GTFD‐XTNet: A tabular learning‐based ensemble approach for short‐term prediction of photovoltaic power

作者: Qinglun Wang , Songjian Chai , Yun Liu , Guibin Wang

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摘要: Greenhouse effect has led to the deterioration of the global climate, so the development of renewable energy is extremely urgent. Photovoltaic (PV) generation has attracted much attention in recent years, but it is limited by the uncertain and intermittent nature, which needs promising PV prediction models. In this study, we propose a novel hybrid deep learning model based on the TabNet, extreme gradient boosting (XGBoost) and linear regression, which is motivated by the ensemble and residual ideas. The models of XGBoost and TabNet are fitted simultaneously based on numeric weather prediction (NWP) information. We adopt the linear regression to combine the results from both TabNet and XGBoost to render the final estimates through ResNet approaches. Besides, the gradient boosting decision tree (GBDT) is incorporated for redundant feature reduction and important feature selection. Meanwhile, the …

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