An integrated data-driven computational pipeline with model order reduction for industrial and applied mathematics

Journal: 

Novel Mathematics Inspired by Industrial Challenges

Date: 

2022

Authors: 

M. Tezzele, N. Demo, A. Mola and G. Rozza

In this work we present an integrated computational pipeline involving several model order reduction techniques for industrial and applied mathematics, as emerging technology for product and/or process design procedures. Its data-driven nature and its modularity allow an easy integration into existing pipelines. We describe a complete optimization framework with automated geometrical parameterization, reduction of the dimension of the parameter space, and non-intrusive model order reduction such as dynamic mode decomposition and proper orthogonal decomposition with interpolation. Moreover several industrial examples are illustrated.