methods were regarded, of which two are new ones proposed in this study. Together, they characterize a set of forecast methods that can be applied in different scenarios regarding availability of data and infrastructure to make the forecasts. The forecast methods were based on the use of support vector regression and weather prediction data. Evaluations were performed for 1 year of hourly forecasts using data of 273 PV systems installed in two adjacent regions in Japan, Kanto, and Chubu. The results show the importance of selecting the proper forecast method regarding the region characteristics. For Chubu, the region with a variety of weather conditions, the forecast methods based on single systems' forecasts and the one based on stratified sampling provided the best results. In this case, the best annual normalized root mean square error (RMSE) and mean absolute error (MAE) were 0.25 and 0.15 kWh/kWh(avg), respectively. For Kanto, with homogeneous weather conditions, the four methods performed similarly. In this case, the lowest annual forecast errors were 0.33 kWh/kWh(avg) for the normalized RMSE and 0.202 kWh/kWh(avg) for the normalized MAE. Copyright (C) 2014 John Wiley & Sons, Ltd.
机译:开发区域预测光伏(PV)发电量的方法对于支持此类电力系统在当前电网中的普及至关重要。这项研究的目的是提出并评估提前1天预测区域性光伏发电并比较其性能的方法。考虑了四种预测方法,其中两项是本研究中提出的新方法。它们一起描述了一套预测方法,这些方法可以在有关数据可用性和基础结构以进行预测的不同场景中应用。预测方法基于支持向量回归和天气预报数据的使用。利用日本关东和中部两个相邻地区安装的273个光伏系统的数据,进行了为期一年的每小时预报评估。结果表明,针对区域特征选择正确的预测方法非常重要。对于中部(气候条件多种多样的地区)而言,基于单一系统预测的预测方法和基于分层采样的预测方法提供了最佳结果。在这种情况下,最佳年度归一化均方根误差(RMSE)和平均绝对误差(MAE)分别为0.25 kWh / kWh / kWh(avg)。对于关东而言,在天气条件均一的情况下,这四种方法的执行情况相似。在这种情况下,最低的年度预测误差对于归一化RMSE为0.33 kWh / kWh(avg),对于归一化MAE为0.202 kWh / kWh(avg)。版权所有(C)2014 John Wiley&Sons,Ltd.

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