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Neural synchronization of optimal structure-based group of neural networks

机译:基于优化结构的神经网络群体神经网络

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In this paper, a neural synchronization of the optimal structure-based group of neural networks is proposed. Asymmetric cryptography is widely used to generate a key amongst two parties and to exchange the key through an insecure channel. However, since the methods that used this strategy, like RSA, have been compromised, new methods for producing a key that can offer security must be discovered. A new group of cryptography known as neural cryptography was created to solve this issue. The primary aim of neural cryptography is to produce a secret key over an unreliable medium. The optimal neural network architecture for creating and defining a secret key between the two authorized individuals is examined in this article. Furthermore, studies into the coordination of a group of neural networks are uncommon. For the design of the public key exchange protocol, synchronization of a cluster of neural networks with Three Layer Tree Parity Machine (TLTPM) is proposed. To calculate the synchronization time, steps taken, and the number of times the attacking neural network could replicate the actions of the two accepted networks, more than 15 million simulations were run. Various parametric experiments have been conducted on the proposed methodology. Simulations of the approach show that it is correct, according to the results of the paper.(c) 2021 Elsevier B.V. All rights reserved.
机译:本文提出了一种基于最优结构的神经网络的神经同步。不对称加密被广泛用于在两方之间生成一个关键,并通过不安全的通道交换键。但是,由于使用此策略的方法,如RSA已被损害,因此必须发现可以提供可以提供安全性的密钥的新方法。创建了一群被称为神经密码学的密码学群体以解决这个问题。神经密码学的主要目标是在不可靠的媒体上产生秘密密钥。在本文中检查了用于创建和定义两个授权个人之间的秘密密钥的最佳神经网络架构。此外,研究一组神经网络的协调罕见。对于公钥交换协议的设计,提出了具有三层奇偶校验机(TLTPM)的神经网络群集的同步。为了计算同步时间,采取的步骤,攻击神经网络可以复制两个接受网络的动作的次数,运行了超过1500万次模拟。已经在提出的方法中进行了各种参数实验。根据本文的结果,这种方法的模拟表明它是正确的。(c)2021 Elsevier B.v.保留所有权利。

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