Augmenting Scalable Communication-Based Role Allocation for a Three-Role Task

Gustavo Martins, P. Urbano, A. Christensen
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Abstract

In evolutionary robotics role allocation studies, it is common that the role assumed by each robot is strongly associated with specific local conditions, which may compromise scalability and robustness because of the dependency on those conditions. To increase scalability, communication has been proposed as a means for robots to exchange signals that represent roles. This idea was successfully applied to evolve communication-based role allocation for a two-role task. However, it was necessary to reward signal differentiation in the fitness function, which is a serious limitation as it does not generalize to tasks where the number of roles is unknown a priori. In this paper, we show that rewarding signal differentiation is not necessary to evolve communication-based role allocation strategies for the given task, and we improve reported scalability, while requiring less a priori knowledge. Our approach for the two-role task puts fewer constrains on the evolutionary process and enhances the potential of evolving communication-based role allocation for more complex tasks. Furthermore, we conduct experiments for a three-role task where we compare two different cognitive architectures and several fitness functions and we show how scalable controllers might be evolved.
为三角色任务增加可扩展的基于通信的角色分配
在进化机器人角色分配研究中,每个机器人所承担的角色通常与特定的局部条件密切相关,这可能会因为对这些条件的依赖而损害可扩展性和鲁棒性。为了提高可扩展性,通信被提议作为机器人交换代表角色的信号的一种手段。这一思想被成功地应用于发展基于通信的双角色任务角色分配。然而,有必要奖励适应度函数中的信号分化,这是一个严重的限制,因为它不能推广到先验未知角色数量的任务。在本文中,我们证明了奖励信号分化对于给定任务的基于通信的角色分配策略的进化是不必要的,并且我们提高了报告的可扩展性,同时需要较少的先验知识。我们针对双角色任务的方法减少了对进化过程的限制,并增强了基于通信的角色分配在更复杂任务中的发展潜力。此外,我们对一个三角色任务进行了实验,其中我们比较了两种不同的认知架构和几个适应度函数,并展示了可扩展控制器是如何进化的。
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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