How do you compare and benchmark different reduced order methods for FEA?
Reduced order methods (ROMs) are techniques that reduce the complexity and computational cost of finite element analysis (FEA) by exploiting some features of the problem, such as symmetry, periodicity, or parameter dependence. ROMs can be useful for parametric studies, where you need to perform FEA for many different values of a parameter, such as material properties, geometry, or boundary conditions. However, not all ROMs are equally effective or accurate for different types of problems. How do you compare and benchmark different reduced order methods for FEA?