In this paper we introduce an intrusion detection system for Denial of Service (DoS) attacks against Domain Name System (DNS). Our system architecture consists of two most important parts: a statistical preprocessor and a neural network classifier. The preprocessor extracts required statistical features in a shorttime frame from traffic received by the target name server. We compared three different neural networks for detecting and classifying different types of DoS attacks. The proposed system is evaluated in a simulated network and showed that the best performed neural network is a feed-forward backpropagation with an accuracy of 99%
The key objective of a Distributed Denial of Service (DDoS) attack is to compile multiple systems ac...
A Network Intrusion Detection System is a critical component of every internet connected system due ...
Due to the expansion of high-speed Internet access, the need for secure and reliable networks has be...
Along with the explosive growth of the Internet, the demand for efficient and secure Internet Infra...
AbstractThe potential damage to computer networks keeps increasing due to a growing reliance on the ...
A solo attack may cause a big loss in computer and network systems, its prevention is, therefore, ve...
The potential damage to computer networks keeps increasing due to a growing reliance on the Internet...
The emergent damage to computer network keeps increasing due to an extensive and prevalent connectiv...
The emergent damage to computer network keeps increasing due to an extensive and prevalent connectiv...
© International Research Publication House This paper discusses the concept and problem of detecting...
Purpose. The article is aimed at the development of a methodology for detecting attacks on a compute...
A method for detecting denial-of-service attacks on web applications based on the use of a multi-lay...
The article discusses the experience of using artificial neural networks to detect low-intensity (lo...
Denial of service (DoS) attack is among the most significant types of attacks in cyber security. The...
The paper proposes effective method of computer network protection from data exfiltration by the sys...
The key objective of a Distributed Denial of Service (DDoS) attack is to compile multiple systems ac...
A Network Intrusion Detection System is a critical component of every internet connected system due ...
Due to the expansion of high-speed Internet access, the need for secure and reliable networks has be...
Along with the explosive growth of the Internet, the demand for efficient and secure Internet Infra...
AbstractThe potential damage to computer networks keeps increasing due to a growing reliance on the ...
A solo attack may cause a big loss in computer and network systems, its prevention is, therefore, ve...
The potential damage to computer networks keeps increasing due to a growing reliance on the Internet...
The emergent damage to computer network keeps increasing due to an extensive and prevalent connectiv...
The emergent damage to computer network keeps increasing due to an extensive and prevalent connectiv...
© International Research Publication House This paper discusses the concept and problem of detecting...
Purpose. The article is aimed at the development of a methodology for detecting attacks on a compute...
A method for detecting denial-of-service attacks on web applications based on the use of a multi-lay...
The article discusses the experience of using artificial neural networks to detect low-intensity (lo...
Denial of service (DoS) attack is among the most significant types of attacks in cyber security. The...
The paper proposes effective method of computer network protection from data exfiltration by the sys...
The key objective of a Distributed Denial of Service (DDoS) attack is to compile multiple systems ac...
A Network Intrusion Detection System is a critical component of every internet connected system due ...
Due to the expansion of high-speed Internet access, the need for secure and reliable networks has be...