Scalability of a graph neural network in accurate prediction of frictional contact networks in suspensions
Armin Aminimajd, Joao Maia, Abhinendra Singh
Abstract
), and amounts of smaller particles. The model is further able to predict both the occurrence and structure of a FCN. The presented model is accurate and interpolates and extrapolates to conditions far from its control parameters. This machine learning approach provides an accurate, lower cost, and faster predictions of suspension properties compared to conventional methods, while it is trained using only small systems. Ultimately, the findings in this study pave the way for predicting frictional contact networks in real-life large-scale polydisperse suspensions, for which theoretical models are largely limited owing to computational challenges.
Topics & Concepts
ScalabilityDilatantForcing (mathematics)ThickeningShear (geology)Materials scienceViscosityComputer scienceDistributed computingNanotechnologyBiological systemComposite materialGeologyPolymer scienceBiologyDatabaseClimatologyAdhesion, Friction, and Surface InteractionsGear and Bearing Dynamics AnalysisSports Dynamics and Biomechanics