Leveraging low-fidelity data to improve machine learning of sparse high-fidelity thermal conductivity data via transfer learning

被引:6
|
作者
Liu, Z. [1 ,2 ]
Jiang, M. [3 ]
Luo, T. [1 ,4 ]
机构
[1] Univ Notre Dame, Dept Aerosp & Mech Engn, Notre Dame, IN 46556 USA
[2] Hunan Univ, Sch Phys & Elect, Dept Appl Phys, Changsha 410082, Peoples R China
[3] Univ Notre Dame, Dept Comp Sci & Engn, Notre Dame, IN 46556 USA
[4] Univ Notre Dame, Dept Chem & Biomol Engn, Notre Dame, IN 46556 USA
关键词
Thermal conductivity; Machine learning; Transfer learning; First-principles simulation; TRANSPORT; CRYSTALS; PHONONS; MODEL;
D O I
10.1016/j.mtphys.2022.100868
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Lattice thermal conductivity (TC) of semiconductors is crucial for various applications, ranging from micro-electronics to thermoelectrics. Data-driven approach can potentially establish the critical composition-property relationship needed for fast screening of candidates with desirable TC, but the small number of available data remains the main challenge. TC can be efficiently calculated using empirical models, but they have inferior accuracy compared to the more resource-demanding first-principles calculations. Here, we demonstrate the use of transfer learning (TL) to improve the machine learning models trained on small but high-fidelity TC data from experiments and first-principles calculations, by leveraging a large but low-fidelity data generated from empirical TC models, where the trainings on high-and low-fidelity TC data are treated as different but related tasks. TL improves the model accuracy by as much as 23% in R2 and reduces the average factor difference by as much as 30%. Using the TL model, a large semiconductor database is screened, and several candidates with room tem-perature TC > 350 W/mK are identified and further verified using first-principles simulations. This study demonstrates that TL can leverage big low-fidelity data as a proxy task to improve models for the target task with high-fidelity but small data. Such a capability of TL may have important implications to materials informatics in general.
引用
收藏
页数:8
相关论文
共 50 条
  • [41] On machine learning assisted data-driven bridging of FSDT and HOZT for high-fidelity uncertainty quantification of laminated composite and sandwich plates
    Mukhopadhyay, T.
    Naskar, S.
    Dey, S.
    Dey, S.
    [J]. COMPOSITE STRUCTURES, 2023, 304
  • [42] Intelligent wind farm control via deep reinforcement learning and high-fidelity simulations
    Dong, Hongyang
    Zhang, Jincheng
    Zhao, Xiaowei
    [J]. APPLIED ENERGY, 2021, 292
  • [43] Reimagining Carbon Nanomaterial Analysis: Empowering Transfer Learning and Machine Vision in Scanning Electron Microscopy for High-Fidelity Identification
    Gupta, Siddharth
    Gupta, Sunayana
    Gupta, Arushi
    [J]. MATERIALS, 2023, 16 (15)
  • [44] Low fidelity data driven machine learning based optimisation method for box-wing configuration
    Hasan, Mehedi
    Khandoker, Azad
    Gessl, Guido
    Hamid, M. A.
    Ali, Mohammed
    [J]. AEROSPACE SCIENCE AND TECHNOLOGY, 2024, 150
  • [45] Leveraging High-Fidelity Sensor Data for Inverter Diagnostics: A Data-Driven Model using High-Temperature Accelerated Life Testing Data
    Karakayaya, Sakir
    Yildirim, Murat
    Zhao, Shijia
    Qiu, Feng
    Flicker, Jack David
    Peters, Benjamin
    Wang, Zhaoyu
    [J]. 2023 IEEE 50TH PHOTOVOLTAIC SPECIALISTS CONFERENCE, PVSC, 2023,
  • [46] Generating high-fidelity synthetic time-to-event datasets to improve data transparency and accessibility
    Aiden Smith
    Paul C. Lambert
    Mark J. Rutherford
    [J]. BMC Medical Research Methodology, 22
  • [47] Generating high-fidelity synthetic time-to-event datasets to improve data transparency and accessibility
    Smith, Aiden
    Lambert, Paul C.
    Rutherford, Mark J.
    [J]. BMC MEDICAL RESEARCH METHODOLOGY, 2022, 22 (01)
  • [48] Knowledge Transfer across Imaging Modalities Via Simultaneous Learning of Adaptive Autoencoders for High-Fidelity Mobile Robot Vision
    Rahman, Md Mahmudur
    Rahman, Tauhidur
    Kim, Donghyun
    Ul Alam, Mohammad Arif
    [J]. 2021 IEEE/RSJ INTERNATIONAL CONFERENCE ON INTELLIGENT ROBOTS AND SYSTEMS (IROS), 2021, : 1267 - 1273
  • [49] Machine learning prediction of accurate atomization energies of organic molecules from low-fidelity quantum chemical calculations
    Ward, Logan
    Blaiszik, Ben
    Foster, Ian
    Assary, Rajeev S.
    Narayanan, Badri
    Curtiss, Larry
    [J]. MRS COMMUNICATIONS, 2019, 9 (03) : 891 - 899
  • [50] Machine learning-driven high-fidelity ensemble surrogate modeling of Francis turbine unit based on data-model interactive simulation
    Wang, Jian
    Liu, Jie
    Lu, Yanglong
    Li, Haoliang
    Zhang, Xin
    [J]. ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2024, 133