Litcius/Paper detail

A feature restoration for machine learning on anti-corrosion materials

Supriadi Rustad, Muhamad Akrom, T. Sutojo, Hermawan Kresno Dipojono

2024Case Studies in Chemical and Environmental Engineering13 citationsDOIOpen Access PDF

Abstract

Materials informatics often struggles with small datasets. Our study introduces the Gaussian Mixture Model Virtual Sample Generation (GMM-VSG) approach to enhance feature correlation by generating virtual samples. Applied to six small and one large dataset of 218 N-heterocyclic compounds, GMM-VSG significantly improved predictive performance. Random Forest’s R 2 rose from 0.80 to 0.99, with RMSE dropping from 9.87 to 0.22. Kernel Ridge’s R 2 increased from 0.70 to 0.99, and RMSE decreased from 10.08 to 0.83. KNN improved from R 2 of 0.74–0.90. ANN and MLPNN also saw notable improvements. GMM-VSG is thus crucial for advancing anti-corrosion material research.

Topics & Concepts

CorrosionFeature (linguistics)Artificial intelligenceComputer scienceForensic engineeringMachine learningMaterials scienceEngineeringMetallurgyPhilosophyLinguisticsNon-Destructive Testing TechniquesCorrosion Behavior and InhibitionHydrogen embrittlement and corrosion behaviors in metals