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Prediction of Tensile Strength for Plasma-MIG Hybrid Welding Using Statistical Regression Model and Neural Network Algorithm
Jin Soo Jung, Hee Keun Lee, Young Whan Park
J Weld Join. 2016;34(2):67-72. Published online 2016 Apr 30 DOI: https://doi.org/10.5781/JWJ.2016.34.2.67
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