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SolarFusionNet: Enhanced Solar Irradiance Forecasting via Automated Multi-Modal Feature Selection and Cross-Modal Fusion

Tao Jing, Shanlin Chen, David Navarro-Alarcón, Yinghao Chu, Mengying Li

2024IEEE Transactions on Sustainable Energy17 citationsDOI

Abstract

Solar forecasting has emerged as a cost-effective technology to mitigate the negative impacts of intermittent solar power on the power grid. Despite the multitude of deep learning methodologies available for forecasting solar irradiance, there is a notable gap in research concerning the automated selection and holistic utilization of multi-modal features for ultra-short-term regional irradiance forecasting. Our study introduces SolarFusionNet, a novel deep learning architecture that effectively integrates automatic multi-modal feature selection and cross-modal data fusion. SolarFusionNet utilizes two distinct types of automatic variable feature selection units to extract relevant features from multichannel satellite images and multivariate meteorological data, respectively. Long-term dependencies are then captured using three types of recurrent layers, each tailored to the corresponding data modal. In particular, a novel Gaussian kernel-injected convolutional long short-term memory network is specifically designed to isolate the sparse features present in the cloud motion field derived from optical flow. Subsequently, a hierarchical multi-head cross-modal self-attention mechanism is proposed based on the physical-logical dependencies among the three modalities to investigate the coupling correlations among the modalities. The experimental results indicate that SolarFusionNet exhibits robust performance in predicting regional solar irradiance, achieving higher accuracy than other state-of-the-art models and a forecast skill ranging from 37.4% to 47.6% against the smart persistence model for the 4-hour-ahead forecast.

Topics & Concepts

ModalIrradianceComputer scienceFusionSolar irradianceSensor fusionFeature selectionSelection (genetic algorithm)Feature (linguistics)Artificial intelligenceMeteorologyPhysicsOpticsMaterials sciencePolymer chemistryPhilosophyLinguisticsSolar Radiation and PhotovoltaicsEnergy Load and Power ForecastingEnergy and Environment Impacts
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