A survey on Deep Learning based Intrusion Detection Systems on Internet of Things

S. T. Slevi, P. Visalakshi
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引用次数: 1

Abstract

The integration of IDS and Internet of Things (IoT) with deep learning plays a significant role in safety. Security has a strong role to play. Application of the IoT network decreases the time complexity and resources. In the traditional intrusion detection systems (IDS), this research work implements the cutting-edge methodologies in the IoT environment. This research is based on analysis, conception, testing and execution. Detection of intrusions can be performed by using the advanced deep learning system and multiagent. The NSL-KDD dataset is used to test the IoT system. The IoT system is used to test the IoT system. In order to detect attacks from intruders of transport layer, efficiency result rely on advanced deep learning idea. In order to increase the system performance, multi -agent algorithms could be employed to train communications agencies and to optimize the feedback training process. Advanced deep learning techniques such as CNN will be researched to boost system performance. The testing part an IoT includes data simulator which will be used to generate in continuous of research work finding with deep learning algorithms of suitable IDS in IoT network environment of current scenario without time complexity.
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基于深度学习的物联网入侵检测系统研究
IDS和物联网(IoT)与深度学习的融合在安全方面发挥着重要作用。安全可以发挥重要作用。物联网网络的应用降低了时间复杂度和资源。在传统的入侵检测系统(IDS)中,本研究工作在物联网环境中实现了最前沿的方法。本研究是基于分析、构思、测试和执行。入侵检测可以通过使用先进的深度学习系统和多智能体来完成。NSL-KDD数据集用于测试物联网系统。物联网系统用于对物联网系统进行测试。为了提高系统性能,可以采用多智能体算法对通信代理进行训练,并优化反馈训练过程。为了提高系统性能,将研究CNN等先进的深度学习技术。物联网的测试部分包括数据模拟器,该模拟器将用于在当前场景的物联网网络环境中使用深度学习算法生成合适的IDS,而不具有时间复杂度。
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