TY - JOUR
T1 - BAYESIAN UPDATING FOR THERMAL MODEL OF LASER POWDER-BED FUSION ADDITIVE MANUFACTURING
AU - Jiang, Zhihao
AU - Song, Jingwen
AU - Wei, Pengfei
N1 - Publisher Copyright:
© The Institution of Engineering & Technology 2024.
PY - 2024
Y1 - 2024
N2 - This study aims to enhance the accuracy of thermal models for laser powder bed fusion in metal additive manufacturing (AM) by addressing uncertainties related to stochastic model parameters and inherent biases. Given the limited availability of experimental data due to resource constraints, a rigorous quantification of cognitive uncertainties is essential. The proposed methodology employs Bayesian model updating theory to calibrate an existing thermal model, incorporating an efficient algorithm known as Bayesian Updating with Structural Reliability Method (BUS) to execute the calibration task. Additionally, a Gaussian process regression surrogate is integrated to further mitigate the computational burden. This comprehensive approach facilitates robust uncertainty quantification, particularly concerning the thermal pool width and depth. Despite the complexity of physical mechanisms and high computational costs, this research seeks to improve the predictive capabilities of simulation models, thereby advancing the understanding of the "process-structure-property" relationship in selective laser melting technology.
AB - This study aims to enhance the accuracy of thermal models for laser powder bed fusion in metal additive manufacturing (AM) by addressing uncertainties related to stochastic model parameters and inherent biases. Given the limited availability of experimental data due to resource constraints, a rigorous quantification of cognitive uncertainties is essential. The proposed methodology employs Bayesian model updating theory to calibrate an existing thermal model, incorporating an efficient algorithm known as Bayesian Updating with Structural Reliability Method (BUS) to execute the calibration task. Additionally, a Gaussian process regression surrogate is integrated to further mitigate the computational burden. This comprehensive approach facilitates robust uncertainty quantification, particularly concerning the thermal pool width and depth. Despite the complexity of physical mechanisms and high computational costs, this research seeks to improve the predictive capabilities of simulation models, thereby advancing the understanding of the "process-structure-property" relationship in selective laser melting technology.
KW - ADDITIVE MANUFACTURING
KW - BAYESIAN UPDATING
KW - GAUSSIAN PROCESS
KW - INVERSE UNCERTAINTY QUANTIFICATION
UR - http://www.scopus.com/inward/record.url?scp=85216637709&partnerID=8YFLogxK
U2 - 10.1049/icp.2024.3542
DO - 10.1049/icp.2024.3542
M3 - 会议文章
AN - SCOPUS:85216637709
SN - 2732-4494
VL - 2024
SP - 769
EP - 775
JO - IET Conference Proceedings
JF - IET Conference Proceedings
IS - 12
T2 - 14th International Conference on Quality, Reliability, Risk, Maintenance, and Safety Engineering, QR2MSE 2024
Y2 - 24 July 2024 through 27 July 2024
ER -