Optimizing solar and wind forecasting with iHow optimization algorithm and multi-scale attention networks
Marwa Radwan, Abdelhameed Ibrahim, Mohamed M. Abdelsalam, Amel Ali Alhussan, Ebrahim A. Mattar, El-Sayed M. El-Kenawy

TL;DR
This paper introduces a new hybrid framework combining the iHow optimization algorithm and multi-scale attention networks to improve wind and solar energy forecasting accuracy and efficiency.
Contribution
The novel contribution is the integration of the iHow optimization algorithm with a multi-scale attention network for scalable and accurate renewable energy forecasting.
Findings
The MSAN model achieved MSE of 0.0105 for wind and 0.0976 for solar forecasting.
Using biHOW reduced misclassification rates to 0.3925 for wind and 0.4161 for solar.
iHOW optimization achieved MSE of 1.10883×10⁻⁶ for wind and 7.08664×10⁻⁶ for solar, outperforming other metaheuristics.
Abstract
Deep learning models often encounter two key challenges in developing intelligent and scalable forecasting frameworks for renewable energy systems: input feature space dimensionality and sensitivity to hyperparameter settings. These limitations increase computational cost and compromise generalization and robustness. This paper presents a hybrid deep learning–optimization framework that leverages cognitively inspired metaheuristics to address these challenges, employing the Binary iHow Optimization Algorithm (biHOW) for feature selection and its continuous counterpart, iHOW, for hyperparameter tuning. Both variants emulate human cognitive phases—data absorption, information analysis, reinstitution, and adaptive knowledge development enabling efficient traversal of complex search spaces. Using the Multi-Scale Attention Network (MSAN) as the forecasting backbone, which is well suited for…
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Taxonomy
TopicsEnergy Load and Power Forecasting · Solar Radiation and Photovoltaics · Stock Market Forecasting Methods
