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首页> 外文期刊>Iranian Journal of Science and Technology, Transactions of Mechanical Engineering >Determining Optimum Butt-Welding Parameters of 304 Stainless-Steel Plates Using Finite Element Particle Swarm and Artificial Neural Network
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Determining Optimum Butt-Welding Parameters of 304 Stainless-Steel Plates Using Finite Element Particle Swarm and Artificial Neural Network

机译:使用有限元粒子群和人工神经网络确定304不锈钢板的最佳对接参数

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摘要

Residual tensile stresses generated during butt welding of plates using arc welding process lead to deformation and deterioration of fatigue strength of welded parts. This research implemented particle swarm optimization (PSO) algorithm to present optimum welding parameters to minimize the tensile residual stresses of butt-welded 304 stainless-steel plates with 4-15 mm thicknesses. A set of 32 experiments was designed using Taguchi method and simulated using ABAQUS commercial software based on element birth-and-death finite element technique. An artificial neural network and PSO were utilized to discover the optimum welding settings. To ensure the accuracy of simulation results, slitting method was implemented to measure residual stresses utilizing digital image correlation technique beside the strain gauges.
机译:使用电弧焊接工艺对板材的对接焊接期间产生的残余拉伸应力导致焊接部件的疲劳强度变形和劣化。 该研究实现了粒子群优化(PSO)算法,以提出最佳焊接参数,以最小化具有4-15mm厚度的对接304不锈钢板的拉伸残余应力。 使用Taguchi方法设计了一组32个实验,并根据基于元素出生的有限元技术使用Abaqus商业软件进行模拟。 利用人工神经网络和PSO来发现最佳焊接环境。 为了确保仿真结果的准确性,实施了分解方法以测量利用应变仪旁边的数字图像相关技术测量残余应力。

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