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Polymer genome-based prediction of gas permeabilities in polymers

机译:基于聚合物基因组的聚合物气体渗透性预测

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Predicting gas permeabilities of polymers a priori is a long-standing challenge within the membrane research community that has important applications for membrane process design and ultimately widespread adoption of membrane technology. From early attempts based on free volume and cohesive energy to more recent group contribution methods, the ability to predict membrane permeability has improved in terms of accuracy. However, these models usually stay "within the paper", i.e. limited model details are provided to the wider community such that adoption of these predictive platforms is limited. In this work, we combined an advanced polymer chemical structure fingerprinting method with a large experimental database of gas permeabilities to provide unprecedented prediction precision over a large range of polymer classes. No prior knowledge of the polymer is needed for the prediction other than the repeating unit chemical formula. In addition, we have incorporated this model into the existing Polymer Genome project to make it open to the membrane research community.
机译:预测聚合物的气体渗透性先验是在膜研究界内具有重要的挑战,该群体具有重要的膜工艺设计应用,最终普遍采用膜技术。从早期尝试根据自由体积和粘性能量到更新的群体贡献方法,预测膜渗透率的能力在精度方面得到了改善。然而,这些模型通常保持“在论文中”,即,提供给更广泛的社区的有限型号细节,使得采用这些预测平台有限。在这项工作中,我们组合了一种先进的高分子化学结构指纹识别方法,具有大型天然气渗透性的实验数据库,在大量的聚合物类别上提供前所未有的预测精度。除重复单元化学式外,不需要先前了解聚合物。此外,我们已将该模型纳入现有的聚合物基因组项目,以使其对膜研究界开放。

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