Skip to main content
Top
Published in: Advances in Manufacturing 2/2013

01-06-2013

Using support vector machine for materials design

Authors: Wen-Cong Lu, Xiao-Bo Ji, Min-Jie Li, Liang Liu, Bao-Hua Yue, Liang-Miao Zhang

Published in: Advances in Manufacturing | Issue 2/2013

Log in

Activate our intelligent search to find suitable subject content or patents.

search-config
loading …

Abstract

Materials design is the most important and fundamental work on the background of materials genome initiative for global competitiveness proposed by the National Science and Technology Council of America. As far as the methodologies of materials design, besides the thermodynamic and kinetic methods combing databases, both deductive approaches so-called the first principle methods and inductive approaches based on data mining methods are gaining great progress because of their successful applications in materials design. In this paper, support vector machine (SVM), including support vector classification (SVC) and support vector regression (SVR) based on the statistical learning theory (SLT) proposed by Vapnik, is introduced as a relatively new data mining method to meet the different tasks of materials design in our lab. The advantage of using SVM for materials design is discussed based on the applications in the formability of perovskite or BaNiO3 structure, the prediction of energy gaps of binary compounds, the prediction of sintered cold modulus of sialon-corundum castable, the optimization of electric resistances of VPTC semiconductors and the thickness control of In2O3 semiconductor film preparation. The results presented indicate that SVM is an effective modeling tool for the small sizes of sample sets with great potential applications in materials design.

Dont have a licence yet? Then find out more about our products and how to get one now:

Springer Professional "Wirtschaft+Technik"

Online-Abonnement

Mit Springer Professional "Wirtschaft+Technik" erhalten Sie Zugriff auf:

  • über 102.000 Bücher
  • über 537 Zeitschriften

aus folgenden Fachgebieten:

  • Automobil + Motoren
  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Elektrotechnik + Elektronik
  • Energie + Nachhaltigkeit
  • Finance + Banking
  • Management + Führung
  • Marketing + Vertrieb
  • Maschinenbau + Werkstoffe
  • Versicherung + Risiko

Jetzt Wissensvorsprung sichern!

Springer Professional "Technik"

Online-Abonnement

Mit Springer Professional "Technik" erhalten Sie Zugriff auf:

  • über 67.000 Bücher
  • über 390 Zeitschriften

aus folgenden Fachgebieten:

  • Automobil + Motoren
  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Elektrotechnik + Elektronik
  • Energie + Nachhaltigkeit
  • Maschinenbau + Werkstoffe




 

Jetzt Wissensvorsprung sichern!

Literature
1.
go back to reference National Science and technology Coucil (2011) Materials genome initiative for global competitiveness, Washington DC, America, June 24, 2011 National Science and technology Coucil (2011) Materials genome initiative for global competitiveness, Washington DC, America, June 24, 2011
2.
go back to reference Choi YM, Lin MC, Liu ML (2010) Rational design of novel cathode materials in solid oxide fuel cells using first-principles simulations. J Power Sources 195(5):1441–1445CrossRef Choi YM, Lin MC, Liu ML (2010) Rational design of novel cathode materials in solid oxide fuel cells using first-principles simulations. J Power Sources 195(5):1441–1445CrossRef
3.
go back to reference Ceder G (2010) Opportunities and challenges for first-principles materials design and applications to Li battery materials. MRS Bull 35(9):693–701CrossRef Ceder G (2010) Opportunities and challenges for first-principles materials design and applications to Li battery materials. MRS Bull 35(9):693–701CrossRef
4.
go back to reference Curtarolo S, Hart GLW, Nardelli MB, Mingo N, Sanvito S, Levy O (2013) The high-throughput highway to computational materials design. Nat Mater 12(3):191–201CrossRef Curtarolo S, Hart GLW, Nardelli MB, Mingo N, Sanvito S, Levy O (2013) The high-throughput highway to computational materials design. Nat Mater 12(3):191–201CrossRef
5.
go back to reference Kong CS, Rajan K (2012) Rational design of binary halide scintillators via data mining. Nucl Instrum Methods Phys Res A 680(1):145–154CrossRef Kong CS, Rajan K (2012) Rational design of binary halide scintillators via data mining. Nucl Instrum Methods Phys Res A 680(1):145–154CrossRef
6.
go back to reference Suh C, Kim K, Berry JJ, Lee J, Jones WB (2010) Data mining-aided crystal engineering for the design of transparent conducting oxides materials research society fall meeting. Cambridge University Press, Cambridge Suh C, Kim K, Berry JJ, Lee J, Jones WB (2010) Data mining-aided crystal engineering for the design of transparent conducting oxides materials research society fall meeting. Cambridge University Press, Cambridge
7.
go back to reference Liu X, Lu WC, Peng CR, Su Q, Guo J (2009) Two semi-empirical approaches for the prediction of oxide ionic conductivities in ABO3 perovskites. Comp Mater Sci 46(4):860–868CrossRef Liu X, Lu WC, Peng CR, Su Q, Guo J (2009) Two semi-empirical approaches for the prediction of oxide ionic conductivities in ABO3 perovskites. Comp Mater Sci 46(4):860–868CrossRef
8.
go back to reference Gu TH, Lv W, Shao X, Lu WC (2012) Detection of high energy materials using support vector classification, Adv Mater Res 554–556:1628–1631 Gu TH, Lv W, Shao X, Lu WC (2012) Detection of high energy materials using support vector classification, Adv Mater Res 554–556:1628–1631
9.
go back to reference Wu ML, Zhang LM, Gu TH, Qian N, Ma WJ, Lu WC (2013) Shape-controlled synthesis and pattern recognition of dendritic Co3O4 superstructures. Adv Mater Res 652–654:352–355 Wu ML, Zhang LM, Gu TH, Qian N, Ma WJ, Lu WC (2013) Shape-controlled synthesis and pattern recognition of dendritic Co3O4 superstructures. Adv Mater Res 652–654:352–355
10.
go back to reference Liu HL, Guo J, Chen NY (1996) A PLS-BPN pattern recognition method applied to computer-aided materials design. Anal Lett 29(2):341–350CrossRef Liu HL, Guo J, Chen NY (1996) A PLS-BPN pattern recognition method applied to computer-aided materials design. Anal Lett 29(2):341–350CrossRef
11.
go back to reference Chen NY, Li CH, Qin P (1998) KDPAG expert system applied to materials design and manufacture. Eng Appl Artif Intell 11(5):669–674CrossRef Chen NY, Li CH, Qin P (1998) KDPAG expert system applied to materials design and manufacture. Eng Appl Artif Intell 11(5):669–674CrossRef
12.
go back to reference Patterson DW (1996) Artificial neural networks: theory and applications. Prentice Hall, New JerseyMATH Patterson DW (1996) Artificial neural networks: theory and applications. Prentice Hall, New JerseyMATH
13.
go back to reference Wold S, Sjostroma M, Eriksson L (2001) PLS-regression: a basic tool of chemometrics. Chemometr Intell Lab 58(2):109–130CrossRef Wold S, Sjostroma M, Eriksson L (2001) PLS-regression: a basic tool of chemometrics. Chemometr Intell Lab 58(2):109–130CrossRef
14.
go back to reference Vapnik VN (1998) Statistical learning theory. Wiley, New YorkMATH Vapnik VN (1998) Statistical learning theory. Wiley, New YorkMATH
15.
go back to reference Burbidge R, Trotter M, Buxton B, Holden S (2001) Drug design by machine learning: support vector machines for pharmaceutical data analysis. J Comput Chem 26(1):5–14CrossRef Burbidge R, Trotter M, Buxton B, Holden S (2001) Drug design by machine learning: support vector machines for pharmaceutical data analysis. J Comput Chem 26(1):5–14CrossRef
16.
go back to reference Lu WC, Dong N, Nάray-Szabό G (2005) Predicting anti-HIV-1 activities of HEPT-analog compounds by using support vector classification. QSAR Comb Sci 24(9):1021–1025CrossRef Lu WC, Dong N, Nάray-Szabό G (2005) Predicting anti-HIV-1 activities of HEPT-analog compounds by using support vector classification. QSAR Comb Sci 24(9):1021–1025CrossRef
17.
go back to reference Li J, Qi M, Kong J, Wang J, Yan Y, Huo W, Yu J, Xu R, Xu Y (2010) Computational prediction of the formation of microporous aluminophosphates with desired structural features. Micropor Mesopor Mat 129(1–2):251–255CrossRef Li J, Qi M, Kong J, Wang J, Yan Y, Huo W, Yu J, Xu R, Xu Y (2010) Computational prediction of the formation of microporous aluminophosphates with desired structural features. Micropor Mesopor Mat 129(1–2):251–255CrossRef
18.
go back to reference Yan Q (2012) Prediction of porosity of porous NiTi alloy from processing parameters based on SVR. Adv Mater Res 393–395:231–235 Yan Q (2012) Prediction of porosity of porous NiTi alloy from processing parameters based on SVR. Adv Mater Res 393–395:231–235
19.
go back to reference Liu X, Lu WC, Jin SL, Li YW, Chen NY (2006) Support vector regression applied to materials optimization of sialon ceramics. Chemometr Intell Lab 82(1–2):8–14 Liu X, Lu WC, Jin SL, Li YW, Chen NY (2006) Support vector regression applied to materials optimization of sialon ceramics. Chemometr Intell Lab 82(1–2):8–14
20.
go back to reference Chen NY, Lu WC, Yang J, Li GZ (2004) Support vector machine in chemistry. World Scientific Publishing Company, SingaporeCrossRef Chen NY, Lu WC, Yang J, Li GZ (2004) Support vector machine in chemistry. World Scientific Publishing Company, SingaporeCrossRef
21.
go back to reference Niu B, Lu WC, Yang SS, Cai YD, Li GZ (2007) Support vector machine for SAR/QSAR of phenethyl-amines. Acta Pharmacol Sin 28(7):1075–1086CrossRef Niu B, Lu WC, Yang SS, Cai YD, Li GZ (2007) Support vector machine for SAR/QSAR of phenethyl-amines. Acta Pharmacol Sin 28(7):1075–1086CrossRef
22.
go back to reference Zhu JX, Lu WC, Liu L, Gu TH, Niu B (2009) Classification of Src kinase inhibitors based on support vector machine. QSAR Comb Sci 28(6–7):719–727CrossRef Zhu JX, Lu WC, Liu L, Gu TH, Niu B (2009) Classification of Src kinase inhibitors based on support vector machine. QSAR Comb Sci 28(6–7):719–727CrossRef
23.
go back to reference Yang SS, Lu WC, Gu TH, Yan LM, Li GZ (2009) QSPR study of n-octanol/water partition coefficient of some aromatic compounds using support vector regression. QSAR Comb Sci 28(2):175–182CrossRef Yang SS, Lu WC, Gu TH, Yan LM, Li GZ (2009) QSPR study of n-octanol/water partition coefficient of some aromatic compounds using support vector regression. QSAR Comb Sci 28(2):175–182CrossRef
24.
go back to reference Liu X, Chen HC, Liu TA, Li YL, Lu ZR, Lu WC (2007) Application of PCA-SVR to NIR prediction model for tobacco chemical composition. Spectrosc Spect Anal 27(12):2460–2463 Liu X, Chen HC, Liu TA, Li YL, Lu ZR, Lu WC (2007) Application of PCA-SVR to NIR prediction model for tobacco chemical composition. Spectrosc Spect Anal 27(12):2460–2463
25.
go back to reference Gu TH, Lu WC, Bao XH, Chen NY (2006) Using support vector regression for the prediction of the band gap and melting point of binary and ternary compound semiconductors. Solid State Sci 8(2):129–136CrossRef Gu TH, Lu WC, Bao XH, Chen NY (2006) Using support vector regression for the prediction of the band gap and melting point of binary and ternary compound semiconductors. Solid State Sci 8(2):129–136CrossRef
26.
go back to reference Galasso FS (1990) Perovskites and high Tc superconductors. Wiley, New York Galasso FS (1990) Perovskites and high Tc superconductors. Wiley, New York
27.
go back to reference Liu L, Lu WC, Chen NY (2004) On the criteria of formation and lattice distortion of perovskite-type complex halides. J Phys Chem Solids 65(5):855–860CrossRef Liu L, Lu WC, Chen NY (2004) On the criteria of formation and lattice distortion of perovskite-type complex halides. J Phys Chem Solids 65(5):855–860CrossRef
28.
go back to reference Müller O, Roy R (1974) The major ternary structural families. Springer, Berlin Müller O, Roy R (1974) The major ternary structural families. Springer, Berlin
29.
30.
go back to reference Boca R (1997) Semiconductors Materials. CRC Press, New York Boca R (1997) Semiconductors Materials. CRC Press, New York
31.
go back to reference Chen NY (1976) Application of bond parameter function. Press of Science, Beijing Chen NY (1976) Application of bond parameter function. Press of Science, Beijing
32.
go back to reference MacKenzie KJD, Temuujin J, Smith ME, Okada K, Kameshima Y (2003) Mechanochemical processing of sialon compositions. J Eur Ceram Soc 23(7):1069–1082CrossRef MacKenzie KJD, Temuujin J, Smith ME, Okada K, Kameshima Y (2003) Mechanochemical processing of sialon compositions. J Eur Ceram Soc 23(7):1069–1082CrossRef
33.
go back to reference Kudyba-Jansen AA, Hintzen HT, Metselaar R (2001) The influence of green processing on the sintering and mechanical properties of β-sialon. J Eur Ceram Soc 21(12):2153–2160CrossRef Kudyba-Jansen AA, Hintzen HT, Metselaar R (2001) The influence of green processing on the sintering and mechanical properties of β-sialon. J Eur Ceram Soc 21(12):2153–2160CrossRef
34.
go back to reference Li YW, Zhang X, Jin SL (2001) Corundum castables containing nitrogen for purging plug in Ladle. In: Proceedings of 44th international colloquium on refractories, pp 26–27, Aachen, Germany Li YW, Zhang X, Jin SL (2001) Corundum castables containing nitrogen for purging plug in Ladle. In: Proceedings of 44th international colloquium on refractories, pp 26–27, Aachen, Germany
35.
go back to reference Bao XH, Pan QY, Chen NY (2002) Support vector regression model for controlling the thickness of semiconductor In2O3 film. Comput Appl Chem 19(6):733–736 Bao XH, Pan QY, Chen NY (2002) Support vector regression model for controlling the thickness of semiconductor In2O3 film. Comput Appl Chem 19(6):733–736
Metadata
Title
Using support vector machine for materials design
Authors
Wen-Cong Lu
Xiao-Bo Ji
Min-Jie Li
Liang Liu
Bao-Hua Yue
Liang-Miao Zhang
Publication date
01-06-2013
Publisher
Shanghai University
Published in
Advances in Manufacturing / Issue 2/2013
Print ISSN: 2095-3127
Electronic ISSN: 2195-3597
DOI
https://doi.org/10.1007/s40436-013-0025-2

Other articles of this Issue 2/2013

Advances in Manufacturing 2/2013 Go to the issue

Premium Partners