Litcius/Paper detail

Machine learning prediction of self-diffusion in Lennard-Jones fluids

Joshua P. Allers, Jacob Harvey, Fernando H. Garzón, Todd M. Alam

2020The Journal of Chemical Physics55 citationsDOIOpen Access PDF

Abstract

Different machine learning (ML) methods were explored for the prediction of self-diffusion in Lennard-Jones (LJ) fluids. Using a database of diffusion constants obtained from the molecular dynamics simulation literature, multiple Random Forest (RF) and Artificial Neural Net (ANN) regression models were developed and characterized. The role and improved performance of feature engineering coupled to the RF model development was also addressed. The performance of these different ML models was evaluated by comparing the prediction error to an existing empirical relationship used to describe LJ fluid diffusion. It was found that the ANN regression models provided superior prediction of diffusion in comparison to the existing empirical relationships.

Topics & Concepts

DiffusionRandom forestRegressionComputer scienceArtificial neural networkArtificial intelligenceRegression analysisMachine learningFeature (linguistics)Statistical physicsThermodynamicsMathematicsStatisticsPhysicsPhilosophyLinguisticsMachine Learning in Materials SciencePhase Equilibria and ThermodynamicsFuel Cells and Related Materials