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Probabilistic photovoltaic power forecasting model based on deterministic forecasts

机译:基于确定性预测的概率光伏发电预测模型

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This paper presents an original probabilistic photovoltaic (PV) power forecasting model for the day-ahead hourly generation in a PV plant. The probabilistic forecasting model is based on 12 deterministic models developed with different techniques. An optimization process, ruled by a genetic algorithm, chooses the forecasts of the deterministic models in order to achieve the probability distribution function (PDF) for the PV generation in each one of the daylight hours of the following day in a parametric approach. The PDFs, which constitute the probabilistic forecasts, are a mixture of normal distributions, each one centred in the forecasts of the selected deterministic models. The genetic algorithm chooses the deterministic forecasts, the variance of the normal distributions and their weights in the mixture. In a case study the proposed model achieves better forecasting results than the obtained with the conditional quantile regression method applied to the same data used to develop the deterministic forecasting models.
机译:本文介绍了光伏电站日发电量的原始概率光伏(PV)功率预测模型。概率预测模型基于使用不同技术开发的12个确定性模型。由遗传算法控制的优化过程选择确定性模型的预测,以便以参数化方法在第二天的每个夏令时实现PV生成的概率分布函数(PDF)。构成概率预测的PDF混合了正态分布,每个分布都集中在所选确定性模型的预测中。遗传算法选择确定性预测,正态分布的方差及其在混合物中的权重。在一个案例研究中,与将条件分位数回归方法应用于用于开发确定性预测模型的相同数据相比,所提出的模型获得的预测结果更好。

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