Fernández Angel, Clavería Isabel, Pina Carmelo, Elduque Daniel
Department of Mechanical Engineering, University of Zaragoza EINA, María de Luna, 3, 50018 Zaragoza, Spain.
Polymers (Basel). 2023 Sep 28;15(19):3915. doi: 10.3390/polym15193915.
The use of recycled polypropylene in industry to reduce environmental impact is increasing. Design for manufacturing and process simulation is a key stage in the development of plastic parts. Traditionally, a trial-and-error methodology is followed to eliminate uncertainties regarding geometry and process. A new proposal is presented, combining simulation with the design of experiments and creating prediction models for seven different process and part quality output features. These models are used to optimize the design without developing additional time-consuming simulations. The study aims to compare the precision and correlation of these models. The methods used are linear regression and artificial neural network (ANN) fitting. A wide range of eight injection parameters and geometry variations are used as inputs. The predictability of nonlinear behavior and compensatory effects due to the complex relationships between this wide set of parameter combinations is analyzed further in the state of the art. Results show that only Back Propagation Neural Networks (BPNN) are suitable for correlating all quality features in a single formula. The use of prediction models accelerates the optimization of part design, applying multiple criteria to support decision-making. The methodology is applied to the design of a plastic support for induction hobs. Furthermore, this methodology has demonstrated that a weight reduction of 27% is feasible. However, it is necessary to combine process parameters that differ from the standard ones with a non-uniform thickness distribution so that the remaining injection parameters, material properties, and dimensions fall within tolerances.
工业中使用回收聚丙烯以减少环境影响的情况正在增加。制造设计和工艺模拟是塑料零件开发的关键阶段。传统上,采用试错法来消除几何形状和工艺方面的不确定性。本文提出了一种新方法,将模拟与实验设计相结合,并针对七种不同的工艺和零件质量输出特征创建预测模型。这些模型用于优化设计,而无需进行额外耗时的模拟。该研究旨在比较这些模型的精度和相关性。所采用的方法是线性回归和人工神经网络(ANN)拟合。使用了广泛的八个注射参数和几何形状变化作为输入。在现有技术中,进一步分析了由于这组广泛的参数组合之间的复杂关系而导致的非线性行为和补偿效应的可预测性。结果表明,只有反向传播神经网络(BPNN)适用于在单个公式中关联所有质量特征。预测模型的使用加速了零件设计的优化,应用多个标准来支持决策制定。该方法应用于电磁炉塑料支架的设计。此外,该方法已证明减重27%是可行的。然而,有必要将与标准参数不同的工艺参数与不均匀的厚度分布相结合,以使其余的注射参数、材料性能和尺寸保持在公差范围内。