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Evolution of a Complex Predator-Prey Ecosystem on Large-scale Multi-Agent Deep Reinforcement Learning

机译:大规模多智能体深度强化学习的复杂捕食-被捕食生态系统的演化

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摘要

Simulation of population dynamics is a central research theme in computational biology, which contributes to understanding the interactions between predators and preys. Conventional mathematical tools of this theme, however, are incapable of accounting for several important attributes of such systems, such as the intelligent and adaptive behavior exhibited by individual agents. This unrealistic setting is often insufficient to simulate properties of population dynamics found in the real-world. In this work, we leverage multi-agent deep reinforcement learning, and we propose a new model of large-scale predator-prey ecosystems. Using different variants of our proposed environment, we show that multi-agent simulations can exhibit key real-world dynamical properties. To obtain this behavior, we firstly define a mating mechanism such that existing agents reproduce new individuals bound by the conditions of the environment. Furthermore, we incorporate a real-time evolutionary algorithm and show that reinforcement learning enhances the evolution of the agents' physical properties such as speed, attack and resilience against attacks.
机译:种群动态模拟是计算生物学的中心研究主题,有助于理解捕食者与猎物之间的相互作用。但是,该主题的常规数学工具无法解决此类系统的几个重要属性,例如单个代理所表现出的智能和自适应行为。这种不切实际的设置通常不足以模拟现实世界中发现的人口动态特性。在这项工作中,我们利用多主体深度强化学习,并提出了大规模捕食者-猎物生态系统的新模型。使用我们提出的环境的不同变体,我们证明了多主体仿真可以展现出关键的真实世界的动力学特性。为了获得这种行为,我们首先定义一种交配机制,以使现有的代理繁殖受环境条件约束的新个体。此外,我们结合了实时进化算法,并表明强化学习增强了特工物理属性(例如速度,攻击和抵抗攻击的能力)的演化。

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