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Forecasting mesoscale distribution of surface solar irradiation using a proposed hybrid approach combining satellite remote sensing and time series models

机译:结合卫星遥感和时间序列模型的混合方法预测地表太阳辐射的中尺度分布

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摘要

A new hybrid forecasting tool is developed in this study which makes use of satellite remote sensing data of surface solar irradiation coupled to a Double Exponential Smoothing time series model. The prediction capabilities of the Double Exponential Smoothing model are reported to be higher than the ARMA and NAR-Neural Network. The mean absolute percentage error of this hybrid system is revealed to be the lowest (4.89%) on average for 5 consecutive days-ahead forecasts over the years 2013-2015, with the smallest standard deviation reported throughout the year, characteristic of a highly stable and robust model (3.83 W/m(2)). Exploring the performance of the model for the best and worst case scenarios reveal that high prediction accuracies on both spatial and temporal scales are achievable with strong positive linear correlations of the orders of 0.928 and 0.894 respectively, averaged over the 5 days forecasts. The performance of the hybrid system is found to be higher as compared with benchmark accuracy reached by several other models employed in literature. Finally, the use of the hybrid forecasting tool developed in providing energy and grid management facilities for the island of Mauritius is also presented.
机译:在这项研究中,开发了一种新的混合预测工具,该工具利用了地面太阳辐照的卫星遥感数据以及双指数平滑时间序列模型。据报道,双指数平滑模型的预测能力高于ARMA和NAR神经网络。该混合系统的平均绝对百分比误差在2013-2015年连续5天的未来平均预测中显示为最低(4.89%),全年报告的标准偏差最小,具有高度稳定的特征健壮模型(3.83 W / m(2))。对最佳和最坏情况下的模型的性能进行的研究表明,在5天的预测平均值上,可以实现较高的空间和时间尺度上的预测准确性,并分别具有0.928和0.894数量级的强正线性相关性。与文献中采用的其他几种模型达到的基准精度相比,发现混合系统的性能更高。最后,还介绍了在为毛里求斯岛提供能源和电网管理设施时开发的混合预测工具的使用。

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