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Bridging the analytical and artificial neural network models for keyhole formation with experimental verification in laser melting deposition: A novel approach

机译:用激光熔化沉积实验验证促进锁孔形成的分析和人工神经网络模型:一种新方法

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Recent scientific and technological developments demonstrated that laser melting deposition (LMD) could yield near-net-shape parts by additive manufacturing. Under context, it was noticed that the primary operating parameters (i.e., laser power, scanning speed, and powder flow rate) significantly influence the generated keyhole's dimensions, ultimately affecting the deposited clad characteristics. In this study, a novel approach is proposed to generate a pool of datasets to implement artificial neural networking (ANN) in manufacturing process automation. A mathematical model was developed to approximate the keyhole's top and bottom widths and penetration depth, depending on the primary operating parameters. Single-layers of AISI 304 stainless steel were deposited via LMD to verify the mathematical results. It was shown that the mathematical model had predictions close to the experimental results. The validated model was used in correlation with the ANN model based upon 3-10-3 (no. of inputs-no. of neurons in hidden layer-no. of outputs) architecture. The outputs based on the given inputs, via the verified mathematical model, were used for the ANN model training. The results of experiments were compared with mathematical and ANN models. It was found that an increase in the laser scanning speed decreases the deposited layer's width, and a direct correlation has been inferred between powder flow rate and laser power with layer width. An increment in the scanning speed reduces the layer height and keyhole's dimensions. A direct correlation has been observed between powder flow rate and layer height, irrespective of the keyhole's dimensions. Laser power was in a direct relationship with layer height and keyhole dimensions. The developed mathematical model can estimate the keyhole's dimensions with an accuracy of (5–9) %. However, the output predicted for keyhole's dimensions by ANN, in a range of (2–3.5) %, is much closer to the experimental results, which identifies the ANN as a potential tool for the 3D printing process automation.
机译:最近的科技发展证明激光熔化沉积(LMD)可以通过添加剂制造产生近净形零件。在上下文下,注意到初级操作参数(即激光功率,扫描速度和粉末流速)显着影响产生的钥匙孔的尺寸,最终影响沉积的包层特性。在本研究中,提出了一种新的方法来生成一个数据集池,以实现制造过程自动化中的人工神经网络(ANN)。根据主要操作参数,开发了一种数学模型以近似锁孔的顶部和底部宽度和渗透深度。通过LMD沉积单层AISI 304不锈钢,以验证数学结果。结果表明,数学模型具有接近实验结果的预测。验证的模型用于基于3-10-3的ANN模型相关(NO。输入 - NO。隐藏层中的神经元。输出)架构。通过验证的数学模型基于给定输入的输出用于ANN模型培训。将实验结果与数学和ANN模型进行比较。发现激光扫描速度的增加降低了沉积层的宽度,并且在粉末流速和层宽度的激光功率之间推断出直接相关性。扫描速度的增量降低了层高度和键孔的尺寸。粉末流速和层高度之间已经观察到直接相关性,而不管锁孔的尺寸如何。激光功率与层高度和钥匙孔尺寸直接关系。开发的数学模型可以通过(5-9)%的精度来估计钥匙孔的尺寸。然而,预测锁孔尺寸的输出在一个(2-3.5)%的范围内更接近实验结果,这将ANN标识为3D打印过程自动化的潜在工具。

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