Polymer extrusion die design using a data-driven autoencoders technique

被引:4
作者
Ghnatios, Chady [1 ]
Gravot, Eloi [2 ]
Champaney, Victor [2 ]
Verdon, Nicolas [3 ]
Hascoet, Nicolas [2 ]
Chinesta, Francisco [4 ,5 ]
机构
[1] HESAM Univ, Arts & Metiers Inst Technol, Lab PIMM, CNRS,Cnam,PIMM Lab,SKF Chaire ENSAM, 151 Blvd Hop, F-75013 Paris, France
[2] HESAM Univ, Arts & Metiers Inst Technol, PIMM Lab, CNRS,Cnam, 151 Blvd Hop, F-75013 Paris, France
[3] Goodyear, Paris Def 1,Tour First,1 Sq Saisons, F-92400 Courbevoie, France
[4] ENSAM Inst Technol, ESI Grp Chair, 151 Blvd Hop, F-75013 Paris, France
[5] ENSAM Inst Technol, PIMM Lab, 151 Blvd Hop, F-75013 Paris, France
关键词
Die design; Machine learning; Artificial intelligence; Autoencoder; Data-driven modeling; NON-NEWTONIAN FLUID; FLOW;
D O I
10.1007/s12289-023-01796-7
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Designing extrusion dies remains a tricky issue when considering polymers. In fact, polymers exhibit strong non-Newtonian rheology that manifest in noticeable viscoelastic behaviors as well as significant normal stress differences. As a consequence, when they are pushed through a die, an important die-swelling is observed, and consequently the final geometry of the extruded profile differs significantly from the one of the die. This behavior turns the die's design into a difficult task, and its geometry must be defined in such a way that the extruded profile results in the targeted one. Numerical simulation was identified as a natural way for building and solving the inverse problem of defining the die, leading to the targeted extruded geometry. However, state-of-the-art rheological models reveal inaccuracies for the desired level of precision. In this paper, we propose a data-driven approach that, based on the accumulated experience on the extruded profiles for different dies, learns the relation enabling efficient die design.
引用
收藏
页数:10
相关论文
共 50 条
[31]   Data-Driven Design-By-Analogy: State-of-the-Art and Future Directions [J].
Jiang, Shuo ;
Hu, Jie ;
Wood, Kristin L. ;
Luo, Jianxi .
JOURNAL OF MECHANICAL DESIGN, 2022, 144 (02)
[32]   A data-driven kernel method assimilation technique for geophysical modelling [J].
Gilbert, R. C. ;
Trafalis, T. B. ;
Richman, M. B. ;
Leslie, L. M. .
OPTIMIZATION METHODS & SOFTWARE, 2017, 32 (02) :237-249
[33]   Shear design of recycled aggregate concrete beams using a data-driven optimization method [J].
Dong, Shuxiong ;
Xie, Weili ;
Wei, Muwang ;
Liu, Kaihua .
STRUCTURES, 2023, 55 :123-137
[34]   Predicting mud weight in carbonate formations using seismic data: A data-driven approach [J].
Peshkov, Georgy ;
Khemraev, Kerim ;
Safonov, Sergey ;
Bukhanov, Nikita ;
Alali, Ammar ;
Abughaban, Mahmoud .
GEOENERGY SCIENCE AND ENGINEERING, 2025, 250
[35]   Accelerated modeling and design of a mixed refrigerant cryogenic process using a data-driven approach [J].
Alimardani, Hosein ;
Asgari, Mehrdad ;
Shivaee-Gariz, Roohangiz ;
Tamnanloo, Javad .
DIGITAL CHEMICAL ENGINEERING, 2024, 10
[36]   Design of concrete-filled steel tubular columns using data-driven methods [J].
Degtyarev, Vitaliy V. ;
Thai, Huu-Tai .
JOURNAL OF CONSTRUCTIONAL STEEL RESEARCH, 2023, 200
[37]   Data-driven system health monitoring technique using autoencoder for the safety management of commercial aircraft [J].
Lee, Hyunseong ;
Lim, Hyung Jin ;
Chattopadhyay, Aditi .
NEURAL COMPUTING & APPLICATIONS, 2021, 33 (08) :3235-3250
[38]   Data-driven system health monitoring technique using autoencoder for the safety management of commercial aircraft [J].
Hyunseong Lee ;
Hyung Jin Lim ;
Aditi Chattopadhyay .
Neural Computing and Applications, 2021, 33 :3235-3250
[39]   Data-driven approaches for runoff prediction using distributed data [J].
Heechan Han ;
Ryan R. Morrison .
Stochastic Environmental Research and Risk Assessment, 2022, 36 :2153-2171
[40]   Data-driven approaches for runoff prediction using distributed data [J].
Han, Heechan ;
Morrison, Ryan R. .
STOCHASTIC ENVIRONMENTAL RESEARCH AND RISK ASSESSMENT, 2022, 36 (08) :2153-2171