Gaussian process approach within a data-driven POD framework for fluid dynamics engineering problems

Journal: 

Mathematics in Engineering

Date: 

2020

Authors: 

G. Ortali, N. Demo and G. Rozza

This work describes the implementation of a data-driven approach for the reduction of the complexity of parametrical partial differential equations (PDEs) employing Proper Orthogonal Decomposition (POD) and Gaussian Process Regression (GPR). This approach is applied initially to a literature case, the simulation of the stokes problems, and in the following to a real-world industrial problem, inside a shape optimization pipeline for a naval engineering problem.