A Review of the Application of Machine Learning and Data Mining Approaches in Continuum Materials Mechanics

被引:275
作者
Bock, Frederic E. [1 ]
Aydin, Roland C. [1 ]
Cyron, Christian J. [1 ,2 ]
Huber, Norbert [1 ,3 ]
Kalidindi, Surya R. [4 ,5 ]
Klusemann, Benjamin [1 ,6 ]
机构
[1] Helmholtz Zentrum Geesthacht, Inst Mat Res Mat Mech, Geesthacht, Germany
[2] Hamburg Univ Technol TUHH, Inst Continuum & Mat Mech, Hamburg, Germany
[3] Hamburg Univ Technol TUHH, Inst Mat Phys & Technol, Hamburg, Germany
[4] Georgia Inst Technol, Sch Mech Engn, Atlanta, GA 30332 USA
[5] Georgia Inst Technol, Sch Computat Sci & Engn, Atlanta, GA 30332 USA
[6] Leuphana Univ Luneburg, Inst Prod & Proc Innovat, Luneburg, Germany
关键词
machine learning; materials mechanics; data mining; process-structure-property-performance relationship; knowledge discovery; STRUCTURE-PROPERTY LINKAGES; VISCOPLASTIC MATERIAL PARAMETERS; SPHERICAL INDENTATION DATA; ARTIFICIAL NEURAL-NETWORK; DATA SCIENCE; ELASTIC LOCALIZATION; MULTIOBJECTIVE OPTIMIZATION; RESIDUAL-STRESSES; GENETIC ALGORITHM; FATIGUE LIFE;
D O I
10.3389/fmats.2019.00110
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Machine learning tools represent key enablers for empowering material scientists and engineers to accelerate the development of novel materials, processes and techniques. One of the aims of using such approaches in the field of materials science is to achieve high-throughput identification and quantification of essential features along the process-structure-property-performance chain. In this contribution, machine learning and statistical learning approaches are reviewed in terms of their successful application to specific problems in the field of continuum materials mechanics. They are categorized with respect to their type of task designated to be either descriptive, predictive or prescriptive; thus to ultimately achieve identification, prediction or even optimization of essential characteristics. The respective choice of the most appropriate machine learning approach highly depends on the specific use-case, type of material, kind of data involved, spatial and temporal scales, formats, and desired knowledge gain as well as affordable computational costs. Different examples are reviewed involving case-by-case dependent application of different types of artificial neural networks and other data-driven approaches such as support vector machines, decision trees and random forests as well as Bayesian learning, and model order reduction procedures such as principal component analysis, among others. These techniques are applied to accelerate the identification of material parameters or salient features for materials characterization, to support rapid design and optimization of novel materials or manufacturing methods, to improve and correct complex measurement devices, or to better understand and predict fatigue behavior, among other examples. Besides experimentally obtained datasets, numerous studies draw required information from simulation-based data mining. Altogether, it is shown that experiment- and simulation-based data mining in combination with machine leaning tools provide exceptional opportunities to enable highly reliant identification of fundamental interrelations within materials for characterization and optimization in a scale-bridging manner. Potentials of further utilizing applied machine learning in materials science and empowering significant acceleration of knowledge output are pointed out.
引用
收藏
页数:23
相关论文
共 146 条
[1]  
Abadi M., 2016, 12 USENIX S OPERATIN, P265
[2]   Big Data, Data Science, and Analytics: The Opportunity and Challenge for IS Research [J].
Agarwal, Ritu ;
Dhar, Vasant .
INFORMATION SYSTEMS RESEARCH, 2014, 25 (03) :443-448
[3]   An online tool for predicting fatigue strength of steel alloys based on ensemble data mining [J].
Agrawal, Ankit ;
Choudhary, Alok .
INTERNATIONAL JOURNAL OF FATIGUE, 2018, 113 :389-400
[4]   A Fatigue Strength Predictor for Steels Using Ensemble Data Mining [J].
Agrawal, Ankit ;
Choudhary, Alok .
CIKM'16: PROCEEDINGS OF THE 2016 ACM CONFERENCE ON INFORMATION AND KNOWLEDGE MANAGEMENT, 2016, :2497-2500
[5]   Exploration of data science techniques to predict fatigue strength of steel from composition and processing parameters [J].
Agrawal A. ;
Deshpande P.D. ;
Cecen A. ;
Basavarsu G.P. ;
Choudhary A.N. ;
Kalidindi S.R. .
Integrating Materials and Manufacturing Innovation, 2014, 3 (01) :90-108
[6]   Data science approaches for microstructure quantification and feature identification in porous membranes [J].
Altschuh, Patrick ;
Yabansu, Yuksel C. ;
Hoetzer, Johannes ;
Selzer, Michael ;
Nestler, Britta ;
Kalidindi, Surya R. .
JOURNAL OF MEMBRANE SCIENCE, 2017, 540 :88-97
[7]   An introduction to MCMC for machine learning [J].
Andrieu, C ;
de Freitas, N ;
Doucet, A ;
Jordan, MI .
MACHINE LEARNING, 2003, 50 (1-2) :5-43
[8]  
[Anonymous], 2012, NEW STAGE MATNAVI MA
[9]  
[Anonymous], P 2 WORLD C INT COMP
[10]  
[Anonymous], 1997, Cellular solids: structure and properties