Physics-Informed Machine Learning-An Emerging Trend in Tribology

被引:21
作者
Marian, Max [1 ]
Tremmel, Stephan [2 ]
机构
[1] Pontificia Univ Catolica Chile, Sch Engn, Dept Mech & Met Engn, Vicuna Mackenna 4860, Macul 6904411, Chile
[2] Univ Bayreuth, Engn Design & CAD, Univ Str 30, D-95447 Bayreuth, Germany
关键词
artificial intelligence; machine learning; tribo-informatics; physics-informed neural network; friction; wear; lubrication; ARTIFICIAL NEURAL-NETWORKS; SLIDING WEAR; FRICTION; PREDICTION; BEHAVIOR; DESIGN; MODEL;
D O I
10.3390/lubricants11110463
中图分类号
TH [机械、仪表工业];
学科分类号
0802 ;
摘要
Physics-informed machine learning (PIML) has gained significant attention in various scientific fields and is now emerging in the area of tribology. By integrating physics-based knowledge into machine learning models, PIML offers a powerful tool for understanding and optimizing phenomena related to friction, wear, and lubrication. Traditional machine learning approaches often rely solely on data-driven techniques, lacking the incorporation of fundamental physics. However, PIML approaches, for example, Physics-Informed Neural Networks (PINNs), leverage the known physical laws and equations to guide the learning process, leading to more accurate, interpretable and transferable models. PIML can be applied to various tribological tasks, such as the prediction of lubrication conditions in hydrodynamic contacts or the prediction of wear or damages in tribo-technical systems. This review primarily aims to introduce and highlight some of the recent advances of employing PIML in tribological research, thus providing a foundation and inspiration for researchers and R&D engineers in the search of artificial intelligence (AI) and machine learning (ML) approaches and strategies for their respective problems and challenges. Furthermore, we consider this review to be of interest for data scientists and AI/ML experts seeking potential areas of applications for their novel and cutting-edge approaches and methods.
引用
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页数:19
相关论文
共 86 条
[1]   Prediction of porous media fluid flow using physics informed neural networks [J].
Almajid, Muhammad M. ;
Abu-Al-Saud, Moataz O. .
JOURNAL OF PETROLEUM SCIENCE AND ENGINEERING, 2022, 208
[2]   Fundamentals of Physics-Informed Neural Networks Applied to Solve the Reynolds Boundary Value Problem [J].
Almqvist, Andreas .
LUBRICANTS, 2021, 9 (08)
[3]   A Comparative Study of Artificial Neural Network and Response Surface Methodology for Optimization of Friction Welding of Incoloy 800 H [J].
Anand, K. ;
Shrivastava, Rishabh ;
Tamilmannan, K. ;
Sathiya, P. .
ACTA METALLURGICA SINICA-ENGLISH LETTERS, 2015, 28 (07) :892-902
[4]   Time-delay neural network modeling of the running-in wear process [J].
Argatov, Ivan ;
Jin, Xiaoqing .
TRIBOLOGY INTERNATIONAL, 2023, 178
[5]   Artificial Neural Networks (ANNs) as a Novel Modeling Technique in Tribology [J].
Argatov, Ivan .
FRONTIERS IN MECHANICAL ENGINEERING-SWITZERLAND, 2019, 5
[6]  
Bach F., 2014, J. Mach. Learn. Res, V18, P629
[7]  
Bagov I., 2022, RIO, V8, pe94931, DOI [10.3897/rio.8.e94931, DOI 10.3897/RIO.8.E94931]
[8]  
Bell J., 2014, MACHINE LEARNING HAN
[9]   Artificial intelligence based design of multiple friction modifiers dispersed castor oil and evaluating its tribological properties [J].
Bhaumik, Shubrajit ;
Pathak, S. D. ;
Dey, Swati ;
Datta, Shubhabrata .
TRIBOLOGY INTERNATIONAL, 2019, 140
[10]   Computational intelligence-based design of lubricant with vegetable oil blend and various nano friction modifiers [J].
Bhaumik, Shubrajit ;
Mathew, Behanan Roy ;
Datta, Shubhabrata .
FUEL, 2019, 241 :733-743