Machine-Learning-Assisted Identification and Formulation of High-Pressure Lubricant-Piezoviscous-Response Parameters for Minimum Film Thickness Determination in Elastohydrodynamic Circular Contacts

IF 2.9 3区 工程技术 Q2 ENGINEERING, CHEMICAL Tribology Letters Pub Date : 2024-11-14 DOI:10.1007/s11249-024-01937-2
W. Habchi, S. Bair
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Abstract

From the earliest theoretical studies on elastohydrodynamic lubrication, it was believed that film build-up is governed by lubricant rheology in the low-pressure contact inlet. Recently, it was discovered that this is only true for the theoretical line contact case, where lubricant out-of-contact lateral flow is absent. In actual contacts, though central film thickness is indeed governed by low-pressure lubricant rheology, minimum film thickness is additionally influenced by the high-pressure response. Thus, a proper prediction of minimum film thickness (either by analytical formulae, or machine-learning frameworks) would require input parameters that define the high-pressure viscous response of the lubricant. The current work identifies and formulates these parameters with the help of machine-learning regression tools. These are fed with minimum film thickness results from finite element simulations of smooth steady-state isothermal Newtonian circular contacts, lubricated with sets of hypothetical fluids having the same pressure-viscosity response at low pressure, but different high-pressure ones. It is found that conventional dimensionless groups are not sufficient to describe minimum film thickness formation, and that an additional pressure-viscosity coefficient—evaluated at half the Hertzian contact pressure—is required.

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机器学习辅助识别和制定用于确定弹性流体动力圆形接触最小膜厚的高压润滑剂-压左粘-响应参数
从最早的弹性流体动力润滑理论研究开始,人们就认为油膜的形成受低压接触入口处润滑油流变学的支配。最近,人们发现这只适用于理论上的线接触情况,即润滑油不存在接触外横向流动的情况。在实际接触中,虽然中心膜厚确实受低压润滑油流变学的影响,但最小膜厚还受高压响应的影响。因此,要正确预测最小油膜厚度(无论是通过分析公式还是机器学习框架),都需要定义润滑油高压粘性响应的输入参数。目前的工作借助机器学习回归工具确定并制定了这些参数。这些参数来自对光滑稳态等温牛顿圆形接触的有限元模拟得出的最小膜厚结果,这些接触使用了在低压下具有相同压力-粘度响应,但在高压下具有不同压力-粘度响应的假定流体组进行润滑。结果发现,传统的无量纲组不足以描述最小膜厚的形成,还需要一个额外的压力-粘度系数--以赫兹接触压力的一半进行评估。
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来源期刊
Tribology Letters
Tribology Letters 工程技术-工程:化工
CiteScore
5.30
自引率
9.40%
发文量
116
审稿时长
2.5 months
期刊介绍: Tribology Letters is devoted to the development of the science of tribology and its applications, particularly focusing on publishing high-quality papers at the forefront of tribological science and that address the fundamentals of friction, lubrication, wear, or adhesion. The journal facilitates communication and exchange of seminal ideas among thousands of practitioners who are engaged worldwide in the pursuit of tribology-based science and technology.
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