物联网中的安全:通过深度学习技术在软件定义网络中检测僵尸网络

Ivan Letteri, G. D. Penna, Giovanni De Gasperis
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引用次数: 0

摘要

物联网(IoT)的普及使网络物理智能设备成为每个人生活中的一个元素,但也使它们暴露于为传统网络应用程序(如僵尸网络)设计的恶意软件之下。僵尸网络是最广泛和最危险的恶意软件之一,因此对它们的检测是一项重要的任务。在这种情况下,许多工作使用一般的恶意软件检测技术,并依赖于旧的或有偏差的流量样本,使其结果不完全可靠。此外,软件定义网络(SDN)正在逐渐取代传统网络,特别是在物联网中,这限制了可用于检测僵尸网络的功能。我们提出了一种基于深度学习技术的僵尸网络检测方法,该方法在一个新的sdn特定数据集上进行了测试,具有很高(高达97%)的分类准确率。我们的算法已经在两个最先进的框架上实现,即Keras和TensorFlow,因此我们有信心我们的结果是可靠的,并且易于重复。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Security in the internet of things: botnet detection in software-defined networks by deep learning techniques
The diffusion of the internet of things (IoT) is making cyber-physical smart devices an element of everyone's life, but also exposing them to malware designed for conventional web applications, such as botnets. Botnets are one of the most widespread and dangerous malware, so their detection is an important task. Many works in this context make use of general malware detection techniques and rely on old or biased traffic samples, making their results not completely reliable. Moreover, software-defined networking (SDN), which is increasingly replacing conventional networking especially in the IoT, limits the features that can be used to detect botnets. We propose a botnet detection methodology based on deep learning techniques, tested on a new, SDN-specific dataset with a high (up to 97%) classification accuracy. Our algorithms have been implemented on two state-of-the-art frameworks, i.e., Keras and TensorFlow, so we are confident that our results are reliable and easily reproducible.
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