scholarly journals Experimental Investigation of Process Parameters of Micro EDM Drilling on Carbide (K20) material

2012 ◽  
Vol 622-623 ◽  
pp. 30-34 ◽  
Author(s):  
C.K. Nirala ◽  
B. Reddy ◽  
P. Saha

This paper applies Taguchi methodology to optimize the machining parameters in micro EDM-drilling of copper using a tungsten carbide tool electrode. The experimental design has been applied to find out the optimal combination of process parameters corresponding to maximum material removal rate, minimum over-cut, minimum tool wear ratio and minimum error-in-depth of drilled hole. Orthogonal array and signal-to-noise ratio is employed to optimize the process parameter. Analysis of variance (ANOVA) is performed to determine the influence of parameters such as, gap voltage, capacitance, feed rate and spindle rotationof micro EDM-drilling process on the performance measures. From the analysis, it is concluded that gap-voltage and capacitance arethe most significant parameters whereas spindle speed is the least among all.


Micromachines ◽  
2021 ◽  
Vol 12 (6) ◽  
pp. 667
Author(s):  
Mariangela Quarto ◽  
Gianluca D’Urso ◽  
Claudio Giardini ◽  
Giancarlo Maccarini ◽  
Mattia Carminati

Artificial Neural Network (ANN), together with a Particle Swarm Optimization (PSO) and Finite Element Model (FEM), was used to forecast the process performances for the Micro Electrical Discharge Machining (micro-EDM) drilling process. The integrated ANN-PSO methodology has a double direction functionality, responding to different industrial needs. It allows to optimize the process parameters as a function of the required performances and, at the same time, it allows to forecast the process performances fixing the process parameters. The functionality is strictly related to the input and/or output fixed in the model. The FEM model was based on the capacity of modeling the removal process through the mesh element deletion, simulating electrical discharges through a proper heat-flux. This paper compares these prevision models, relating the expected results with the experimental data. In general, the results show that the integrated ANN-PSO methodology is more accurate in the performance previsions. Furthermore, the ANN-PSO model is faster and easier to apply, but it requires a large amount of historical data for the ANN training. On the contrary, the FEM is more complex to set up, since many physical and thermal characteristics of the materials are necessary, and a great deal of time is required for a single simulation.


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