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Accurate energy prediction and load optimization are crucial for improving grid efficiency and lowering operational costs in industrial and commercial energy systems. This study presents a hybrid framework that combines Fourier Transform (FT)-based transformers for high-resolution energy forecasting with an improved Covariance Matrix Adaptation Evolution Strategy (CMA-ES)-based genetic algorithm for optimal load scheduling. The novelty of this paper lies in the integration of FT-transformers with optimization algorithms to enhance forecasting accuracy and scheduling efficiency, offering a scalable solution for industrial-scale energy management. The FT-transformer model utilizes self-attention mechanisms and Fourier-based seasonality encoding to capture long-term dependencies, achieving a Mean Absolute Error (MAE) of 3.03 × 10 5 kWh and a Root Mean Square Error (RMSE) of 3.31 × 10 5 kWh, representing an improvement of 48% over traditional Recurrent Neural Networks (RNNs). The optimization component uses a multi-objective genetic algorithm CMA-ES to minimize peak energy demand fluctuations, reducing them by 27% while also minimizing cost deviations. Comparative analysis across various forecasting models, including RNNs, tree-based models, and CMA-ES, shows that the proposed method consistently outperforms existing techniques in both precision and computational efficiency. Scalability assessments indicate that, with their parallel processing capabilities, FT-transformers decrease the inference time by 38% compared to sequential models, making them suitable for real-time deployment in energy management systems. This study contributes to the field by integrating advanced machine learning with optimization for demand-side management, providing a scalable and efficient solution for industrial-scale energy forecasting. Future research will extend this framework with probabilistic forecasting and reinforcement learning for adaptive load control in dynamic energy environments. • Created a load forecasting model utilizing FT-transformers and genetic algorithms. • Achieved a 27% reduction in peak demand uncertainty during MATLAB simulations. • Enhanced predictive accuracy by 48% compared to Recurrent Neural Network utilizing self-attention. • Reduce the inference time by 38% to facilitate immediate energy management. • Validated the model utilizing MATLAB/Simulink and empirical mining data.
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Sravani Parvathareddy
Abid Yahya
Lilian Amuhaya
Results in Engineering
Botswana International University of Science and Technology
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Parvathareddy et al. (Fri,) studied this question.
synapsesocial.com/papers/69f8d198abb8c0a27a7351dc — DOI: https://doi.org/10.1016/j.rineng.2025.105425