PORTALE DELLA DIDATTICA

Ricerca CERCA
  KEYWORD

AA - Multiscale modelling for materials science and process engineering

Development of a neural-networks based surrogate model for modelling stirred tank reactors

keywords CFD, MACHINE LEARNING, NEURAL NETWORKS

Reference persons GIANLUCA BOCCARDO, ANTONIO BUFFO, DANIELE MARCHISIO

Research Groups AA - Multiscale modelling for materials science and process engineering

Thesis type MODELING AND SIMULATION

Description In this thesis project computational fluid dynamics (CFD) simulations will be performed with the objective of investigating fluid flow in stirred tank reactors with different operating conditions and geometries (e.g. stirring rate or fluid viscosity, size/type of the impeller).
The CFD results will be employed to train machine learning algorithms (both fully-connected and convolutional neural networks) to create surrogate models with very low computational cost: these surrogate models will be useful for parametric exploration and for process optimization purposes.


Deadline 02/12/2023      PROPONI LA TUA CANDIDATURA




© Politecnico di Torino
Corso Duca degli Abruzzi, 24 - 10129 Torino, ITALY
Contatti