Adaptive optimization design strategy for parameters of high-frequency injection method in modular multilevel converters
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National Key Laboratory of Electromagnetic Energy, Naval University of Engineering, Wuhan 430033 , China

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TM921

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    Abstract:

    Modular multilevel converters exhibit significant capacitor voltage ripple under low-speed, high-torque operating conditions. Existing high-frequency injection suppression schemes increase device current stress and losses while introducing overmodulation risk, and their parameter optimization lacks full operational-condition adaptability. To resolve this issue, a high-frequency injection parameter adaptive optimization strategy considering multiple constraints was proposed. Based on system characteristics and a steady-state model, a variable-step gradient descent algorithm was employed offline to generate a minimum injection-amplitude base parameter reference table that satisfies both capacitor voltage ripple and modulation wave constraints. Subsequently, an online adaptive correction mechanism was designed. Injection parameters were dynamically adjusted in real-time according to acquired capacitor voltage ripple and modulation information, compensating for model deviations and operational variations, forming a coordinated architecture of offline global optimization and online local refinement. Simulation and experimental results show that the proposed strategy maintains the capacitor voltage ripple suppression effect while significantly reducing high-frequency circulating currents, demonstrating dynamic tracking capability for the optimal objective.

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楼徐杰, 肖飞, 任强. 模块化多电平变流器高频注入法参数自适应优化设计策略[J]. 国防科技大学学报, 2025, 47(6): 132-144.

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History
  • Received:December 25,2024
  • Revised:
  • Adopted:
  • Online: December 02,2025
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