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A more secure parallel keyed hash function based on chaotic neural network

机译:基于混沌神经网络的更安全的并行键控哈希函数

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摘要

Although various hash functions based on chaos or chaotic neural network were proposed, most of them can not work efficiently in parallel computing environment. Recently, an algorithm for parallel keyed hash function construction based on chaotic neural network was proposed [13]. However, there is a strict limitation in this scheme that its secret keys must be nonce numbers. In other words, if the keys are used more than once in this scheme, there will be some potential security flaw. In this paper, we analyze the cause of vulnerability of the original one in detail, and then propose the corresponding enhancement measures, which can remove the limitation on the secret keys. Theoretical analysis and computer simulation indicate that the modified hash function is more secure and practical than the original one. At the same time, it can keep the parallel merit and satisfy the other performance requirements of hash function, such as good statistical properties, high message and key sensitivity, and strong collision resistance, etc.
机译:尽管提出了各种基于混沌或混沌神经网络的哈希函数,但是它们大多数不能在并行计算环境中有效地工作。最近,提出了一种基于混沌神经网络的并行键控哈希函数构造算法[13]。但是,此方案存在严格的限制,即其秘密密钥必须是随机数。换句话说,如果在此方案中多次使用密钥,则将存在一些潜在的安全漏洞。在本文中,我们详细分析了原始密钥的脆弱性原因,然后提出了相应的增强措施,可以消除对密钥的限制。理论分析和计算机仿真表明,改进后的哈希函数比原始哈希函数更安全,更实用。同时,它可以保持并行性能,并满足哈希函数的其他性能要求,例如良好的统计属性,较高的消息和键敏感度以及较强的抗碰撞性等。

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