Active learning for prediction of tensile properties for material extrusion additive manufacturing

被引:0
作者
Tahamina Nasrin
Masoumeh Pourali
Farhad Pourkamali-Anaraki
Amy M. Peterson
机构
[1] University of Massachusetts Lowell,Department of Plastics Engineering
[2] University of Colorado Denver,Department of Mathematical and Statistical Sciences
来源
Scientific Reports | / 13卷
关键词
D O I
暂无
中图分类号
学科分类号
摘要
Machine learning techniques were used to predict tensile properties of material extrusion-based additively manufactured parts made with Technomelt PA 6910, a hot melt adhesive. An adaptive data generation technique, specifically an active learning process based on the Gaussian process regression algorithm, was employed to enable prediction with limited training data. After three rounds of data collection, machine learning models based on linear regression, ridge regression, Gaussian process regression, and K-nearest neighbors were tasked with predicting properties for the test dataset, which consisted of parts fabricated with five processing parameters chosen using a random number generator. Overall, linear regression and ridge regression successfully predicted output parameters, with < 10% error for 56% of predictions. K-nearest neighbors performed worse than linear regression and ridge regression, with < 10% error for 32% of predictions and 10–20% error for 60% of predictions. While Gaussian process regression performed with the lowest accuracy (< 10% error for 32% of prediction cases and 10–20% error for 40% of predictions), it benefited most from the adaptive data generation technique. This work demonstrates that machine learning models using adaptive data generation techniques can efficiently predict properties of additively manufactured structures with limited training data.
引用
收藏
相关论文
共 123 条
[1]  
D’Amico T(2020)Bead parameterization of desktop and room-scale material extrusion additive manufacturing: How print speed and thermal properties affect heat transfer Addit. Manuf. 34 101239-332
[2]  
Peterson AM(2021)Temperature, diffusion, and stress modeling in filament extrusion additive manufacturing of polyetherimide: An examination of the influence of processing parameters and importance of modeling assumptions Addit. Manuf. 48 102412-391
[3]  
Gilmer EL(2019)Heat retention modeling of large area additive manufacturing Addit. Manuf. 28 325-264
[4]  
Choo K(2020)Experimental and analytical study of the polymer melt flow through the hot-end in material extrusion additive manufacturing Addit. Manuf. 32 100997-23
[5]  
Serdeczny MP(2021)Filament rheological characterization for fused filament fabrication additive manufacturing: A low-cost approach Addit. Manuf. 47 102208-94
[6]  
Comminal R(2017)Disentanglement effects on welding behaviour of polymer melts during the fused-filament-fabrication method for additive manufacturing Polymer 123 376-509
[7]  
Pedersen DB(2003)Mechanical characterization of parts fabricated using fused deposition modeling Rapid Prototyp. J. 9 252-1591
[8]  
Spangenberg J(2014)Effective mechanical properties of lattice material fabricated by material extrusion additive manufacturing Addit. Manuf. 1 12-190
[9]  
Chen J(2021)A review on machine learning in 3D printing: Applications, potential, and challenges Artif. Intell. Rev. 54 63-1051
[10]  
Smith DE(2021)Data-driven design strategy in fused filament fabrication: Status and opportunities J. Comput. Des. Eng. 8 489-238