The basic idea of almost all the model order reduction (MOR) methods is to find a subspace which approximates the manifold where the state vector resides. Afterwards, is approximated by a vector in $S_1$. The reduced model is produced by Petrov-Galerkin projection onto a subspace $S_2$, or by Galerkin projection onto the same subspace .
We use the system Failed to parse (syntax error): {\displaystyle $E \frac{d{\bf x}}{dt}=A {\bf x}+B {\bf u}(t)$, \\ ${\bf y}(t)=C{\bf x}+D{\bf u}(t)$. }
as an example to explain the basic idea. Assuming that an orthonormal basis of the subspace has been found, then the approximation in can be represented by the basis as . Therefore can be approximated by . Here ${\bf z}$ is a vector of length $q \ll n$.
Once is computed, we can get an approximate solution for . The vector can be computed from the reduced model which is derived by the following two steps.