End-to-end Deep Reinforcement Learning for Multi-agent Collaborative Exploration

Zichen Chen, Budhitama Subagdja, A. Tan
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引用次数: 15

Abstract

Exploring an unknown environment by multiple autonomous robots is a major challenge in robotics domains. As multiple robots are assigned to explore different locations, they may interfere each other making the overall tasks less efficient. In this paper, we present a new model called CNN-based Multi-agent Proximal Policy Optimization (CMAPPO) to multi-agent exploration wherein the agents learn the effective strategy to allocate and explore the environment using a new deep reinforcement learning architecture. The model combines convolutional neural network to process multi-channel visual inputs, curriculum-based learning, and PPO algorithm for motivation based reinforcement learning. Evaluations show that the proposed method can learn more efficient strategy for multiple agents to explore the environment than the conventional frontier-based method.
面向多智能体协同探索的端到端深度强化学习
由多个自主机器人探索未知环境是机器人领域的主要挑战。当多个机器人被分配去探索不同的地点时,它们可能会相互干扰,从而降低整体任务的效率。在本文中,我们提出了一种新的模型,称为基于cnn的多智能体近端策略优化(CMAPPO),用于多智能体探索,其中智能体使用新的深度强化学习架构学习有效的策略来分配和探索环境。该模型结合了卷积神经网络来处理多通道视觉输入,基于课程的学习和基于动机的强化学习的PPO算法。评估结果表明,该方法比传统的基于边界的方法能够学习到更有效的多智能体探索环境的策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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