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Parametric Optimize and Surface Characterisation of Micro Electrical Discharge Machining Drilling Process

  • Jush Kumar SiddaniEmail author
  • C. Srinivas
  • N. N. Ramesh
Conference paper
Part of the Lecture Notes on Multidisciplinary Industrial Engineering book series (LNMUINEN)

Abstract

Micro electrical Discharge Machining Drilling (MEDM Drill) technology has recently come into existence. The MEDM Drill process is an amalgamation of electromagnetic, thermodynamic and hydrodynamic behaviour and stochastic in nature. Optimize the course of action parametric combination, modelling the method, employ Artificial Neural Network (ANN) as well as to characterize the MEDM Drill external from end to end time progression technique. Therefore feed—forward reverse dissemination neural network base on top of very important composite rotatable investigational drawing mechanism, developed to model machining procedure. The best possible parametric combination is particular for development.

Keywords

MEDM Drill ANN Process optimization Surface characterization 

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Copyright information

© Springer Nature Singapore Pte Ltd. 2019

Authors and Affiliations

  1. 1.Acharya Nagarjuna UniversityGunturIndia
  2. 2.RVR & JC College of EngineeringGunturIndia
  3. 3.Anurag Group of InstitutionsHyderabadIndia

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