Multi-Objective Optimization of Squeeze Casting Process using Genetic Algorithm and Particle Swarm Optimization
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Date
2016
Journal Title
Journal ISSN
Volume Title
Publisher
De Gruyter Open Ltd peter.golla@degruyter.com
Abstract
The near net shaped manufacturing ability of squeeze casting process requiresto set the process variable combinations at their optimal levels to obtain both aesthetic appearance and internal soundness of the cast parts. The aesthetic and internal soundness of cast parts deal with surface roughness and tensile strength those can readily put the part in service without the requirement of costly secondary manufacturing processes (like polishing, shot blasting, plating, hear treatment etc.). It is difficult to determine the levels of the process variable (that is, pressure duration, squeeze pressure, pouring temperature and die temperature) combinations for extreme values of the responses (that is, surface roughness, yield strength and ultimate tensile strength) due to conflicting requirements. In the present manuscript, three population based search and optimization methods, namely genetic algorithm (GA), particle swarm optimization (PSO) and multi-objective particle swarm optimization based on crowding distance (MOPSO-CD) methods have been used to optimize multiple outputs simultaneously. Further, validation test has been conducted for the optimal casting conditions suggested by GA, PSO and MOPSO-CD. The results showed that PSO outperformed GA with regard to computation time. © 2016 G.C.M. Patel et al., published by De Gruyter Open.
Description
Keywords
Genetic algorithms, Manufacture, Metal cleaning, Metal finishing, Multiobjective optimization, Optimization, Pressure pouring, Squeeze casting, Surface roughness, Tensile strength, Casting conditions, Genetic algorithm and particle swarm optimizations, Manufacturing ability, Manufacturing process, Multi objective particle swarm optimization, Optimization method, Pouring temperatures, Ultimate tensile strength, Particle swarm optimization (PSO)
Citation
Archives of Foundry Engineering, 2016, 16, 3, pp. 172-186
