GPyro: uncertainty-aware temperature predictions for additive manufacturing

被引:14
作者
Sideris, Iason [1 ,2 ]
Crivelli, Francesco [2 ]
Bambach, Markus [1 ]
机构
[1] Swiss Fed Inst Technol, Adv Mfg Lab Zurich, Ramistr 101, CH-8092 Zurich, Switzerland
[2] CSEM SA, Grp Robot & Machine Learning, Grundlistr 1, CH-6055 Alpnach, Switzerland
关键词
Additive manufacturing; Machine learning; Thermal model; Data-driven modelling; WAAM; Uncertainty quantification; GAUSSIAN-PROCESSES; FRAMEWORK; PATHS; MODEL; DEEP;
D O I
10.1007/s10845-022-02019-7
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
In additive manufacturing, process-induced temperature profiles are directly linked to part properties, and their prediction is crucial for achieving high-quality products. Temperature predictions require an accurate process model, which is usually either a physics-based or a data-driven simulator. Although many high-performance models have been developed, they all suffer from disadvantages such as long execution times, the need for large datasets, and error accumulation in long prediction horizons. These caveats undermine the utility of such modeling approaches and pose problems in their integration within iterative optimization and closed-loop control schemes. In this work, we introduce GPyro, a generative model family specifically designed to address these issues and enable fast probabilistic temperature predictions. GPyro combines physics-informed and parametric regressors with a set of smooth attention mechanisms and learns the evolution of the dynamics inherent to a system by employing Gaussian processes. The model predictions are equipped with confidence intervals quantifying the uncertainty at each timestep. We applied GPyro to Wire-arc additive manufacturing and learned an accurate model from a single experiment on a real welding cell, almost in real-time. Our model can be easily integrated within existing loop-shaping and optimization frameworks.
引用
收藏
页码:243 / 259
页数:17
相关论文
共 47 条
[1]  
Auli, 2015, ARXIV
[2]   Mathematical Modeling and Optimization for Powder-Based Additive Manufacturing [J].
Bambach, Markus ;
Fuegenschuh, Armin ;
Buhl, Johannes ;
Jensch, Felix ;
Schmidt, Johannes .
23RD INTERNATIONAL CONFERENCE ON MATERIAL FORMING, 2020, 47 :1159-1163
[3]  
Berkenkamp F, 2017, ADV NEUR IN, V30
[4]  
Berkenkamp F, 2016, IEEE INT CONF ROBOT, P491, DOI 10.1109/ICRA.2016.7487170
[5]  
Bertsimas D., 2010, ARXIV, DOI DOI 10.48550/ARXIV.1010.5445
[6]   A LIMITED MEMORY ALGORITHM FOR BOUND CONSTRAINED OPTIMIZATION [J].
BYRD, RH ;
LU, PH ;
NOCEDAL, J ;
ZHU, CY .
SIAM JOURNAL ON SCIENTIFIC COMPUTING, 1995, 16 (05) :1190-1208
[7]  
Cai S., 2021, Journal of Heat Transfer, DOI [10.1115/1.4050542, DOI 10.1115/1.4050542]
[8]   Machine learning in drug development: Characterizing the effect of 30 drugs on the QT interval using Gaussian process regression, sensitivity analysis, and uncertainty quantification [J].
Costabal, Francisco Sahli ;
Matsuno, Kristen ;
Yao, Jiang ;
Perdikaris, Paris ;
Kuhl, Ellen .
COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2019, 348 :313-333
[9]   Railway Track Circuit Fault Diagnosis Using Recurrent Neural Networks [J].
de Bruin, Tim ;
Verbert, Kim ;
Babuska, Robert .
IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2017, 28 (03) :523-533
[10]   Gaussian Processes for Data-Efficient Learning in Robotics and Control [J].
Deisenroth, Marc Peter ;
Fox, Dieter ;
Rasmussen, Carl Edward .
IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 2015, 37 (02) :408-423