Energy Efficient Approach for Intrusion Detection System for WSN by applying Optimal Clustering and Genetic Algorithm

Shubhangi Singh, R. S. Kushwah
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引用次数: 5

Abstract

Ubiquitous computing is modifying the presence of human being in the current epoch. Smart home is solitary of the emerging instances for omnipresent computing solicitations. Wireless Sensor Network can hypothetically be responsible for information about environmental and confidential activities and their status. This information can be expedient for assortment of tenacities like monitoring home sanctuary, exploratory status of nodes, and replacing nodes that are deficient or dead. The sensor network needs to be protected from intrusions, anomalies and incongruities. Concluded ages, numerous intrusion detection systems are anticipated for thwarting wireless sensor networks from intrusions. This research work is taking conventional probabilistic clustering protocol concepts, also considering heterogeneity and behaviour based detection procedure in wireless sensor network as an effective way to increase the detection accuracy, network lifetime and stability. Various issues in Wireless Sensor Networks are formulated as multidimensional optimization problems, and impend through self-organizing concept and intrusion detection architecture. In this paper, we have proposed an optimized cluster based approach for intrusion detection system using genetic algorithm, to make an optimized agent selection process and adaptive intrusion detection which depends upon prevailing network conditions and resource status. Here, simulation results have shown that with this network designing the network efficiency and stability period have increased extensively.
基于最优聚类和遗传算法的WSN入侵检测系统节能方法
普适计算正在改变当今时代人类的存在。智能家居是无所不在的计算请求的新兴实例之一。假设无线传感器网络可以负责有关环境和机密活动及其状态的信息。这些信息对于诸如监视家庭庇护所、探索节点状态以及替换有缺陷或死亡的节点等活动的分类是有利的。传感器网络需要防止入侵、异常和不协调。近年来,许多入侵检测系统有望阻止无线传感器网络的入侵。本研究在传统的概率聚类协议概念的基础上,考虑到无线传感器网络的异构性和基于行为的检测过程,是提高检测精度、网络寿命和稳定性的有效途径。无线传感器网络中的各种问题被表述为多维优化问题,并通过自组织概念和入侵检测体系结构来解决。本文提出了一种基于遗传算法的入侵检测系统优化聚类方法,根据当前网络条件和资源状况,优化agent选择过程并进行自适应入侵检测。仿真结果表明,该网络的设计大大提高了网络的效率和稳定周期。
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