Thermoelectric Prediction from Material Descriptors Using Machine Learning Technique

Q3 Agricultural and Biological Sciences
Pakawat Sungphueng, K. Amnuyswat
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引用次数: 0

Abstract

In this work, we employed a machine learning framework to predict the thermoelectric power factors of materials based on their composition and structure. To generate a broad range of materials for analysis, we sourced an existing dataset from the Materials Project database. The electronic transport properties, which serve as the output variables, were obtained from the same database via a Boltzmann transport theory calculation beyond ab-initio method. These properties were used to generate input data, or material descriptors, which rely solely on atomic information and crystal structure without recourse to density functional theory calculations. The descriptors were transformed into numerical features using the open-source software Matminer. Non-linear machine learning regression models were trained and tested on the transformed datasets, and their performance was evaluated. The optimized random forest model produced the most accurate predictions, with a yield of 88%. The ultimate goals of this research were to develop material selection strategies that bypass the need for self-consumption in density functional theory calculations, and to demonstrate the potential of machine learning models to describe the thermoelectric properties of existing materials datasets.
利用机器学习技术从材料描述符进行热电预测
在这项工作中,我们采用了一个机器学习框架,根据材料的组成和结构来预测材料的热电功率因数。为了生成广泛的分析材料,我们从材料项目数据库中获取了一个现有的数据集。作为输出变量的电子输运性质是通过从头算方法之外的玻尔兹曼输运理论计算从同一数据库中获得的。这些特性被用于生成输入数据或材料描述符,这些数据仅依赖于原子信息和晶体结构,而不依赖于密度泛函理论计算。使用开源软件Matminer将描述符转换为数字特征。在转换后的数据集上对非线性机器学习回归模型进行了训练和测试,并对其性能进行了评估。优化后的随机森林模型产生了最准确的预测,收益率为88%。这项研究的最终目标是开发材料选择策略,绕过密度泛函理论计算中的自我消耗需求,并展示机器学习模型描述现有材料数据集热电特性的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Current Applied Science and Technology
Current Applied Science and Technology Agricultural and Biological Sciences-Agricultural and Biological Sciences (miscellaneous)
CiteScore
1.50
自引率
0.00%
发文量
51
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