IDS-Net: A novel framework for few-shot photovoltaic power prediction with interpretable dynamic selection and feature information fusion
Hang Fan, Weican Liu, Zuhan Zhang, Ying Lu, Wencai Run, Dunnan Liu

TL;DR
IDS-Net is an interpretable, dynamic feature selection framework that improves few-shot photovoltaic power prediction by combining transfer learning, feature fusion, and outlier correction, validated on real datasets.
Contribution
The paper introduces IDS-Net, a novel framework integrating dynamic feature selection, transfer learning, and interpretability for accurate PV power prediction with limited data.
Findings
Effective transfer learning with MMD-based source domain selection
Improved prediction accuracy on PV datasets
Robust outlier correction enhances model stability
Abstract
With the growing demand for renewable energy, countries are accelerating the construction of photovoltaic (PV) power stations. However, accurately forecasting power data for newly constructed PV stations is extremely challenging due to limited data availability. To this end, we propose a novel interpretable dynamic selection network (IDS-Net) based on feature information fusion to achieve accurate few-shot prediction. This transfer learning framework primarily consists of two parts. In the first stage, we pre-train on the large dataset, utilizing Maximum Mean Discrepancy (MMD) to select the source domain dataset most similar to the target domain data distribution. Subsequently, the ReliefF algorithm is utilized for feature selection, reducing the influence of feature redundancy. Then, the Hampel Identifier (HI) is used for training dataset outlier correction. In the IDS-Net model, we…
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Taxonomy
TopicsPhotovoltaic System Optimization Techniques · Solar Radiation and Photovoltaics
