Litcius/Paper detail

Artificial Neural Network-Based Heat Transfer Analysis of Sutterby Magnetohydrodynamic Nanofluid with Microorganism Effects

Fateh Ali, Mujahid Islam, Farooq Ahmad, Muhammad Usman, Sana Ullah Asif

2025Magnetochemistry5 citationsDOIOpen Access PDF

Abstract

Background: The study of non-Newtonian fluids in thin channels is crucial for advancing technologies in microfluidic systems and targeted industrial coating processes. Nanofluids, which exhibit enhanced thermal properties, are of particular interest. This paper investigates the complex flow and heat transfer characteristics of a Sutterby nanofluid (SNF) within a thin channel, considering the combined effects of magnetohydrodynamics (MHD), Brownian motion, and bioconvection of microorganisms. Analyzing such systems is essential for optimizing design and performance in relevant engineering applications. Method: The governing non-linear partial differential equations (PDEs) for the flow, heat, concentration, and bioconvection are derived. Using lubrication theory and appropriate dimensionless variables, this system of PDEs is simplified into a more simplified system of ordinary differential equations (ODEs). The resulting nonlinear ODEs are solved numerically using the boundary value problem (BVP) Midrich method in Maple software to ensure accuracy. Furthermore, data for the Nusselt number, extracted from the numerical solutions, are used to train an artificial neural network (ANN) model based on the Levenberg–Marquardt algorithm. The performance and predictive capability of this ANN model are rigorously evaluated to confirm its robustness for capturing the system’s non-linear behavior. Results: The numerical solutions are analyzed to understand the variations in velocity, temperature, concentration, and microorganism profiles under the influence of various physical parameters. The results demonstrate that the non-Newtonian rheology of the Sutterby nanofluid is significantly influenced by Brownian motion, thermophoresis, bioconvection parameters, and magnetic field effects. The developed ANN model demonstrates strong predictive capability for the Nusselt number, validating its use for this complex system. These findings provide valuable insights for the design and optimization of microfluidic devices and specialized coating applications in industrial engineering.

Topics & Concepts

NanofluidNusselt numberPartial differential equationMechanicsHeat transferMagnetohydrodynamic driveBiot numberNonlinear systemBoussinesq approximation (buoyancy)Materials scienceOrdinary differential equationTurbulenceThermophoresisBoundary value problemMagnetohydrodynamicsArtificial neural networkRobustness (evolution)Computer scienceMass transferDifferential equationViscosityTurbulence modelingBrownian motionMicrochannelPhysicsThermodynamicsFluid dynamicsLubrication theoryBoundary layerNanofluid Flow and Heat TransferHeat Transfer and OptimizationHeat Transfer Mechanisms
Artificial Neural Network-Based Heat Transfer Analysis of Sutterby Magnetohydrodynamic Nanofluid with Microorganism Effects | Litcius