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Reinforcement Learning for Robot Navigation with Adaptive Forward Simulation Time (AFST) in a Semi-Markov Model

IEEE/RJS International Conference on Intelligent RObots and Systems (IROS), 2021
13 August 2021
Yuán Chen
Ruosong Ye
Ziyang Tao
Hongjian Liu
Guangda Chen
Jie Peng
Jun Ma
Yu Zhang
Jianmin Ji
Yanyong Zhang
ArXiv (abs)PDFHTML
Abstract

Deep reinforcement learning (DRL) algorithms have proven effective in robot navigation, especially in unknown environments, by directly mapping perception inputs into robot control commands. However, most existing methods ignore the local minimum problem in navigation and thereby cannot handle complex unknown environments. In this paper, we propose the first DRL-based navigation method modeled by a semi-Markov decision process (SMDP) with continuous action space, named Adaptive Forward Simulation Time (AFST), to overcome this problem. Specifically, we reduce the dimensions of the action space and improve the distributed proximal policy optimization (DPPO) algorithm for the specified SMDP problem by modifying its GAE to better estimate the policy gradient in SMDPs. Experiments in various unknown environments demonstrate the effectiveness of AFST.

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