An evolutionary approach to swarm adaptation in dense environments

S. Hettiarachchi
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引用次数: 2

Abstract

The ability for a swarm of mobile agents to quickly adapt in unknown environments and reach a goal while avoiding obstacles and maintaining a formation is extremely important in time critical tasks. We utilize a physics-based autonomous agent framework combined with our DAEDALUS paradigm which allows the agents to learn from the neighboring agents. In traditional approaches, a swarm of agents learn the task in simulation(offline) combined with an evolutionary/genetic algorithm, and a global observer optimizes the swarm performance. In real world(online), the swarm of agents may have to rapidly adapt in unfamiliar environments. When there is no global observer and the online(real world) environment is dense with obstacles compared to offline environment, the performance feedback may be delayed or perturbed by noise, and the rules learned in simulation(offline) may not be sufficient to overcome the navigational difficulties, leaving the swarm to rapidly adapt in new environment. DAEDALUS is a paradigm designed to address these issues, by mimicking more closely the actual dynamics of populations of agents moving and interacting in a task environment. This paper presents an analysis of swarm adaptation using DAEDALUS in high obstacle density environments where agent interactions could be obstructed by obstacles.
稠密环境中群体适应的进化方法
在时间紧迫的任务中,一群移动代理快速适应未知环境并在避开障碍物和保持队形的同时到达目标的能力是极其重要的。我们利用基于物理的自主代理框架结合我们的DAEDALUS范式,允许代理从邻近的代理学习。在传统的方法中,一群智能体结合进化/遗传算法在模拟(离线)中学习任务,一个全局观测器优化群的性能。在现实世界(在线)中,一群代理可能必须快速适应不熟悉的环境。当没有全局观测器时,在线(现实世界)环境与离线环境相比障碍物密集,性能反馈可能会延迟或受到噪声的干扰,并且在模拟(现实世界)中学习的规则可能不足以克服导航困难,使群体在新环境中快速适应。DAEDALUS是一个旨在解决这些问题的范例,通过更接近地模仿在任务环境中移动和交互的代理群体的实际动态。本文提出了一种基于DAEDALUS的高障碍物密度环境中agent交互可能被障碍物阻碍的群体适应分析方法。
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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