局部电力储备的人工神经网络太阳辐射预报

Xingyu Yan, D. Abbes, B. Francois
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引用次数: 25

摘要

可再生能源具有可变性,很大程度上取决于天气条件。负荷也是不确定的。因此,有必要使用电力储备设备来补偿生产和负荷之间不可预见的不平衡。然而,为了在满足安全级别的情况下降低系统成本,这种电力储备必须在理想情况下最小化。通过对发电和负荷预测不确定性误差的分析,定量计算电力储备。因此,本文提出了一种反向传播人工神经网络预测太阳辐射的方法。预报已经根据天气分类进行了分析。引入了一些误差指标来评价预测模型的性能和计算预测精度。预测结果可以通过概率或可能性方法用于可再生能源系统的电力储备决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Solar radiation forecasting using artificial neural network for local power reserve
Renewable energy sources have a variable nature and are greatly depending on weather conditions. The load is also uncertain. Hence, it is necessary to use power reserve equipment to compensate unforeseen imbalances between production and load. However, this power reserve must be ideally minimized in order to reduce the system cost with a satisfying security level. The quantification of power reserve could be calculated through analysis of forecasting uncertainty errors of both generation and load. Therefore, in this paper, a back propagation artificial neural network approaches is derived to forecast solar radiations. Predictions have been analyzed according to weather classification. Some error indexes have been introduced to evaluate forecasting models performances and calculate the prediction accuracy. Forecasting results can be used for decision making of power reserve for renewable energy sources system with some probability or possibility methods.
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