Electron beam weld penetration depth prediction improved by beam characterisation

被引:0
作者
Yi Yin
Andrew Kennedy
Tim Mitchell
Norbert Sieczkiewicz
Vitalijs Jefimovs
Yingtao Tian
机构
[1] Lancaster University,Department of Engineering
[2] The National Structural Integrity Research Centre (NSIRC),undefined
[3] TWI Ltd,undefined
来源
The International Journal of Advanced Manufacturing Technology | 2023年 / 125卷
关键词
Electron beam welding; Electron beam probing; Artificial neural network; Penetration depth prediction;
D O I
暂无
中图分类号
学科分类号
摘要
Predicting the penetration depth during electron beam welding (EBW) is important, but the accuracy of current predictive models is highly varied, depending on the type and number of data used. This paper develops and compares several penetration depth prediction models for EBW and uniquely compares the influence of the number and type of data used, as well as the measurement and modelling methods. Although accelerating voltage, beam current and welding speed data are essential modelling inputs, additional data for beam focal position and beam shape, measured using a novel 4-slit beam probing method, greatly improve the accuracy of predictions for models based on an empirical equation, a second-order regression and an artificial neural network (ANN). Optimised models predict weld depths that deviate, on average, by less than 5% from measured depths, are valid for very broad linear electron beam power density ranges (86–324 J/mm) and are close to the estimated 4% inherent variability in the process and its measurement. Within this linear electron beam power density range, the ANN yields accurate and reliable depth predictions, demanding as few as 36 welding trials, decreasing the number required for models that do not consider beam focal position and shape, for the same targeted accuracy, by more than 60%. Adding large volumes of virtual data generated by less reliable analytical or regression models did not improve the predictive capability for the ANN developed in this study.
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页码:399 / 415
页数:16
相关论文
共 86 条
[1]  
Węglowski M(2016)Electron beam welding - techniques and trends - review Vacuum 130 72-92
[2]  
Błacha S(2011)Study on electron beam butt welding of austenitic stainless steel 304 plates and its input – output modelling using neural networks P I Mech Eng B-J Eng 225 2051-2070
[3]  
Phillips A(2010)Optimization and prediction of weldment profile in bead-on-plate welding of Al-1100 plates using electron beam Int J Adv Manuf Tech 48 513-528
[4]  
Jha MN(2011)Neural network-based expert systems for predictions of temperature distributions in electron beam welding process Int J Adv Manuf Tech 55 535-548
[5]  
Pratihar DK(2010)Forward and reverse modeling of electron beam welding process using radial basis function neural networks Int J Knowl-Based In 14 201-215
[6]  
Dey V(2020)Electron beam welding of aerospace alloy (Inconel 825): a comparative study of RSM and ANN modeling to predict weld bead area Optik 219 131-143
[7]  
Saha TK(2011)A neural network and multiple regression method for the characterization of the depth of weld penetration in laser welding based on acoustic signatures J Intell Manuf 22 1995-2001
[8]  
Bapat AV(2012)Predicting the depth of penetration and weld bead width from the infra red thermal image of the weld pool using artificial neural network modeling J Intell Manuf 23 54-62
[9]  
Dey V(1998)A comparison between the back-propagation and counter-propagation networks in the modeling of the TIG welding process J Mater Process Tech 75 56-68
[10]  
Pratihar DK(2007)Modeling of TIG welding process using conventional regression analysis and neural network-based approaches J Mater Process Tech 184 92483-92499