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Triboinformatics: machine learning algorithms and data topology methods for tribology

Md Syam Hasan, Michael Nosonovsky

2022Surface Innovations39 citationsDOI

Abstract

Friction and wear are very common phenomena found virtually everywhere. However, it is very difficult to predict tribological (i.e. related to friction and wear) structure–property relationships from fundamental physical principles. Consequently, tribology remains a data-driven, mostly empirical discipline. With the advent of new machine learning (ML) and artificial intelligence methods, it becomes possible to establish new correlations in tribological data to predict and control better the tribological behavior of novel materials. Hence, the new area of triboinformatics has emerged combining tribology with data science. This paper reviews ML algorithms used to establish correlations between the structures of metallic alloys and composite materials, tribological test conditions, friction and wear. This paper also discusses novel methods of surface roughness analysis involving the concept of data topology in multidimensional data space, as applied to macro- and nanoscale roughness. Other triboinformatic approaches are considered as well.

Topics & Concepts

TribologyMaterials scienceSurface roughnessMechanical engineeringSurface finishMachine learningComputer scienceTopology (electrical circuits)NanotechnologyAlgorithmComposite materialEngineeringElectrical engineeringForce Microscopy Techniques and ApplicationsLubricants and Their AdditivesTopological and Geometric Data Analysis
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