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A Novel Approach for Seamless Probabilistic Photovoltaic Power Forecasting Covering Multiple Time Frames

机译:一种覆盖多个时间框架的无缝概率光伏电力预测的新方法

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Uncertainty in the upcoming production of photovoltaic (PV) plants is a challenge for grid operations and also a source of revenue loss for PV plant operators participating in electricity markets, since they have to pay penalties for the mismatch between contracted and actual productions. Improving PV predictability is an area of intense research. In real-world applications, forecasts are often needed for different time frames (horizon, update frequency, etc.) and are derived by dedicated models for each time frame (i.e., for day ahead and for intra-day trading). This can result in both different forecasted values corresponding to the same horizon and discontinuities among time-frames. In this paper we address this problem by proposing a novel seamless probabilistic forecasting approach able to cover multiple time frames. It is based on the Analog Ensemble (AnEn) model, however it is adapted to consider the most appropriate input for each horizon from a pool of available input data. It is designed to be able to start at any time of day, for any forecast horizon, making it well-suited for applications like continuous trading. It is easy to maintain as it adapts to the latest data and does not need regular retraining. We enhance short-term predictability by considering data from satellite images and in situ measurements. The proposed model has low complexity compared to benchmark models and is trivially parallelizable. It achieves performance comparable to state-of-the-art models developed specifically for the short term (i.e., up to 6 hours) and the day ahead. The evaluation was carried out on a real-world case comprising three PV plants in France, over a period of one year.
机译:即将生产的光伏(PV)工厂的不确定性是电网运营的挑战,也是参与电力市场的光伏工厂运营商的收入损失来源,因为他们必须支付合同和实际生产之间的不匹配。提高光伏预测性是一个激烈的研究领域。在现实世界应用中,通常需要预测不同的时间帧(地平线,更新频率等),并且由每个时间帧的专用模型导出(即,未来一天以及日内交易)。这可能导致与相同的地平线和时帧之间的不连续相对应的不同预测值。在本文中,我们通过提出能够覆盖多个时间框架的新型无缝概率预测方法来解决这个问题。它基于模拟合奏(Anen)模型,但它适于从可用输入数据池中考虑每个地平线的最合适的输入。它旨在在任何时候开始,对于任何预测地平线,使其非常适合连续交易的应用。它易于维护,因为它适应最新数据,并且不需要定期再培训。我们通过考虑来自卫星图像和原位测量的数据来提高短期可预测性。与基准模型相比,所提出的模型具有较低的复杂性,并且史无于衷。它实现了与专门为短期开发的最先进模型(即,长达6小时)和未来一天开发的性能。在一年的时间内,在包含三个光伏工厂的真实案例上进行了评估。

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