Review on Machine Learning Based Intrusion Detection for MANET Security

Wafa Bouassaba, A. Nabou, M. Ouzzif
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引用次数: 2

Abstract

Recently, the mobile ad hoc network (MANET) has enjoyed a great reputation thanks to its advantages such as: high performance, no expensive infrastructure to install, use of unlicensed frequency spectrum, and fast distribution of information around the transmitter. But the topology of MANETs attracts the attention of several attacks. Although authentication and encryption techniques can provide some protection, especially by minimizing the number of intrusions, such cryptographic techniques do not work effectively in the case of unseen or unknown attacks. In this case, the machine learning approach is successful to detect unfamiliar intrusive behavior. Security methodologies in MANETs mainly focus on eliminating malicious attacks, misbehaving nodes, and providing secure routing. In this paper we present to most recent works that propose or apply the concept of Machine Learning (ML) to secure the MANET environment.
基于机器学习的MANET安全入侵检测研究进展
最近,移动自组织网络(MANET)因其高性能、无需安装昂贵的基础设施、使用免许可频谱以及在发射机周围快速分发信息等优点而享有很高的声誉。但是,manet的拓扑结构引起了一些攻击的注意。虽然身份验证和加密技术可以提供一些保护,特别是通过最小化入侵的数量,但是这种加密技术在不可见或未知的攻击情况下不能有效地工作。在这种情况下,机器学习方法成功地检测了不熟悉的侵入行为。manet的安全方法主要集中在消除恶意攻击、行为不端的节点和提供安全路由。在本文中,我们介绍了最近提出或应用机器学习(ML)概念来保护MANET环境的工作。
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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