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Optimum Cellular Automata Configurations for Encryption.

机译:用于加密的最佳蜂窝自动机配置。

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摘要

Elementary cellular automata (ECA) is using Boolean logic functions to generate populations of ones and zeros. Population takes place temporally; each row of bits are populated based on the data from the previous row. The rules followed for generation of the next row are the functions mentioned above. Some rules produce very linear and predictable sets of binary data whereas some of them are chaotic in nature, like rule 30, and can be used to produce pseudo-random populations. This state by state calculation is ideal for cryptography in that it relies on an initial state (password or key) and can be streamed or generated as more data is transferred; the patterns are also largely unknown and are not predictable or linear in some cases. Currently, research shows many promising configurations of population generation that can be used for securing digital data or communications. Unfortunately the chaotic rules tend to repeat themselves after a given amount of temporal generation. This cyclic behavior is non-linear and near impossible to detect without generating the ECA. This research is aimed at finding the relationships between row length and cycle length in an effort to make a given key more effective by lengthening or eliminating this repetitious behavior.
机译:基本元胞自动机(ECA)使用布尔逻辑函数生成一和零的填充。人口暂时发生;根据上一行的数据填充每一行的位。生成下一行所遵循的规则是上述功能。一些规则产生非常线性且可预测的二进制数据集,而其中一些规则本质上是混乱的,例如规则30,可用于产生伪随机总体。这种逐个状态的计算方法非常适合加密,因为它依赖于初始状态(密码或密钥),并且可以在传输更多数据时流式传输或生成。模式在很大程度上也是未知的,在某些情况下是不可预测的或线性的。当前,研究表明可用于保护数字数据或通信的人口产生的许多有前途的配置。不幸的是,混沌规则往往会在一定数量的时间生成之后重复出现。这种循环行为是非线性的,并且几乎不可能在不生成ECA的情况下进行检测。这项研究旨在发现行长度和循环长度之间的关系,以通过延长或消除此重复行为来使给定密钥更有效。

著录项

  • 作者

    Nichols, Daniel.;

  • 作者单位

    Middle Tennessee State University.;

  • 授予单位 Middle Tennessee State University.;
  • 学科 Computer science.;Computer engineering.
  • 学位 M.S.
  • 年度 2015
  • 页码 88 p.
  • 总页数 88
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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