Early failure detection of paper manufacturing machinery using nearest
neighbor based feature extraction
Wonjae Lee
University of Missouri
Corresponding Author:wl5nf@mail.missouri.edu
Author ProfileAbstract
In a paper manufacturing system, it can be substantially important to
detect machine failure before it occurs and take necessary maintenance
actions to prevent a detrimental breakdown of the system. Multiple
sensor data collected from a machine provides useful information on the
system's health condition. However, it is hard to predict the system
condition ahead of time due to the lack of clear ominous signs for
future failures, a rare occurrence of failure events, and a wide range
of sensor signals which might be correlated with each other. In this
paper, we present two versions of feature extraction techniques based on
the nearest neighbor combined with machine learning algorithms to detect
a failure of the paper manufacturing machinery earlier than its
occurrence from the multi-stream system monitoring data. First, for each
sensor stream, the time series data is transformed into the binary form
by extracting the class label of the nearest neighbor. We feed these
transformed features into the decision tree classifier for the failure
classification. Second, expanding the idea, the relative distance to the
local nearest neighbor has been measured, results in the real-valued
feature, and the support vector machine is used as a classifier. Our
proposed algorithms are applied to the dataset provided by IISE 2019
data competition, and the results show the better performance than the
given baseline.04 May 2020Submitted to Engineering Reports 04 May 2020Submission Checks Completed
04 May 2020Assigned to Editor
05 May 2020Reviewer(s) Assigned
27 May 2020Editorial Decision: Revise Major
03 Jul 20201st Revision Received
07 Jul 2020Submission Checks Completed
07 Jul 2020Assigned to Editor
14 Jul 2020Reviewer(s) Assigned
18 Aug 2020Editorial Decision: Revise Major
31 Aug 20202nd Revision Received
31 Aug 2020Submission Checks Completed
31 Aug 2020Assigned to Editor
01 Sep 2020Editorial Decision: Accept