welding simulation
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2021 ◽  
Vol 2141 (1) ◽  
pp. 012003
Author(s):  
Zhi Ling Wang

Abstract In this paper, we mainly introduce the research status and development trend of welding numerical simulation technology. It is mainly reviewed that the simulation of molten pool flow field, welding temperature field and mechanical field, welding deformation and residual stress, hydrogen diffusion analysis, carbon migration of dissimilar steel welded joints, special welding process, microstructure of welded joints and grain growth process of welding heat affected zone. Then we discuss the special welding process simulation technology and special software for welding simulation. Finally, the development of welding numerical simulation technology in China are concerned.


2021 ◽  
Vol 11 (15) ◽  
pp. 7075
Author(s):  
Jan Reimann ◽  
Stefan Hammer ◽  
Philipp Henckell ◽  
Maximilian Rohe ◽  
Yarop Ali ◽  
...  

This research presents a hybrid approach to generate sample data for future machine learning applications for the prediction of mechanical properties in directed energy deposition-arc (DED-Arc) using the GMAW process. DED-Arc is an additive manufacturing process which offers a cost-effective way to generate 3D metal parts, due to its high deposition rate of up to 8 kg/h. The mechanical properties additively manufactured wall structures made of the filler material G4Si1 (ER70 S-6) are shown in dependency of the t8/5 cooling time. The numerical simulation is used to link the process parameters and geometrical features to a specific t8/5 cooling time. With an input of average welding power, welding speed and geometrical features such as wall thickness, layer height and heat source size a specific temperature field can be calculated for each iteration in the simulated welding process. This novel approach allows to generate large, artificial data sets as training data for machine learning methods by combining experimental results to generate a regression equation based on the experimentally measured t8/5 cooling time. Therefore, using the regression equations in combination with numerically calculated t8/5 cooling times an accurate prediction of the mechanical properties was possible in this research with an error of only 2.6%. Thus, a small set of experimentally generated data set allows to achieve regression equations which enable a precise prediction of mechanical properties. Moreover, the validated numerical welding simulation model was suitable to achieve an accurate calculation of the t8/5 cooling time, with an error of only 0.3%.


Author(s):  
Hitesh Arora ◽  
K. Mahaboob Basha ◽  
D. Naga Abhishek ◽  
B. Devesh

2021 ◽  
Vol 190 ◽  
pp. 106019
Author(s):  
Anton Evdokimov ◽  
Nikolay Doynov ◽  
Ralf Ossenbrink ◽  
Aleksei Obrosov ◽  
Sabine Weiß ◽  
...  

Author(s):  
Muhammad Ismail Mat Isham ◽  
Habibah Norehan Hj Haron ◽  
Farhan bin Mohamed ◽  
Chan Vei Siang ◽  
Mohd Khalid Mokhtar ◽  
...  

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