Litcius/Paper detail

Machine learning-based performance analysis of two-axial-groove hydrodynamic journal bearings

Biswajit Roy, Sudip Dey

2021Proceedings of the Institution of Mechanical Engineers Part J Journal of Engineering Tribology10 citationsDOI

Abstract

The precise prediction of a rotor against instability is needed for avoiding the degradation or failure of the system’s performance due to the parametric variabilities of a bearing system. In general, the design of the journal bearing is framed based on the deterministic theoretical analysis. To map the precise prediction of hydrodynamic performance, it is needed to include the uncertain effect of input parameters on the output behavior of the journal bearing. This paper presents the uncertain hydrodynamic analysis of a two-axial-groove journal bearing including randomness in bearing oil viscosity and supply pressure. To simulate the uncertainty in the input parameters, the Monte Carlo simulation is carried out. A support vector machine is employed as a metamodel to increase the computational efficiency. Both individual and compound effects of uncertainties in the input parameters are studied to quantify their effect on the steady-state and dynamic characteristics of the bearing.

Topics & Concepts

Bearing (navigation)Fluid bearingGroove (engineering)RandomnessComputer scienceRotor (electric)Parametric statisticsComputational fluid dynamicsMonte Carlo methodControl theory (sociology)Mechanical engineeringEngineeringLubricationMathematicsAerospace engineeringArtificial intelligenceControl (management)StatisticsTribology and Lubrication EngineeringMagnetic Bearings and Levitation DynamicsHydraulic and Pneumatic Systems