Title of article :
F-STONE: A Fast Real-Time DDOS Attack Detection Method Using an Improved Historical Memory Management
Author/Authors :
Nooribakhsh, Mahsa Department of Computer - Islamic Azad University Buinzahra Branch, Iran , Mollamotalebi, Mahdi Department of Computer - Islamic Azad University Buinzahra Branch, Iran
Abstract :
Distributed Denial of Service (DDoS) is a common attack in recent years that
can deplete the bandwidth of victim nodes by flooding packets. Based on the
type and quantity of traffic used for the attack and the exploited vulnerability
of the target, DDoS attacks are grouped into three categories as Volumetric
attacks, Protocol attacks, and Application attacks. The volumetric attack,
which the proposed method attempts to detect it, is the most common type
of DDoS attacks. The aim of this paper is to reduce the delay of real-time
detection of DDoS attacks utilizing hybrid structures based on data stream
algorithms. The proposed data structure (BHM 1 ) improves the data storing
mechanism presented in the STONE method and consequently reduces the
detection time. STONE characterizes regular network traffic of a service by
aggregating it into common prefixes of IP addresses, and detecting attacks
when the aggregated traffic deviates from the regular one. In BHM, history
refers to the output traffic information obtained from each monitoring period
to form a reference profile. The reference profile is created by employing
historical information and only includes normal traffic information. The delay
of DDoS attack detection increases in STONE due to long-time intervals
between each monitoring period. The proposed method (F-STONE) has been
compared to STONE based on attack detection time, Expected Profile update
Time (EPUT), and rate of attack detection. The evaluation results indicated
significant improvements in terms of the EPUT, acceleration of attack detection,
and reduction of false positive rate.
Keywords :
DDoS Detection , Real-Time Detection , Datastream Algorithm , Binary-Mapped Historical-Memory Management , Anomaly Detection , Expected Profile update Time
Journal title :
ISeCure - The ISC International Journal of Information Security