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VMFCVD: An Optimized Framework to Combat Volumetric DDoS Attacks using Machine Learning

Despite significant development in distributed denial of service (DDoS) defense systems, the downtime caused by DDoS damages reputation, crushes end-user experience, and leads to considerable revenue loss. Volumetric DDoS attacks are the most common form of DDoS attack and are carried out by an army...

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Autores principales: Prasad, Arvind, Chandra, Shalini
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer Berlin Heidelberg 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8783776/
https://www.ncbi.nlm.nih.gov/pubmed/35096507
http://dx.doi.org/10.1007/s13369-021-06484-9
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author Prasad, Arvind
Chandra, Shalini
author_facet Prasad, Arvind
Chandra, Shalini
author_sort Prasad, Arvind
collection PubMed
description Despite significant development in distributed denial of service (DDoS) defense systems, the downtime caused by DDoS damages reputation, crushes end-user experience, and leads to considerable revenue loss. Volumetric DDoS attacks are the most common form of DDoS attack and are carried out by an army of infected IoT devices or by reflector servers, which increase attacks at massive scales. In this work, we propose a voting-based multimode framework to combat volumetric DDoS (VMFCVD) attacks. VMFCVD is based on a triad of fast detection mode (FDM), defensive fast detection mode (DFDM), and high accuracy mode (HAM) methods. FDM is designed to classify network traffic when the server is under attack. The highly dimensionally reduced dataset helps FDM accelerate detection speed. During our experiment, the dimension reduction for FDM was more than 97% while maintaining an accuracy of 99.9% in most cases. DFDM is an extended version of FDM that enhances malicious network traffic detection accuracy by tightening the detection technique. HAM focuses on detection accuracy, showing substantial improvement over FDM and DFDM. HAM activates when the server is stable. VMFCVD is extensively experimented on the latest benchmark DDoS and botnet datasets, namely the CICIDS2017 (BoT & DDoS), CSE-CIC-IDS2018 (BoT & DDoS), CICDDoS2019 (DNS, LDAP, SSDP & SYN), DoHBrw2020, NBaIoT2018 (Mirai), UNSW2018 BoTIoT, and UNSW NB15 datasets. The VMFCVD results show that it outperforms recent studies. VMFCVD performs exceptionally well when the server is under DDoS attack.
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spelling pubmed-87837762022-01-24 VMFCVD: An Optimized Framework to Combat Volumetric DDoS Attacks using Machine Learning Prasad, Arvind Chandra, Shalini Arab J Sci Eng Research Article-Computer Engineering and Computer Science Despite significant development in distributed denial of service (DDoS) defense systems, the downtime caused by DDoS damages reputation, crushes end-user experience, and leads to considerable revenue loss. Volumetric DDoS attacks are the most common form of DDoS attack and are carried out by an army of infected IoT devices or by reflector servers, which increase attacks at massive scales. In this work, we propose a voting-based multimode framework to combat volumetric DDoS (VMFCVD) attacks. VMFCVD is based on a triad of fast detection mode (FDM), defensive fast detection mode (DFDM), and high accuracy mode (HAM) methods. FDM is designed to classify network traffic when the server is under attack. The highly dimensionally reduced dataset helps FDM accelerate detection speed. During our experiment, the dimension reduction for FDM was more than 97% while maintaining an accuracy of 99.9% in most cases. DFDM is an extended version of FDM that enhances malicious network traffic detection accuracy by tightening the detection technique. HAM focuses on detection accuracy, showing substantial improvement over FDM and DFDM. HAM activates when the server is stable. VMFCVD is extensively experimented on the latest benchmark DDoS and botnet datasets, namely the CICIDS2017 (BoT & DDoS), CSE-CIC-IDS2018 (BoT & DDoS), CICDDoS2019 (DNS, LDAP, SSDP & SYN), DoHBrw2020, NBaIoT2018 (Mirai), UNSW2018 BoTIoT, and UNSW NB15 datasets. The VMFCVD results show that it outperforms recent studies. VMFCVD performs exceptionally well when the server is under DDoS attack. Springer Berlin Heidelberg 2022-01-23 2022 /pmc/articles/PMC8783776/ /pubmed/35096507 http://dx.doi.org/10.1007/s13369-021-06484-9 Text en © King Fahd University of Petroleum & Minerals 2021 This article is made available via the PMC Open Access Subset for unrestricted research re-use and secondary analysis in any form or by any means with acknowledgement of the original source. These permissions are granted for the duration of the World Health Organization (WHO) declaration of COVID-19 as a global pandemic.
spellingShingle Research Article-Computer Engineering and Computer Science
Prasad, Arvind
Chandra, Shalini
VMFCVD: An Optimized Framework to Combat Volumetric DDoS Attacks using Machine Learning
title VMFCVD: An Optimized Framework to Combat Volumetric DDoS Attacks using Machine Learning
title_full VMFCVD: An Optimized Framework to Combat Volumetric DDoS Attacks using Machine Learning
title_fullStr VMFCVD: An Optimized Framework to Combat Volumetric DDoS Attacks using Machine Learning
title_full_unstemmed VMFCVD: An Optimized Framework to Combat Volumetric DDoS Attacks using Machine Learning
title_short VMFCVD: An Optimized Framework to Combat Volumetric DDoS Attacks using Machine Learning
title_sort vmfcvd: an optimized framework to combat volumetric ddos attacks using machine learning
topic Research Article-Computer Engineering and Computer Science
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8783776/
https://www.ncbi.nlm.nih.gov/pubmed/35096507
http://dx.doi.org/10.1007/s13369-021-06484-9
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