Simulation-based selection of optimum pressure die-casting process parameters using neural nets and genetic algorithms
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George-Christopher Vosniakos | Panorios Benardos | A. Krimpenis | A. Koukouvitaki | G. Vosniakos | P. Benardos | A. Krimpenis | A. Koukouvitaki
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