Abstract

Compared with the single robot system, a multi-robot system has higher efficiency and fault tolerance. The multi-robot system has great potential in some application scenarios, such as the robot search, rescue and escort tasks, and so on. Deep reinforcement learning provides a potential framework for multi-robot formation and collaborative navigation. This paper mainly studies the collaborative formation and navigation of multi-robots by using the deep reinforcement learning algorithm. The proposed method improves the classical Deep Deterministic Policy Gradient (DDPG) to address the single robot mapless navigation task. We also extend the single-robot Deep Deterministic Policy Gradient algorithm to the multi-robot system, and obtain the Parallel Deep Deterministic Policy Gradient (PDDPG). By utilizing the 2D lidar sensor, the group of robots can accomplish the formation construction task and the collaborative formation navigation task. The experiment results in a Gazebo simulation platform illustrates that our method is capable of guiding mobile robots to construct the formation and keep the formation during group navigation, directly through raw lidar data inputs.

Highlights

  • Autonomous navigation for mobile robots is one of the most practical and essential challenges in robotics

  • Inspired by the analysis of human intuition, our work provides a new insight into the multi-robot collaborative navigation task with deep reinforcement learning

  • To address the aforementioned issues, we proposed a parallel deep deterministic policy gradient (PDDPG)

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Summary

Introduction

Autonomous navigation for mobile robots is one of the most practical and essential challenges in robotics. The relative technique for localization is called Simultaneous. Localization and Mapping (SLAM) [1,2], which can obtain the map of the environment and get the robot poses simultaneously. The corresponding decision-making system which consists of planning [3,4,5,6,7] and control [8,9,10] would generate a safety trajectory and control the mobile robot to follow it until reaching the goal. This paper provides a decision-making method to address the core problem of robot navigation. We focus on dealing with the motion planning and control problems with a navigation method based on the deep reinforcement learning

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