A methodology for performance prediction: Hydrodynamic investigation of spiral grooved thrust bearing

IF 1.8 4区 工程技术 Q3 ENGINEERING, CHEMICAL Lubrication Science Pub Date : 2023-04-17 DOI:10.1002/ls.1649
Hara Prakash Mishra, Suraj Kumar Behera
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Abstract

This paper presents the design and numerical optimization of oil-lubricated spiral grooved thrust bearing (SGTB) for its application at high speed and axial loading conditions. A numerical model is developed using nonlinear incompressible Reynold's equation and is solved using the finite volume method (FVM) to determine the static characteristics over the bearing surface. Further, the influence of groove parameters such as spiral angle, groove angle, film thickness ratio, number of grooves and speed on the static characteristics of the bearing has been investigated. The result shows that the designed oil-lubricated SGTB can operate at high-speed conditions and withstand high axial load. Further, the characteristic data sets acquired from the numerical analysis are trained using an artificial neural network (ANN), and their performance is evaluated through the computation of the regression coefficient. Then adaptive neuro-fuzzy interface system (ANFIS) surface plot is obtained to determine the optimum bearing parameters.

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一种性能预测方法:螺旋槽推力轴承的流体力学研究
本文介绍了油润滑螺旋槽推力轴承(SGTB)在高速和轴向载荷条件下的设计和数值优化。采用非线性不可压缩雷诺方程建立了一个数值模型,并采用有限体积法求解,以确定轴承表面的静态特性。进一步研究了螺旋角、槽角、膜厚比、槽数和转速等沟槽参数对轴承静态特性的影响。结果表明,所设计的油润滑SGTB能够在高速工况下运行,并能承受高轴向载荷。利用人工神经网络(ANN)对数值分析得到的特征数据集进行训练,并通过计算回归系数对其性能进行评价。然后得到自适应神经模糊界面系统(ANFIS)的曲面图,确定最优轴承参数。
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来源期刊
Lubrication Science
Lubrication Science ENGINEERING, CHEMICAL-ENGINEERING, MECHANICAL
CiteScore
3.60
自引率
10.50%
发文量
61
审稿时长
6.8 months
期刊介绍: Lubrication Science is devoted to high-quality research which notably advances fundamental and applied aspects of the science and technology related to lubrication. It publishes research articles, short communications and reviews which demonstrate novelty and cutting edge science in the field, aiming to become a key specialised venue for communicating advances in lubrication research and development. Lubrication is a diverse discipline ranging from lubrication concepts in industrial and automotive engineering, solid-state and gas lubrication, micro & nanolubrication phenomena, to lubrication in biological systems. To investigate these areas the scope of the journal encourages fundamental and application-based studies on: Synthesis, chemistry and the broader development of high-performing and environmentally adapted lubricants and additives. State of the art analytical tools and characterisation of lubricants, lubricated surfaces and interfaces. Solid lubricants, self-lubricating coatings and composites, lubricating nanoparticles. Gas lubrication. Extreme-conditions lubrication. Green-lubrication technology and lubricants. Tribochemistry and tribocorrosion of environment- and lubricant-interface interactions. Modelling of lubrication mechanisms and interface phenomena on different scales: from atomic and molecular to mezzo and structural. Modelling hydrodynamic and thin film lubrication. All lubrication related aspects of nanotribology. Surface-lubricant interface interactions and phenomena: wetting, adhesion and adsorption. Bio-lubrication, bio-lubricants and lubricated biological systems. Other novel and cutting-edge aspects of lubrication in all lubrication regimes.
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