人工智能辅助物联网数据入侵检测

A. Shukla, Shahanawaj Ahamad, G. Rao, Avein Jabar Al-Asadi, Ankur Gupta, Makhan Kumbhkar
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引用次数: 20

摘要

自物联网(IoT)技术引入以来,确保物联网网络的安全变得越来越重要。使用各种入侵检测系统(IDS)可以识别和预测网络异常和威胁。尽管物联网容易受到攻击,但早期发现恶意行为可以防止数据泄露。在这项工作中,主要目标是开发可用于检测物联网网络攻击的机器人工智能节能模型。为了构建模型,必须收集来自物联网环境的正常和攻击数据。贝叶斯网络、人工神经网络和支持向量机被认为是最有前途的。利用往返时间和功耗数据,传统的三层人工神经网络在现实世界中得到了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence Assisted IoT Data Intrusion Detection
It has become increasingly important since the introduction of Internet of Things (IoT) technology to ensure the security of IoT networks. Network anomalies and threats can be identified and predicted using a variety of intrusion detection systems (IDS). Despite the fact that the Internet of Things is vulnerable to attacks, early detection of malicious behavior can prevent data from being compromised. In this work, the primary goal is to develop machine artificial intelligence energy efficient models that can be used to detect attacks on the Internet of Things network. Normal and attack data from the IoT environment must be collected in order to construct a model. The Bayesian Network, the Artificial Neural Network, and the Support Vector Machine are considered to have the most promise. Using roundtrip time and power consumption data, a traditional three-layer Artificial Neural Network is put through its paces in the real world.
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