Development of new materials for electrothermal metals using data driven and machine learning

PLoS One. 2024 Apr 26;19(4):e0297943. doi: 10.1371/journal.pone.0297943. eCollection 2024.

Abstract

After adopting a combined approach of data-driven methods and machine learning, the prediction of material performance and the optimization of composition design can significantly reduce the development time of materials at a lower cost. In this research, we employed four machine learning algorithms, including linear regression, ridge regression, support vector regression, and backpropagation neural networks, to develop predictive models for the electrical performance data of titanium alloys. Our focus was on two key objectives: resistivity and the temperature coefficient of resistance (TCR). Subsequently, leveraging the results of feature selection, we conducted an analysis to discern the impact of alloying elements on these two electrical properties.The prediction results indicate that for the resistivity data prediction task, the radial basis function kernel-based support vector machine model performs the best, with a correlation coefficient above 0.995 and a percentage error within 2%, demonstrating high predictive capability. For the TCR data prediction task, the best-performing model is a backpropagation neural network with two hidden layers, also with a correlation coefficient above 0.995 and a percentage error within 3%, demonstrating good generalization ability. The feature selection results using random forest and Xgboost indicate that Al and Zr have a significant positive effect on resistivity, while Al, Zr, and V have a significant negative effect on TCR. The conclusion of the composition optimization design suggests that to achieve both high resistivity and TCR, it is recommended to set the Al content in the range of 1.5% to 2% and the Zr content in the range of 2.5% to 3%.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Algorithms
  • Alloys* / chemistry
  • Machine Learning*
  • Metals / chemistry
  • Neural Networks, Computer*
  • Support Vector Machine
  • Temperature
  • Titanium* / chemistry

Substances

  • Alloys
  • Titanium
  • Metals

Grants and funding

This work was Funded by Shenzhen Zhuolineng Technology Co., Ltd (HKF202200086); National Natural Science Foundation of Hunan province (2022JJ30721).