基于核平滑和强化学习的多智能体系统未知环境路径规划

David Luviano Cruz, Wen Yu
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引用次数: 4

摘要

在未知环境下,多智能体系统的路径规划是一个难点。常用的路径规划方法,如强化学习(RL),不适用于这两种情况:未知环境和多智能体。本文采用核平滑这一特殊的智能方法对未知环境进行估计,并将其与强化学习技术相结合。强化学习与核平滑技术相结合的优点是我们不需要对未访问状态重复强化学习。路径规划过程分为三个阶段:1)应用强化学习生成训练样本;2)采用核平滑法对模型进行训练;3)训练后的模型给出了agent的近似动作。实验结果表明,该算法能够在未知环境下为多个智能体生成期望路径。
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Path planning in unknown environment with kernel smoothing and reinforcement learning for multi-agent systems
In unknown environment, path planning of multiagent systems is difficult. The popular methods for the path planning, such as reinforcement learning (RL), do not work for these two cases: unknown environment and multi-agent. In this paper, we use a special intelligent method, kernel smoothing, to estimate the unknown environment, and combine it with the reinforcement learning technique. The advantage of the combination of the reinforcement learning and the kernel smoothing technique is we do not need to repeat RL for the unvisited state. The path planning process has three stages: 1) the reinforcement learning is applied to generate the training samples; 2) the model is trained by the kernel smoothing method; 3) the trained model gives an approximate action to agents. Experiment results show the proposed algorithm can generate desired paths in the unknown environment for multiple agents.
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