Combining soft computing techniques and the finite element method to design and optimize complex welded products
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Rubén Lostado-Lorza | Roberto Fernández-Martínez | Pedro Maria Villanueva | Bryan J. Mac Donald | B. J. M. Donald | R. Lostado-Lorza | R. Fernández-Martínez | Pedro Maria Villanueva | B. M. Donald | Rubén Lostado-Lorza
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