Vahed Ronak, Zareie Rajani Hamid R, Milani Abbas S
School of Engineering, University of British Columbia, Kelowna, BC V1V 1V7, Canada.
Materials (Basel). 2022 Apr 13;15(8):2855. doi: 10.3390/ma15082855.
The complex and non-linear nature of material properties evolution during 3D printing continues to make experimental optimization of Fused Deposition Modeling (FDM) costly, thus entailing the development of mathematical predictive models. This paper proposes a two-stage methodology based on coupling data experiments with black-box AI modeling and then performing heuristic optimization, to enhance the viscoelastic properties of FDM processed acrylonitrile butadiene styrene (ABS). The effect of selected process parameters (including nozzle temperature, layer height, raster orientation and deposition speed) as well as their combinative effects are also studied. Specifically, in the first step, a Taguchi orthogonal array was employed to design the Dynamic Mechanical Analysis (DMA) experiments with a minimal number of runs, while considering different working conditions (temperatures) of the final prints. The significance of process parameters was measured using Lenth's statistical method. Combinative effects of FDM parameters were noted to be highly nonlinear and complex. Next, artificial neural networks were trained to predict both the storage and loss moduli of the 3D printed samples, and consequently, the process parameters were optimized via Particle Swarm Optimization (PSO). The optimized process of the prints showed overall a closer behavior to that of the parent (unprocessed) ABS, when compared to the unoptimized set-up.
在3D打印过程中,材料特性演变具有复杂和非线性的特点,这使得熔融沉积建模(FDM)的实验优化成本依然很高,因此需要开发数学预测模型。本文提出了一种两阶段方法,该方法基于将数据实验与黑箱人工智能建模相结合,然后进行启发式优化,以增强FDM加工的丙烯腈丁二烯苯乙烯(ABS)的粘弹性。还研究了所选工艺参数(包括喷嘴温度、层高、光栅方向和沉积速度)的影响及其组合效应。具体而言,第一步,采用田口正交阵列设计动态力学分析(DMA)实验,运行次数最少,同时考虑最终打印件的不同工作条件(温度)。使用Lenth统计方法测量工艺参数的显著性。FDM参数的组合效应被认为是高度非线性和复杂的。接下来,训练人工神经网络来预测3D打印样品的储能模量和损耗模量,进而通过粒子群优化(PSO)对工艺参数进行优化。与未优化的设置相比,打印件的优化过程总体上显示出与原始(未加工)ABS更接近的性能。