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Neural Network Modeling and Particle Swarm Optimization (PSO) of Process Parameters in Pulsed Laser Micromachining of Hardened AISI H13 Steel

机译:AISI H13硬化钢脉冲激光微加工中的工艺参数神经网络建模和粒子群优化(PSO)

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This article focuses on modeling and optimizing process parameters in pulsed laser micromachining. Use of continuous wave or pulsed lasers to perform micromachining of 3-D geometrical features on difficult-to-cut metals is a feasible option due the advantages offered such as tool-free and high precision material removal over conventional machining processes. Despite these advantages, pulsed laser micromachining is complex, highly dependent upon material absorption reflectivity, and ablation characteristics. Selection of process operational parameters is highly critical for successful laser micromachining. A set of designed experiments is carried out in a pulsed Nd:YAG laser system using AISI H13 hardened tool steel as work material. Several T-shaped deep features with straight and tapered walls have been machining as representative mold cavities on the hardened tool steel. The relation between process parameters and quality characteristics has been modeled with artificial neural networks (ANN). Predictions with ANNs have been compared with experimental work. Multiobjective particle swarm optimization (PSO) of process parameters for minimum surface roughness and minimum volume error is carried out. This result shows that proposed models and swarm optimization approach are suitable to identify optimum process settings.
机译:本文着重于在脉冲激光微加工中建模和优化工艺参数。使用连续波或脉冲激光在难切削的金属上进行3-D几何特征的微加工是一种可行的选择,这是因为与传统的加工工艺相比,它具有免工具和高精度材料去除的优点。尽管有这些优点,但脉冲激光微加工非常复杂,高度取决于材料的吸收反射率和烧蚀特性。工艺操作参数的选择对于成功进行激光微加工至关重要。使用AISI H13硬化工具钢作为工作材料,在脉冲Nd:YAG激光系统中进行了一组设计实验。几种带有直壁和锥形壁的T形深部零件已经加工成硬化工具钢上的代表性模腔。过程参数和质量特性之间的关系已使用人工神经网络(ANN)进行了建模。人工神经网络的预测已与实验工作进行了比较。进行了工艺参数的多目标粒子群优化(PSO),以实现最小的表面粗糙度和最小的体积误差。该结果表明,提出的模型和群体优化方法适合于识别最佳工艺设置。

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