An algorithm to recognize the adversaries in self organizing networks inspired from the human immune system

Juniorika Lyngdoh, H. Kalita
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Abstract

Self organizing networks is a network formed by automatic configuration without any central control where by only the authorized nodes are allowed to join the network. As the system scales, it is practically impossible for each individual user to independently select an optimal service provider without conflicting with others. Hence, many research efforts of self organization framework inspired by biological systems have sprung up in the recent years in wireless telecommunication and networking. Inspired by the ecosystem some biologic models are applied in networks. These models facilitate the dynamic networking and out perform traditional methods. In this paper we will describe the working of the human immune system and defense body mechanism of the body. Though we know that our immune system may be strong to defend against any diseases but how does it recognize those pathogens and keep the body secure will be discussed in this paper. We have proposed a model and an algorithm to recognize the adversaries keep the network secured.
一种在自组织网络中识别对手的算法,灵感来自人体免疫系统
自组织网络是通过自动配置而形成的网络,没有任何中央控制,只允许授权的节点加入网络。随着系统的扩展,每个用户在不与其他用户发生冲突的情况下独立选择最优服务提供商实际上是不可能的。因此,近年来在无线通信和网络领域涌现出许多受生物系统启发的自组织框架研究。受生态系统的启发,一些生物学模型被应用于网络。这些模型便于动态组网,取代了传统方法。本文将介绍人体免疫系统的工作原理和机体的防御机制。虽然我们知道我们的免疫系统可能很强,可以抵御任何疾病,但它是如何识别这些病原体并保持身体安全的,这将在本文中讨论。我们提出了一个识别攻击者的模型和算法,以保证网络的安全。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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