An Investigative Approach to Estimate the Critical Temperature of Superconductors Using Machine Learning

Show simple item record

dc.contributor.author Ratul, Rashed Hasan
dc.contributor.author Naf, Ahnaf Islam
dc.contributor.author Shams, Fatin Abrar
dc.contributor.author Samir, Syed Shaek Hossain
dc.date.accessioned 2024-09-10T09:13:06Z
dc.date.available 2024-09-10T09:13:06Z
dc.date.issued 2023-05-30
dc.identifier.citation [1] Fradkin, Eduardo. Field theories of condensed matter physics. Cambridge University Press, 2013. [2] Zhang, Hongye, Zezhao Wen, Francesco Grilli, Konstantinos Gyftakis, and Markus Mueller. "Alternating current loss of superconductors applied to superconducting electrical machines." Energies 14, no. 8 (2021): 2234. [3] Flores-Livas, José A., Lilia Boeri, Antonio Sanna, Gianni Profeta, Ryotaro Arita, and Mikhail Eremets. "A perspective on conventional high-temperature superconductors at high pressure: Methods and materials." Physics Reports 856 (2020): 1-78. [4] Xie, Stephan R., Gregory R. Stewart, James J. Hamlin, Peter J. Hirschfeld, and Richard G. Hennig. "Functional form of the superconducting critical temperature from machine learning." Physical Review B 100, no. 17 (2019): 174513. [5] Méndez-Moreno, R. M. "A Schematic Two Overlapping-Band Model for Superconducting Sulfur Hydrides: The Isotope Mass Exponent." Advances in Condensed Matter Physics 2019 (2019): 1-7. [6] Lilia, Boeri, Richard Hennig, Peter Hirschfeld, Gianni Profeta, Antonio Sanna, Eva Zurek, Warren E. Pickett et al. "The 2021 room-temperature superconductivity roadmap." Journal of Physics: Condensed Matter 34, no. 18 (2022): 183002. [7] Yazdani-Asrami, Mohammad, Wenjuan Song, Antonio Morandi, Giovanni De Carne, Joao Murta-Pina, Anabela Pronto, Roberto Oliveira et al. "Roadmap on artificial intelligence and big data techniques for superconductivity." Superconductor Science and Technology 36, no. 4 (2023): 043501. [8] Stanev, Valentin, Corey Oses, A. Gilad Kusne, Efrain Rodriguez, Johnpierre Paglione, Stefano Curtarolo, and Ichiro Takeuchi. "Machine learning modeling of superconducting critical temperature." npj Computational Materials 4, no. 1 (2018): 29. [9] Hamidieh, Kam. "A data-driven statistical model for predicting the critical temperature of a superconductor." Computational Materials Science 154 (2018): 346-354. [10] Li, Shaobo, Yabo Dan, Xiang Li, Tiantian Hu, Rongzhi Dong, Zhuo Cao, and Jianjun Hu. "Critical temperature prediction of superconductors based on atomic vectors and deep learning." Symmetry 12, no. 2 (2020): 262. [11] García-Nieto, Paulino José, Esperanza García-Gonzalo, and José Pablo Paredes Sánchez. "Prediction of the critical temperature of a superconductor by using the WOA/MARS, Ridge, Lasso and Elastic-net machine learning techniques." Neural Computing and Applications 33 (2021): 17131-17145. [12] Babu, R. Venkatesh, G. Ayyappan, and A. Kumaravel. "Comparison of Linear Regression and Simple Linear Regression for critical temperature of semicon-ductor." [13] Moscato, Pablo, Mohammad Nazmul Haque, Kevin Huang, Julia Sloan, and Jon C. de Oliveira. "Learning to extrapolate using continued fractions: Pre-dicting the critical temperature of superconductor materials." arXiv preprint arXiv:2012.03774 (2020). [14] Zebari, Rizgar, Adnan Abdulazeez, Diyar Zeebaree, Dilovan Zebari, and Jwan Saeed. "A comprehensive review of dimensionality reduction techniques for feature selection and feature extraction." Journal of Applied Science and Technology Trends 1, no. 2 (2020): 56- 70. [15] Chandrashekar, Girish, and Ferat Sahin. "A survey on feature selection methods." Computers & Electrical Engineering 40, no. 1 (2014): 16-28. 45 [16] Elgeldawi, Enas, Awny Sayed, Ahmed R. Galal, and Alaa M. Zaki. "Hyperparameter tuning for machine learning algorithms used for arabic sentiment analysis." In Informatics, vol. 8, no. 4, p. 79. Multidisciplinary Digital Publishing Institute, 2021. [17] Yan, Chaokun, Jun Zhang, Xi Kang, Zhengze Gong, Jianlin Wang, and Ge Zhang. "Comparison and Evaluation of the Combinations of Feature Selection and Classifier on Microarray Data." In 2021 IEEE 6th International Conference on Big Data Analytics (ICBDA), pp. 133-137. IEEE, 2021. [18] Olteanu, D. A., and M. J. Schleich. "F: Regression models over factorized views." Proceedings of the VLDB Endowment 9, no. 13 (2016). [19] Van Dijck, Gert, and Marc M. Van Hulle. "Speeding up the wrapper feature subset selection in regression by mutual information relevance and redundancy analysis." In Artificial Neural Networks–ICANN 2006: 16th International Conference, Athens, Greece, September 10-14, 2006. Proceedings, Part I 16, pp. 31-40. Springer Berlin Heidelberg, 2006. [20] Chen, Jie, Kees de Hoogh, John Gulliver, Barbara Hoffmann, Ole Hertel, Matthias Ketzel, Mariska Bauwelinck et al. "A comparison of linear regression, regularization, and machine learning algorithms to develop Europe-wide spatial models of fine particles and nitrogen dioxide." Environment international 130 (2019): 104934. [21] Spencer, Bruce, Omar Alfandi, and Feras Al-Obeidat. "A refinement of lasso regression applied to temperature forecasting." Procedia computer science 130 (2018): 728-735. [22] Wang, Yang, Yu Xiao, Jianhui Lai, and Yanyan Chen. "An adaptive k nearest neighbour method for imputation of missing traffic data based on two similarity metrics." Archives of Transport 54 (2020). [23] Rodriguez, Juan D., Aritz Perez, and Jose A. Lozano. "Sensitivity analysis of k-fold cross validation in prediction error estimation." IEEE transactions on pattern analysis and machine intelligence 32, no. 3 (2009): 569-575. [24] Wang, Liwei, Yan Zhang, and Jufu Feng. "On the Euclidean distance of images." IEEE transactions on pattern analysis and machine intelligence 27, no. 8 (2005): 1334-1339. [25] Faisal, M., and E. M. Zamzami. "Comparative analysis of inter-centroid K-Means performance using euclidean distance, canberra distance and manhattan distance." In Journal of Physics: Conference Series, vol. 1566, no. 1, p. 012112. IOP Publishing, 2020. [26] Bárcenas, Roberto, Ruth Fuentes-García, and Lizbeth Naranjo. "Mixed kernel SVR addressing Parkinson’s progression from voice features." Plos one 17, no. 10 (2022): e0275721. [27] Delashmit, Walter H., and Michael T. Manry. "Recent developments in multilayer perceptron neural networks." In Proceedings of the seventh Annual Memphis Area Engineering and Science Conference, MAESC. 2005. [28] Dou, Jie, Ali P. Yunus, Dieu Tien Bui, Abdelaziz Merghadi, Mehebub Sahana, Zhongfan Zhu, Chi-Wen Chen, Khabat Khosravi, Yong Yang, and Binh Thai Pham. "Assessment of advanced random forest and decision tree algorithms for modeling rainfall induced landslide susceptibility in the Izu-Oshima Volcanic Island, Japan." Science of the total environment 662 (2019): 332-346. [29] Shu, Chang, and Donald H. Burn. "Artificial neural network ensembles and their application in pooled flood frequency analysis." Water Resources Research 40, no. 9 (2004). [30] Xia, Rui, Yunpeng Gao, Yanqing Zhu, G. U. Dexi, and Cong Wu. "A Fast and Efficient Method Combined Data-Driven for Detecting Electricity Theft to Secure the Smart Grid with Stacking Structure." Available at SSRN 4019865. 46 [31] Sagi, Omer, and Lior Rokach. "Ensemble learning: A survey." Wiley Interdisciplinary Reviews: Data Mining and Knowledge Discovery 8, no. 4 (2018): e1249. [32] Fortin, Vincent, Mabrouk Abaza, Francois Anctil, and Raphael Turcotte. "Why should ensemble spread match the RMSE of the ensemble mean?." Journal of Hydrometeorology 15, no. 4 (2014): 1708-1713. [33] Choudhury, BhaskarJ. "Evaluation of an empirical equation for annual evaporation using field observations and results from a biophysical model." Journal of Hydrology 216, no. 1-2 (1999): 99-110. [34] Tayman, Jeff, and David A. Swanson. "On the validity of MAPE as a measure of population forecast accuracy." Population Research and Policy Review 18 (1999): 299-322. [35] Nugroho, Adi, Sri Hartati, and Khabib Mustofa. "Vector Autoregression (Var) Model for Rainfall Forecast and Isohyet Mapping in Semarang–Central Java–Indonesia." International Journal of Advanced Computer Science and Applications 5, no. 11 (2014). Lupón,Josep, Hanna K. Gaggin, Marta De Antonio, Mar Domingo, Amparo Galán, Elisabet Zamora, Joan Vila et al. "Biomarker-assist score for reverse remodeling prediction in heart failure: The ST2-R2 score." International journal of cardiology 184 (2015): 337-343 en_US
dc.identifier.uri http://hdl.handle.net/123456789/2184
dc.description Supervised by Prof. Dr. Md. Ashraful Haque Department of Electrical and Electronics Engineering (EEE) Islamic University of Technology (IUT) Board Bazar, Gazipur-1704, Bangladesh en_US
dc.description.abstract Ever since the initial discovery of superconductivity, the fundamental concept and the complex relationship between critical temperature and superconductive materials have been subject to extensive investigation. However, identifying superconductors that exhibit such behavior at normal temperatures remains a significant challenge, and there are still significant gaps in our understanding of this unique phenomenon, particularly regarding the fundamental criteria used to estimate critical temperature. To address this knowledge gap, a plethora of machine learning techniques have been developed to model critical temperatures, given the inherent difficulty in predicting them using traditional methods. Additionally, the limitations of the standard empirical formula in determining the temperature range require the development of more advanced and viable methods. This thesis presents an advanced machine learning-based approach that utilizes the intricate properties of superconductive materials to accurately predict critical temperatures. The proposed model showcases impressive performance, as reflected by the Root Mean Squared Error (RMSE) of 9.68, R 2 score of 0.922, Mean Absolute Error (MAE) score of 5.383, and Mean Absolute Percentage Error (MAPE) score of 4.575, surpassing the performance of existing research works. The findings of this thesis shed new light on the effective implementation of a stacking ensemble method with hyper-parameter optimization, providing a promising avenue for accurate critical temperature estimation. The findings of this study have significant consequences for the decision-making involved in the synthesis of superconductors, as the viability of this complex and resource-intensive process significantly depends on the accuracy of the critical temperature estimation. This thesis contributes to the advancement of superconductivity research by proposing an approximation technique with remarkable precision for the key function of superconductors. en_US
dc.language.iso en en_US
dc.publisher Department of Electrical and Elecrtonics Engineering(EEE), Islamic University of Technology(IUT), Board Bazar, Gazipur-1704, Bangladesh en_US
dc.subject superconductor; critical temperature; machine learning; stacking ensemble method. en_US
dc.title An Investigative Approach to Estimate the Critical Temperature of Superconductors Using Machine Learning en_US
dc.type Thesis en_US


Files in this item

This item appears in the following Collection(s)

Show simple item record

Search IUT Repository


Advanced Search

Browse

My Account

Statistics