防止物联网僵尸网络攻击的深度残差CNN

D. T. Rahmantyo, B. Erfianto, G. B. Satrya
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引用次数: 2

摘要

广泛的物联网(IoT)设备被恶意软件感染是物联网网络攻击中越来越重要的可行目标,例如僵尸网络、病毒、木马等。僵尸网络利用不安全的物联网设备(例如,CCTV,树莓派,Arduino Uno, ESP8266等)通过使用互联网流量进行操作。近年来,备受瞩目的物联网设备供应商和来自各大学的研究人员都在探索物联网设备对僵尸网络攻击的鲁棒性。本研究使用深度学习方法来防止对物联网网络的僵尸网络攻击。将所提方法的深度残差一维CNN (1DCNN)模型用于僵尸网络流量检测。提供了两种算法:N-BaIoT数据集的数据处理和物联网僵尸网络检测训练与测试。对于数据处理、训练和测试,对数据集进行了评估,并使用不同的优化器对模型进行了优化。本研究使用RMS Prop、ADaDelta、AdaGrad、AdaMax和Adam作为优化器,分别将CNN与LSTM、CNN与RNN、Deep residual 1DCNN进行比较。结果表明,基于Adam的Deep Residual 1DCNN的训练准确率最高,为88.67%,验证准确率为88.67%,测试准确率为88.53%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Residual CNN for Preventing Botnet Attacks on The Internet of Things
Extensive internet of things (IoT) devices being in-fected by malware are an increasingly important viable objective in IoT cyberattacks e.g., botnet, virus, trojan, etc. The botnets got leverage from unsecured IoT devices (e.g., CCTV, Raspberry Pi, Arduino Uno, ESP8266, etc) that operates by using the Internet traffic. In recent year, the high-profile IoT device’s vendor and the researcher from all over universities are exploring the robustness of IoT devices against botnet attacks. This research uses a deep learning approach to prevent botnet attacks on IoT networks. The deep residual one-dimensional CNN (1DCNN) model as the proposed method is used for botnet traffic detection. Two algorithms are provided: data processing for the N-BaIoT dataset and IoT botnet detection training and testing. For data processing, training, and testing, the datasets were evaluated, and the model was optimized with different optimizers. This research used RMS Prop, ADaDelta, AdaGrad, AdaMax, and Adam as optimizers and the CNN was compared with LSTM, CNN with RNN, and Deep residual 1DCNN, respectively. The results showed that Deep Residual 1DCNN with Adam has the highest training accuracy of 88.67%, 88.67% for validation accuracy, and 88.53%for test accuracy.
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