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An Efficient Low Complexity Edge-Cloud Framework for Security in IoT Networks

机译:有效的低复杂性边缘云框架,用于IOT网络中的安全性

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Internet of Things (IoT) and its applications are becoming commonplace with more devices, but always at risk of network security. It is therefore crucial for an IoT network design to identify attackers accurately, quickly and promptly. Many solutions have been proposed, mainly concerning secure IoT architectures and classification algorithms, but none of them have paid enough attention to reducing the complexity. Our proposal in this paper is an edge-cloud architecture that fulfills the detection task right at the edge layer, near the source of the attacks for quick response, versatility, as well as reducing the cloud’s workload. We also propose a multi-attack detection mechanism called LCHA (Low-Complexity detection solution with High Accuracy) , which has low complexity for deployment at the edge zone while still maintaining high accuracy. The performance of our proposed mechanism is compared with that of other machine learning and deep learning methods using the most updated BoT-IoT data set. The results show that LCHA outperforms other algorithms such as NN, CNN, RNN, KNN, SVM, KNN, RF and Decision Tree in terms of accuracy and NN in terms of complexity.
机译:事物互联网(IOT)及其应用正在具有更多设备,但始终面临网络安全的风险。因此,IOT网络设计至关重要,以准确,快速及时地识别攻击者。已经提出了许多解决方案,主要是关于安全的物联网架构和分类算法,但它们都没有足够的重视降低复杂性。我们本文的提议是一个边缘云架构,它在边缘层的攻击源右侧满足边缘层的检测任务,以获得快速响应,多功能性,以及减少云的工作负载。我们还提出了一种多攻击检测机制,称为LCHA(具有高精度的低复杂性检测解决方案),其在边缘区域的部署方面具有低复杂性,同时仍保持高精度。使用最新的BOT-IOT数据集,与其他机器学习和深度学习方法的表现进行了比较。结果表明,根据复杂性,LCHA在精度和NN方面优于其他算法,例如NN,CNN,RNN,KNN,SVM,KNN,RF和决策树。

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