Litcius/Paper detail

Identification of tool wear using acoustic emission signal and machine learning methods

Paweł Twardowski, Maciej Tabaszewski, Martyna Wiciak-Pikuła, Agata Felusiak

2021Precision Engineering156 citationsDOIOpen Access PDF

Abstract

The work concerns the monitoring of the edge condition based on acoustic emission (AE) signals. The tool edge condition was determined by the wear width on the flank face. The processed material was an aluminum-ceramic composite containing 10% SiC. A carbide milling cutter with a diamond coating was used as the tool. Based on the AE signals, appropriate measures were developed that were correlated with the edge condition. Machine learning methods were used to assess the milling cutter's degree of wear based on AE signals. The applied approach using a decision tree allowed the prediction error of the tool condition class with a value below 6%. The method was also compared with other machine learning methods such as neural networks and the k-nearest neighbor algorithm.

Topics & Concepts

Acoustic emissionEnhanced Data Rates for GSM EvolutionTool wearMaterials scienceSIGNAL (programming language)Artificial neural networkMachine toolMilling cutterFlankCeramicAbrasion (mechanical)Decision treeCoatingComputer scienceAcousticsPattern recognition (psychology)Artificial intelligenceMachiningComposite materialMetallurgyPhysicsSociologyAnthropologyProgramming languageAdvanced machining processes and optimizationAdvanced Machining and Optimization TechniquesTunneling and Rock Mechanics