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2020, vol. 48, br. 2, str. 404-410
Optimizacija višestrukog odgovora kod EDM postupka korišćenjem meta-modela simboličke regresije
aSikkim Manipal University, Department of Mechanical Engineering, Sikkim Manipal Institute of Technology, Majhitar, India
bVel Tech Rangarajan Dr. Sagunthala R&D Institute of Science and Technology, Department of Mechanical Engineering, India
cUniversity of Eastern Finland, School of Computing, Kuopio, Finland

e-adresadrkanakkalita@veltech.edu.in
Sažetak
Elektroerozivna obrada (EDM) je popularan postupak obrade koji ima široku upotrebu kod teško obradljivih i krtih materijala. Nije potreban rezni alat i može da se koristi kod obradaka složene geometrije. Međutim, nedostaci su mala brzina skidanja materijala i preterano habanje alata. Rad pokušava da reši navedene slabosti primenom meta-modela zajedno sa sveobuhvatnom optimizacijom u cilju predviđanja odgovarajućih kombinacija ulaznih parametara (struja, uspostavljanje i gašenje električnog luka), što bi dovelo do povećanja brzine skidanja materijala i habanje alata svelo na minimum. Metamodeli su razvijeni korišćenjem nove simboličke regresije bazirane na genetskom programiranju. Posle komparativne evaluacije u odnosu na konvencionalne meta-modele metodologije odgovora površine, meta-modeli genetskog programiranja pokazuju bolji i precizniji proračun. Meta-modeli genetskog programiranja su zatim povezani sa genetskim algoritmom u cilju višestruke optimizacije EDM postupka.
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O članku

jezik rada: engleski
vrsta rada: neklasifikovan
DOI: 10.5937/fme2002404G
objavljen u SCIndeksu: 04.05.2020.
Creative Commons License 4.0

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