A Study on the Machine Learning Framework for the Geometric Modelling of Wire Arc Bead Profile

Xi Yu Oh, G. Soh
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引用次数: 1

Abstract

Wire Arc Additive Manufacturing (WAAM) is a manufacturing process that deposits weld beads layer-by-layer in a planar fashion, leading to a final part. Thus, the accuracy of the printed geometry is largely dependent on the knowledge of the bead profile employed, which by itself is dependent on a variety of process parameters, such as wire feedrate and torch speed. Existing models for modelling bead profile are based on its width and height, which do not necessarily capture the geometry of the weld bead accurately. This could affect the step over increment strategy, which dictates the geometry of the resulting overlapping valley. In this paper, we formulate and evaluate the performance of a variety of machine learning framework for predicting the bead cross-sectional profiles. To model the geometry of a bead, we explored direct cartesian representations using polynomials and vertical coordinates, as well as a higher dimensional representation using planar quaternions for supervised learning. Experiments are conducted on single bead SS316L material to compare the various framework performance. We found that among these, the planar quaternion representation with a non-linear neural network framework captures and retains the curvature characteristics of the bead during the learning and prediction process most accurately with a mean Chi-Square goodness of fit of 0.026.
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金属丝弧头轮廓几何建模的机器学习框架研究
电弧增材制造(WAAM)是一种以平面方式逐层沉积焊接珠的制造工艺,从而形成最终零件。因此,打印几何形状的准确性在很大程度上取决于所采用的焊头轮廓的知识,而焊头轮廓本身取决于各种工艺参数,例如送丝速度和炬速。现有的焊头轮廓建模模型是基于焊头的宽度和高度,这并不一定能准确地捕捉焊头的几何形状。这可能会影响步进增量策略,它决定了所产生的重叠谷的几何形状。在本文中,我们制定并评估了各种机器学习框架的性能,用于预测头部截面轮廓。为了模拟一个珠子的几何形状,我们探索了使用多项式和垂直坐标的直接笛卡尔表示,以及使用平面四元数进行监督学习的高维表示。在单头SS316L材料上进行了试验,比较了各种框架性能。其中,基于非线性神经网络框架的平面四元数表示在学习和预测过程中最准确地捕获并保留了头部的曲率特征,其平均卡方拟合优度为0.026。
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