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Machine learning models for surface roughness monitoring in machining operations

Mariane Prado Motta, Cyril Pelaingre, A. Delamézière, Lanouar Ben Ayed, Claude Barlier

2022Procedia CIRP46 citationsDOIOpen Access PDF

Abstract

Machining manufacturing companies are faced with ever-increasing demands in terms of quality, product variability and cost reduction. To address these constraints, machining monitoring systems for surface integrity control are an expected solution. However, due to the harsh machining environment, the sensor options for monitoring are limited and, as a result, so is the direct information available. To address this limitation, in this work, machine learning based models are developed for continuous prediction of surface roughness in machining operations. The proposed models use as inputs cutting forces, temperature and vibration data acquired by robust sensors suitable for the machining environment.

Topics & Concepts

MachiningSurface roughnessMechanical engineeringSurface finishVibrationSurface integrityEngineeringManufacturing engineeringComputer scienceControl engineeringMaterials sciencePhysicsComposite materialQuantum mechanicsAdvanced machining processes and optimizationAdvanced Machining and Optimization TechniquesEngineering Technology and Methodologies
Machine learning models for surface roughness monitoring in machining operations | Litcius