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Cellular Automata Rules and Linear Numbers

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 Added by Sudhakar Sahoo
 Publication date 2012
  fields Physics
and research's language is English




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In this paper, linear Cellular Automta (CA) rules are recursively generated using a binary tree rooted at 0. Some mathematical results on linear as well as non-linear CA rules are derived. Integers associated with linear CA rules are defined as linear numbers and the properties of these linear numbers are studied.



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153 - Veit Elser 2020
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