Transfer Learning for Autonomous Chatter Detection in Machining
Melih C. Yesilli, Firas A. Khasawneh, Brian Mann

TL;DR
This paper explores transfer learning techniques for automatic chatter vibration detection in machining, comparing traditional and novel feature extraction methods across different machining processes to improve accuracy and automation.
Contribution
It evaluates the transfer learning potential of various chatter detection methods, including time-frequency, topological data analysis, and similarity measures, across turning and milling datasets.
Findings
Time-frequency features achieve high accuracy but require manual preprocessing.
TDA and DTW methods offer comparable accuracy without manual preprocessing.
Transfer learning enables cross-process chatter detection, enhancing industrial applicability.
Abstract
Large-amplitude chatter vibrations are one of the most important phenomena in machining processes. It is often detrimental in cutting operations causing a poor surface finish and decreased tool life. Therefore, chatter detection using machine learning has been an active research area over the last decade. Three challenges can be identified in applying machine learning for chatter detection at large in industry: an insufficient understanding of the universality of chatter features across different processes, the need for automating feature extraction, and the existence of limited data for each specific workpiece-machine tool combination. These three challenges can be grouped under the umbrella of transfer learning. This paper studies automating chatter detection by evaluating transfer learning of prominent as well as novel chatter detection methods. We investigate chatter classification…
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Taxonomy
TopicsTopological and Geometric Data Analysis
MethodsDynamic Time Warping
