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Sharing Information Between Machine Tools to Improve Surface Finish Forecasting

Authors :
Clarkson, Daniel R.
Bull, Lawrence A.
Dardeno, Tina A.
Wickramarachchi, Chandula T.
Cross, Elizabeth J.
Rogers, Timothy J.
Worden, Keith
Dervilis, Nikolaos
Hughes, Aidan J.
Publication Year :
2023

Abstract

At present, most surface-quality prediction methods can only perform single-task prediction which results in under-utilised datasets, repetitive work and increased experimental costs. To counter this, the authors propose a Bayesian hierarchical model to predict surface-roughness measurements for a turning machining process. The hierarchical model is compared to multiple independent Bayesian linear regression models to showcase the benefits of partial pooling in a machining setting with respect to prediction accuracy and uncertainty quantification.<br />Comment: Submitted to International Workshop on Structural Health Monitoring 2023, Stanford University, California, USA

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2310.05807
Document Type :
Working Paper