Ulkir Osman, Kuncan Fatma, Alay Fatma Didem
Department of Electric and Energy, Mus Alparslan University, Mus 49250, Turkey.
Department of Computer Engineering, Siirt University, Siirt 56100, Turkey.
Polymers (Basel). 2025 May 30;17(11):1528. doi: 10.3390/polym17111528.
Additive manufacturing (AM) is gaining widespread adoption in the manufacturing industry due to its capability to fabricate intricate and high-performance components. In parallel, the increasing emphasis on functional materials in AM has highlighted the critical need for accurate prediction of the mechanical behavior of composite systems. This study experimentally investigates the tensile strength and surface quality of carbon fiber-reinforced nylon composites (PA12-CF) fabricated via fused deposition modeling (FDM) and models their behavior using artificial neural networks (ANNs). A Taguchi L27 orthogonal array was employed to design experiments involving five critical printing parameters: layer thickness (100, 200, and 300 µm), infill pattern (gyroid, honeycomb, and triangles), nozzle temperature (250, 270, and 290 °C), printing speed (50, 100, and 150 mm/s), and infill density (30, 60, and 90%). An analysis of variance (ANOVA) revealed that the infill density had the most significant influence on the resulting tensile strength, contributing 53.47% of the variation, with the strength increasing substantially at higher densities. In contrast, the layer thickness was the dominant factor in determining surface roughness, accounting for 53.84% of the variation, with thinner layers yielding smoother surfaces. Mechanistically, a higher infill density enhances the internal structural integrity of the parts, leading to an improved load-bearing capacity, while thinner layers improve the interlayer adhesion and surface finish. The highest tensile strength achieved was 69.65 MPa, and the lowest surface roughness recorded was 9.18 µm. An ANN model was developed to predict both the tensile strength and surface roughness based on the input parameters. Its performance was compared with that of three other machine learning (ML) algorithms: support vector regression (SVR), random forest regression (RFR), and XGBoost. The ANN model exhibited superior predictive accuracy, with a coefficient of determination (R > 0.9912) and a mean validation error below 0.41% for both outputs. These findings demonstrate the effectiveness of ANNs in modeling the complex relationships between FDM parameters and composite properties and highlight the significant potential of integrating ML and statistical analysis to optimize the design and manufacturing of high-performance AM fiber-reinforced composites.
增材制造(AM)因其能够制造复杂且高性能的部件而在制造业中得到广泛应用。与此同时,增材制造中对功能材料的日益重视凸显了准确预测复合系统力学行为的迫切需求。本研究通过实验研究了通过熔融沉积建模(FDM)制造的碳纤维增强尼龙复合材料(PA12-CF)的拉伸强度和表面质量,并使用人工神经网络(ANN)对其行为进行建模。采用田口L27正交阵列设计实验,涉及五个关键打印参数:层厚(100、200和300微米)、填充图案(螺旋状、蜂窝状和三角形)、喷嘴温度(250、270和290℃)、打印速度(50、100和150毫米/秒)以及填充密度(30%、60%和90%)。方差分析(ANOVA)表明,填充密度对所得拉伸强度的影响最为显著,贡献了53.47%的变化,强度在较高密度下大幅增加。相比之下,层厚是决定表面粗糙度的主要因素,占变化的53.84%,较薄的层产生更光滑的表面。从机理上讲,较高的填充密度增强了部件的内部结构完整性,从而提高了承载能力,而较薄的层改善了层间附着力和表面光洁度。实现的最高拉伸强度为69.65兆帕,记录的最低表面粗糙度为9.18微米。开发了一个ANN模型,用于根据输入参数预测拉伸强度和表面粗糙度。将其性能与其他三种机器学习(ML)算法进行了比较:支持向量回归(SVR)、随机森林回归(RFR)和XGBoost。ANN模型表现出卓越的预测准确性,两个输出的决定系数(R>0.9912)和平均验证误差均低于0.41%。这些发现证明了人工神经网络在建模FDM参数与复合材料性能之间复杂关系方面的有效性,并突出了整合机器学习和统计分析以优化高性能增材制造纤维增强复合材料设计和制造的巨大潜力。