2020
DOI: 10.3390/s20205766
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Anomaly Detection in Discrete Manufacturing Systems by Pattern Relation Table Approaches

Abstract: Anomaly detection for discrete manufacturing systems is important in intelligent manufacturing. In this paper, we address the problem of anomaly detection for the discrete manufacturing systems with complicated processes, including parallel processes, loop processes, and/or parallel with nested loop sub-processes. Such systems can generate a series of discrete event data during normal operations. Existing methods that deal with the discrete sequence data may not be efficient for the discrete manufacturing syst… Show more

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“…For each solution, the risk of firing of uncontrollable transitions is evaluated. Anomaly detection in discrete manufacturing systems, supported by PNs, in shown in [63]. Although the article focuses on two algorithms with pattern relation tables, their effectiveness is tested by artificial data sets generated by timed PNs.…”
Section: Recent Applications Of Petri Netsmentioning
confidence: 99%
“…For each solution, the risk of firing of uncontrollable transitions is evaluated. Anomaly detection in discrete manufacturing systems, supported by PNs, in shown in [63]. Although the article focuses on two algorithms with pattern relation tables, their effectiveness is tested by artificial data sets generated by timed PNs.…”
Section: Recent Applications Of Petri Netsmentioning
confidence: 99%