Enhancing dimensional accuracy of small parts through modelling and parametric optimization of the FDM 3D printing process using GA-ANN

Mannu Yadav, Ashish Kaushik, R. Garg, Mohit Yadav, Deepak Chhabra, Shivam Rohilla, Hitesh Sharma
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引用次数: 4

Abstract

Nowadays, almost every manufacturing industry primarily focuses on precision manufacturing, which can now be easily possible due to advanced rapid prototyping techniques to achieve their overarching goals. Small parts fabrication necessitates ever-more-careful workmanship and strict environmental controls as all materials inevitably expand and contract due to environmental changes, which can raise costs and lengthen the production process. One rapid prototyping method is frequently used to print small objects is fused deposition modelling. In the proposed work, the significant FDM printing parameters (no. of contours, infill density, and layer thickness) are optimized for improving the dimensional precision of FDM printed small specimens of 1mm x 2mm x 3mm. Twenty experimental runs were designed by employing a face-centred central composite design (FCCD) methodology to analyse the effect of input variables on the fabricated specimen. For training and optimization, hybrid statistical tools and artificial neural networks (ANN) integrated with genetic algorithm (ANN-GA) are utilized to obtain the optimized combination of input parameters. Validation tests were performed, sequentially to confirm the various created models for the selection of best process parameter. It has been observed that the minimum percentage change accomplished with GA-ANN approach in height, length and breadth is 1.9455 %, at input variables (Infill density: 55.85 %, Layer thickness: 0.1mm, no of contours: 8), 0.29542% at input variables (Infill density: 23.31, Layer thickness: 0.18, no of contours: 7), 0.4648 % at input variables (Infill density: 48.541 %, Layer thickness: 0.1 mm, no of contours: 3), are best forecasted results obtained using GA-ANN approach and the same has been validated experimentally.
利用GA-ANN对FDM 3D打印过程进行建模和参数优化,提高小零件的尺寸精度
如今,几乎每个制造业主要关注精密制造,由于先进的快速原型技术,现在可以很容易地实现其总体目标。由于环境的变化,所有材料都不可避免地会膨胀和收缩,这可能会增加成本,延长生产过程,因此小部件的制造需要更加细致的工艺和严格的环境控制。一种常用的快速成型方法是熔融沉积建模。在提出的工作中,重要的FDM打印参数(no.;(轮廓、填充密度和层厚度)优化,以提高FDM打印1mm x 2mm x 3mm小样品的尺寸精度。采用面心中央复合设计(FCCD)方法设计了20个实验运行,以分析输入变量对制造样品的影响。在训练和优化方面,利用混合统计工具和结合遗传算法(ANN- ga)的人工神经网络(ANN)来获得输入参数的优化组合。执行验证测试,依次确认各种创建的模型,以选择最佳工艺参数。已经观察到,在输入变量(填充密度:55.85%,层厚:0.1mm,无轮廓:8)下,GA-ANN方法在高度、长度和宽度上完成的最小百分比变化为1.9455%,在输入变量(填充密度:23.31,层厚:0.18,无轮廓:7)下完成的最小百分比变化为0.29542%,在输入变量(填充密度:48.541%,层厚:0.1mm,无轮廓)下完成的最小百分比变化为0.4648%。3)采用GA-ANN方法预测的结果最好,并得到了实验验证。
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