Title of article :
Increasing availability of industrial systems through data stream mining
Author/Authors :
Ahmad Alzghoul 1، نويسنده , , Magnus L?fstrand ?، نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 2011
Abstract :
Improving industrial product reliability, maintainability and thus availability is a challenging task for
many industrial companies. In industry, there is a growing need to process data in real time, since the
generated data volume exceeds the available storage capacity. This paper consists of a review of data
stream mining and data stream management systems aimed at improving product availability. Further,
a newly developed and validated grid-based classifier method is presented and compared to one-class
support vector machine (OCSVM) and a polygon-based classifier.
The results showed that, using 10% of the total data set to train the algorithm, all three methods
achieved good (>95% correct) overall classification accuracy. In addition, all three methods can be applied
on both offline and online data.
The speed of the resultant function from the OCSVM method was, not surprisingly, higher than the
other two methods, but in industrial applications the OCSVMs’ comparatively long time needed for training
is a possible challenge. The main advantage of the grid-based classification method is that it allows for
calculation of the probability (%) that a data point belongs to a specific class, and the method can be easily
modified to be incremental.
The high classification accuracy can be utilized to detect the failures at an early stage, thereby increasing
the reliability and thus the availability of the product (since availability is a function of maintainability
and reliability). In addition, the consequences of equipment failures in terms of time and cost can be
mitigated.
Keywords :
Availability , Data stream management system , Industrial systems , Grid-based classifier , Data stream mining
Journal title :
Computers & Industrial Engineering
Journal title :
Computers & Industrial Engineering