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Gianmarco Guglielmo

Università Roma Tre
machine learning
environmental fluid dynamics
flood simulation
PHD school
Ingegneria Civile
PhD Cycle
38
List of Supervisors
Pietro Prestininzi, Andrea Montessori
Main research approches
Numerical analysis
Research abstract
Accelerating environmental hydrodynamic simulations via Physics-Informed Machine Learning
Background And Research Gaps
Despite the significant progress achieved in computational fluid dynamics (CFD), applying CFD to large space-time domains remains a challenging task. Even when implementing several simplifications, simulating environmental fluid dynamics can require a high computational burden. Recently, Physics-Informed Neural Networks (PINNs) have been applied to a wide range of problems and have proven to be more practical than classical techniques. PINNs have the potential to solve complex partial differential equations (PDEs), which are significant for physics and engineering. Physics-Informed Machine Learning (PI-ML) techniques involve introducing physically-based constraints into existing ML models. These constraints typically require compliance with conservation equations. By doing so, it is possible to reduce the machine's learning time, increase its generalization capabilities, and obtain physically-based results.
Research Goals
The goal of this research project is to integrate High Performance Computing (HPC) in CFD, particularly in hydraulics, with Machine Learning (ML) strategies to create a fully integrated computational platform. This technique can be applied to a typical problem of environmental fluid dynamics, such as the perimeter of flood areas. After generating sufficient results using standard techniques, the machine will be trained using these results and some physical constraints to interpolate them as the flood wave or geometry varies.
Methods
The methods used in this research project involve adapting ML algorithms to solve various engineering problems in the field of environmental hydraulics. To obtain physically-based solutions, the loss function of the ML model will be modified. This will help the model converge to physically-realistic solutions.
Results
The innovative approach of PI-ML is expected to enable the use of ML techniques to accelerate the time required for environmental fluid dynamics solutions. By reducing the computational burden, the approach will allow for the development of large-scale simulations.