通过小数据可解释特征工程,高通量发现具有高热电性能的金属氧化物

IF 10 2区 材料科学 Q1 MATERIALS SCIENCE, MULTIDISCIPLINARY
Shengluo Ma , Yongchao Rao , Xiang Huang , Shenghong Ju
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引用次数: 0

摘要

在这项工作中,我们提出了一种数据驱动的筛选框架,将可解释的机器学习与高通量计算相结合,以识别出一系列同时具有高温耐受性和高功率因子的金属氧化物。针对高温下功率因数小数据泛化能力弱的问题,我们采用符号回归创建特征,在保留特征物理意义的同时增强了模型的鲁棒性。最终,我们从材料项目数据库的 48,694 种化合物中筛选出 33 种候选金属氧化物,用于高温热电应用。利用波尔兹曼输运理论在 1,000 K 温度下进行电输运特性计算。弛豫时间是通过基于形变势理论的恒定电子-声子耦合来近似计算的。考虑到带变性,使用动量矩阵元素法获得了电子群速度,得出 28 种材料的功率因数大于 50 μWcm-1K-2。我们提出的高通量框架有助于为高温热电应用选择金属氧化物。此外,我们的数据驱动分析和传输计算表明,富含铈(Ce)、锡(Sn)和铅(Pb)等元素的金属氧化物在高温下往往表现出较高的功率因数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

High-throughput discovery of metal oxides with high thermoelectric performance via interpretable feature engineering on small data

High-throughput discovery of metal oxides with high thermoelectric performance via interpretable feature engineering on small data

In this work, we have proposed a data-driven screening framework combining the interpretable machine learning with high-throughput calculations to identify a series of metal oxides that exhibit both high-temperature tolerance and high power factors. Aiming at the problem of weak generalization ability of small data with power factors at high temperatures, we employ symbolic regression for feature creation which enhances the robustness of the model while preserving the physical meaning of features. 33 candidate metal oxides are finally targeted for high-temperature thermoelectric applications from a pool of 48,694 compounds in the Materials Project database. The Boltzmann transport theory is utilized to perform electrical transport properties calculations at 1,000 K. The relaxation time is approximated by employing constant electron-phonon coupling based on the deformation potential theory. Considering band degeneracy, the electron group velocity is obtained using the momentum matrix element method, yielding 28 materials with power factors greater than 50 μWcm−1K−2. The high-throughput framework we proposed is instrumental in the selection of metal oxides for high-temperature thermoelectric applications. Furthermore, our data-driven analysis and transport calculation suggest that metal oxides rich in elements such as cerium (Ce), tin (Sn), and lead (Pb) tend to exhibit high power factors at high temperatures.

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来源期刊
Materials Today Physics
Materials Today Physics Materials Science-General Materials Science
CiteScore
14.00
自引率
7.80%
发文量
284
审稿时长
15 days
期刊介绍: Materials Today Physics is a multi-disciplinary journal focused on the physics of materials, encompassing both the physical properties and materials synthesis. Operating at the interface of physics and materials science, this journal covers one of the largest and most dynamic fields within physical science. The forefront research in materials physics is driving advancements in new materials, uncovering new physics, and fostering novel applications at an unprecedented pace.
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