Network Source Identification Mechanism for IoT Devices Using Machine Learning Techniques

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Abstract

The rapid progress and evolution of the Internet of Things (IoT) have led to a significant increase in the occurrence of security gaps. Pinpointing the source of network traffic coming from IoT devices can be challenging, but doing so can reduce security risks. This study proposes a network traffic source identification mechanism that leverages machine learning (ML) techniques to accurately determine the source of network traffic. The study utilizes a diverse dataset obtained from a purpose-built IoT/IIoT testbed and employs feature extraction, model development, and evaluation techniques. By utilizing network traffic features, a range of classifiers, including LGBMClassifier (LGBM), CatBoostClassifier (CB), RandomForestClassifier (RF), ExtraTreesClassifier (ET), KneighborsClassifier (KNN), and DecisionTreeClassifier (DT), were trained and evaluated. The results demonstrate exceptional performance across the classifiers, with high accuracy, precision, recall, and F1 scores achieved in identifying the source of network traffic. Among the classifier models, LGBM achieved the best accuracy value of 0.99999857, precision value of 0.99999859, and F1 score of 0.999998803, with CB achieving the best recall of 0.999997875. Some of these results are novel, and others performed better than existing systems. The findings of this study contribute to source identification, ensure the accountability of IoT network users, and provide insights into developing better defenses against security threats in the IoT domain
使用机器学习技术的物联网设备网络源识别机制
物联网(IoT)的快速发展和演变导致安全漏洞的发生显著增加。准确定位来自物联网设备的网络流量来源可能具有挑战性,但这样做可以降低安全风险。本研究提出了一种利用机器学习(ML)技术准确确定网络流量来源的网络流量源识别机制。该研究利用了从专用物联网/工业物联网测试平台获得的多种数据集,并采用了特征提取、模型开发和评估技术。利用网络流量特征,训练和评估了LGBMClassifier (LGBM)、CatBoostClassifier (CB)、RandomForestClassifier (RF)、ExtraTreesClassifier (ET)、KneighborsClassifier (KNN)和decisiontreecclassifier (DT)等一系列分类器。结果显示了不同分类器的卓越性能,在识别网络流量来源方面具有很高的准确性、精密度、召回率和F1分数。在分类器模型中,LGBM的准确率值为0.99999857,精密度值为0.99999859,F1得分为0.999998803,CB的召回率为0.999997875。其中一些结果是新颖的,而另一些则比现有的系统表现得更好。本研究的结果有助于识别来源,确保物联网网络用户的问责制,并为开发更好的防御物联网领域的安全威胁提供见解
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