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A Systematic Review of Wind Energy Forecasting Models Based on Deep Neural Networks

Edgar A. Manzano, Rubén Nogales, Alberto Ríos

2025Wind8 citationsDOIOpen Access PDF

Abstract

The present study focuses on wind power forecasting (WPF) models based on deep neural networks (DNNs), aiming to evaluate current approaches, identify gaps, and provide insights into their importance for the integration of Renewable Energy Sources (RESs). The systematic review was conducted following the methodology of Kitchenham and Charters, including peer-reviewed articles from 2020 to 2024 that focused on WPF using deep learning (DL) techniques. Searches were conducted in the ACM Digital Library, IEEE Xplore, ScienceDirect, Springer Link, and Wiley Online Library, with the last search updated in April 2024. After the first phase of screening and then filtering using inclusion and exclusion criteria, risk of bias was assessed using a Likert-scale evaluation of methodological quality, validity, and reporting. Data extraction was performed for 120 studies. The synthesis established that the state of the art is dominated by hybrid architectures (e.g., CNN-LSTM) integrated with signal decomposition techniques like VMD and optimization algorithms such as GWO and PSO, demonstrating high predictive accuracy for short-term horizons. Despite these advancements, limitations include the variability in datasets, the heterogeneity of model architectures, and a lack of standardization in performance metrics, which complicate direct comparisons across studies. Overall, WPF models based on DNNs demonstrate substantial promise for renewable energy integration, though future work should prioritize standardization and reproducibility. This review received no external funding and was not prospectively registered.

Topics & Concepts

StandardizationComputer scienceArtificial neural networkMachine learningRenewable energyArtificial intelligencePredictive modellingData miningDeep learningWind powerWind power forecastingEnergy (signal processing)Data modelingSystematic reviewData integrationWork (physics)DecompositionReliability engineeringEnergy Load and Power ForecastingIntegrated Energy Systems OptimizationMachine Fault Diagnosis Techniques