Solar irradiance separation with deep learning: An interpretable multi-task and physically constrained model based on individual–interactive features

IF 6 2区 工程技术 Q2 ENERGY & FUELS
Mengmeng Song , Dazhi Yang , Bai Liu , Disong Fu , Hongrong Shi , Xiang’ao Xia , Martin János Mayer
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引用次数: 0

Abstract

As an essential part of solar forecasting and resource assessment, separation modeling has received widespread attention over the past half a century. Despite the numerous proposals thus far, most models are semi-empirical in nature, with limited accuracy. The other option, namely, machine-learning models, does not show a definitive advantage and usually lacks comparisons with the latest quasi-universal model. This study proposes an interpretable multi-task and physically constrained separation model based on individual–interactive features (IIF-IMCSM). The model has three blocks: (1) an informative predictor identification block, (2) an individual–interactive feature extraction block, and (3) a physically constrained irradiance component estimation block, each carrying some modeling innovations. Differing from other separation models, IIF-IMCSM simultaneously produces estimates for both the beam and diffuse components that satisfy the closure equation, and it overcomes the common drawback of lacking interpretability of machine-learning models. Based on five comprehensive datasets covering diverse radiation regimes of the globe, it is found that the overall normalized root mean square errors of IIF-IMCSM for beam normal irradiance and diffuse horizontal irradiance are 12.51% and 24.50%, as compared to 16.32%, 34.86%, and 13.47%, 26.56% for the top-performing semi-empirical and machine-learning models.
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来源期刊
Solar Energy
Solar Energy 工程技术-能源与燃料
CiteScore
13.90
自引率
9.00%
发文量
0
审稿时长
47 days
期刊介绍: Solar Energy welcomes manuscripts presenting information not previously published in journals on any aspect of solar energy research, development, application, measurement or policy. The term "solar energy" in this context includes the indirect uses such as wind energy and biomass
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