Enhanced Changeover Detection in Industry 4.0 Environments with Machine Learning.


Journal

Sensors (Basel, Switzerland)
ISSN: 1424-8220
Titre abrégé: Sensors (Basel)
Pays: Switzerland
ID NLM: 101204366

Informations de publication

Date de publication:
01 Sep 2021
Historique:
received: 12 08 2021
revised: 27 08 2021
accepted: 30 08 2021
entrez: 10 9 2021
pubmed: 11 9 2021
medline: 14 9 2021
Statut: epublish

Résumé

Changeover times are an important element when evaluating the Overall Equipment Effectiveness (OEE) of a production machine. The article presents a machine learning (ML) approach that is based on an external sensor setup to automatically detect changeovers in a shopfloor environment. The door statuses, coolant flow, power consumption, and operator indoor GPS data of a milling machine were used in the ML approach. As ML methods, Decision Trees, Support Vector Machines, (Balanced) Random Forest algorithms, and Neural Networks were chosen, and their performance was compared. The best results were achieved with the Random Forest ML model (97% F1 score, 99.72% AUC score). It was also carried out that model performance is optimal when only a binary classification of a changeover phase and a production phase is considered and less subphases of the changeover process are applied.

Identifiants

pubmed: 34502786
pii: s21175896
doi: 10.3390/s21175896
pmc: PMC8434557
pii:
doi:

Types de publication

Journal Article

Langues

eng

Sous-ensembles de citation

IM

Subventions

Organisme : Bayerisches Staatsministerium für Wirtschaft, Landesentwicklung und Energie
ID : IUK 530/10

Références

Comput Methods Programs Biomed. 2014 Feb;113(2):465-73
pubmed: 24290902
BMC Genomics. 2020 Jan 2;21(1):6
pubmed: 31898477

Auteurs

Eddi Miller (E)

Institute Digital Engineering (IDEE), University of Applied Sciences, Würzburg-Schweinfurt, Ignaz-Schön-Strasse 11, 97421 Schweinfurt, Germany.

Vladyslav Borysenko (V)

Institute Digital Engineering (IDEE), University of Applied Sciences, Würzburg-Schweinfurt, Ignaz-Schön-Strasse 11, 97421 Schweinfurt, Germany.

Moritz Heusinger (M)

Institute Digital Engineering (IDEE), University of Applied Sciences, Würzburg-Schweinfurt, Ignaz-Schön-Strasse 11, 97421 Schweinfurt, Germany.

Niklas Niedner (N)

Institute Digital Engineering (IDEE), University of Applied Sciences, Würzburg-Schweinfurt, Ignaz-Schön-Strasse 11, 97421 Schweinfurt, Germany.

Bastian Engelmann (B)

Institute Digital Engineering (IDEE), University of Applied Sciences, Würzburg-Schweinfurt, Ignaz-Schön-Strasse 11, 97421 Schweinfurt, Germany.

Jan Schmitt (J)

Institute Digital Engineering (IDEE), University of Applied Sciences, Würzburg-Schweinfurt, Ignaz-Schön-Strasse 11, 97421 Schweinfurt, Germany.

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Classifications MeSH