Al-Tamimi Abdulsalam A, Muhamedagic Kenan, Begic-Hajdarevic Derzija, Vatres Ajdin, Kadric Edin
Department of Industrial Engineering, College of Engineering, King Saud University, Riyadh, Saudi Arabia.
Faculty of Mechanical Engineering, University of Sarajevo, Sarajevo, Bosnia and Herzegovina.
PLoS One. 2025 May 19;20(5):e0322628. doi: 10.1371/journal.pone.0322628. eCollection 2025.
The application of additive manufacturing technologies for producing parts from polymer composite materials has gained significant attention due to the ability to create fully functional components that leverage the advantages of both polymer matrices and fiber reinforcements while maintaining the benefits of additive technology. Polymer composites are among the most advanced and widely used composite materials, offering high strength and stiffness with low mass and variable resistance to different media. This study aims to experimentally investigate the impact of selected process parameters, namely, wall thickness, raster angle, printing temperature, and build plate temperature, on the flexural properties of carbon fiber reinforced polyamide (CFrPA) fused deposition modeling (FDM) printed samples, as per ISO 178 standards. Additionally, regression and artificial neural network (ANN) models have been developed to predict these flexural properties. ANN models are developed for both normal and augmented inputs, with the architecture and hyperparameters optimized using random search technique. Response surface methodology (RSM), which is based on face centered composite design, is employed to analyze the effects of process parameters. The RSM results indicate that the raster angle and build plate temperature have the greatest impact on the flexural properties, resulting in an increase of 51% in the flexural modulus. The performance metrics of the optimized RSM and ANN models, characterized by low MSE, RMSE, MAE, and MAPE values and high R2 values, suggest that these models provide highly accurate and reliable predictions of flexural strength and modulus for the CFrPA material. The study revealed that ANN models with augmented inputs outperform both RSM models and ANN models with normal inputs in predicting these properties.
由于能够制造出功能齐全的部件,充分利用聚合物基体和纤维增强材料的优势,同时保持增材制造技术的优点,因此增材制造技术在聚合物复合材料零件生产中的应用受到了广泛关注。聚合物复合材料是最先进且应用广泛的复合材料之一,具有高强度、高刚度、低质量以及对不同介质的可变抗性。本研究旨在根据ISO 178标准,通过实验研究选定的工艺参数,即壁厚、光栅角度、打印温度和成型板温度,对碳纤维增强聚酰胺(CFrPA)熔融沉积成型(FDM)打印样品弯曲性能的影响。此外,还开发了回归模型和人工神经网络(ANN)模型来预测这些弯曲性能。针对正常输入和增强输入均开发了ANN模型,并使用随机搜索技术对其架构和超参数进行了优化。基于面心复合设计的响应面方法(RSM)用于分析工艺参数的影响。RSM结果表明,光栅角度和成型板温度对弯曲性能的影响最大,导致弯曲模量提高了51%。优化后的RSM和ANN模型的性能指标,以低MSE、RMSE、MAE和MAPE值以及高R2值为特征,表明这些模型能够为CFrPA材料的弯曲强度和模量提供高度准确和可靠的预测。研究表明,在预测这些性能方面,具有增强输入的ANN模型优于RSM模型和具有正常输入的ANN模型。