Dai Jiaming, Guo Yanling, Zhang Haoyu
Department of Mechanical Engineering, College of Mechanical and Electrical Engineering, Northeast Forestry University, Harbin 150040, China.
Polymers (Basel). 2025 Jul 11;17(14):1920. doi: 10.3390/polym17141920.
Laser sintering (LS) technology is one of the most widely commercialized additive manufacturing technologies. However, the popularization of LS technology in civilian applications has long been constrained by accuracy-related issues. Polyamide (PA), as the most mature LS material, still faces challenges in controlling part dimensional errors. Biomass materials, when used as fillers, can improve the printing accuracy of fabricated parts, demonstrating a technically feasible synergy between PA and biomass materials. Therefore, this study analyzes the fundamental material properties of PA/pine biomass composites and investigates error control methods for LS-fabricated parts using PA/biomass materials as feedstock. This study investigates the error modeling of LS-fabricated parts from two perspectives. First, a theoretical mathematical model is established to predict part errors by incorporating material properties, process parameters, and equipment factors. Second, a data-driven model is developed using BP neural network technology based on experimental data to correlate LS process parameters with part dimensional errors. Additionally, the predictive capabilities and compensation effects of both models are examined. The experimental results indicate that the nylon/pine wood biomass composite with a pine wood content of 3 wt% can produce molded parts with a tensile strength of 20 MPa. Additionally, this material exhibits a sintering preheating window range of 10 °C, which facilitates the production of parts with both favorable mechanical properties and dimensional accuracy. Both error prediction models are capable of predicting the dimensional deviations of the parts. The data-driven model demonstrates superior deviation prediction accuracy (approximately 81-91%) for LS parts compared to the theoretical mathematical model (approximately 62-73%). By applying compensation based on the error prediction models, the overall dimensional deviation can be reduced from 1.61-3.49% to 0.41-0.50%. Consequently, the part's precision grade (according to ISO 2768) is improved from below Grade V to Grade C.
激光烧结(LS)技术是应用最为广泛的商业化增材制造技术之一。然而,LS技术在民用领域的普及长期以来一直受到与精度相关问题的制约。聚酰胺(PA)作为最成熟的LS材料,在控制零件尺寸误差方面仍面临挑战。生物质材料用作填料时,可以提高所制造零件的打印精度,这表明PA与生物质材料之间在技术上具有可行的协同作用。因此,本研究分析了PA/松木生物质复合材料的基本材料性能,并研究了以PA/生物质材料为原料的LS制造零件的误差控制方法。本研究从两个角度对LS制造零件的误差建模进行了研究。首先,建立了一个理论数学模型,通过纳入材料性能、工艺参数和设备因素来预测零件误差。其次,基于实验数据,利用BP神经网络技术开发了一个数据驱动模型,以关联LS工艺参数与零件尺寸误差。此外,还检验了这两种模型的预测能力和补偿效果。实验结果表明,松木含量为3 wt%的尼龙/松木生物质复合材料可以生产出拉伸强度为20 MPa的成型零件。此外,这种材料的烧结预热窗口范围为10℃,这有利于生产出具有良好机械性能和尺寸精度的零件。两种误差预测模型都能够预测零件的尺寸偏差。与理论数学模型(约62-73%)相比,数据驱动模型对LS零件的偏差预测精度更高(约81-91%)。通过基于误差预测模型进行补偿,整体尺寸偏差可以从1.61-3.49%降低到0.41-0.50%。因此,零件的精度等级(根据ISO 2768)从V级以下提高到了C级。