Journal of System Simulation ›› 2025, Vol. 37 ›› Issue (10): 2662-2671.doi: 10.16182/j.issn1004731x.joss.24-0380

• Papers • Previous Articles    

Simulation and Optimization of Continuous Motion Control Based on Spiking Reinforcement Learning

Liu Xiaode, Guo Yufei, Chen Yuanpei, Zhou Jie, Zhang Yuhan, Peng Weihang, Ma Zhe   

  1. Intelligent Science & Technology Academy of CASIC, Beijing 100043, China
  • Received:2024-04-13 Revised:2024-05-28 Online:2025-10-20 Published:2025-10-21
  • Contact: Ma Zhe

Abstract:

To improve the model robustness for multi-degree-of-freedom continuous motion control, an intelligent motion control algorithm was proposed based on the Actor-Critic reinforcement learning framework and spiking neural networks. This algorithm integrateed the Actor network with spiking population coding and enhanced model training performance by introducing feature transformation methods. The Critic network was used to evaluate the effectiveness of the motion control. The results show that, compared to other reinforcement learning algorithms, the average reward value of this method increases by more than 10%. The simulation results validate the effectiveness of the model in improving multi-degree-of-freedom continuous control performance.

Key words: spiking neural network, RL, automatic motion control, feature transformation

CLC Number: