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Tilt Pad Bearing Distributed Pad Inlet Temperature With Machine Learning—Part II: Morton Effect

Jongin Yang, Alan Palazzolo

2021Journal of Tribology11 citationsDOI

Abstract

Abstract The Morton effect (ME) occurs when a bearing journal experiences asymmetric heating due to synchronous vibration, resulting in thermal bowing of the shaft and increasing vibration. An accurate prediction of the journal's asymmetric temperature distribution is critical for reliable ME simulation. This distribution is strongly influenced by the film thermal boundary condition at the pad inlets. Part I utilizes machine learning (ML) to obtain a two-dimensional radial and axial distribution of temperatures over the leading-edge film cross section. The hybrid finite volume method (FVM)—bulk flow method of Part I eliminated film temperature discontinuities and is utilized in Part II for improving accuracy and efficiency of ME simulation.

Topics & Concepts

InletBearing (navigation)MechanicsMaterials scienceFinite volume methodClassification of discontinuitiesThermalEnhanced Data Rates for GSM EvolutionVibrationVolume (thermodynamics)BowingMechanical engineeringFlow (mathematics)Computer scienceThermodynamicsEngineeringAcousticsPhysicsMathematicsMathematical analysisTheologyTelecommunicationsPhilosophyArtificial intelligenceTribology and Lubrication EngineeringHeat Transfer MechanismsTurbomachinery Performance and Optimization
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