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Adaptive deep reinforcement learning-based control strategy for high-performance permanent magnet synchronous motor drive systems

S. Dukkipati et al · National Technical University "Kharkiv Polytechnic Institute" · 2026

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Introduction. In recent days, electric vehicles, robotics and in many control system applications, permanent magnet synchronous motors (PMSMs) are widely utilized. Problem. Due to non-linear behavior of system, external interferences and frequent changes in parameters, conventional control techniques like direct torque control, field-oriented control and PI control, frequently experience decline in performance. Goal. This paper presents a new deep learning based reinforcement learning (RL) PMSM control approach that makes use of the twin delayed deep deterministic policy gradient (TD3) and deep deterministic policy gradient (DDPG) algorithms. These algorithms utilize actor-critic architectures to learn optimal control policies in a model-free manner, enabling adaptive and intelligent motor control. Methodology. A MATLAB/Simulink-based simulation framework is developed to train and evaluate the proposed deep reinforcement learning (DRL) based controllers against conventional PI controllers. Performance metrics, including speed tracking accuracy, torque ripple minimization are analyzed. Results. The results demonstrate that DRL-based controllers exhibit superior adaptability, robustness, and dynamic performance under varying load and speed conditions in contrast to traditional control methods. Notably, the comparative analysis reveals that the TD3 algorithm outperforms DDPG by mitigating overestimation bias, resulting in smoother torque output and more stable control actions. Scientific novelty. This paper illustrates the capability of DRL for advanced PMSM control. Practical value. Paving the way for real-time implementation in modern electric drive systems. References 25, tables 3, figures 12.

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APA 7

al, S. D. E. (2026). Adaptive deep reinforcement learning-based control strategy for high-performance permanent magnet synchronous motor drive systems. https://doi.org/10.20998/2074-272X.2026.3.07

MLA

al, S. Dukkipati et. "Adaptive deep reinforcement learning-based control strategy for high-performance permanent magnet synchronous motor drive systems." 2026. https://doi.org/10.20998/2074-272X.2026.3.07.

Chicago

al, S. Dukkipati et. 2026. "Adaptive deep reinforcement learning-based control strategy for high-performance permanent magnet synchronous motor drive systems.". https://doi.org/10.20998/2074-272X.2026.3.07.

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al, S. D. E. 2026, Adaptive deep reinforcement learning-based control strategy for high-performance permanent magnet synchronous motor drive systems, National Technical University "Kharkiv Polytechnic Institute", available at: https://doi.org/10.20998/2074-272X.2026.3.07 [Accessed 21 Jun. 2026].

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Título
Adaptive deep reinforcement learning-based control strategy for high-performance permanent magnet synchronous motor drive systems
Autor / colaboradores
S. Dukkipati et al
Editorial
National Technical University "Kharkiv Polytechnic Institute"
Año de publicación
2026
ISSN
2074-272X
ISSN
2074-272X
Idioma
eng

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