NN-GA based printing parameters optimization for 3DP

Shujuan Li, Wenbin Chen, Fu Liu, Yan Li
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引用次数: 2

Abstract

With the rapid printing speed and low cost, Three Dimensional Printing (3DP) is widely used. However, the dimensional accuracy of components are not perfect due to the shrinkage and deformation of component after the printing and post-processing. This study analyzes the factors affect the printing accuracy in 3DP and determines the range of shrinkage of the printing process. Neural Network (NN) is used to describe the complicated relationship between the dimensional accuracy of component and printing parameters. In order to minimizing dimensional error of specimen, Genetic Algorithm (GA) is used to optimize the 3DP print parameters such as binder saturation, the layer thickness and shrinkage compensation in X, Y and Z directions respectively. The four experiments with default parameters, the limits in the range of print parameters, and parameters from NN-GA are conducted, and the results show that the dimensional error is much lower using the printing parameters from NN-GA, and also show that the NN-GA is capable to promote the dimensional accuracy of 3DP and provide the reference for other forms AM technology.
基于神经网络遗传算法的3d打印参数优化
由于打印速度快、成本低,三维打印技术得到了广泛的应用。然而,由于零件在印刷和后处理后的收缩和变形,零件的尺寸精度并不完美。分析了影响3d打印精度的因素,确定了打印过程的缩水率范围。利用神经网络(NN)来描述零件尺寸精度与打印参数之间的复杂关系。为了使试样尺寸误差最小,采用遗传算法对X、Y、Z三个方向的粘结剂饱和度、层厚、收缩补偿等3d打印参数进行优化。采用默认参数、打印参数范围限制和神经网络-遗传算法参数进行了4次实验,结果表明,神经网络-遗传算法打印参数的尺寸误差要小得多,也表明神经网络-遗传算法能够提高3d打印的尺寸精度,并为其他形式的增材制造技术提供参考。
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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