Determination of the Cutting-Edge Microgeometry Based on Process Forces during Peripheral Milling of Ti-6Al-4V Using Machine Learning

Matthias Wimmer, Roman Hartl, Michael F. Zaeh

Research output: Contribution to journalArticlepeer-review

2 Scopus citations

Abstract

The residual stress state of the machined sub-surface influences the service quality indicators of a component, such as fatigue life, tribological properties, and distortion. During machining, the radius of the cutting edge changes due to tool wear. The cutting-edge rounding significantly affects the residual stress state in the part and the occurring process forces. This paper presents a tool wear prediction model based on in-process measured cutting forces. The effects of the cutting-edge geometry on the force behavior and the machining-induced residual stresses were examined experimentally. The resulting database was used to realize a Machine Learning algorithm to calculate the hidden value of tool wear. The predictions were validated by milling experiments using rounded cutting edges for different process parameters. The microgeometry of the cutting edge could be determined with a Root Mean Square Error of 8.94 μm.

Original languageEnglish
Article number100
JournalJournal of Manufacturing and Materials Processing
Volume7
Issue number3
DOIs
StatePublished - Jun 2023

Keywords

  • cutting-edge radius
  • machine learning
  • milling
  • multilayer perceptron
  • process forces
  • residual stresses
  • supervised learning
  • titanium alloy Ti-6Al-4V
  • tool wear prediction

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