Physics-Informed Machine Learning—An Emerging Trend in Tribology

IF 3.1 3区 工程技术 Q2 ENGINEERING, MECHANICAL Lubricants Pub Date : 2023-10-30 DOI:10.3390/lubricants11110463
Max Marian, Stephan Tremmel
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Abstract

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.
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基于物理的机器学习——摩擦学的新兴趋势
基于物理的机器学习(PIML)已经在各个科学领域获得了极大的关注,现在正在摩擦学领域崭露头角。通过将基于物理的知识集成到机器学习模型中,PIML为理解和优化与摩擦、磨损和润滑相关的现象提供了强大的工具。传统的机器学习方法通常只依赖于数据驱动的技术,缺乏基础物理学的结合。然而,PIML方法,例如物理信息神经网络(pinn),利用已知的物理定律和方程来指导学习过程,从而产生更准确、可解释和可转移的模型。PIML可以应用于各种摩擦学任务,例如流体动力接触中的润滑条件预测或摩擦技术系统中的磨损或损坏预测。本文主要介绍和强调了在摩擦学研究中应用PIML的一些最新进展,从而为研究人员和研发工程师在寻找人工智能(AI)和机器学习(ML)方法和策略以解决各自的问题和挑战提供基础和灵感。此外,我们认为这篇综述对数据科学家和人工智能/机器学习专家来说是有兴趣的,他们正在为他们新颖和前沿的方法和方法寻找潜在的应用领域。
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来源期刊
Lubricants
Lubricants Engineering-Mechanical Engineering
CiteScore
3.60
自引率
25.70%
发文量
293
审稿时长
11 weeks
期刊介绍: This journal is dedicated to the field of Tribology and closely related disciplines. This includes the fundamentals of the following topics: -Lubrication, comprising hydrostatics, hydrodynamics, elastohydrodynamics, mixed and boundary regimes of lubrication -Friction, comprising viscous shear, Newtonian and non-Newtonian traction, boundary friction -Wear, including adhesion, abrasion, tribo-corrosion, scuffing and scoring -Cavitation and erosion -Sub-surface stressing, fatigue spalling, pitting, micro-pitting -Contact Mechanics: elasticity, elasto-plasticity, adhesion, viscoelasticity, poroelasticity, coatings and solid lubricants, layered bonded and unbonded solids -Surface Science: topography, tribo-film formation, lubricant–surface combination, surface texturing, micro-hydrodynamics, micro-elastohydrodynamics -Rheology: Newtonian, non-Newtonian fluids, dilatants, pseudo-plastics, thixotropy, shear thinning -Physical chemistry of lubricants, boundary active species, adsorption, bonding
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