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印度:使用特征优化和分类方法在移动自组织网络中进行入侵节点检测和隔离操作。

India: Intruder Node Detection and Isolation Action in Mobile Ad Hoc Networks Using Feature Optimization and Classification Approach.

机构信息

School of Computing, SASTRA Deemed to be University, Thanjavur, India.

出版信息

J Med Syst. 2019 May 10;43(6):179. doi: 10.1007/s10916-019-1309-2.

Abstract

Due to lack of a central bureaucrat in mobile ad hoc networks, the security of the network becomes serious issue. During malicious attacks, according to the motivation of intruder the severity of the threat varies. It may lead to loss of data, energy or throughput. This paper proposes a lightweight Intruder Node Detection and Isolation Action mechanism (INDIA) using feature extraction, feature optimization and classification techniques. The indirect and direct trust features are extracted from each node and the total trust feature is computed by combining them. The trust features are extracted from each node of MANET and these features are optimized using Particle Swarm Optimization (PSO) algorithm as feature optimization technique. These optimized feature sets are then classified using Neural Networks (NN) classifier which identifies the intruder node. The performance of the proposed methodology is studied in terms of various parameters such as success rate in packet delivery, delay in communication and the amount of energy consumption for identifying and isolating the intruder.

摘要

由于移动自组网中缺乏中央官僚机构,网络的安全性成为严重问题。在恶意攻击中,根据入侵者的动机,威胁的严重程度也不同。这可能导致数据、能量或吞吐量的损失。本文提出了一种使用特征提取、特征优化和分类技术的轻量级入侵者节点检测和隔离动作机制(INDIA)。从每个节点提取间接和直接信任特征,并通过组合它们计算总信任特征。从 MANET 的每个节点提取信任特征,并使用粒子群优化(PSO)算法作为特征优化技术对这些特征进行优化。然后使用神经网络(NN)分类器对这些优化后的特征集进行分类,该分类器可以识别入侵节点。该方法的性能是通过各种参数来评估的,如数据包投递成功率、通信延迟和识别和隔离入侵者所需的能量消耗。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1323/6510854/31588d1d1bea/10916_2019_1309_Fig1_HTML.jpg

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