Spectral Decomposition of Gramians of Continuous Linear Systems in the Form of Hadamard Products
Abstract
:1. Introduction
Main Contribution
2. Discussion of the Results and Problem Statement
3. Main Results
- Spectral decompositions of its controllability and observability Gramians and controllability or observability sub-Gramians in the form of Hadamard products for the case of pair spectrum of the dynamics matrix have the following form
- For the case of the decomposition of the controllability Gramian by a simple spectrum of the dynamics matrix in the form of Hadamard products, we obtain the same Formulas (32)–(35), except for the formulas of the multiplier matrix , which takes the form
- Exactly the same formulas as (31)–(35) are valid for the observability Gramians in the form of Hadamard products. Only the formulas for the matrices Ψo are changing:
4. Spectral Expansions of Solutions to Sylvester Differential Equations on a Finite Interval
- Spectral expansions of solutions to Sylvester differential Equation (56) in the form of Hadamard products for the case of the combination spectrum of dynamics matrices have the form
- For the case of the expansion of solutions to Sylvester’s differential equations over the simple spectrum of the dynamics matrix, the same Formulas (57) and (58) are valid, but with new multiplier matrices:
- The spectral decomposition of the cross-Gramian image has the form
- The spectral decomposition of the cross-Gramian over the pair spectrum of matrix A in the time domain has the formThe Hadamard decomposition for a finite cross-Gramian has the form
- The diagonal terms and trace of the cross-Gramian have the for
5. Conclusions
- Rouse tables are easier to compute compared to computing the eigenvalues of the matrix;
- the computation of Gramians using spectral decompositions leads to cumbersome expressions for the multiple spectra of the dynamics matrix, which makes it problematic to apply this method for high-dimensional systems, while in the first direction such problems do not arise;
- the computation of inverse controllability Gramians is reduced to solving systems of linear algebraic equations [24];
- the method can be used not only to compute Gramians but also to analyze the stability of the system according to the Rouse–Gurwitz criterion.
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Nomenclature
SISO LTI system | a linear time invariant system with one input and one output |
MIMO LTI system | a linear time invariant system with many inputs and many outputs |
Xiao matrix | a pseudo-Hankel matrix depending on the coefficients of the characteristic polynomial of the dynamics matrix [23,24] |
Faddeev matrix | a matrix arising from the decomposition of the resolvent of the dynamics matrix of a linear dynamical system [33,34] |
Faddeev’s series | a recursive method for computing the coefficients of the characteristic polynomial of a matrix [33,34] |
Kalman controllability matrix | a matrix used in Kalman decomposition to transform the system state equations into the canonical form of controllability [8,9] |
Gramian | a matrix that is a solution of a special kind of Lyapunov equation [1] |
Sub-Gramian | a matrix that is a summand of the sum of matrices in the spectral decomposition of the Gramian matrix [1,4,6] |
Hadamard’s product | a matrix whose every element is the product of the corresponding elements of the input matrices (wiki) [2,4,6] |
Hermite component | a matrix that is a complex square matrix equal to its conjugate transpose matrix [2] |
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Yadykin, I. Spectral Decomposition of Gramians of Continuous Linear Systems in the Form of Hadamard Products. Mathematics 2024, 12, 36. https://doi.org/10.3390/math12010036
Yadykin I. Spectral Decomposition of Gramians of Continuous Linear Systems in the Form of Hadamard Products. Mathematics. 2024; 12(1):36. https://doi.org/10.3390/math12010036
Chicago/Turabian StyleYadykin, Igor. 2024. "Spectral Decomposition of Gramians of Continuous Linear Systems in the Form of Hadamard Products" Mathematics 12, no. 1: 36. https://doi.org/10.3390/math12010036
APA StyleYadykin, I. (2024). Spectral Decomposition of Gramians of Continuous Linear Systems in the Form of Hadamard Products. Mathematics, 12(1), 36. https://doi.org/10.3390/math12010036