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Polymer gear contact fatigue reliability evaluation with small data set based on machine learning

Genshen Liu, Peitang Wei, Kerui Chen, Huaiju Liu, Zehua Lu

2022Journal of Computational Design and Engineering33 citationsDOIOpen Access PDF

Abstract

Abstract Polymer gears have shown potential in power transmission by their comprehensive mechanical properties. One of the significant concerns with expanding their applications is the deficiency of reliability evaluation methods considering small data set circumstances. This work conducts a fair number of polyoxymethylene (POM) gear durability tests with adjustable loading and lubrication conditions via a gear durability test rig. A novel machine learning-based reliability model is developed to evaluate contact fatigue reliability for the POM gears with such a data set. Results reveal that the model predicts reasonable POM gear contact fatigue curves of reliability–stress–number of cycles with 2.0% relative error and 18.8% reduction of test specimens compared with the large sample data case. In contrast to grease lubrication, the oil-lubricated POM gear contact fatigue strength improves by 10.4% from 52.1 to 57.6 MPa.

Topics & Concepts

DurabilityReliability (semiconductor)LubricationPolyoxymethyleneContact mechanicsPinionStress (linguistics)Structural engineeringNon-circular gearMaterials scienceMechanical engineeringEngineeringPower (physics)Computer scienceAutomotive engineeringComposite materialPolymerFinite element methodSpiral bevel gearQuantum mechanicsRackLinguisticsPhysicsPhilosophyGear and Bearing Dynamics AnalysisMechanical Engineering and Vibrations ResearchMechanical stress and fatigue analysis
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