Authors
Siavash Haghtalab, Petros Xanthopoulos, Kaveh Madani
Publication date
2015/11/1
Journal
Expert Systems with Applications
Volume
42
Issue
19
Pages
6767-6776
Publisher
Pergamon
Description
Early identification and detection of abnormal patterns is vital for a number of applications. In manufacturing for example, slide shifts and alterations of patterns might be indicative of some production process anomaly, such as machinery malfunction. Usually due to the continuous flow of data, monitoring of manufacturing processes and other types of applications requires automated control chart pattern recognition (CCPR) algorithms. Most of the CCPR literature consists of supervised classification algorithms. Fewer studies consider unsupervised versions of the problem. Despite the profound advantage of unsupervised methodology for less manual data labeling their use is limited due to the fact that their performance is not robust enough and might vary significantly from one algorithm to another. In this paper, we propose the use of a consensus clustering framework that takes care of this shortcoming and produces …
Total citations
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Scholar articles
S Haghtalab, P Xanthopoulos, K Madani - Expert Systems with Applications, 2015