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[[Category:method]] | [[Category:method]] | ||
[[Category:Differential_algebraic_system]] | |||
[[Category:linear]] | |||
[[Category:first differential order]] | |||
[[Category:linear algebra]] | |||
==Description== | ==Description== | ||
The moment-matching methods are also called the ''Krylov'' subspace methods | The moment-matching methods are also called the ''Krylov'' subspace methods<ref name="freund03"/>, as well as | ||
''Padé'' approximation methods [ | ''Padé'' approximation methods<ref name="feldmann95"/>. They belong to the [[Projection based MOR]] methods. These methods are applicable to non-parametric linear time invariant systems, often descriptor systems, e.g. | ||
<math> | :<math>E \dot{x}(t)=A x(t)+B u(t),</math> | ||
E \ | :<math>y(t)=Cx(t).</math> | ||
y(t)=Cx(t) | |||
</math> | |||
They are very efficient in many engineering applications, circuit simulation, Microelectromechanical systems(MEMS) simulation, etc.. | They are very efficient in many engineering applications, such as circuit simulation, Microelectromechanical systems (MEMS) simulation, etc.. | ||
The basic steps are as follows. First, the transfer function | The basic steps are as follows. First, the transfer function | ||
<math>H(s)=Y(s)/U(s)=C(sE-A)^{-1}B</math> | :<math>H(s)=Y(s)/U(s)=C(sE-A)^{-1}B</math> | ||
is expanded into a power series at an expansion point <math>s_0\in\mathbb{C}\cup \infty</math>. | is expanded into a power series at an expansion point <math>s_0\in\mathbb{C}\cup \infty</math>. | ||
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Let <math>s=s_0+\sigma</math>, then, within the convergence radius of the series, we have | Let <math>s=s_0+\sigma</math>, then, within the convergence radius of the series, we have | ||
<math>H(s_0 + \sigma)= C[(s_{0}+\sigma){E}-A]^{-1}B</math> | :<math>H(s_0 + \sigma)= C[(s_{0}+\sigma){E}-A]^{-1}B</math> | ||
<math>=C[\sigma { E}+(s_{0}{ E}-{ A})]^{-1}B</math> | ::<math>=C[\sigma { E}+(s_{0}{ E}-{ A})]^{-1}B</math> | ||
<math>=C[{ I}+\sigma(s_0{ E}-{ A})^{-1}E]^{-1} | ::<math>=C[{ I}+\sigma(s_0{ E}-{ A})^{-1}E]^{-1}(s_0{ E}-{ A})^{-1}B</math> | ||
<math>=C[{ I}-\sigma(s_0{ E}- A )^{-1}E+\sigma^2[(s_0{ E}-{ A})^{-1}E]^{2}+\ldots] | ::<math>=C[{ I}-\sigma(s_0{ E}- A )^{-1}E+\sigma^2[(s_0{ E}-{ A})^{-1}E]^{2}+\ldots] | ||
s_0{E}-{ A})^{-1}B</math> | (s_0{E}-{ A})^{-1}B</math> | ||
<math>=\sum \limits^\infty_{i=0}\underbrace{C[-(s_0{ E}-{A})^{-1}E]^i(s_0{ E}-{ A})^{-1}B}_{:= m_i(s_0)} \, \sigma^i,</math> | ::<math>=\sum \limits^\infty_{i=0}\underbrace{C[-(s_0{ E}-{A})^{-1}E]^i(s_0{ E}-{ A})^{-1}B}_{:= m_i(s_0)} \, \sigma^i,</math> | ||
where <math>m_i(s_0)</math> are called the moments of the transfer function about <math>s_0</math> for <math>i=0,1,2,\ldots</math>. | where <math>m_i(s_0)</math> are called the moments of the transfer function about <math>s_0</math> for <math>i=0,1,2,\ldots</math>. | ||
If the expansion point is chosen as zero then the moments simplify to <math>m_i(0)=C(A^{-1}E)^i(-A^{-1}B)</math> | If the expansion point is chosen as zero, then the moments simplify to <math>m_i(0)=C(A^{-1}E)^i(-A^{-1}B)</math>. | ||
The goal in moment-matching model reduction is the construction of a reduced order | The goal in moment-matching model reduction is the construction of a reduced order | ||
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example, using a single expansion point <math>s_0=0</math>, by | example, using a single expansion point <math>s_0=0</math>, by | ||
<math>\textrm{range}(V)=\textrm{span}\{\tilde B,({ A}^{-1}E)^2 \tilde B, \ldots,({ A}^{-1}E)^{r}{\tilde B}\},</math> | :<math>\textrm{range}(V)=\textrm{span}\{\tilde B,({ A}^{-1}E)^2 \tilde B, \ldots,({ A}^{-1}E)^{r}{\tilde B}\}, \quad \quad \quad \quad \quad \quad \quad \quad\quad \quad \quad \ (1) </math> | ||
<math>\textrm{range}(W)=\textrm{span}\{C^T, E^T{ A}^{-T}C^T,(E^T{A}^{-T})^2C^T, \ldots | :<math>\textrm{range}(W)=\textrm{span}\{C^T, E^T{ A}^{-T}C^T,(E^T{A}^{-T})^2C^T, \ldots | ||
,(E^T{A}^{-T})^{r-1}C^T\},</math> | ,(E^T{A}^{-T})^{r-1}C^T\}, \quad \quad (2) </math> | ||
where <math>\tilde B=-A^{-1}B | where <math>\tilde B=-A^{-1}B</math>. | ||
Using a set of <math>k</math> distinct expansion points <math>\{s_1,\cdots,s_k\}</math>, the reduced model | The transfer function <math>\hat H</math> of the reduced model has good approximation properties around <math>s_0</math>, which matches the first <math>2r</math> moments of <math>H(s)</math> at <math>s_0</math>. | ||
Using a set of <math>k</math> distinct expansion points <math>\{s_1,\cdots,s_k\}</math>, the reduced model obtained by, e.g., | |||
<math>\textrm{range}(V)=\textrm{span}\{(A-s_1 {E})^{-1}E\tilde B,\ldots,(A-s_k {E})^{-1}E\tilde B \}</math> | :<math>\textrm{range}(V)=\textrm{span}\{(A-s_1 {E})^{-1}E\tilde B,\ldots,(A-s_k {E})^{-1}E\tilde B \}, \quad \quad \quad \quad \quad \quad \quad \quad (3)</math> | ||
<math>\textrm{range}(W)=\textrm{span}\{E^T(A-s_1 {E})^{-T}C^T,\ldots,E^T(A-s_k {E})^{-T}C^T \},</math> | :<math>\textrm{range}(W)=\textrm{span}\{E^T(A-s_1 {E})^{-T}C^T,\ldots,E^T(A-s_k {E})^{-T}C^T \},\quad \quad \quad \quad \quad (4) </math> | ||
matches the first two moments at each <math>s_j</math>, <math>j=1,\ldots,k</math>, see <ref name="grimme97"/>. The reduced model is in the form as below | |||
:<math>W^TE \frac{d{V z}}{t}=W^TA Vz +W^T B u(t), \quad \hat{y}(t)=CVz.</math> | |||
which can easily be computed by Arnoldi or Lanczos methods | |||
these algorithms only matrix-vector multiplications are used which | For the case of one expansion point in (1)(2), it can be seen that the columns of <math>V</math>, <math>W</math> span Krylov subspaces | ||
are simple to implement and the complexity of the resulting | which can easily be computed by Arnoldi or Lanczos methods. The matrices <math>V</math> and <math>W</math> in (3)(4) can be computed with the rational Krylov algorithm in<ref name="grimme97"/> or with the modified Gram-Schmidt process. In these algorithms only a few number of linear systems need to be solved, where matrix-vector multiplications are only used if using iterative solvers, which are simple to implement and the complexity of the resulting | ||
methods is | methods is roughly <math>O(n r^2)</math> for sparse matrices <math>A, E</math>. | ||
==References== | ==References== | ||
<references> | |||
<ref name="freund03">R.W. Freund, "<span class="plainlinks">[http://dx.doi.org/10.1017/S0962492902000120 Model reduction methods based on Krylov subspaces]</span>". Acta Numerica, 12:267-319, 2003.</ref> | |||
<ref name="feldmann95">P. Feldmann and R.W. Freund, "<span class="plainlinks">[http://dx.doi.org/10.1109/43.384428 Efficient linear circuit analysis by Pade approximation via the Lanczos process]</span>". IEEE Trans. Comput.-Aided Des. Integr. Circuits Syst., 14:639-649, 1995.</ref> | |||
[ | <ref name="grimme97">E.J. Grimme, "<span class="plainlinks">[http://citeseerx.ist.psu.edu/viewdoc/download?doi=10.1.1.19.9254&rep=rep1&type=pdf Krylov projection methods for model reduction]</span>. PhD thesis, Univ. Illinois, Urbana-Champaign, 1997.</ref> | ||
</references> | |||
Latest revision as of 12:55, 25 August 2022
Description
The moment-matching methods are also called the Krylov subspace methods[1], as well as Padé approximation methods[2]. They belong to the Projection based MOR methods. These methods are applicable to non-parametric linear time invariant systems, often descriptor systems, e.g.
They are very efficient in many engineering applications, such as circuit simulation, Microelectromechanical systems (MEMS) simulation, etc..
The basic steps are as follows. First, the transfer function
is expanded into a power series at an expansion point .
Let , then, within the convergence radius of the series, we have
where are called the moments of the transfer function about for . If the expansion point is chosen as zero, then the moments simplify to .
The goal in moment-matching model reduction is the construction of a reduced order system where some moments of the associated transfer function match some moments of the original transfer function .
The matrices and for model order reduction can be computed from the vectors which are associated with the moments, for example, using a single expansion point , by
where .
The transfer function of the reduced model has good approximation properties around , which matches the first moments of at .
Using a set of distinct expansion points , the reduced model obtained by, e.g.,
matches the first two moments at each , , see [3]. The reduced model is in the form as below
For the case of one expansion point in (1)(2), it can be seen that the columns of , span Krylov subspaces which can easily be computed by Arnoldi or Lanczos methods. The matrices and in (3)(4) can be computed with the rational Krylov algorithm in[3] or with the modified Gram-Schmidt process. In these algorithms only a few number of linear systems need to be solved, where matrix-vector multiplications are only used if using iterative solvers, which are simple to implement and the complexity of the resulting methods is roughly for sparse matrices .
References
- ↑ R.W. Freund, "Model reduction methods based on Krylov subspaces". Acta Numerica, 12:267-319, 2003.
- ↑ P. Feldmann and R.W. Freund, "Efficient linear circuit analysis by Pade approximation via the Lanczos process". IEEE Trans. Comput.-Aided Des. Integr. Circuits Syst., 14:639-649, 1995.
- ↑ 3.0 3.1 E.J. Grimme, "Krylov projection methods for model reduction. PhD thesis, Univ. Illinois, Urbana-Champaign, 1997.