Mishra Prithu, Sood Shruti, Bharadwaj Vipra, Aggarwal Aryan, Khanna Pradeep
Department of Mechanical Engineering, Netaji Subhas University of Technology, New Delhi 110078, India.
Polymers (Basel). 2023 Jan 20;15(3):546. doi: 10.3390/polym15030546.
Polyethylene Terephthalate Glycol (PETG) is a fused deposition modeling (FDM)-compatible material gaining popularity due to its high strength and durability, lower shrinkage with less warping, better recyclability and safer and easier printing. FDM, however, suffers from the drawbacks of limited dimensional accuracy and a poor surface finish. This study describes a first effort to identify printing settings that will overcome these limitations for PETG printing. It aims to understand the influence of print speed, layer thickness, extrusion temperature and raster width on the dimensional errors and surface finish of FDM-printed PETG parts and perform multi-objective parametric optimization to identify optimal settings for high-quality printing. The experiments were performed as per the central composite rotatable design and statistical models were developed using response surface methodology (RSM), whose adequacy was verified using the analysis of variance (ANOVA) technique. Adaptive neuro fuzzy inference system (ANFIS) models were also developed for response prediction, having a root mean square error of not more than 0.83. For the minimization of surface roughness and dimensional errors, multi-objective optimization using a hybrid RSM and NSGA-II algorithm suggested the following optimal input parameters: print speed = 50 mm/s, layer thickness = 0.1 mm, extrusion temperature = 230 °C and raster width = 0.6 mm. After experimental validation, the predictive performance of the ANFIS (mean percentage error of 9.33%) was found to be superior to that of RSM (mean percentage error of 12.31%).
聚对苯二甲酸乙二醇酯二醇(PETG)是一种与熔融沉积建模(FDM)兼容的材料,因其高强度、耐用性、较低的收缩率和较少的翘曲、更好的可回收性以及更安全、更易于打印而越来越受欢迎。然而,FDM存在尺寸精度有限和表面光洁度差的缺点。本研究首次尝试确定能够克服PETG打印这些限制的打印设置。其目的是了解打印速度、层厚、挤出温度和光栅宽度对FDM打印PETG零件尺寸误差和表面光洁度的影响,并进行多目标参数优化,以确定高质量打印的最佳设置。实验按照中心复合旋转设计进行,并使用响应面方法(RSM)建立统计模型,其充分性通过方差分析(ANOVA)技术进行验证。还开发了自适应神经模糊推理系统(ANFIS)模型用于响应预测,其均方根误差不超过0.83。为了最小化表面粗糙度和尺寸误差,使用混合RSM和NSGA-II算法进行多目标优化,建议了以下最佳输入参数:打印速度 = 50毫米/秒,层厚 = 0.1毫米,挤出温度 = 230°C,光栅宽度 = 0.6毫米。经过实验验证,发现ANFIS的预测性能(平均百分比误差为9.33%)优于RSM(平均百分比误差为12.31%)。