PREDICTING CUTTING PARAMETERS BY APPLYING DEVELOPED NEURAL NETWORK AND LINEAR REGRESSION MODELS
Journal: Proceedings on Engineering Sciences (Vol.1, No. 1)Publication Date: 2019-06-30
Authors : Aleksandar ĐORĐEVIĆ Milan ERIĆ Miladin STEFANOVIĆ Slobodan MITROVIĆ Marko PANTIĆ Aleksandra KOKIĆ ARSIĆ Dragan DŽUNIĆ;
Page : 482-489
Keywords : cutting parameters; prediction model; neural networks; linear regression;
Abstract
The paper presents the methods for prediction of the cutting parameters. In order to test the workability of the material by process of scraping, from the aspect of the cutting temperature, an natural thermopar was placed just below the cutting edge of the plate. In this way, a simple, reliable, accurate and economical method for determining the workability of material by cutting is obtained. The feasibility study of several semi-finished products by applying the realized experiments was carried out. Different materials in processing with cutting discs with different coatings give different results, which are used to form neural network and linear regression models.
Other Latest Articles
- Effect of panel density with the application of rubber crumb on the sound insulation indicator
- ANALYSIS OF THE PROCESS PARAMETERS INFLUENCE ON THE CHANGE OF MEAN CONTACT PRESSURE IN IRONING PROCESS
- THE INFLUENCE OF LASER MILLING PROCESS PARAMETERS ON DEPTH OF CUT AND SURFACE ROUGHNESS
- DISTRIBUTION NON-UNIFORMITY OF THE ACCUMULATED PLASTIC STRAIN AT 3D SIMULATION OF SINGLE AND MULTI-ANGLED ECAE PROCESSES USING A MOVABLE RAM-DIE
- DEVICE FOR MACHINING NON-CIRCULAR GEARS
Last modified: 2019-10-17 18:41:43