面向物联网冷库监控系统的人工智能/ML 驱动型入侵检测框架

IF 1.5 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Security and Privacy Pub Date : 2024-04-18 DOI:10.1002/spy2.400
M. Prasad, Pankaj Pal, Sachin Tripathi, Keshav P. Dahal
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引用次数: 0

摘要

基于物联网的监控系统可远程控制和管理智能环境。由于采用无线通信,部署的传感器节点更容易受到攻击。入侵检测系统是检测恶意流量和防止异常活动的有效机制。本文为冷库监控系统提出了一种入侵检测框架。温度是影响环境和损害存储产品的主要参数。恶意节点会注入操纵温度的虚假数据,并转发被操纵的数据。它还会将数据泛滥到邻近节点。在这项工作中,生成并收集了用于入侵检测的数据。应用了两种机器学习技术:有监督学习(贝叶斯粗糙集)和无监督学习(微聚类)。与现有方法相比,所提出的方法显示出更好的性能。
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AI/ML driven intrusion detection framework for IoT enabled cold storage monitoring system
An IoT‐based monitoring system remotely controls and manages intelligent environments. Due to wireless communication, deployed sensor nodes are more vulnerable to attacks. An intrusion detection system is an efficient mechanism to detect malicious traffic and prevent abnormal activities. This article suggests an intrusion detection framework for the cold storage monitoring system. The temperature is the main parameter that affects the environment and harms stored products. A malicious node injects false data that manipulates temperature and forwards manipulated data. It also floods the data to neighbor nodes. In this work, data are generated and collected for intrusion detection. Two machine learning techniques have been applied: supervised learning (Bayesian rough set) and unsupervised learning (micro‐clustering). The proposed method shows better performance than existing methods.
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