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Neural Network Ensemble Based Approach for 2D-Interval Prediction of Solar Photovoltaic Power

机译:基于神经网络集成的太阳能光伏发电二维间隔预测方法

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Solar energy generated from PhotoVoltaic (PV) systems is one of the most promising types of renewable energy. However, it is highly variable as it depends on the solar irradiance and other meteorological factors. This variability creates difficulties for the large-scale integration of PV power in the electricity grid and requires accurate forecasting of the electricity generated by PV systems. In this paper we consider 2D-interval forecasts, where the goal is to predict summary statistics for the distribution of the PV power values in a future time interval. 2D-interval forecasts have been recently introduced, and they are more suitable than point forecasts for applications where the predicted variable has a high variability. We propose a method called NNE2D that combines variable selection based on mutual information and an ensemble of neural networks, to compute 2D-interval forecasts, where the two interval boundaries are expressed in terms of percentiles. NNE2D was evaluated for univariate prediction of Australian solar PV power data for two years. The results show that it is a promising method, outperforming persistence baselines and other methods used for comparison in terms of accuracy and coverage probability.
机译:由PhotoVoltaic(PV)系统产生的太阳能是最有前途的可再生能源之一。但是,它是高度可变的,因为它取决于太阳辐照度和其他气象因素。这种可变性为光伏电力在电网中的大规模整合带来了困难,并且需要对光伏系统产生的电力进行准确的预测。在本文中,我们考虑2D间隔预测,其目的是预测汇总统计数据,以便在未来的时间间隔内分配PV功率值。最近引入了2D间隔预测,它比点预测更适合于预测变量具有高可变性的应用程序。我们提出了一种称为NNE2D的方法,该方法结合了基于互信息和神经网络集成的变量选择来计算2D间隔预测,其中两个间隔边界以百分位数表示。对NNE2D进行了两年澳大利亚太阳能光伏发电数据的单变量预测评估。结果表明,这是一种很有前途的方法,在准确性和覆盖率方面优于持久性基线和其他用于比较的方法。

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