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Modeling and Optimization Approaches of Laser-Based Powder-Bed Fusion Process for Ti-6Al-4V Alloy

机译:用于Ti-6Al-4V合金的激光基粉状融合过程的建模与优化方法

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Laser-based powder-bed fusion (L-PBF) is a widely used additive manufacturing technology that contains several variables (processing parameters), which makes it challenging to correlate them with the desired properties (responses) when optimizing the responses. In this study, the influence of the five most influential L-PBF processing parameters of Ti-6Al-4V alloy—laser power, scanning speed, hatch spacing, layer thickness, and stripe width—on the relative density, microhardness, and various line and surface roughness parameters for the top, upskin, and downskin surfaces are thoroughly investigated. Two design of experiment (DoE) methods, including Taguchi L25 orthogonal arrays and fractional factorial DoE for the response surface method (RSM), are employed to account for the five L-PBF processing parameters at five levels each. The significance and contribution of the individual processing parameters on each response are analyzed using the Taguchi method. Then, the simultaneous contribution of two processing parameters on various responses is presented using RSM quadratic modeling. A multi-objective RSM model is developed to optimize the L-PBF processing parameters considering all the responses with equal weights. Furthermore, an artificial neural network (ANN) model is designed and trained based on the samples used for the Taguchi method and validated based on the samples used for the RSM. The Taguchi, RSM, and ANN models are used to predict the responses of unseen data. The results show that with the same amount of available experimental data, the proposed ANN model can most accurately predict the response of various properties of L-PBF components.
机译:基于激光的粉型融合(L-PBF)是一种广泛使用的添加剂制造技术,其包含多个变量(处理参数),这使得在优化响应时将它们与所需的性质(响应)相关联而气。在这项研究中,五个最具影响力的L-PBF处理参数的影响Ti-6Al-4V合金激光功率,扫描速度,舱口间距,层厚度和条纹宽度对相对密度,微硬度和各种线路的影响彻底调查了顶部,上皮和下瓣表面的表面粗糙度参数。两种实验设计(DOE)方法,包括用于响应表面方法(RSM)的Taguchi L25正交阵列和分数阶乘DOE,用于计算每个五个级别的五个L-PBF处理参数。使用TAGUCHI方法分析各个处理参数对每个响应的重要性和贡献。然后,使用RSM二次建模呈现了两个处理参数对各种响应的同时贡献。开发了一种多目标RSM模型,以考虑具有相等权重的所有响应的L-PBF处理参数。此外,基于用于Taguchi方法的样本并基于用于RSM的样本来验证人工神经网络(ANN)模型。 TAGUCHI,RSM和ANN模型用于预测未经证明数据的响应。结果表明,采用相同数量的可用实验数据,所提出的ANN模型可以最准确地预测L-PBF组分各种性能的响应。

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