Machine Learning for Property Prediction and Optimization of Polymeric Nanocomposites: A State-of-the-Art

Int J Mol Sci. 2022 Sep 14;23(18):10712. doi: 10.3390/ijms231810712.

Abstract

Recently, the field of polymer nanocomposites has been an area of high scientific and industrial attention due to noteworthy improvements attained in these materials, arising from the synergetic combination of properties of a polymeric matrix and an organic or inorganic nanomaterial. The enhanced performance of those materials typically involves superior mechanical strength, toughness and stiffness, electrical and thermal conductivity, better flame retardancy and a higher barrier to moisture and gases. Nanocomposites can also display unique design possibilities, which provide exceptional advantages in developing multifunctional materials with desired properties for specific applications. On the other hand, machine learning (ML) has been recognized as a powerful predictive tool for data-driven multi-physical modelling, leading to unprecedented insights and an exploration of the system's properties beyond the capability of traditional computational and experimental analyses. This article aims to provide a brief overview of the most important findings related to the application of ML for the rational design of polymeric nanocomposites. Prediction, optimization, feature identification and uncertainty quantification are presented along with different ML algorithms used in the field of polymeric nanocomposites for property prediction, and selected examples are discussed. Finally, conclusions and future perspectives are highlighted.

Keywords: artificial neural network; carbon nanomaterials; machine learning; optimization; polymer nanocomposites; property prediction.

Publication types

  • Review

MeSH terms

  • Gases
  • Machine Learning
  • Nanocomposites*
  • Polymers

Substances

  • Gases
  • Polymers

Grants and funding

We gratefully acknowledge our financial support from the community of Madrid within the framework of a multi-year agreement with the University of Alcalá in the line of action “Stimulus to Excellence for Permanent University Professors”, Ref. EPU-INV/2020/012.