Literature DB >> 33375023

Predictive Modeling of Critical Temperatures in Superconducting Materials.

Natalia Sizochenko1,2, Markus Hofmann1.   

Abstract

In this study, we have investigated quantitative relationships between critical temperatures of superconductive inorganic materials and the basic physicochemical attributes of these materials (also called quantitative structure-property relationships). We demonstrated that one of the most recent studies (titled "A data-driven statistical model for predicting the critical temperature of a superconductor" and published in Computational Materials Science by K. Hamidieh in 2018) reports on models that were based on the dataset that contains 27% of duplicate entries. We aimed to deliver stable models for a properly cleaned dataset using the same modeling techniques (multiple linear regression, MLR, and gradient boosting decision trees, XGBoost). The predictive ability of our best XGBoost model (R2 = 0.924, RMSE = 9.336 using 10-fold cross-validation) is comparable to the XGBoost model by the author of the initial dataset (R2 = 0.920 and RMSE = 9.5 K in ten-fold cross-validation). At the same time, our best model is based on less sophisticated parameters, which allows one to make more accurate interpretations while maintaining a generalizable model. In particular, we found that the highest relative influence is attributed to variables that represent the thermal conductivity of materials. In addition to MLR and XGBoost, we explored the potential of other machine learning techniques (NN, neural networks and RF, random forests).

Entities:  

Keywords:  QSPR; critical temperature; machine learning; predictive modeling; thermal conductivity

Mesh:

Year:  2020        PMID: 33375023      PMCID: PMC7792800          DOI: 10.3390/molecules26010008

Source DB:  PubMed          Journal:  Molecules        ISSN: 1420-3049            Impact factor:   4.411


  13 in total

1.  Quantum structural diagrams and high-Tc superconductivity.

Authors: 
Journal:  Phys Rev B Condens Matter       Date:  1988-02-01

2.  Big data of materials science: critical role of the descriptor.

Authors:  Luca M Ghiringhelli; Jan Vybiral; Sergey V Levchenko; Claudia Draxl; Matthias Scheffler
Journal:  Phys Rev Lett       Date:  2015-03-10       Impact factor: 9.161

3.  Superconducting Ferromagnetic Nanodiamond.

Authors:  Gufei Zhang; Tomas Samuely; Zheng Xu; Johanna K Jochum; Alexander Volodin; Shengqiang Zhou; Paul W May; Oleksandr Onufriienko; Jozef Kačmarčík; Julian A Steele; Jun Li; Johan Vanacken; Jiri Vacík; Pavol Szabó; Haifeng Yuan; Maarten B J Roeffaers; Dorin Cerbu; Peter Samuely; Johan Hofkens; Victor V Moshchalkov
Journal:  ACS Nano       Date:  2017-05-22       Impact factor: 15.881

Review 4.  Best Practices for QSAR Model Development, Validation, and Exploitation.

Authors:  Alexander Tropsha
Journal:  Mol Inform       Date:  2010-07-06       Impact factor: 3.353

Review 5.  Deep learning for computational chemistry.

Authors:  Garrett B Goh; Nathan O Hodas; Abhinav Vishnu
Journal:  J Comput Chem       Date:  2017-03-08       Impact factor: 3.376

Review 6.  Current mathematical methods used in QSAR/QSPR studies.

Authors:  Peixun Liu; Wei Long
Journal:  Int J Mol Sci       Date:  2009-04-29       Impact factor: 6.208

7.  How the toxicity of nanomaterials towards different species could be simultaneously evaluated: a novel multi-nano-read-across approach.

Authors:  Natalia Sizochenko; Alicja Mikolajczyk; Karolina Jagiello; Tomasz Puzyn; Jerzy Leszczynski; Bakhtiyor Rasulev
Journal:  Nanoscale       Date:  2018-01-03       Impact factor: 7.790

8.  ANI-1: an extensible neural network potential with DFT accuracy at force field computational cost.

Authors:  J S Smith; O Isayev; A E Roitberg
Journal:  Chem Sci       Date:  2017-02-08       Impact factor: 9.825

9.  Hybrid Superconducting-Ferromagnetic [Bi₂Sr₂(Ca,Y)₂Cu₃O10]0.99(La2/3Ba1/3MnO₃)0.01 Composite Thick Films.

Authors:  J Ricardo Mejía-Salazar; José Darío Perea; Roberto Castillo; Jesús Evelio Diosa; Eval Baca
Journal:  Materials (Basel)       Date:  2019-03-14       Impact factor: 3.623

10.  A Statistical Learning Framework for Materials Science: Application to Elastic Moduli of k-nary Inorganic Polycrystalline Compounds.

Authors:  Maarten de Jong; Wei Chen; Randy Notestine; Kristin Persson; Gerbrand Ceder; Anubhav Jain; Mark Asta; Anthony Gamst
Journal:  Sci Rep       Date:  2016-10-03       Impact factor: 4.379

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