DOAJ Open Access 2021

Localized Defect Detection from Spatially Mapped, In-Situ Process Data With Machine Learning

William Halsey William Halsey Derek Rose Luke Scime Luke Scime +4 lainnya

Abstrak

In powder bed fusion additive manufacturing, machines are often equipped with in-situ sensors to monitor the build environment as well as machine actuators and subsystems. The data from these sensors offer rich information about the consistency of the fabrication process within a build and across builds. This information may be used for process monitoring and defect detection; however, little has been done to leverage this data from the machines for more than just coarse-grained process monitoring. In this work we demonstrate how these inherently temporal data may be mapped spatially by leveraging scan path information. We then train a XGBoost machine learning model to predict localized defects—specifically soot–using only the mapped process data of builds from a laser powder bed fusion process as input features. The XGBoost model offers a feature importance metric that will help to elucidate possible relationships between the process data and observed defects. Finally, we analyze the model performance spatially and rationalize areas of greater and lesser performance.

Penulis (9)

W

William Halsey

W

William Halsey

D

Derek Rose

L

Luke Scime

L

Luke Scime

R

Ryan Dehoff

R

Ryan Dehoff

V

Vincent Paquit

V

Vincent Paquit

Format Sitasi

Halsey, W., Halsey, W., Rose, D., Scime, L., Scime, L., Dehoff, R. et al. (2021). Localized Defect Detection from Spatially Mapped, In-Situ Process Data With Machine Learning. https://doi.org/10.3389/fmech.2021.767444

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Informasi Jurnal
Tahun Terbit
2021
Sumber Database
DOAJ
DOI
10.3389/fmech.2021.767444
Akses
Open Access ✓