Menyu
ITI
əməkdaslarının elmi isləri
Elektron kitabxana
Konfranslar İnformasiya Sistemi
Qəzetlər
UOT 004
|
ITI əməkdaşlarının elmi işləri - məqalə |
Biblioqrafik təsvir | Abdullayeva , F.D. Convolutional Neural NetworkBased Automatic Diagnostic System for AL-DDoS Attacks Detection / F.D. Abdullayeva // International Journal of Cyber Warfare and Terrorism. - 2022. - N: vol.12, no.1. - P. 1-15. | Annotasiya | Distributed denial of service (DDoS) attacks are one of the main threats to information security. The
purpose of DDoS attacks at the network (IP) and transport (TCP) layers is to consume the network
bandwidth and deny service to legitimate users of the target system. Application layer DDoS attacks
(AL-DDoS) can be organized against many different applications. Many of these attackstarget HTTP,
in which case their goal is to deplete the resources of web services. Various schemes have been
proposed to detect DDoS attacks on network and transport layers. There are very few works being
done to detect AL-DDoS attacks. The development of an intelligent system automatically detecting
AL-DDoS attacks in advance is very necessary. In this paper to detect AL-DDoS attacks a deep
learning model based on the convolutional neural network is proposed. To simulate the AL-DDoS
attack detection process, while in testing of the model on CSE-CIC-IDS2018 DDoS and CSIC 2010
datasets, 0.9974 and 0.9059 accuracy values were obtained, respectively. | Elektron variant | Elektron variant |
|
________
© ict.az http://ict.az/az
|
|