Chatter Classification in Turning Using Machine Learning and Topological Data Analysis
Firas A. Khasawneh, Elizabeth Munch, Jose A. Perea

TL;DR
This paper introduces a novel method combining machine learning and Topological Data Analysis to detect chatter in turning processes, achieving high classification accuracy and improved transferability across different models.
Contribution
It presents a new approach using TDA-derived features with machine learning for chatter detection, addressing transferability issues in traditional methods.
Findings
97% classification accuracy on deterministic model
Features from deterministic models help characterize stochastic chatter
Method improves transferability of chatter detection techniques
Abstract
Chatter identification and detection in machining processes has been an active area of research in the past two decades. Part of the challenge in studying chatter is that machining equations that describe its occurrence are often nonlinear delay differential equations. The majority of the available tools for chatter identification rely on defining a metric that captures the characteristics of chatter, and a threshold that signals its occurrence. The difficulty in choosing these parameters can be somewhat alleviated by utilizing machine learning techniques. However, even with a successful classification algorithm, the transferability of typical machine learning methods from one data set to another remains very limited. In this paper we combine supervised machine learning with Topological Data Analysis (TDA) to obtain a descriptor of the process which can detect chatter. The features we…
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