Twin delayed deep deterministic reinforcement learning application in vehicle electrical suspension control

Publisher:
Inderscience Publishers
Publication Type:
Journal Article
Citation:
International Journal of Vehicle Performance, 2023, 9, (4), pp. 429-446
Issue Date:
2023
Full metadata record
Coming with the rising focus of the driving comfort request more efforts are being delivered into the study of suspension system Comparing with other traditional control methods the machine learning control strategy has demonstrated its optimality in dealing with different class of roads The work presented in this paper is to apply twin delayed deep deterministic policy gradients TD3 in suspension control which enables suspension controller to go beyond searching for an optimal set of system parameters from traditional control method in dealing with different class of pavements To achieve this a suspension model has been established together with a reinforcement learning algorithm and an input signal of pavement The performance of the twin delayed reinforcement agent is compared against deep deterministic policy gradients DDPG and deep Q learning DQN algorithms under different types of pavement The simulation result shows its superiority robustness and learning efficiency over other reinforcement learning algorithms
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