玻璃聚合物渗透率预测的广义模型及残差神经网络改进工具

IF 1.6 4区 化学 Q4 POLYMER SCIENCE
D. A. Tsarev, V. E. Ryzhikh, N. A. Belov, A. Yu. Alent’ev
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引用次数: 0

摘要

该研究表明,利用俄罗斯科学院Topchiev石化合成研究所的数据库,可以根据玻璃聚合物的化学结构改进气体输运性质的预测。基于聚合物和气体性质的结构描述符(如气体分子的有效动力学直径和有效Lennard-Jones势参数),开发了一种广义线性模型来预测任何气-聚合物体系的渗透率系数。该模型极大地扩展了可用于预测和现代机器学习方法应用的数据集。证明了使用小残差神经网络来提高线性模型预测精度的可行性,并且训练这种神经网络不需要大量的计算资源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Generalized Model for Predicting Gas Permeability of Glassy Polymers and Residual Neural Networks as a Tool for Its Improvement

Generalized Model for Predicting Gas Permeability of Glassy Polymers and Residual Neural Networks as a Tool for Its Improvement

The study demonstrates new opportunities for improving the prediction of gas transport properties of glassy polymers based on their chemical structure using the Database of the Topchiev Institute of Petrochemical Synthesis, Russian Academy of Sciences. A generalized linear model has been developed to predict permeability coefficients for any gas-polymer system based on structural descriptors of the polymer and gas properties, such as tabulated effective kinetic diameters of gas molecules and effective Lennard–Jones potential parameters. This model significantly expands the dataset available for predictions and the application of modern machine learning methods. The feasibility of using small residual neural networks to enhance the accuracy of linear model predictions is shown, and training such neural networks does not require significant computational resources.

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来源期刊
Polymer Science, Series C
Polymer Science, Series C 工程技术-高分子科学
CiteScore
3.00
自引率
4.50%
发文量
21
审稿时长
>12 weeks
期刊介绍: Polymer Science, Series C (Selected Topics) is a journal published in collaboration with the Russian Academy of Sciences. Series C (Selected Topics) includes experimental and theoretical papers and reviews on the selected actual topics of macromolecular science chosen by the editorial board (1 issue a year). Submission is possible by invitation only. All journal series present original papers and reviews covering all fundamental aspects of macromolecular science. Contributions should be of marked novelty and interest for a broad readership. Articles may be written in English or Russian regardless of country and nationality of authors. All manuscripts are peer reviewed
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