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基于人工智能的高温丙烯酸丁酯聚合反应聚合物性能预测

AI-Based Forecasting of Polymer Properties for High-Temperature Butyl Acrylate Polymerizations.

作者信息

Fiosina Jelena, Sievers Philipp, Drache Marco, Beuermann Sabine

机构信息

Institute of Informatics, Clausthal University of Technology, Julius-Albert-Str. 4, 38678 Clausthal-Zellerfeld, Germany.

Institute of Technical Chemistry, Clausthal University of Technology, Arnold-Sommerfeld-Str. 4, 38678 Clausthal-Zellerfeld, Germany.

出版信息

ACS Polym Au. 2024 Jul 26;4(5):438-448. doi: 10.1021/acspolymersau.4c00047. eCollection 2024 Oct 9.

Abstract

High-temperature polymerizations involving self-initiation of the monomer are attractive because of high reaction rate, comparable lower viscosities, and no need for an additional initiator. However, the polymers obtained show a more complex microstructure, e.g., with specific branching levels or significant amounts of macromonomer. Simulations of the polymerization processes are powerful tools to gain a deeper understanding of the processes and the elemental reactions at the molecular level. However, simulations can be computationally demanding, requiring significant time and memory resources. Therefore, this study aims at applying AI-based forecasting of tailored polymer properties and using a kinetic Monte Carlo simulator for the generation of training and test data. The applied machine learning (ML) models (random forest and kernel density (KD) regression) predict monomer concentration, macromonomer content, and full molar mass distributions as a function of time, as well as the average branching level with an excellent performance ( (coefficient of determination) > 0.99, MAE (mean absolute error) < 1% for kernel density regression). This study explores the number of training data needed for reliable and accurate predictions in ML models. Explainability methods reveal that the importance of input variables in ML models aligns with expert knowledge.

摘要

涉及单体自引发的高温聚合反应具有吸引力,因为其反应速率高、粘度相对较低且无需额外的引发剂。然而,所得到的聚合物呈现出更为复杂的微观结构,例如具有特定的支化程度或大量的大分子单体。聚合过程的模拟是深入了解这些过程以及分子水平上的基本反应的有力工具。然而,模拟可能在计算上要求很高,需要大量的时间和内存资源。因此,本研究旨在应用基于人工智能的定制聚合物性能预测,并使用动力学蒙特卡罗模拟器生成训练和测试数据。所应用的机器学习(ML)模型(随机森林和核密度(KD)回归)可预测单体浓度、大分子单体含量以及作为时间函数的全摩尔质量分布,以及平均支化程度,性能优异(核密度回归的决定系数>0.99,平均绝对误差(MAE)<1%)。本研究探讨了ML模型中进行可靠且准确预测所需的训练数据数量。可解释性方法表明,ML模型中输入变量的重要性与专家知识相符。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a7e7/11468519/d863d39d3d90/lg4c00047_0001.jpg

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