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2032252
Prediction of Weld Tensile-Shear Strength using ANN Based on the Weld Shape in Aluminum Alloy GMAW
Dong-Yoon Kim, June Hyung Hwang, Gwang-Gook Kim, Young-Min Kim, Jiyoung Yu, Junhong Park
J Weld Join. 2023;41(1):17-27.   Published online February 17, 2023
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Welding Distortion Prediction for Multi-Seam Welded Pipe Structures using Equivalent Thermal Strain Method
Chunbiao Wu, Chao Wang, Jae-Woong Kim
J Weld Join. 2021;39(4):435-444.   Published online August 30, 2021
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Penetration Depth Modeling and Process Parameter Maps for Laser Welds Using Machine Learning
Bum-su Go, Hyeonjeong You, Hee-seon Bang, Cheolhee Kim
J Weld Join. 2021;39(4):392-401.   Published online August 11, 2021
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Prediction of Indentation Depth of Resistance Spot Welding Using Electrode Displacement Signal
Sehyeon Kim, Insung Hwang, Munjin Kang, Jiyong Park, Jiyoung Yu
J Weld Join. 2021;39(3):314-322.   Published online June 11, 2021
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Spectrogram Based Detection Algorithm for Back-Bead in Gas Metal Arc Welding Process using Convolution Neural Network
Chengnan Jin, Sangrin Park, Sehun Rhee
J Weld Join. 2021;39(2):198-205.   Published online April 1, 2021
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2032108
Predicting Failure Modes of Resistance Spot Welds from the Chemical Composition of Materials
Heewon Cho, Sangwoo Nam, Minjung Kang, Munjin Kang, Young-Min Kim
J Weld Join. 2020;38(5):450-459.   Published online October 13, 2020
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Fatigue Life Prediction of Al 5083-O Weldment Considering the Overload Effect
Tae-Woo Kang, Jeong-Yeol Park, Jae-Sung Lee, Myung-Hyun Kim
J Weld Join. 2018;36(5):45-51.   Published online September 20, 2018
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2031541
Verification of Validity of Governing Factors in High Accurate Prediction of Welding Distortion
Jae-Yik Lee, Kyong-Ho Chang, You-Chul Kim
J Weld Join. 2013;31(5):7-14.   Published online November 5, 2013
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Prediction of Arc Welding Quality through Artificial Neural Network
Jungho Cho
J Weld Join. 2013;31(3):44-48.   Published online June 30, 2013
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Numerical Analysis Model for Fatigue Life Prediction of Welded Structures
Chi-Seung Lee, Jae-Myung Lee
J Weld Join. 2009;27(6):49-54.   Published online January 13, 2010
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Development of Simplified Formulas to Predict Deformations in Plate Bending Process with Oxy-Propane Gas Flame
Kang-Yul Bae, Young-Soo Yang, Chung-Min Hyun, Si-Hun Cho
J Weld Join. 2007;25(2):70-75.   Published online May 17, 2007
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