Szerszámrezgés diagnosztika intelligens szerszámtartó alkalmazásával
Tool Vibration Diagnostics Using an Intelligent Toolholder
Kulcsszavak:
intelligent toolholder, MEMS sensors, Schunk iTENDO2, chatter diagnostics, /, intelligens szerszámtartó, MEMS szenzorok, Schunk iTENDO2, rezgésdiagnosztikaAbsztrakt
This study presents the vibration-diagnostic capabilities of the Schunk iTENDO2 intelligent toolholder and its impact on process monitoring and optimisation. Four case studies were conducted to evaluate its performance. Our findings show that the sensor integrated into the iTENDO2 toolholder enables low-noise, high-resolution vibration measurements, which support the generation of more accurate stability diagrams and the development of robust tool-condition monitoring algorithms.
Kivonat
A jelen tanulmány a Schunk iTENDO2 intelligens szerszámtartó rezgésdiagnosztikai képességeit és a megmunkálás felügyeletre és optimalizálásra gyakorolt hatását mutatja be. Négy esettanulmányon keresztül végeztünk kísérleteket. Az eredmények igazolták, hogy az iTENDO2 szerszámtartóba integrált szenzora zajmentes, nagy felbontású rezgésmérést tesz lehetővé, ami pontosabb stabilitási diagramok és robusztus szerszámfelügyeleti algoritmusok kialakításához vezet.
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