Mohamed Omar Ahmed, Masood Syed Hasan, Bhowmik Jahar Lal
Department of Mechanical and Product Design Engineering, Swinburne University of Technology, Hawthorn 3122, Victoria, Australia.
Department of Statistics, Data Science and Epidemiology, Swinburne University of Technology, Hawthorn 3122, Victoria, Australia.
Materials (Basel). 2016 Nov 4;9(11):895. doi: 10.3390/ma9110895.
Fused deposition modeling (FDM) additive manufacturing has been intensively used for many industrial applications due to its attractive advantages over traditional manufacturing processes. The process parameters used in FDM have significant influence on the part quality and its properties. This process produces the plastic part through complex mechanisms and it involves complex relationships between the manufacturing conditions and the quality of the processed part. In the present study, the influence of multi-level manufacturing parameters on the temperature-dependent dynamic mechanical properties of FDM processed parts was investigated using IV-optimality response surface methodology (RSM) and multilayer feed-forward neural networks (MFNNs). The process parameters considered for optimization and investigation are slice thickness, raster to raster air gap, deposition angle, part print direction, bead width, and number of perimeters. Storage compliance and loss compliance were considered as response variables. The effect of each process parameter was investigated using developed regression models and multiple regression analysis. The surface characteristics are studied using scanning electron microscope (SEM). Furthermore, performance of optimum conditions was determined and validated by conducting confirmation experiment. The comparison between the experimental values and the predicted values by IV-Optimal RSM and MFNN was conducted for each experimental run and results indicate that the MFNN provides better predictions than IV-Optimal RSM.
熔融沉积建模(FDM)增材制造因其相对于传统制造工艺具有吸引人的优势,已被广泛应用于许多工业领域。FDM中使用的工艺参数对零件质量及其性能有重大影响。该工艺通过复杂的机制生产塑料零件,并且涉及制造条件与加工零件质量之间的复杂关系。在本研究中,使用IV最优响应面法(RSM)和多层前馈神经网络(MFNNs)研究了多级制造参数对FDM加工零件温度相关动态力学性能的影响。考虑用于优化和研究的工艺参数有切片厚度、光栅间气隙、沉积角度、零件打印方向、熔丝宽度和轮廓数量。储能柔量和损耗柔量被视为响应变量。使用所开发的回归模型和多元回归分析研究了每个工艺参数的影响。使用扫描电子显微镜(SEM)研究表面特性。此外,通过进行验证实验确定并验证了最佳条件的性能。对每个实验运行进行了实验值与IV最优RSM和MFNN预测值之间的比较,结果表明MFNN比IV最优RSM提供了更好的预测。