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Comparison of Early Stopping Neural Network and Random Forest for In-Situ Quality Prediction in Laser Based Additive Manufacturing

机译:早期停止神经网络和随机林对基于激光添加剂制造的原位质量预测的比较

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摘要

Laser-Based Additive Manufacturing (LBAM) is a promising process in manufacturing that allows for capabilities in producing complex parts with multiple functionalities for a large array of engineering applications. Melt pool is a well-known characteristic of the LBAM process. Porosity defects, which have hampered the expansive adoption of LBAM, is correlated with the melt pool characteristic that occurs throughout the LBAM process. High-speed monitors that can capture the LBAM process have created the possibility for in-situ monitoring for defects and abnormalities. This paper focuses on augmenting knowledge of the relation between the LBAM process and porosity and providing models that could efficiently, accurately, and consistently predict defects and anomalies in-situ for the LBAM process. Two models are presented in this paper, Random Forest Classifier and Early Stopping Neural Network, which are used to classify pyrometer images and categorize if those images will result in defects. Both methods can achieve over 99% accuracy in an efficient manner, which would create an in-situ method for quality prediction in the LBAM process.
机译:基于激光的添加剂制造(LBAM)是制造过程中的有希望的过程,其允许在大量工程应用中产生具有多种功能的复杂部件的能力。熔池是LBAM工艺的众所周知的特征。阻碍了LBAM的膨胀采用的孔隙率缺陷与在整个LBAM过程中发生的熔池结构相关。可以捕获LBAM进程的高速监视器已经为原位监测缺陷和异常创造了可能性。本文侧重于增强LBAM工艺和孔隙率之间的关系的知识,并提供有效,准确,准确地预测LBAM过程的缺陷和异常的模型。本文提出了两种型号,随机林分类器和早期停止神经网络,用于分类高温计图像并分类,如果这些图像会导致缺陷。两种方法以有效的方式达到超过99%的精度,这将为LBAM过程中的质量预测创造出原位方法。

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