异构环境下DDoS缓解性能分析

A. Verma, R. Saha
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摘要

由于缺乏安全通信和认证的标准协议等原因,计算机网络和车载网络都容易出现多重信息安全漏洞。分布式拒绝服务(DDoS)是一种破坏网络通信的威胁。准确地检测和预防DDoS攻击是保证网络安全的必要条件。在本文中,我们实验了两种基于机器学习的技术,分别用于攻击检测和攻击防御。这些检测和预防技术在不同的环境中实现,包括车载网络环境和计算机网络环境。采用三种不同的数据集连接到异构环境进行实验。第一个数据集是基于计算机网络流量的NSL-KDD数据集。第二个数据集是基于模拟的车载环境,第三个CIC-DDoS 2019数据集是基于计算机网络的数据集。这些数据集包含不同数量的网络流量的属性和实例。在WEKA中使用AdaBoostM1分类算法进行攻击检测,在STATA中使用Logit模型进行攻击防护。结果表明,基于仿真的车辆数据集获得了99.9%以上的准确率。这是三个数据集中准确率最高的,并且在很短的时间内(即0.5秒)获得。以同样的方式,我们使用基于Logit回归的模型对数据包进行分类。这个模型显示出100%的准确度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Analysis of DDoS Mitigation in Heterogeneous Environments
Computer and Vehicular networks, both are prone to multiple information security breaches because of many reasons like lack of standard protocols for secure communication and authentication. Distributed Denial of Service (DDoS) is a threat that disrupts the communication in networks. Detection and prevention of DDoS attacks with accuracy is a necessity to make networks safe.In this paper, we have experimented two machine learning-based techniques one each for attack detection and attack prevention. These detection & prevention techniques are implemented in different environments including vehicular network environments and computer network environments. Three different datasets connected to heterogeneous environments are adopted for experimentation. The first dataset is the NSL-KDD dataset based on the traffic of the computer network. The second dataset is based on a simulation-based vehicular environment, and the third CIC-DDoS 2019 dataset is a computer network-based dataset. These datasets contain different number of attributes and instances of network traffic. For the purpose of attack detection AdaBoostM1 classification algorithm is used in WEKA and for attack prevention Logit Model is used in STATA. Results show that an accuracy of more than 99.9% is obtained from the simulation-based vehicular dataset. This is the highest accuracy rate among the three datasets and it is obtained within a very short period of time i.e., 0.5 seconds. In the same way, we use a Logit regression-based model to classify packets. This model shows an accuracy of 100%.
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