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Main Authors: Tan, Aaron Hao, Bejarano, Federico Pizarro, Zhu, Yuhan, Ren, Richard, Nejat, Goldie
Format: Preprint
Published: 2021
Subjects:
Online Access:https://arxiv.org/abs/2110.02181
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author Tan, Aaron Hao
Bejarano, Federico Pizarro
Zhu, Yuhan
Ren, Richard
Nejat, Goldie
author_facet Tan, Aaron Hao
Bejarano, Federico Pizarro
Zhu, Yuhan
Ren, Richard
Nejat, Goldie
contents Cooperative multi-robot teams need to be able to explore cluttered and unstructured environments while dealing with communication dropouts that prevent them from exchanging local information to maintain team coordination. Therefore, robots need to consider high-level teammate intentions during action selection. In this letter, we present the first Macro Action Decentralized Exploration Network (MADE-Net) using multi-agent deep reinforcement learning (DRL) to address the challenges of communication dropouts during multi-robot exploration in unseen, unstructured, and cluttered environments. Simulated robot team exploration experiments were conducted and compared against classical and DRL methods where MADE-Net outperformed all benchmark methods in terms of computation time, total travel distance, number of local interactions between robots, and exploration rate across various degrees of communication dropouts. A scalability study in 3D environments showed a decrease in exploration time with MADE-Net with increasing team and environment sizes. The experiments presented highlight the effectiveness and robustness of our method.
format Preprint
id arxiv_https___arxiv_org_abs_2110_02181
institution arXiv
publishDate 2021
record_format arxiv
spellingShingle Deep Reinforcement Learning for Decentralized Multi-Robot Exploration With Macro Actions
Tan, Aaron Hao
Bejarano, Federico Pizarro
Zhu, Yuhan
Ren, Richard
Nejat, Goldie
Robotics
Cooperative multi-robot teams need to be able to explore cluttered and unstructured environments while dealing with communication dropouts that prevent them from exchanging local information to maintain team coordination. Therefore, robots need to consider high-level teammate intentions during action selection. In this letter, we present the first Macro Action Decentralized Exploration Network (MADE-Net) using multi-agent deep reinforcement learning (DRL) to address the challenges of communication dropouts during multi-robot exploration in unseen, unstructured, and cluttered environments. Simulated robot team exploration experiments were conducted and compared against classical and DRL methods where MADE-Net outperformed all benchmark methods in terms of computation time, total travel distance, number of local interactions between robots, and exploration rate across various degrees of communication dropouts. A scalability study in 3D environments showed a decrease in exploration time with MADE-Net with increasing team and environment sizes. The experiments presented highlight the effectiveness and robustness of our method.
title Deep Reinforcement Learning for Decentralized Multi-Robot Exploration With Macro Actions
topic Robotics
url https://arxiv.org/abs/2110.02181