Optimization of the Ductile Properties of an Arc Welded Plate Based on the Yield Strength, Elongation and Modulus of Elasticity.
Subject Areas : Strategic ManagementSamuel Sada 1 , Joseph Achebo 2
1 - Department of Mechanical & Production Engineering, Faculty of Engineering, Delta State University. Nigeria.
2 - Department of Mechanical & Production Engineering, Faculty of Engineering, Delta State University. Nigeria.
Keywords:
Abstract :
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