论文标题
生成复杂细胞自动机的随机扩展方法
Random Expansion Method for the Generation of Complex Cellular Automata
论文作者
论文摘要
细胞自动机中复杂行为的出现是近年来广泛开发的区域,目的是生成和分析自动机,以产生空间移动模式或在周期性背景中相互作用的滑翔机。通常,通过详尽的搜索或进化规则的细致构造发现了这种自动机。在这项研究中,通过使用随机生成的样品获得了具有复杂行为的细胞自动机的规范。特别是,它提出,应随机指定$ n $状态的蜂窝自动机,然后延伸到具有较高状态数量的另一个自动机,以便原始自动机作为定期背景,在该背景中,其他状态可用于定义滑翔机。此外,这项研究对此方法提出了解释。此外,通过对各种状态和局部熵测量的平均场近似值来研究定义复杂细胞自动机的随机方法。用遗传算法对该规范进行了完善,以获得具有较高复杂程度的样品。通过这种方法,可以与数百个状态生成复杂的自动机,表明随机定义的与多个状态的局部相互作用可以构建复杂性。
The emergence of complex behaviors in cellular automata is an area that has been widely developed in recent years with the intention to generate and analyze automata that produce space-moving patterns or gliders that interact in a periodic background. Frequently, this type of automata has been found through either an exhaustive search or a meticulous construction of the evolution rule. In this study, the specification of cellular automata with complex behaviors was obtained by utilizing randomly generated specimens. In particular, it proposed that a cellular automaton of $n$ states should be specified at random and then extended to another automaton with a higher number of states so that the original automaton operates as a periodic background where the additional states serve to define the gliders. Moreover, this study presented an explanation of this method. Furthermore, the random way of defining complex cellular automata was studied by using mean-field approximations for various states and local entropy measures. This specification was refined with a genetic algorithm to obtain specimens with a higher degree of complexity. With this methodology, it was possible to generate complex automata with hundreds of states, demonstrating that randomly defined local interactions with multiple states can construct complexity.