Litcius/Paper detail

A computer vision system for saw blade condition monitoring

Nicolas Jourdan, Tobias Biegel, Volker Knauthe, Max von Buelow, Stefan Guthe, Joachim Metternich

2021Procedia CIRP12 citationsDOIOpen Access PDF

Abstract

Tool condition monitoring is a key component of predictive maintenance in smart manufacturing. Predicting excessive tool wear in machining processes becomes increasingly difficult if different materials need to be processed. We propose a novel computer vision-based system for saw blade condition monitoring that is independent of the processed materials and combines deep learning with classic computer vision. Our approach allows for accurate condition monitoring of blade wear which can further be used for predictive maintenance. Additionally, the system can classify different defect types such as missing blade teeth, thus preventing the production of scrap parts.

Topics & Concepts

Blade (archaeology)ScrapMachiningCondition monitoringTool wearComponent (thermodynamics)Predictive maintenanceKey (lock)EngineeringCutting toolMachine toolComputer scienceArtificial intelligenceMechanical engineeringReliability engineeringOperating systemPhysicsElectrical engineeringThermodynamicsAdvanced machining processes and optimizationTunneling and Rock MechanicsIndustrial Vision Systems and Defect Detection