A supervised machine learning approach for accelerating the design of particulate composites: Application to thermal conductivity

被引:20
|
作者
Hashemi, Mohammad Saber [1 ]
Safdari, Masoud [2 ]
Sheidaei, Azadeh [1 ]
机构
[1] Iowa State Univ, Aerosp Engn Dept, Ames, IA 50011 USA
[2] Univ Illinois, Aerosp Engn Dept, Champaign, IL 61820 USA
关键词
Thermal properties; Particle-reinforced composites; Flexible composites; Computational mechanics; Machine learning; MICROSTRUCTURE RECONSTRUCTION; HOMOGENIZATION; FRAMEWORK;
D O I
10.1016/j.commatsci.2021.110664
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
A supervised machine learning (ML) based computational methodology for the design of particulate multifunctional composite materials with desired thermal conductivity (TC) is presented. The design variables are physical descriptors of the material microstructure that directly link microstructure to the material's properties. A sufficiently large and uniformly sampled database was generated based on the Sobol sequence. Microstructures were realized using an efficient dense packing algorithm, and the TCs were obtained using our previously developed Fast Fourier Transform (FFT) homogenization method. Our optimized ML method is trained over the generated database and establishes the complex relationship between the structure and properties. Finally, the application of the trained ML model in the inverse design of a new class of composite materials, liquid metal (LM) elastomer, with desired TC is discussed. The results show that the surrogate model is accurate in predicting the microstructure behavior with respect to high-fidelity FFT simulations, and inverse design is robust in finding microstructure parameters according to case studies.
引用
收藏
页数:9
相关论文
共 50 条
  • [31] Machine Learning Approach for Application-Tailored Nanolubricants' Design
    Kaluzny, Jaroslaw
    Swietlicka, Aleksandra
    Wojciechowski, Lukasz
    Boncel, Slawomir
    Kinal, Grzegorz
    Runka, Tomasz
    Nowicki, Marek
    Stepanenko, Oleksandr
    Gapinski, Bartosz
    Lesniewicz, Joanna
    Blaszkiewicz, Paulina
    Kempa, Krzysztof
    NANOMATERIALS, 2022, 12 (10)
  • [32] Accelerating hybrid lattice structures design with machine learning
    Peng, Chenxi
    Tran, Phuong
    Rutz, Erich
    MATERIALS SCIENCE IN ADDITIVE MANUFACTURING, 2024, 3 (02):
  • [33] Accelerating design of inorganic materials with machine learning and Al
    Isayev, Olexandr
    ABSTRACTS OF PAPERS OF THE AMERICAN CHEMICAL SOCIETY, 2019, 258
  • [34] A supervised machine learning approach for estimating plate interface locking: Application to Central Chile
    Barra, Sebastian
    Moreno, Marcos
    Ortega-Culaciati, Francisco
    Benavente, Roberto
    Araya, Rodolfo
    Bedford, Jonathan
    Calisto, Ignacia
    PHYSICS OF THE EARTH AND PLANETARY INTERIORS, 2024, 352
  • [35] A machine learning approach for accelerating DNA sequence analysis
    Memeti, Suejb
    Pllana, Sabri
    INTERNATIONAL JOURNAL OF HIGH PERFORMANCE COMPUTING APPLICATIONS, 2018, 32 (03): : 363 - 379
  • [36] Finite element modelling and simulations on effective thermal conductivity of particulate composites
    Neeraj Kumar Sharma
    Journal of Thermal Analysis and Calorimetry, 2022, 147 : 3441 - 3452
  • [37] Prediction of particle size distribution effects on thermal conductivity of particulate composites
    Holotescu, S.
    Stoian, F. D.
    MATERIALWISSENSCHAFT UND WERKSTOFFTECHNIK, 2011, 42 (05) : 379 - 385
  • [38] Finite element modelling and simulations on effective thermal conductivity of particulate composites
    Sharma, Neeraj Kumar
    JOURNAL OF THERMAL ANALYSIS AND CALORIMETRY, 2022, 147 (04) : 3441 - 3452
  • [39] Using supervised machine learning in power converters design for particle accelerators - Application to magnetic components design
    Cajander, D.
    Aguglia, D.
    Viarouge, I
    Viarouge, P.
    IPAC23 PROCEEDINGS, 2024, 2687
  • [40] A model for the effective thermal conductivity of metal-nonmetal particulate composites
    Ordonez-Miranda, J.
    Yang, Ronggui
    Alvarado-Gil, J. J.
    JOURNAL OF APPLIED PHYSICS, 2012, 111 (04)