Injection molding is one of the most popular manufacturing methods for the modeling of complex plastic objects. Faster numerical simulation of the technological process would allow for faster and cheaper design cycles of new products. In this work, we propose a baseline for a data processing pipeline that includes the extraction of data from Moldflow simulation projects and the prediction of the fill time and deflection distributions over 3-dimensional surfaces using machine learning models. We propose algorithms for engineering of features, including information of injector gates parameters that will mostly affect the time for plastic to reach the particular point of the form for fill time prediction, and geometrical features for deflection prediction. We propose and evaluate baseline machine learning models for fill time and deflection distribution prediction and provide baseline values of MSE and RMSE metrics. Finally, we measure the execution time of our solution and show that it significantly exceeds the time of simulation with Moldflow software: approximately 17 times and 14 times faster for mean and median total times respectively, comparing the times of all analysis stages for deflection prediction. Our solution has been implemented in a prototype web application that was approved by the management board of Fiat Chrysler Automobiles and Illogic SRL. As one of the promising applications of this surrogate modelling approach, we envision the use of trained models as a fast objective function in the task of optimization of technological parameters of the injection molding process (meaning optimal placement of gates), which could significantly aid engineers in this task, or even automate it.
翻译:在这项工作中,我们提议了一个数据处理管道基线,其中包括从Moldflow模拟项目中提取数据,并用机器学习模型预测三维表面的填充时间和偏转分布。我们提出了地貌工程的算法,包括主要影响塑料到达填充时间预测表特定点的时间的注射门参数和偏移预测的几何特征。我们提出并评价用于填充时间和偏移分布预测的基线机器学习模型,并提供MSE和RMSE指标的基线值。最后,我们衡量我们的解决办法的执行时间,并表明它大大超过与Moldflow软件的模拟时间:平均和中位总时间分别大约17倍和14倍,比较所有分析阶段的测偏转参数。我们的解决办法是在经Fiat Chril 和 RMSE 矩阵模型管理委员会批准的一个原型网络应用模型中执行的。