Industrial Internet of Things (IIoT) is a subset of Internet of Things (IoT) which involves
interconnected industrial devices to improve industrial system’s productivity and operational
capability. However, these smart systems are suspectable to different types of attack and that raises
a strong security concern as such attacks cause a huge damage to the industrial sector. In this
project, we provide a comparative analysis on IIOT-related dataset using several supervised and
unsupervised machine learning algorithms and evaluate their detection performance in terms of
accuracy, recall, precision. Furthermore, we conduct the experiments using three different
train/test split scenarios and observe how these scenarios impact the algorithms’ performance.
| Date of Award | 2022 |
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| Original language | American English |
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| Awarding Institution | - HBKU College of Science and Engineering
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Comprehensive Comparative Analysis of Attack Detecting Using Different Machine Learning Algorithms in IIoT
Mahmoud, L. (Author). 2022
Student thesis: Master's Dissertation