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Algorithmic requirements for swarm intelligence in differently coupled collective systems

机译:群耦合系统中群体智能的算法要求

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Swarm systems are based on intermediate connectivity between individuals and dynamic neighborhoods. In natural swarms self-organizing principles bring their agents to that favorable level of connectivity. They serve as interesting sources of inspiration for control algorithms in swarm robotics on the one hand, and in modular robotics on the other hand. In this paper we demonstrate and compare a set of bio-inspired algorithms that are used to control the collective behavior of swarms and modular systems: BEECLUST, AHHS (hormone controllers), FGRN (fractal genetic regulatory networks), and VE (virtual embryogenesis). We demonstrate how such bio-inspired control paradigms bring their host systems to a level of intermediate connectivity, what delivers sufficient robustness to these systems for collective decentralized control. In parallel, these algorithms allow sufficient volatility of shared information within these systems to help preventing local optima and deadlock situations, this way keeping those systems flexible and adaptive in dynamic non-deterministic environments.
机译:群体系统基于个人与动态社区之间的中间连接。在自然群体中,自组织原则将其代理人带到了良好的连接水平。它们一方面是群体机器人技术中以及模块化机器人技术中控制算法的有趣灵感来源。在本文中,我们演示并比较了一组生物启发性算法,这些算法可用于控制群体和模块化系统的集体行为:BEECLUST,AHHS(激素控制器),FGRN(分形遗传调控网络)和VE(虚拟胚胎发生) 。我们演示了这种受生物启发的控制范式如何将其主机系统提升到中间连通性的水平,为这些系统提供了足够的鲁棒性以进行集中分散控制。同时,这些算法允许这些系统中的共享信息充分波动,以帮助防止局部最优和死锁情况,从而在动态非确定性环境中保持这些系统的灵活性和自适应性。

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