Multi-Agent Combat in Non-Stationary Environments

Shengang Li, Haoang Chi, Tao Xie
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引用次数: 1

Abstract

Multi-agent combat is a combat scenario in multiagent reinforcement learning (MARL). In this combat, agents use reinforcement learning methods to learn optimal policies. Actually, policy may be changed, which leads to a non-stationary environment. In this case, it is difficult to predict opponents' policies. Many reinforcement learning methods try to solve nonstationary problems. Most of the previous works put all agents into a frame and model their policies to deal with non-stationarity of environments. But, in a combat environment, opponents can not be in the same frame as our agents. We group opponents and our agents into two frames, only considering opponents as a part of the environment. In this paper, we focus on the problem of modelling opponents' policies in non-stationary environments. To solve this problem, we propose an algorithm called Additional Opponent Characteristics Multi-agent Deep Deterministic Policy Gradient (AOC-MADDPG) with the following contributions: (1) We propose a new actor-critic framework to deal with nonstationarity of environments in MARL, so that agents can adapt to more complex environments. (2) A model for opponents' policies is built by introducing observations and actions of the opponents into the critic network as additional characteristics. We evaluate our AOC-MADDPG algorithm in two multi-agent combat environments. As a result, our approach significantly outperforms the baseline. Agents trained by our method can get higher rewards in non-stationary environments.
非静止环境下的多智能体战斗
多智能体战斗是多智能体强化学习(MARL)中的一种战斗场景。在这场战斗中,智能体使用强化学习方法来学习最优策略。实际上,政策可能会发生变化,这就导致了一个不稳定的环境。在这种情况下,很难预测对手的政策。许多强化学习方法试图解决非平稳问题。以往的研究大多将所有智能体放在一个框架中,并对它们的策略进行建模,以处理环境的非平稳性。但是,在战斗环境中,对手不可能与我们的代理人处于同一框架中。我们将对手和代理分成两个框架,只将对手视为环境的一部分。本文主要研究非平稳环境下对手策略的建模问题。为了解决这一问题,我们提出了一种称为附加对手特征多智能体深度确定性策略梯度(AOC-MADDPG)的算法,其贡献如下:(1)我们提出了一个新的参与者-批评框架来处理MARL中环境的非平定性,使智能体能够适应更复杂的环境。(2)通过将对手的观察和行动作为附加特征引入批评者网络,建立了对手政策模型。我们在两种多智能体战斗环境中评估了我们的AOC-MADDPG算法。因此,我们的方法明显优于基线。用该方法训练的智能体可以在非平稳环境中获得更高的奖励。
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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