Transductions Computed by One-Dimensional Cellular Automata

AUTOMATA & JAC Pub Date : 2012-08-13 DOI:10.4204/EPTCS.90.16
Martin Kutrib, Andreas Malcher
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Abstract

Cellular automata are investigated towards their ability to compute transductions, that is, to transform inputs into outputs. The families of transductions computed are classified with regard to the time allowed to process the input and to compute the output. Since there is a particular interest in fast transductions, we mainly focus on the time complexities real time and linear time. We first investigate the computational capabilities of cellular automaton transducers by comparing them to iterative array transducers, that is, we compare parallel input/output mode to sequential input/output mode of massively parallel machines. By direct simulations, it turns out that the parallel mode is not weaker than the sequential one. Moreover, with regard to certain time complexities cellular automaton transducers are even more powerful than iterative arrays. In the second part of the paper, the model in question is compared with the sequential devices single-valued finite state transducers and deterministic pushdown transducers. It turns out that both models can be simulated by cellular automaton transducers faster than by iterative array transducers.
由一维细胞自动机计算的转导
研究了元胞自动机计算转导的能力,即将输入转换为输出。计算的转导族是根据处理输入和计算输出所允许的时间进行分类的。由于对快速转导有特别的兴趣,我们主要关注实时和线性时间的时间复杂性。我们首先通过将元胞自动机换能器与迭代阵列换能器进行比较来研究它们的计算能力,也就是说,我们将并行输入/输出模式与大规模并行机器的顺序输入/输出模式进行比较。直接仿真结果表明,并行模式并不比顺序模式弱。此外,对于一定的时间复杂度,元胞自动机换能器甚至比迭代阵列更强大。在论文的第二部分,将所讨论的模型与顺序器件单值有限状态传感器和确定性下推传感器进行了比较。结果表明,元胞自动机换能器比迭代阵列换能器能更快地模拟这两种模型。
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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