3D Build Melt Pool Predictive Modeling for Powder Bed Fusion Additive Manufacturing

Zhuo Yang, Yan Lu, H. Yeung, Sundar Kirshnamurty
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引用次数: 5

Abstract

Melt pool size is a critical intermediate measure that reflects the outcome of a laser powder bed fusion process setting. Reliable melt pool predictions prior to builds can help users to evaluate potential part defects such as lack of fusion and over melting. This paper develops a layer-wise Neighboring-Effect Modeling (L-NBEM) method to predict melt pool size for 3D builds. The proposed method employs a feedforward neural network model with ten layer-wise and track-wise input variables. An experimental build using a spiral concentrating scan pattern with varying laser power was conducted on the Additive Manufacturing Metrology Testbed at the National Institute of Standards and Technology. Training and validation data were collected from 21 completed layers of the build, with 6,192,495 digital commands and 118,928 in-situ melt pool coaxial images. The L-NBEM model using the neural network approach demonstrates a better performance of average predictive error (12.12%) by leave-one-out cross-validation method, which is lower than the benchmark NBEM model (15.23%), and the traditional power-velocity model (19.41%).
粉末床熔融增材制造的3D构建熔池预测建模
熔池尺寸是反映激光粉末床熔合工艺设置结果的关键中间度量。在构建之前进行可靠的熔池预测可以帮助用户评估潜在的部件缺陷,例如缺乏熔化和过度熔化。本文开发了一种分层邻近效应建模(L-NBEM)方法来预测3D建筑的熔池大小。该方法采用前馈神经网络模型,具有10个分层和轨迹输入变量。在美国国家标准与技术研究院的增材制造计量试验台上,使用不同激光功率的螺旋集中扫描模式进行了实验构建。训练和验证数据来自21个已完成的构建层,包含6,192,495个数字命令和118,928张原位熔池同轴图像。采用神经网络方法的L-NBEM模型经留一交叉验证的平均预测误差为12.12%,低于基准NBEM模型的15.23%和传统功率-速度模型的19.41%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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