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数据驱动的高熵碲化物组分高通量理论设计与性能预测

李顺 彭浩然 符秀丽

宁夏大学学报(自然科学版中英文)2026,Vol.47Issue(3):263-272,10.
宁夏大学学报(自然科学版中英文)2026,Vol.47Issue(3):263-272,10.DOI:10.20176/j.cnki.nxdz.20260404

数据驱动的高熵碲化物组分高通量理论设计与性能预测

Data-Driven High-Entropy Telluride Composition Design and Performance Prediction

李顺 1彭浩然 2符秀丽3

作者信息

  • 1. 交通运输部天津水运工程科学研究所,天津 300456
  • 2. 中国地质大学 数理学院,北京 100080
  • 3. 北京邮电大学 集成电路学院,北京 100080
  • 折叠

摘要

Abstract

To address the vast compositional space and the inefficiency of traditional"trial-and-error"methods in the development of high-entropy telluride thermoelectric materials,this study establishes a theoretical data-driven design framework that integrates machine learning with first-principles calculations.By constructing a high-dimensional descriptor space that encompasses physical features such as mixing enthalpy and atomic size difference,a gradient boosting regression model was trained to accurately predict the formation energy of multiprincipal-element systems.SHAP(SHapley Additive exPlanations)interpretability analysis elucidated the competitive mechanisms between thermodynamic and geometric parameters,leading to the formulation of a quantitative criterion for phase formation.Using this criterion,a high-throughput theoretical screening of the entire PbTe-SnTe-GeTe ternary space was conducted.An optimal high-entropy composition featuring both high thermodynamic stability(-46.31 kJ/mol)and ultra-low lattice thermal conductivity(0.85 W/(m·K))was theoretically identified.Electronic structure calculations further demonstrated that the introduction of the transition metal Mn induces convergence of the conduction band and strong hybridization of p-d orbitals,which effectively decouples the electrical and thermal transport parameters.Theoretical evaluations suggest that this high-entropy composition could achieve a thermoelectric figure of merit(zT)of 1.60 at 850 K,representing an approximate 67%improvement over the PbTe matrix.This work preliminarily verifies the feasibility of data-driven strategies for rational theoretical design of complex thermoelectric materials and provides a clear frame-work for future experimental synthesis and validation.It is important to note that all results herein are theoreti-cal predictions,and subsequent experimental synthesis and performance evaluations are ongoing.

关键词

高熵碲化物/机器学习/热电材料/相稳定性/第一性原理计算

Key words

high entropy telluride/machine learning/thermoelectric materials/phase stability/first-principles calculation

分类

通用工业技术

引用本文复制引用

李顺,彭浩然,符秀丽..数据驱动的高熵碲化物组分高通量理论设计与性能预测[J].宁夏大学学报(自然科学版中英文),2026,47(3):263-272,10.

基金项目

国家自然科学基金资助项目(U21A6004 ()

12174035) ()

信息光子学与光通信全国重点实验室(北京邮电大学)开放基金资助项目 (北京邮电大学)

宁夏大学学报(自然科学版中英文)

0253-2328

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