Metrology and Manufacturing-Integrated Digital Twin (MM-DT) for Advanced Manufacturing: Insights from CMM and FARO Arm Measurements
Metrology, the science of measurement, plays a key role in Advanced Manufacturing (AM) to ensure quality control, process optimization, and predictive maintenance. However, it has often been overlooked in AM domains due to the current focus on automation and the complexity of integrated precise meas...
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Zusammenfassung: | Metrology, the science of measurement, plays a key role in Advanced
Manufacturing (AM) to ensure quality control, process optimization, and
predictive maintenance. However, it has often been overlooked in AM domains due
to the current focus on automation and the complexity of integrated precise
measurement systems. Over the years, Digital Twin (DT) technology in AM has
gained much attention due to its potential to address these challenges through
physical data integration and real-time monitoring, though its use in metrology
remains limited. Taking this into account, this study proposes a novel
framework, the Metrology and Manufacturing-Integrated Digital Twin (MM-DT),
which focuses on data from two metrology tools, collected from Coordinate
Measuring Machines (CMM) and FARO Arm devices. Throughout this process, we
measured 20 manufacturing parts, with each part assessed twice under different
temperature conditions. Using Ensemble Machine Learning methods, our proposed
approach predicts measurement deviations accurately, achieving an R2 score of
0.91 and reducing the Root Mean Square Error (RMSE) to 1.59 micrometers. Our
MM-DT framework demonstrates its efficiency by improving metrology processes
and offers valuable insights for researchers and practitioners who aim to
increase manufacturing precision and quality. |
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DOI: | 10.48550/arxiv.2411.05286 |