Subscribe Now Subscribe Today
 
FOLLOW US:     Facebook     Twitter
   
Journal of Software Engineering
  Year: 2014 | Volume: 8 | Issue: 4 | Page No.: 419-427
DOI: 10.3923/jse.2014.419.427
Alarm Association Rules Mining in Flight Booking System Based on Sliding Time Window Model
Jianli Ding, Chao Zhang, Jing Wang and Yao Wang

Abstract:
Alarm association rules mining is an important task in system fault diagnosis and localization. Once the system fails, it will produce a large number of alarm information. By analyzing the characteristics of the booking system alarm data, this study puts forward alarm association rules mining algorithm based on sliding time window model to find the fault source and the correlation between fault factors in a large number of alarm information. The experiments show that the valuable alarm association rules can be acquired from the alarm data accurately and rapidly. These rules can provide support decision for the system maintenance personnel.
 [Fulltext PDF]   [Fulltext HTML]   [XML: Abstract + References]   [References]   [Report Citation]
How to cite this article:

Jianli Ding, Chao Zhang, Jing Wang and Yao Wang, 2014. Alarm Association Rules Mining in Flight Booking System Based on Sliding Time Window Model. Journal of Software Engineering, 8: 419-427.

DOI: 10.3923/jse.2014.419.427

URL: http://scialert.net/abstract/?doi=jse.2014.419.427

 
COMMENT ON THIS PAPER
.