Strukturdynamisches Verhalten der Hauptspindel im Betrieb/Structural-dynamic behavior of the main spindle during machining – Determining the main spindle’s structural-dynamic properties based on operating conditions

Inhaltsverzeichnis

Bibliographische Infos


Cover der Ausgabe: wt Werkstattstechnik online Jahrgang 115 (2025), Heft 07-08
Open Access Vollzugriff

wt Werkstattstechnik online

Jahrgang 115 (2025), Heft 07-08


Autor:innen:
Verlag
VDI fachmedien, Düsseldorf
Copyrightjahr
2025
ISSN-Online
1436-4980
ISSN-Print
1436-4980

Kapitelinformationen


Open Access Vollzugriff

Jahrgang 115 (2025), Heft 07-08

Strukturdynamisches Verhalten der Hauptspindel im Betrieb/Structural-dynamic behavior of the main spindle during machining – Determining the main spindle’s structural-dynamic properties based on operating conditions


ISSN-Print
1436-4980
ISSN-Online
1436-4980


Kapitelvorschau:

Als zentrale Komponente einer Fräsmaschine bestimmt die Hauptspindel maßgeblich die Genauigkeit sowie die Leistungsgrenzen des Fräsprozesses. Während des Fräsens ist die Hauptspindel zugleich statischen und dynamischen Belastungen ausgesetzt. Variationen der Prozessparameter und Betriebszustände beeinflussen dabei die strukturdynamischen Eigenschaften – sowohl statisch als auch dynamisch. Durch eine kontinuierliche Überwachung dieser Eigenschaften lassen sich potenziell spindelschädliche Bearbeitungsoperationen frühzeitig erkennen und vermeiden.

Literaturverzeichnis


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