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Improvement and performance analysis of a novel hash function based on chaotic neural network

机译:基于混沌神经网络的新型哈希函数的改进和性能分析

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摘要

In this paper, we reconsider and analyze our previous paper a novel hash algorithm construction based on chaotic neural network, then present equal-length and unequal-length forgery attacks against its security in detail, and then propose a significantly improved approach by utilizing a method of complicated nonlinear computation to enhance the security of the original hash algorithm. Theoretical analysis and computer simulation indicate that the improved algorithm can completely resist the two kinds of forgery attacks and also shows other better performance than the original one, such as better message and key sensitivity, statistical properties, which can satisfy the performance requirements of a more secure hash function.
机译:在本文中,我们重新考虑和分析了先前的基于混沌神经网络的哈希算法构造,然后针对安全性提出了等长和不等长的伪造攻击,然后通过一种方法提出了一种显着改进的方法复杂的非线性计算,以提高原始哈希算法的安全性。理论分析和计算机仿真表明,改进后的算法可以完全抵御两种伪造攻击,并且还表现出比原始算法更好的性能,例如更好的消息和密钥敏感性,统计特性,可以满足更多算法的性能要求。安全哈希函数。

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