Performance Evaluation of TWIST Welding Using Machine Learning Assisted Evolutionary Algorithms

被引:0
作者
Dhiraj Kumar
Samriddhi Ganguly
Bappa Acherjee
Arunanshu Shekhar Kuar
机构
[1] Jadavpur University,Department of Production Engineering
[2] Birla Institute of Technology: Mesra,Department of Production and Industrial Engineering
来源
Arabian Journal for Science and Engineering | 2024年 / 49卷
关键词
Laser transmission welding; TWIST; Artificial neural network; Evolutionary algorithm; Machine learning; Multi-objective optimization;
D O I
暂无
中图分类号
学科分类号
摘要
The Transmission welding using incremental scanning technique (TWIST) combines linear feed with an oscillating laser beam to enhance weld quality and expand the process window. However, TWIST welding is influenced by nonlinear process variables, and achieving multiple objectives concurrently is challenging due to conflicting performance attributes. In industrial practice, time constraints and project specifications limit the effectiveness of methodologies tailored to specific workpiece materials or single performance optimization. The present study employs an artificial neural network (ANN) to establish a correlation between TWIST welding parameters and desired performance attributes. Various ANN model architectures are evaluated, with the 5-11-6-2 architecture achieving the highest accuracy (correlation coefficient of 0.998). For multi-objective optimization, the non-dominated sorted genetic algorithm (NSGA-II) and non-dominated sorted teaching learning-based optimization (NSTLBO) algorithm are employed, utilizing the ANN model's fitness function as the objective. The newly developed two-step model provides operators with the flexibility to prioritize factors based on project requirements, resulting in improved outcomes. Comparative analysis of the algorithms using seven metrics demonstrates that NSGA-II outperforms NSTLBO in solution prediction, albeit with slightly increased computing time. NSGA-II offers a broader range of Pareto optimum solutions compared to NSTLBO, which converges narrowly and restricts non-dominated sets. Validation experiments confirm the adequacy of both algorithms, supporting the effectiveness of the two-step model. The proposed methodology enables practitioners to achieve better weld quality, accommodate conflicting performance attributes, and effectively optimize multiple objectives in industrial applications.
引用
收藏
页码:2411 / 2441
页数:30
相关论文
共 138 条
[1]  
Ouellette J(2003)A new wave of microfluidic devices Ind. Phys. 9 14-17
[2]  
Boglea A(2007)Fibre laser welding for packaging of disposable polymeric microfluidic-biochips Appl. Surf. Sci. 254 1174-1178
[3]  
Olowinsky A(1997)Tutorial plastics welding technology for industry Assem. Autom. 17 196-200
[4]  
Gillner A(2016)Emerging trends in automotive lightweighting through novel composite materials Mater. Sci. Appl. 7 26-61
[5]  
Mistry K(2011)Optimal process design for laser transmission welding of acrylics using desirability function analysis and overlay contour plots Int. J. Manuf. Res. 6 49-172
[6]  
Pervaiz M(2012)New concepts for laser transmission welding of dissimilar thermoplastics Progr. Rubber Plast. Recycl. Technol. 28 157-443
[7]  
Panthapulakkal S(2021)Laser transmission welding of polymers–a review on welding parameters, quality attributes, process monitoring, and applications J. Manuf. Process. 64 421-15
[8]  
Sain M(2017)Fiber laser welding technique joins challenging metals J. Ind. Laser Solutions 32 12-246
[9]  
Tjong J(2020)Laser transmission welding of polymers–a review on process fundamentals, material attributes, weldability, and welding techniques J. Manuf. Process. 60 227-474
[10]  
Acherjee B(2018)Influence of oscillation frequency and focal diameter on weld pool geometry and temperature field in laser beam welding of high strength steels Procedia CIRP 74 470-161