利用机器学习检测物联网环境中的异常情况

Harini Bilakanti, Sreevani Pasam, Varshini Palakollu, Sairam Utukuru
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引用次数: 0

摘要

本研究论文深入探讨了物联网(IoT)网络中的安全问题,强调了保护互联物理设备产生的大量数据的必要性。物联网网络中部署的传感器和设备中存在的异常和故障会严重影响物联网系统的功能和结果。本研究的主要重点是识别传感器被篡改时物联网设备中的异常情况,重点是机器学习技术的应用。虽然单类 SVM、高斯奈维贝叶斯和 XG Boost 等有监督方法已被证明在异常检测中有效,但采用无监督方法的研究却明显不足。这种稀缺性主要归因于缺乏用于模型训练的定义明确的基本事实。这项研究采用了一种创新方法,研究了无监督算法(包括隔离林和局部离群因子)与有监督技术的效用,以提高异常检测的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anomaly detection in IoT environment using machine learning
This research paper delves into the security concerns within Internet of Things (IoT) networks, emphasizing the need to safeguard the extensive data generated by interconnected physical devices. The presence of anomalies and faults in the sensors and devices deployed within IoT networks can significantly impact the functionality and outcomes of IoT systems. The primary focus of this study is the identification of anomalies in IoT devices arising sensor tampering, with an emphasis on the application of machine learning techniques. While supervised methods like one‐class SVM, Gaussian Naive Bayes, and XG Boost have proven effective in anomaly detection, there has been a noticeable scarcity of research employing unsupervised methods. This scarcity is mainly attributed to the absence of well‐defined ground truths for model training. This research takes an innovative approach by investigating the utility of unsupervised algorithms, including Isolation Forest and Local Outlier Factor, alongside supervised techniques to enhance the precision of anomaly detection.
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