23, 2018, 23-26
Reihenfolgeplanung im Zeitalter von Industrie 4.0: Optimierung in der Werkstattfertigung

Bibtex

Cite as text

						@Article{Gronau+Weber,
							 
							Year= "2018", 
							Number= "1", 
							 Volume= "23", 
							Pages= "23-26", 
							Journal   = "Fabriksoftware",
							 Title= "Reihenfolgeplanung im Zeitalter von Industrie 4.0: Optimierung in der Werkstattfertigung", 
							Author= "Norbert {Gronau} und Edzard {Weber}
", 
							Doi= "https://doi.org/10.30844/3_2018-1_23-26", 
							 Abstract= "Für eine effiziente Produktion sind Optimierungsverfahren unverzichtbar. Durch die Ausrichtung der Produktion auf Konzepte wie Industrie 4.0 verändern sich aber die Rahmenbedingungen für den richtigen Einsatz dieser Verfahren. Dieser Beitrag stellt die vorhandene Vielfalt an Optimierungsverfahren vor und diskutiert ihre Eignung für Industrie 4.0.", 
							 Keywords= "Reihenfolgeplanung, Industrie 4.0, Werkstattfertigung", 
							}
					
Norbert {Gronau} und Edzard {Weber}(2018): Reihenfolgeplanung im Zeitalter von Industrie 4.0: Optimierung in der Werkstattfertigung. 231(2018), S. 23-26. Online: https://doi.org/10.30844/3_2018-1_23-26 (Abgerufen 24.04.24)

Abstract

Abstract

Für eine effiziente Produktion sind Optimierungsverfahren unverzichtbar. Durch die Ausrichtung der Produktion auf Konzepte wie Industrie 4.0 verändern sich aber die Rahmenbedingungen für den richtigen Einsatz dieser Verfahren. Dieser Beitrag stellt die vorhandene Vielfalt an Optimierungsverfahren vor und diskutiert ihre Eignung für Industrie 4.0.

Keywords

Schlüsselwörter

Reihenfolgeplanung, Industrie 4.0, Werkstattfertigung

References

Referenzen

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