Machine learning prediction of mechanical and optical properties of uniaxially oriented polymer films

Arash Sarhangi Fard, Joseph Moebus, George Rodriguez
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引用次数: 1

Abstract

Improving properties of polymers can bring about tremendous opportunities in developing new applications. However, the commonly used trial-and-error method cannot meet the current need for new materials. We demonstrate the utility of Machine Learning (ML) algorithms in creating structure-process-property models based on industrial data in polymer processing. In this study, ML algorithms were used to predict the optical and tensile strength of multi-layer co-extrusion polyethylene films as a function of material structures and process parameters. The input features to predict the mechanical and optical properties are the composition of five-layer polyethylene film, polyethylene molecular properties like the amount of long chain branching LCB , and the extrusion process conditions. Different data featuring steps are conducted to improve the quality of the input data: (1) feature importance scoring using an ensemble algorithm (XGBoost); (2) application of autoencoder to reduce the dimensionality; (3) replacing the categorical inputs with molecular characteristic properties. We then use this data to build an Artificial Neural Network. Finally, the prediction capability of the resulting model was investigated. This project demonstrates a successful end-to-end execution of a material data science project; from understanding material science, data engineering, algorithm development, and the model evaluation.

单轴取向聚合物薄膜机械和光学性能的机器学习预测
提高聚合物的性能可以为开发新的应用带来巨大的机会。然而,常用的试错法已不能满足当前对新材料的需求。我们展示了机器学习(ML)算法在基于聚合物加工中的工业数据创建结构-过程-属性模型中的效用。在这项研究中,使用ML算法来预测多层共挤聚乙烯薄膜的光学强度和拉伸强度作为材料结构和工艺参数的函数。预测材料力学和光学性能的输入特征是五层聚乙烯薄膜的组成、长链支化LCB的数量等聚乙烯分子性能以及挤出工艺条件。采用不同的数据特征步骤来提高输入数据的质量:(1)使用集成算法(XGBoost)进行特征重要性评分;(2)应用自编码器降维;(3)用分子特性代替分类输入。然后我们使用这些数据来构建一个人工神经网络。最后,对所得模型的预测能力进行了研究。本项目展示了一个成功的材料数据科学项目的端到端执行;从理解材料科学,数据工程,算法开发和模型评估。
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CiteScore
4.50
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