Toward Generating a New Cloud-Based Distributed Denial of Service (DDoS) Dataset and Cloud Intrusion Traffic Characterization

Author:

Shafi MohammadMoein12ORCID,Lashkari Arash Habibi12ORCID,Rodriguez Vicente3ORCID,Nevo Ron3ORCID

Affiliation:

1. Behaviour-Centric Cybersecurity Center (BCCC), School of Information Technology, York University, Toronto, ON M3J 1P3, Canada

2. Department of Electrical Engineering and Computer Science, York University, Toronto, ON M3J 1P3, Canada

3. cPacket, Milpitas, CA 95035, USA

Abstract

The distributed denial of service attack poses a significant threat to network security. Despite the availability of various methods for detecting DDoS attacks, the challenge remains in creating real-time detectors with minimal computational overhead. Additionally, the effectiveness of new detection methods depends heavily on well-constructed datasets. This paper addresses the critical DDoS dataset creation and evaluation domain, focusing on the cloud network. After conducting an in-depth analysis of 16 publicly available datasets, this research identifies 15 shortcomings across various dimensions, emphasizing the need for a new approach to dataset creation. Building upon this understanding, this paper introduces a new public DDoS dataset named BCCC-cPacket-Cloud-DDoS-2024. This dataset is meticulously crafted, addressing challenges identified in previous datasets through a cloud infrastructure featuring over eight benign user activities and 17 DDoS attack scenarios. Also, a Benign User Profiler (BUP) tool has been designed and developed to generate benign user network traffic based on a normal user behavior profile. We manually label the dataset and extract over 300 features from the network and transport layers of the traffic flows using NTLFlowLyzer. The experimental phase involves identifying an optimal feature set using three distinct algorithms: ANOVA, information gain, and extra tree. Finally, this paper proposes a multi-layered DDoS detection model and evaluates its performance using the generated dataset to cover the main issues of the traditional approaches.

Funder

Natural Sciences and Engineering Research Council

Publisher

MDPI AG

Reference59 articles.

1. Machine learning approaches for combating distributed denial of service attacks in modern networking environments;Aljuhani;IEEE Access,2021

2. DDoS attack detection and mitigation using SDN: Methods, practices, and solutions;Bawany;Arab. J. Sci. Eng.,2017

3. Detection of DDOS attack using deep learning model in cloud storage application;Agarwal;Wireless Personal Communications,2021

4. A survey on DDoS attack and defense strategies: From traditional schemes to current techniques;Aamir;Interdiscip. Inf. Sci.,2013

5. Detection and mitigation of DDoS attacks in SDN: A comprehensive review, research challenges and future directions;Singh;Comput. Sci. Rev.,2020

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