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Multi-Objective Optimization of Residual Stress and Cost in Laser Shock Peening Process Using Finite Element Analysis and PSO Algorithm

机译:基于有限元分析和PSO算法的激光冲击强化过程中​​残余应力和成本的多目标优化

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摘要

Laser shock peening (LSP) is an effective process utilized for surface enhancement of metal parts so that generating compressive residual stresses (RS) on the surface improves fatigue life of the material. The main affecting parameters on surface negative residual stress are laser power, laser beam size and shape, peening pitch and pattern. Varying these parameters alters the magnitude and depth of RS as well as the cost of LSR An integrated method for simulation of optimum LSP process is presented in this paper, in which Particle Swarm Optimization (PSO) technique was employed utilizing Python coding in ABAQUS finite element environment to maximize the uniformity of compressive RS and minimize LSP cost on an Inconel 718 super-alloy specimen. The mentioned affecting parameters were selected as optimization parameters, and minimum acceptable amounts and depth of compressive RSs were two main design constraints. Simulation results were compared with previously published experimental ones, and optimum LSP variables were finally determined and presented for certain amount of design constraints. It was revealed that, relatively small circular laser beam, shot by square scanning pattern, leads to generate the most uniform RS with minimum LSP cost.
机译:激光冲击喷丸(LSP)是一种用于金属零件表面增强的有效工艺,因此在表面上产生压缩残余应力(RS)可以改善材料的疲劳寿命。影响表面负残余应力的主要参数是激光功率,激光束大小和形状,喷丸间距和图案。改变这些参数会改变RS的幅度和深度以及LSR的成本。本文提出了一种用于仿真最佳LSP过程的集成方法,其中在ABAQUS有限元中采用Python编码的粒子群优化(PSO)技术在Inconel 718超级合金试样上,可以最大程度地提高压缩RS的均匀性并最小化LSP成本。选择上述影响参数作为优化参数,压缩RS的最小可接受量和深度是两个主要设计约束。仿真结果与先前发表的实验结果进行了比较,最终确定了最佳LSP变量,并针对一定数量的设计约束提出了最优LSP变量。结果表明,由方形扫描图案拍摄的相对较小的圆形激光束可以以最小的LSP成本生成最均匀的RS。

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