Explainable forecasting of global horizontal irradiance over multiple time steps using temporal fusion transformer

IF 1.9 4区 工程技术 Q4 ENERGY & FUELS
Louiza Ait Mouloud, Aissa Kheldoun, Abdelhakim Deboucha, Saad Mekhilef
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Abstract

Accurate prediction of solar irradiance is essential for the successful integration of solar power plants into electrical systems. Despite recent advancements in deep learning technology yielding impressive results in solar forecasting, their lack of interpretability has hindered their widespread adoption. In this paper, we propose a novel approach that integrates a Temporal Fusion Transformer (TFT) with a McClear model to achieve accurate and interpretable forecasting performance. The TFT is a deep learning model that provides transparency in its predictions through the use of interpretable self-attention layers for long-term dependencies, recurrent layers for local processing, specialized components for feature selection, and gating layers to suppress extraneous components. The model is capable of learning temporal associations between continuous time-series variables, namely, historical global horizontal irradiance (GHI) and clear sky GHI, accounting for cloud cover variability and clear sky conditions that are often ignored by most machine learning solar forecasters. Additionally, it minimizes a quantile loss during training to produce accurate probabilistic forecasts. In this study, we evaluate the performance of hourly GHI forecasts on eight diverse datasets with varying climates: temperate, cold, arid, and equatorial, for multiple temporal horizons of 2, 3, 6, 12, and 24 h. The model is benchmarked against both climatological persistence for deterministic forecasting and Complete History Persistence Ensemble for probabilistic forecasting. To prove that our model is not location locked, it has been blind tested on four completely different datasets. The results demonstrate that the proposed model outperforms its counterparts across all forecast horizons.
利用时间融合变压器对多时间步长的全球水平辐照度的可解释预报
太阳辐照度的准确预测对于成功地将太阳能发电厂集成到电力系统中至关重要。尽管最近深度学习技术在太阳预测方面取得了令人印象深刻的成果,但它们缺乏可解释性,阻碍了它们的广泛采用。在本文中,我们提出了一种将时间融合变压器(TFT)与McClear模型相结合的新方法,以实现准确和可解释的预测性能。TFT是一种深度学习模型,通过使用可解释的自关注层(用于长期依赖关系)、循环层(用于局部处理)、专用组件(用于特征选择)和门通层(用于抑制无关组件),为其预测提供透明度。该模型能够学习连续时间序列变量之间的时间关联,即历史全球水平辐照度(GHI)和晴空GHI,考虑到云量变化和晴空条件,而这些通常被大多数机器学习太阳预见者所忽略。此外,它在训练过程中最大限度地减少了分位数损失,以产生准确的概率预测。在这项研究中,我们评估了8个不同的数据集上的每小时GHI预测的性能,这些数据集具有不同的气候:温带、寒冷、干旱和赤道,在2、3、6、12和24 h的多个时间层上。该模型以气候持续性为基准进行确定性预测,并以完全历史持续性集合为基准进行概率预测。为了证明我们的模型不是位置锁定的,我们在四个完全不同的数据集上进行了盲测。结果表明,该模型在所有预测范围内都优于同类模型。
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来源期刊
Journal of Renewable and Sustainable Energy
Journal of Renewable and Sustainable Energy ENERGY & FUELS-ENERGY & FUELS
CiteScore
4.30
自引率
12.00%
发文量
122
审稿时长
4.2 months
期刊介绍: The Journal of Renewable and Sustainable Energy (JRSE) is an interdisciplinary, peer-reviewed journal covering all areas of renewable and sustainable energy relevant to the physical science and engineering communities. The interdisciplinary approach of the publication ensures that the editors draw from researchers worldwide in a diverse range of fields. Topics covered include: Renewable energy economics and policy Renewable energy resource assessment Solar energy: photovoltaics, solar thermal energy, solar energy for fuels Wind energy: wind farms, rotors and blades, on- and offshore wind conditions, aerodynamics, fluid dynamics Bioenergy: biofuels, biomass conversion, artificial photosynthesis Distributed energy generation: rooftop PV, distributed fuel cells, distributed wind, micro-hydrogen power generation Power distribution & systems modeling: power electronics and controls, smart grid Energy efficient buildings: smart windows, PV, wind, power management Energy conversion: flexoelectric, piezoelectric, thermoelectric, other technologies Energy storage: batteries, supercapacitors, hydrogen storage, other fuels Fuel cells: proton exchange membrane cells, solid oxide cells, hybrid fuel cells, other Marine and hydroelectric energy: dams, tides, waves, other Transportation: alternative vehicle technologies, plug-in technologies, other Geothermal energy
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