Data-driven techniques in rheology: Developments, challenges and perspective

被引:4
作者
Mangal, Deepak [1 ]
Jha, Anushka [1 ]
Dabiri, Donya [1 ]
Jamali, Safa [1 ]
机构
[1] Northeastern Univ, Dept Mech & Ind Engn, Boston, MA 02115 USA
关键词
INFORMED NEURAL-NETWORKS; DEEP LEARNING FRAMEWORK; DYNAMICS; MODEL;
D O I
10.1016/j.cocis.2024.101873
中图分类号
O64 [物理化学(理论化学)、化学物理学];
学科分类号
070304 ; 081704 ;
摘要
With the rapid development and adoption of different datadriven techniques in rheology, this review aims to reflect on the advent and growth of these frameworks, survey the state-ofthe-art methods relevant to rheological applications, and explore potential future directions. We classify different machine learning (ML) methodologies into data-centric and physics-informed frameworks. Data-centric methods leverage conventional ML techniques to uncover relationships within specific datasets, demonstrating success in rheological propzation, and accelerated numerical simulations. Physicsinformed machine learning combines physical laws and domain knowledge with data to produce generalizable and physically consistent predictions, proving effective in solving rheological differential equations, utilizing multi-fidelity datasets to enhance predictions, and constitutive modeling. The paper also discusses the limitations of these approaches and the ongoing efforts to address them. Looking ahead, this article emphasizes the need for explainable ML techniques to enhance transparency and trust, improved tools for uncertainty quantification. These advancements could significantly transform rheology and non-Newtonian fluid mechanics by enabling more robust, insightful, and efficient data-driven methodologies.
引用
收藏
页数:15
相关论文
共 79 条
[1]  
Ahmad I., 2023, ADV FOOD RHEOL APPL, P201, DOI [10.1016/B978-0-12-823983-4.00004-2, DOI 10.1016/B978-0-12-823983-4.00004-2]
[2]   Machine Learning Model for Monitoring Rheological Properties of Synthetic Oil-Based Mud [J].
Alsabaa, Ahmed ;
Gamal, Hany ;
Elkatatny, Salaheldin ;
Abdelraouf, Yasmin .
ACS OMEGA, 2022, 7 (18) :15603-15614
[3]   Data-driven approaches for structure-property relationships in polymer science for prediction and understanding [J].
Amamoto, Yoshifumi .
POLYMER JOURNAL, 2022, 54 (08) :957-967
[4]   Neural operators for accelerating scientific simulations and design [J].
Azizzadenesheli, Kamyar ;
Kovachki, Nikola ;
Li, Zongyi ;
Liu-Schiaffini, Miguel ;
Kossaifi, Jean ;
Anandkumar, Anima .
NATURE REVIEWS PHYSICS, 2024, 6 (05) :320-328
[5]   Review of modeling schemes and machine learning algorithms for fluid rheological behavior analysis [J].
Bahiuddin, Irfan ;
Mazlan, Saiful Amri ;
Imaduddin, Fitrian ;
Shapiai, Mohd Ibrahim ;
Sugeng, Dhani Avianto .
JOURNAL OF THE MECHANICAL BEHAVIOR OF MATERIALS, 2024, 33 (01)
[6]   A data-driven smoothed particle hydrodynamics method for fluids [J].
Bai, Jinshuai ;
Zhou, Ying ;
Rathnayaka, Charith Malinga ;
Zhan, Haifei ;
Sauret, Emilie ;
Gu, Yuantong .
ENGINEERING ANALYSIS WITH BOUNDARY ELEMENTS, 2021, 132 :12-32
[7]   Thixotropy - A review [J].
Barnes, HA .
JOURNAL OF NON-NEWTONIAN FLUID MECHANICS, 1997, 70 (1-2) :1-33
[8]   Hierarchical Machine Learning for High-Fidelity 3D Printed Biopolymers [J].
Bone, Jennifer M. ;
Childs, Christopher M. ;
Menon, Aditya ;
Poczos, Barnabas ;
Feinberg, Adam W. ;
LeDuc, Philip R. ;
Washburn, Newell R. .
ACS BIOMATERIALS SCIENCE & ENGINEERING, 2020, 6 (12) :7021-7031
[9]   Multi-fidelity modeling to predict the rheological properties of a suspension of fibers using neural networks and Gaussian processes [J].
Boodaghidizaji, Miad ;
Khan, Monsurul ;
Ardekani, Arezoo M. .
PHYSICS OF FLUIDS, 2022, 34 (05)
[10]   Machine Learning for Fluid Mechanics [J].
Brunton, Steven L. ;
Noack, Bernd R. ;
Koumoutsakos, Petros .
ANNUAL REVIEW OF FLUID MECHANICS, VOL 52, 2020, 52 :477-508