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A Hybrid Deep Learning-Driven SDN Enabled Mechanism for Secure Communication in Internet of Things (IoT)

机译:一种混合深度学习驱动的SDN支持物联网安全通信的机制(IOT)

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摘要

The Internet of Things (IoT) has emerged as a new technological world connecting billions of devices. Despite providing several benefits, the heterogeneous nature and the extensive connectivity of the devices make it a target of different cyberattacks that result in data breach and financial loss. There is a severe need to secure the IoT environment from such attacks. In this paper, an SDN-enabled deep-learning-driven framework is proposed for threats detection in an IoT environment. The state-of-the-art Cuda-deep neural network, gated recurrent unit (Cu- DNNGRU), and Cuda-bidirectional long short-term memory (Cu-BLSTM) classifiers are adopted for effective threat detection. We have performed 10 folds cross-validation to show the unbiasedness of results. The up-to-date publicly available CICIDS2018 data set is introduced to train our hybrid model. The achieved accuracy of the proposed scheme is 99.87%, with a recall of 99.96%. Furthermore, we compare the proposed hybrid model with Cuda-Gated Recurrent Unit, Long short term memory (Cu-GRULSTM) and Cuda-Deep Neural Network, Long short term memory (Cu- DNNLSTM), as well as with existing benchmark classifiers. Our proposed mechanism achieves impressive results in terms of accuracy, F1-score, precision, speed efficiency, and other evaluation metrics.
机译:物联网(IOT)的互联网已经成为一种新的技术世界连接数十亿设备。尽管提供了几个好处,异质性和设备的广泛连通性使它导致数据破坏和经济损失的网络攻击不同的目标。有一个严重需要从这种攻击保护物联网环境。在本文中,一个SDN启用深层学习驱动的框架,提出了在物联网环境的威胁检测。的状态的最先进的CUDA的深神经网络,门控重复单元(CU-DNNGRU),和CUDA的双向长短期记忆法(Cu-BLSTM)分类器采用有效威胁检测。我们已经进行了10倍交叉验证,以显示无偏的结果。向上最新公开可用的CICIDS2018数据集被引入到训练我们的混合模式。该方案的实现精度为99.87%,有99.96%召回。此外,我们比较CUDA的门控重复单元,长短期记忆(CU-GRULSTM)和CUDA的深层神经网络,长短期记忆(CU-DNNLSTM)所提出的混合模式,以及与现有的基准分类。我们提出的机制实现了精度,F1-得分,精度,速度效率,和其他评价标准方面令人印象深刻的结果。

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