The 3D Feature Prediction of the Molten Metal Direct Writing Result based on Neural Network

Mingzhao Wang, W. Rong, Jialin Wang, Yongwei Wang, Yingying Sa, Yinuo Ma
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Abstract

The three-dimensional features of the single track forming result are one of the key factors for metal 3D printing, while few studies are carried out to predict the three-dimensional features in liquid metal jetting printing area. In this paper, the results of the single track forming are scanned by 3D displacement sensor to obtain accurate 3D model. Based on the 3D model, the average width and average height are logically selected to demonstrate the three-dimensional features. To predict the type and size of the single track forming result, 2 neural networks are designed, which both contain 2 hidden layers. After training and testing, the Classification model of the two Multi-Input-Multi-Output neural networks has more than 90% accuracy in the classification prediction of the single channel forming results, and the average prediction errors of the average width and average thickness in the size prediction model are limited to 6%.
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基于神经网络的熔融金属直写结果三维特征预测
单轨成形结果的三维特征是影响金属3D打印的关键因素之一,但目前对液态金属喷射打印区域三维特征的预测研究较少。本文采用三维位移传感器对单轨成形结果进行扫描,得到精确的三维模型。在三维模型的基础上,逻辑选择平均宽度和平均高度来展示三维特征。为了预测单轨成形结果的类型和尺寸,设计了2个神经网络,每个神经网络都包含2个隐藏层。经过训练和测试,两种多输入多输出神经网络的分类模型对单通道形成结果的分类预测准确率达到90%以上,尺寸预测模型中平均宽度和平均厚度的平均预测误差限制在6%以内。
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