4.3 Article

Multi-objective optimization of electric-discharge machining process using controlled elitist NSGA-II

Journal

JOURNAL OF MECHANICAL SCIENCE AND TECHNOLOGY
Volume 26, Issue 6, Pages 1875-1883

Publisher

KOREAN SOC MECHANICAL ENGINEERS
DOI: 10.1007/s12206-012-0411-x

Keywords

Artificial neural networks; Electric discharge machining; Genetic algorithm; Material removal rate; Optimization; Pareto-optimal solutions; Surface roughness

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Parametric optimization of electric discharge machining (EDM) process is a multi-objective optimization task. In general, no single combination of input parameters can provide the best cutting speed and the best surface finish simultaneously. Genetic algorithm has been proven as one of the most popular multi-objective optimization techniques for the parametric optimization of EDM process. In this work, controlled elitist non-dominated sorting genetic algorithm has been used to optimize the process. Experiments have been carried out on die-sinking EDM by taking Inconel 718 as work piece and copper as tool electrode. Artificial neural network (ANN) with back propagation algorithm has been used to model EDM process. ANN has been trained with the experimental data set. Controlled elitist non-dominated sorting genetic algorithm has been employed in the trained network and a set of pareto-optimal solutions is obtained.

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