Title of article
Recurrent ANN for monitoring degraded behaviours in a range of workpiece thicknesses
Author/Authors
Portillo، نويسنده , , E. and Marcos، نويسنده , , M. and Cabanes، نويسنده , , I. and Zubizarreta، نويسنده , , A.، نويسنده ,
Pages
14
From page
1270
To page
1283
Abstract
This paper presents the use of artificial neural networks (ANN) to diagnose degraded behaviours in wire electrical discharge machining (WEDM). The detection in advance of the degradation of the cutting process is crucial since this can lead to the breakage of the cutting tool (the wire), reducing the process productivity and the required accuracy. Concerning this, previous investigations have identified different types of degraded behaviours in two commonly used workpiece thicknesses (50 and 100 mm). This goal was achieved by monitoring different functions of characteristic discharge variables. However, the thresholds achieved by these functions depended on the thickness of the workpiece. Consequently, the main objective of this work is to detect the degradation of the process when machining workpiece of different thicknesses using one unique empirical model. Since artificial neural network techniques are appropriate for stochastic and non-linear nature processes, its use is investigated here to cope with workpieces of different thicknesses. The results of this work show a satisfactory performance of the presented approach. The satisfactory performance is shown by two ratios: the validation ratio, which ranges between 85% and 100%, and the test ratio, which results between 75% and 100%.
Keywords
Wire breakage , WEDM , Electro-discharge machining , Supervision , Artificial neural network , Elman
Journal title
Astroparticle Physics
Record number
2046644
Link To Document