Amrihesari Mona, Kern Joseph, Present Hilary, Moreno Briceno Sofia, Ramprasad Rampi, Brettmann Blair
School of Chemical and Biomolecular Engineering, Georgia Institute of Technology, Atlanta, Georgia 30332, United States.
School of Materials Science and Engineering, Georgia Institute of Technology, Atlanta, Georgia 30332, United States.
J Phys Chem B. 2024 Dec 26;128(51):12786-12797. doi: 10.1021/acs.jpcb.4c06500. Epub 2024 Dec 12.
Artificial intelligence and machine learning have become essential tools in predicting material properties to aid in the accelerated design of new materials. Polymer solubility, critical for new formulations and solution processing, is one such property. However, current models are limited by inadequate experimental data sets that cannot capture the complexity and detail for many features contributing to polymer solubility. Here, we provide a data set for polymer solution behavior based on Crystal16 turbidity measurements that includes high quality percent transmission data for polymer solutions for a variety of polymers, solvents, concentrations and temperatures. We use this data set to train a model that predicts the experimental transmission data at many temperatures and multiple concentrations. From this, we are able to classify the polymer/solvent pairs into three solubility categories providing a level of granularity to predictions beyond prior binary classification models considering only solvent/nonsolvent classes. The inclusion of multiple concentrations, temperatures and partially soluble data expands solubility prediction capability beyond prior work into predictions more attractive for use by formulators and process designers working with industrial polymer solutions.
人工智能和机器学习已成为预测材料特性的重要工具,有助于加速新型材料的设计。聚合物溶解度对于新配方和溶液加工至关重要,就是这样一种特性。然而,当前模型受到实验数据集不足的限制,这些数据集无法捕捉许多影响聚合物溶解度的特征的复杂性和细节。在此,我们基于Crystal16浊度测量提供了一个聚合物溶液行为数据集,其中包括多种聚合物、溶剂、浓度和温度下聚合物溶液的高质量透光率数据。我们使用这个数据集来训练一个模型,该模型可以预测许多温度和多种浓度下的实验透光率数据。据此,我们能够将聚合物/溶剂对分为三类溶解度类别,为预测提供了一定程度的粒度,超越了之前仅考虑溶剂/非溶剂类别的二元分类模型。多种浓度、温度和部分可溶数据的纳入,将溶解度预测能力从之前的工作扩展到更吸引使用工业聚合物溶液的配方师和工艺设计师的预测。