Adaptive speed planning for Unmanned Vehicle Based on Deep Reinforcement Learning

Hao Liu(Northeastern University), Yi Shen(University of Michigan–Ann Arbor), Wenjing Zhou(University of Michigan–Ann Arbor), Yuelin Zou(Columbia University), Chang Zhou(Columbia University), Shuyao He(Northeastern University)
Cited by 31

Abstract

In order to solve the problem of frequent deceleration of unmanned vehicles when approaching obstacles, this article uses a Deep Q-Network (DQN) and its extension, the Double Deep Q-Network (DDQN), to develop a local navigation system that adapts to obstacles while maintaining optimal speed planning. By integrating improved reward functions and obstacle angle determination methods, the system demonstrates significant enhancements in maneuvering capabilities without frequent decelerations. Experiments conducted in simulated environments with varying obstacle densities confirm the effectiveness of the proposed method in achieving more stable and efficient path planning.


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