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Learning unknown physics of non-Newtonian fluids

Brandon C Reyes, Amanda A. Howard, Paris Perdikaris, Alexandre M. Tartakovsky

2021Physical Review Fluids72 citationsDOIOpen Access PDF

Abstract

Non-Newtonian fluids have a shear-rate dependent viscosity that is difficult to measure in experiments. We present a physics-informed neural networks (PINN) approach for learning the viscosity using indirect measurements (such as velocity and pressure) subject to the momentum conservation and continuity equations constraints. We use the PINN approach to estimate viscosity of polymer melts and suspensions of particles using velocity measurements from two-dimensional shear flow simulations. The PINN-inferred viscosity models agree with empirical models for shear rates with large absolute values but deviate for shear rates near zero where the empirical models have an unphysical singularity.

Topics & Concepts

SingularityViscosityNewtonian fluidMomentum (technical analysis)PhysicsNon-Newtonian fluidShear (geology)Generalized Newtonian fluidBoundary value problemRheologyClassical mechanicsStatistical physicsShear rateMechanicsThermodynamicsMathematicsMathematical analysisMaterials scienceQuantum mechanicsEconomicsComposite materialFinanceModel Reduction and Neural NetworksLattice Boltzmann Simulation StudiesFluid Dynamics and Turbulent Flows
Learning unknown physics of non-Newtonian fluids | Litcius