Evolutionary multi-objective optimization of energy efficiency in electrical discharge machining

被引:0
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作者
Marin Gostimirovic
Vladimir Pucovsky
Milenko Sekulic
Miroslav Radovanovic
Milos Madic
机构
[1] University of Novi Sad,Department for Production Engineering, Faculty of Technical Sciences
[2] University of Nis,Laboratory for Machine Tools and Machining, Faculty of Mechanical Engineering
关键词
EDM; Discharge energy; Machining performance; Genetic algorithm; Two-objective optimization; Pareto optimal set;
D O I
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中图分类号
学科分类号
摘要
Electrical energy, which in the machining zone is transformed into heat, is of key importance in electrical discharge machining (EDM). Machining performance of EDM is determined by the characteristic of discharge energy. Therefore, an experimental-analytical approach of discharge energy efficiency was analyzed. The main input parameters for controlling the discharge energy are discharge current and discharge duration. The EDM process is monitored considering the two output machining performance, i.e., material removal rate and surface roughness, which are important for increasing productivity and quality. We modeled the energy efficiency of electrical discharge machining by the use of genetic algorithm. With this action an attempt was made to find even more precise dependence of discharge energy parameters with machining performance. Finally, this was followed by optimization of the discharge energy efficiency in EDM process using multi-objective approach. Evolutionary two-objective optimization is leading to the set of optimal solutions for the discharge energy considering the two machining parameters. Using this set of solutions, EDM discharge energy parameters can be selected to achieve high material removal rate with good surface roughness.
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页码:4775 / 4785
页数:10
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