Computer Science and Information Systems 2016 Volume 13, Issue 2, Pages: 659-676
https://doi.org/10.2298/CSIS160201021H
Full text ( 256 KB)
Cited by
An anomaly detection on the application-layer-based QoS in the cloud storage system
Han Dezhi (Shanghai Maritime University, College of Information Engineering, Shanghai, China)
Bi Kun (Shanghai Maritime University, College of Information Engineering, Shanghai, China)
Xie Bolin (Guangdong University of Foreign Studies, College of information, Guangzhou, China)
Huang Lili (Shanghai Maritime University, College of Information Engineering, Shanghai, China)
Wang Ruijun (University of Central, College of Electrical Engineering and Computer Science, Florida, Orlando, USA)
Attacks based on the application layer of the cloud storage system have been
dramatically increasing nowadays. However, the present detection studies of
attacks are mainly focused on the network and transmission layer instead of
the application layer. In this paper, we proposed an anomaly attack
detection method based on the hidden semi-Markov model (HsMM) to secure the
cloud storage system from the application-layer-based attacks. In this
proposed method, observation serials are constituted by the time intervals
between the I/O requests made by normal users and their characterization
using the hidden semi-Markov model based on each protocol for application
layer. By applying this technique in the cloud storage system, it is able to
effectively detect and correct their abnormal behaviors. In addition, to
ensure the QoS(Quality of Service), a Priority Queuing and flow controlling
module is proposed in this paper, which can allocate more I/O bandwidths and
resources to normal users. Besides, the experimental results have shown that
the proposed method can describe such normal I/O behaviors of users based on
each protocol for the application layer in the cloud storage system with
99.2% higher detection ratio and 0.7% lower false positive ratio when
detecting abnormal behaviors of users, and it can ensure the QoS for normal
uses.
Keywords: cloud storage system, application layer anomaly detection, quality of service for I/O request, hidden semi-Markov model