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Strut Diameter Uncertainty Prediction by Deep Neural Network for Additively Manufactured Lattice Structures

机译:基于深度神经网络的增材制造晶格结构支柱直径不确定性预测

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摘要

Additive manufacturing (AM) introduces geometric uncertainties on the fabricated strut members of lattice structures. These uncertainties result in deviations between the modeled and fabricated geometries of struts. The use of deep neural networks (DNNs) to accurately predict the statistical parameters of the effective strut diameters to account for the AM-introduced geometric uncertainties with a small training dataset for constant process parameters is studied in this research. For the training data, struts with certain angle and diameter values are fabricated by the material extrusion process. The geometric uncertainties are quantified using the random field theory based on the spatial strut radius measurements obtained from the microscope images of the fabricated struts. The uncertainties are propagated to the effective diameters of the struts using a stochastic upscaling technique. The relationship between the modeled strut diameter and the characterized statistical parameters of the effective diameters are used as the training data to establish a DNN model. The validation results show that the DNN model can predict the statistical parameters of the effective diameters of the struts modeled with angles and diameters different from the ones used in the training data with good accuracy even if the training data set is small. Developing such a DNN model with small data will allow designers to use the fabricated results in the design optimization processes without requiring additional experimentations.
机译:增材制造 (AM) 在晶格结构的制造支柱构件上引入了几何不确定性。这些不确定性导致支柱的建模和制造几何形状之间存在偏差。本研究研究了使用深度神经网络 (DNN) 准确预测有效支柱直径的统计参数,以解释 AM 引入的几何不确定性,并利用恒定过程参数的小型训练数据集。对于训练数据,通过材料挤出工艺制造出具有一定角度和直径值的支柱。使用随机场理论对几何不确定性进行量化,该理论基于从制造支柱的显微镜图像中获得的空间支柱半径测量值。使用随机放大技术将不确定性传播到支柱的有效直径。将建模的支柱直径与有效直径表征统计参数之间的关系作为训练数据,建立DNN模型。验证结果表明,DNN模型能够很好地预测建模角度和直径与训练数据中使用的不同角度和直径的支柱有效直径的统计参数,即使训练数据集较小。使用少量数据开发这种 DNN 模型将允许设计人员在设计优化过程中使用制造的结果,而无需额外的实验。

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