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This content will become publicly available on June 1, 2026

Title: Surface roughness prediction in machining using two-stage domain-incremental learning with input dimensionality expansion
Accurate quantification of machined surface roughness is crucial to the characterization of part performance measures, including aerodynamics and biocompatibility. Given this cruciality, there exists a need for predictive metrology models which can predict the surface roughness before a part leaves a machine to reduce metrologyinduced bottlenecks and improve production planning efficiency under emergent production paradigms, e.g., Industry 4.0. Current predictive metrology approaches in machining generally train machine learning models on all available input features at once. However, this approach yields a high number of free parameters during all states of training, possibly leading to suboptimal prediction results because of the complexity of simultaneously optimizing all parameters at once. In addition, previous machine learning-enabled surface roughness prediction studies have used limited test dataset sizes, which reduces the reliability and robustness of the reported results. To address these limitations, this study proposes a two-stage model training approach based on domainincremental learning, wherein a second stage of training is performed using an expanded input domain. The proposed method is evaluated on a 3,000-element experimentally collected testing dataset of machined H13 tool steel surfaces, where it achieves 16.3 % roughness prediction error compared to the 29.5 % error of the conventional single-stage training approach, indicating the suitability of the two-stage training method for reducing surface roughness prediction error.  more » « less
Award ID(s):
2040288 2133630
PAR ID:
10618651
Author(s) / Creator(s):
; ; ;
Publisher / Repository:
Elsevier
Date Published:
Journal Name:
Journal of Manufacturing Systems
Volume:
80
Issue:
C
ISSN:
0278-6125
Page Range / eLocation ID:
503 to 510
Subject(s) / Keyword(s):
Surface roughness domain-incremental learning input expansion predictive metrology machining
Format(s):
Medium: X
Sponsoring Org:
National Science Foundation
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