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The Regulation of Superconducting Magnetic Energy Storages with a Neural-Tuned Fractional Order PID Controller Based on Brain Emotional Learning

Intelligent control methodologies and artificial intelligence (AI) are essential components for the efficient management of energy storage modern systems, specifically those utilizing superconducting magnetic energy storage (SMES). Through the implementation of AI algorithms, SMES units are able to optimize their operations in real time, thereby maximizing energy efficiency. To have a more advanced understanding of this issue, DynamoMan is presented in this paper. For use with SMES systems, DynamoMan, an Artificial Neural Network (ANN)-tuned Fractional Order PID Brain Emotional Learning-Based Intelligent Controller (ANN-FOPID-BELBIC), has been developed. ANN tuning is employed to optimize the key settings of the reward/penalty generator of a BELBIC, which are important for its overall efficacy. Following this, DynamoMan is integrated into the SMES control system and compared to scenarios in which a BELBIC, PID, PI, and P are utilized. The findings indicate that DynamoMan performs considerably better than other models, demonstrating robust and control attributes alongside a considerably reduced period of settling time, especially when incorporated with the power grid.
- Aalborg University Library (AUB) Aalborg Universitet Research Portal Denmark
- Aalborg University Library (AUB) Denmark
- Aalborg University Library (AUB) Denmark
- University of Tabriz Iran (Islamic Republic of)
- Aalborg University Denmark
QA299.6-433, fractional order controller, optimal robust control, SMES, parameter tuning, artificial intelligence, neural networks, QA1-939, Thermodynamics, energy storage systems, QC310.15-319, Mathematics, Analysis
QA299.6-433, fractional order controller, optimal robust control, SMES, parameter tuning, artificial intelligence, neural networks, QA1-939, Thermodynamics, energy storage systems, QC310.15-319, Mathematics, Analysis
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