Litcius/Paper detail

In-process detection of grinding burn using machine learning

Emil Sauter, Erkut Sarıkaya, Marius Winter, Konrad Wegener

2021The International Journal of Advanced Manufacturing Technology44 citationsDOIOpen Access PDF

Abstract

Abstract The improvement of industrial grinding processes is driven by the objective to reduce process time and costs while maintaining required workpiece quality characteristics. One of several limiting factors is grinding burn. Usually applied techniques for workpiece burn are conducted often only for selected parts and can be time consuming. This study presents a new approach for grinding burn detection realized for each ground part under near-production conditions. Based on the in-process measurement of acoustic emission, spindle electric current, and power signals, time-frequency transforms are conducted to derive almost 900 statistical features as an input for machine learning algorithms. Using genetic programming, an optimized combination between feature selector and classifier is determined to detect grinding burn. The application of the approach results in a high classification accuracy of about 99% for the binary problem and more than 98% for the multi-classdetection case, respectively.

Topics & Concepts

GrindingBurn-inProcess (computing)LimitingComputer scienceSupport vector machineEngineeringPower (physics)Process engineeringArtificial intelligenceMechanical engineeringReliability engineeringPhysicsOperating systemQuantum mechanicsAdvanced machining processes and optimizationAdvanced Machining and Optimization TechniquesTunneling and Rock Mechanics