An algorithm of finding rules for a class of cellular automata

Lei Kou, Fangfang Zhang, Luobing Chen, Wende Ke, Quande Yuan, Junhe Wan, Zhen Wang
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Abstract

Cellular automata (CA) is an important modelling paradigm for complex systems. In the design of cellular automata, the most difficult task is to find the transformation rules that describe the temporal evolution or pattern of a modelled system. A CA with weights(CAW) yields transition rules algorithm is proposed in this paper, which have ample physical meanings and extend the category of CA. Firstly, the weights are increased to connect the updated cell and its neighbours, and the output of each cell depends on the states of cells in the neighbourhood and their respective weights. Secondly, the error correction algorithm is adopted to find correct transition rules by adjusting weights. When the error is zero, the required transition rules with correct weights will be found to describe the fixed configuration. The CAW with the correct rules will relax to the fixed configuration regardless of the initial states. Finally, the mathematical analysis and simulation are carried out with one-dimensional CAW, and the results show that the proposed algorithm has the ability to find correct transition rules as the error converges exponentially.
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一类元胞自动机的规则查找算法
元胞自动机(CA)是一种重要的复杂系统建模范式。在元胞自动机的设计中,最困难的任务是找到描述被建模系统的时间演化或模式的转换规则。本文提出了一种带有权重的CA (CAW)生成转换规则算法,该算法具有丰富的物理意义,扩展了CA的范畴。首先,增加权重以连接更新后的单元格与其相邻单元格,每个单元格的输出取决于相邻单元格的状态和各自的权重。其次,采用纠错算法,通过调整权重找到正确的过渡规则;当误差为零时,将找到具有正确权重的所需转换规则来描述固定配置。无论初始状态如何,具有正确规则的CAW都将放松到固定配置。最后,利用一维CAW进行了数学分析和仿真,结果表明,该算法在误差呈指数收敛的情况下能够找到正确的过渡规则。
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