会议专题

Mining Status-set Sequential Pattern based on Frequent Itemset for Failure Prediction in a Temporal Database with Multiple Status Items Monitored

  In this study, we investigate the problem of status sequential pattern mining (SSPM) based on frequent status set for failure prediction. We present a general sequential pattern mining framework with new definitions (e.g., frequent status itemset) and redefinitions (e.g., Sequence, Sequential Pattern) on sequential patterns for the field of failure prediction with multiple status items monitored. Some new indexes such as coverage rate (CR), hold rate (HR), and factor set (FS) are introduced to discover interesting Strong SSP and related factor set of some important status itemsets. The Apriori-like algorithms are also developed particularly for SSPM with high computational efficiency, and numeric examples are provided to demonstrate the process of SSPM for failure prediction. It shows that the proposed algorithm for SSPM is effective, capable of discovering meaningful sequential patterns with user-interested coverage rate and hold rate.

Frequent Status Itemset Status-set Sequential Pattern Mining Status Monitoring Failure Prediction

Yingying Yuan Yiyong Xiao Jie Zhang Yun Tian

School of Reliability and System Engineering, Beihang University, Beijing 100191

国际会议

第26届中国控制与决策会议(2014 CCDC)

长沙

英文

5314-5319

2014-05-31(万方平台首次上网日期,不代表论文的发表时间)