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ARTIFICIAL NEURAL NETWORKS AND CHAOS DYNAMICS FOR RADIATION SIGNAL ENCRYPTION

机译:辐射信号加密的人工神经网络和混沌动力学

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摘要

Governments are interested in radiation signal encryption in projects relating to international safeguards; however, the available algorithms do not suitably address the challenges presented by the increasing computational capability of various actors, which require recent encryption algorithms to be more robust against attack algorithms. Therefore, an algorithmic approach for performing radiation signal encryption employing the nonlinear capabilities of artificial neural networks with the noise-like properties of chaotic systems is proposed herein. The radiation signal digital envelope consists of the encrypted signal such as may be found through gamma spectroscopy, the secret key for the encryption, and the associated hash value. The presented algorithmic approach demonstrates, in an orderly manner, an integrated method for computing this radiation signal digital envelope. Indispensable constituents of encryption include both the construction of a time series with chaotic characteristics and the incorporation of a hash function generator to satisfy the security requirements of confidentiality, authentication, and nonrepudiation. The methodology is demonstrated via the encryption and subsequent decryption of two frequently occurring radiation signals, namely, gamma spectroscopy signals from ~(60)Co and ~(137)Cs. The results obtained demonstrate the capability of the algorithmic approach to integrate artificial neural networks and chaos dynamics to produce the radiation signal digital envelope (for given security requirements).
机译:各国政府对与国际保障有关的项目中的辐射信号加密感兴趣;然而,可用的算法不能适当地解决各种参与者不断提高的计算能力所带来的挑战,这要求最近的加密算法对攻击算法更加健壮。因此,本文提出了一种算法算法,该算法利用具有混沌系统的噪声特性的人工神经网络的非线性能力来执行辐射信号加密。辐射信号数字包络由诸如可以通过伽马光谱法找到的加密信号,用于加密的秘密密钥以及关联的哈希值组成。提出的算法方法以有序的方式演示了一种用于计算此辐射信号数字包络的集成方法。加密必不可少的组成部分既包括具有混沌特征的时间序列的构造,也包括哈希函数生成器的合并,以满足机密性,身份验证和不可否认性的安全性要求。通过对两个频繁出现的辐射信号(即来自〜(60)Co和〜(137)Cs的伽马能谱信号)进行加密和随后的解密,证明了该方法。获得的结果证明了该算法方法能够集成人工神经网络和混沌动力学,以产生辐射信号数字包络(对于给定的安全要求)。

著录项

  • 来源
    《Nuclear Technology》 |2015年第1期|61-73|共13页
  • 作者单位

    Purdue University, School of Nuclear Engineering, Applied Intelligent Systems Laboratory West Lafayette, Indiana 47907;

    Purdue University, School of Nuclear Engineering, Applied Intelligent Systems Laboratory West Lafayette, Indiana 47907;

    Purdue University, School of Nuclear Engineering, Applied Intelligent Systems Laboratory West Lafayette, Indiana 47907;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    signal encryption; neural networks; chaotic systems;

    机译:信号加密;神经网络;混沌系统;

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