State-transition matrix
This article may be too technical for most readers to understand.(December 2018) |
In control theory, the state-transition matrix is a matrix whose product with the state vector at an initial time gives at a later time . The state-transition matrix can be used to obtain the general solution of linear dynamical systems.
Linear systems solutions
[edit]The state-transition matrix is used to find the solution to a general state-space representation of a linear system in the following form
- ,
where are the states of the system, is the input signal, and are matrix functions, and is the initial condition at . Using the state-transition matrix , the solution is given by:[1][2]
The first term is known as the zero-input response and represents how the system's state would evolve in the absence of any input. The second term is known as the zero-state response and defines how the inputs impact the system.
Peano–Baker series
[edit]The most general transition matrix is given by a product integral, referred to as the Peano–Baker series
where is the identity matrix. This matrix converges uniformly and absolutely to a solution that exists and is unique.[2] The series has a formal sum that can be written as
where is the time-ordering operator, used to ensure that the repeated product integral is in proper order. The Magnus expansion provides a means for evaluating this product.
Other properties
[edit]The state transition matrix satisfies the following relationships. These relationships are generic to the product integral.
1. It is continuous and has continuous derivatives.
2, It is never singular; in fact and , where is the identity matrix.
3. for all .[3]
4. for all .
5. It satisfies the differential equation with initial conditions .
6. The state-transition matrix , given by
where the matrix is the fundamental solution matrix that satisfies
- with initial condition .
7. Given the state at any time , the state at any other time is given by the mapping
Estimation of the state-transition matrix
[edit]In the time-invariant case, we can define , using the matrix exponential, as . [4]
In the time-variant case, the state-transition matrix can be estimated from the solutions of the differential equation with initial conditions given by , , ..., . The corresponding solutions provide the columns of matrix . Now, from property 4, for all . The state-transition matrix must be determined before analysis on the time-varying solution can continue.
See also
[edit]References
[edit]- ^ Baake, Michael; Schlaegel, Ulrike (2011). "The Peano Baker Series". Proceedings of the Steklov Institute of Mathematics. 275: 155–159. doi:10.1134/S0081543811080098. S2CID 119133539.
- ^ a b Rugh, Wilson (1996). Linear System Theory. Upper Saddle River, NJ: Prentice Hall. ISBN 0-13-441205-2.
- ^ Brockett, Roger W. (1970). Finite Dimensional Linear Systems. John Wiley & Sons. ISBN 978-0-471-10585-5.
- ^ Reyneke, Pieter V. (2012). "Polynomial Filtering: To any degree on irregularly sampled data". Automatika. 53 (4): 382–397. doi:10.7305/automatika.53-4.248. hdl:2263/21017. S2CID 40282943.
Further reading
[edit]- Baake, M.; Schlaegel, U. (2011). "The Peano Baker Series". Proceedings of the Steklov Institute of Mathematics. 275: 155–159. doi:10.1134/S0081543811080098. S2CID 119133539.
- Brogan, W.L. (1991). Modern Control Theory. Prentice Hall. ISBN 0-13-589763-7.