论文标题
拓扑描述符有助于预测纳米多孔材料中的来宾吸附
Topological Descriptors Help Predict Guest Adsorption in Nanoporous Materials
论文作者
论文摘要
机器学习已成为预测材料特性的实验和模拟的有吸引力的替代方法。通常,这种方法依赖于特定的特定域知识:每个学习目标都需要仔细选择专家对特定任务很重要的功能。这种方法的主要缺点是,到目前为止,仅实施了一些结构性特征,并且很难先验说明哪些功能对于特定应用程序很重要。纳米多孔材料中客人摄取的预测因素已经在经验上观察到了后一种问题:局部和全球孔隙率特征分别成为低压和高压下的主要描述符。我们使用拓扑数据分析中的工具研究了材料的功能表示。具体而言,我们使用持久的同源性来描述各种尺度的纳米多孔材料的几何形状。我们将拓扑描述符与传统的结构特征相结合,并研究每个特征对预测任务的相对重要性。我们通过预测沸石中的甲烷吸附,在1-200 bar的压力中预测甲烷的吸附来证明此特征表示的应用。我们的结果不仅显示出与基线相比有了很大的改善,而且还强调了拓扑特征捕获了与结构特征相辅相成的信息:这对于低压下的吸附尤其重要,这对于传统特征尤其困难。此外,通过研究吸附模型中各个拓扑特征的重要性,我们能够确定孔的位置,这些孔位置与在不同压力下最能吸附的孔相关,这有助于我们对结构 - 概念关系的理解。
Machine learning has emerged as an attractive alternative to experiments and simulations for predicting material properties. Usually, such an approach relies on specific domain knowledge for feature design: each learning target requires careful selection of features that an expert recognizes as important for the specific task. The major drawback of this approach is that computation of only a few structural features has been implemented so far, and it is difficult to tell a priori which features are important for a particular application. The latter problem has been empirically observed for predictors of guest uptake in nanoporous materials: local and global porosity features become dominant descriptors at low and high pressures, respectively. We investigate a feature representation of materials using tools from topological data analysis. Specifically, we use persistent homology to describe the geometry of nanoporous materials at various scales. We combine our topological descriptor with traditional structural features and investigate the relative importance of each to the prediction tasks. We demonstrate an application of this feature representation by predicting methane adsorption in zeolites, for pressures in the range of 1-200 bar. Our results not only show a considerable improvement compared to the baseline, but they also highlight that topological features capture information complementary to the structural features: this is especially important for the adsorption at low pressure, a task particularly difficult for the traditional features. Furthermore, by investigation of the importance of individual topological features in the adsorption model, we are able to pinpoint the location of the pores that correlate best to adsorption at different pressure, contributing to our atom-level understanding of structure-property relationships.