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Mathematical modeling and intelligent optimization of submerged arc welding process parameters using hybrid PSO-GA evolutionary algorithms

机译:基于PSO-GA混合演化算法的埋弧焊工艺参数数学建模与智能优化

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摘要

Now-a-days, submerged arc welding processes (SAW) are immensely being applied for joining the thick plates and surfacing application. However, the selection of optimal SAW process parameters is indeed an intricate task which aims to accomplish the desired quality of welded part at an economic way. Therefore, in the present paper, the research efforts are made on an implementation of efficient hybrid intelligent algorithms, i.e., hybrid particle swarm optimization and genetic algorithm (hybrid PSO-GA) for the optimization of SAW process parameters. The emphasis was given on different direct parameters such as voltage, wire feed rate, welding speed and nozzle to plate distance and indirect parameters such as flux condition and plate thickness, respectively. The parameters were chosen at two levels using fractional factorial design to study their effect on responses including flux consumption, metal deposition rate and heat input. Besides, the linear regression technique and analysis of variance were used for mathematical modeling of each response. Then, the direct effect and interaction effect on selected responses were investigated by 3D surface plots. At the end, the performance of hybrid PSO-GA is compared with general PSO and GA algorithms for indices including success rate, best solution, mean, computational time, standard deviation and mean absolute percentage error between. The overall results suggested that the hybrid PSO-GA is better option than other two algorithms, i.e., PSO and GA for obtaining the optimum SAW process parameters.
机译:如今,埋弧焊工艺 (SAW) 被广泛用于厚板连接和堆焊应用。然而,选择最佳的SAW工艺参数确实是一项复杂的任务,旨在以经济的方式实现焊接零件所需的质量。因此,本文致力于实现高效的混合智能算法,即混合粒子群优化和遗传算法(混合PSO-GA)来优化SAW工艺参数。重点分别放在不同的直接参数上,如电压、送丝速率、焊接速度和喷嘴到板的距离,以及间接参数,如助焊剂条件和板厚。使用分数阶乘设计在两个水平上选择参数,以研究它们对响应的影响,包括通量消耗、金属沉积速率和热输入。此外,采用线性回归技术和方差分析对每个响应进行数学建模。然后,通过三维曲面图研究了对选定响应的直接效应和交互作用。最后,将混合PSO-GA与一般PSO和GA算法的性能进行了比较,包括成功率、最佳解、平均值、计算时间、标准差和平均绝对百分比误差。结果表明,混合PSO-GA算法比其他PSO和GA两种算法更能获得最优的SAW工艺参数。

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