A Survey Of Machine Learning Techniques For Detecting Anomaly In Internet Of Things (IoT)

Imran Imran, Syed Mubashir Ali, R. Faiz, M. M. Alam, Syed Kashif Ali Quadri, Muhammad Razeen Bari, Muhammad Farooq Shibli
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Abstract

In recent years, there has been a lot of focus on anomaly detection. Technological advancements, such as the Internet of Things (IoT), are rapidly being acknowledged as critical means for data streams that create massive amounts of data in real time from a variety of applications. Analyzing this gathered data to detect abnormal occurrences helps decrease functional hazards and avoid unnoticed errors that cause programme delay. Methods for evaluating specific anomalous behaviorsin IoT data stream sources have been established and developed in the current literature. Unfortunately, there are very few thorough researches that include all elements of IoT data acquisition. As a result, this article seeks to address this void by presenting a comprehensive picture of numerous cutting-edge solutions on the fundamental concerns and essential issues in IoT data. The data type, types of anomalies,the learning method, datasets, and evaluation criteria are all described. Lastly, the issues that necessitate further investigation and future approaches are highlighted.
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物联网异常检测的机器学习技术综述
近年来,异常检测成为人们关注的焦点。物联网(IoT)等技术进步正迅速被认为是数据流的关键手段,可以从各种应用程序中实时创建大量数据。分析这些收集到的数据以检测异常情况有助于减少功能危害并避免导致程序延迟的未被注意到的错误。在当前的文献中,已经建立和发展了评估物联网数据流来源中特定异常行为的方法。不幸的是,很少有深入的研究包括物联网数据采集的所有元素。因此,本文试图通过全面介绍物联网数据中基本问题和基本问题的众多前沿解决方案来解决这一空白。数据类型、异常类型、学习方法、数据集和评估标准都进行了描述。最后,强调了需要进一步调查的问题和今后的做法。
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