Estimate state-space model using time-domain or frequency-domain data

estimates a continuous-time state-space model `sys`

= ssest(`data`

,`nx`

)`sys`

of order
`nx`

, using data `data`

that can be in the time
domain or the frequency domain. `sys`

is a model of the following
form:

$$\begin{array}{l}\dot{x}(t)=Ax(t)+Bu(t)+Ke(t)\\ y(t)=Cx(t)+Du(t)+e(t)\end{array}$$

*A*, *B*, *C*,
*D*, and *K* are state-space matrices.
*u*(*t*) is the input,
*y*(*t*) is the output,
*e*(*t*) is the disturbance, and
*x*(*t*) is the vector of `nx`

states.

All entries of *A*, *B*, *C*, and
*K* are free estimable parameters by default. *D* is
fixed to zero by default, meaning that there is no feedthrough, except for static systems
(`nx = 0`

).

incorporates additional options specified by one or more name-value pair arguments. For
example, estimate a discrete-time model by specifying the sample time
`sys`

= ssest(`data`

,`nx`

,`Name,Value`

)`'Ts'`

name-value pair argument. Use the `'Form'`

,
`'Feedthrough'`

, and `'DisturbanceModel'`

name-value pair arguments to modify the default behavior of the *A*,
*B*, *C*, *D*, and
*K* matrices.

Estimate a state-space model and compare its response with the measured output.

Load the input-output data, which is stored in an `iddata`

object.

load iddata1 z1

Estimate a fourth-order state-space model.

nx = 4; sys = ssest(z1,nx);

Compare the simulated model response with the measured output.

compare(z1,sys)

The plot shows that the fit percentage between the simulated model and the estimation data is greater than 70%.

You can view more information about the estimation by exploring the `idss`

property `sys.Report`

.

sys.Report

ans = Status: 'Estimated using SSEST with prediction focus' Method: 'SSEST' InitialState: 'zero' N4Weight: 'CVA' N4Horizon: [6 10 10] Fit: [1x1 struct] Parameters: [1x1 struct] OptionsUsed: [1x1 idoptions.ssest] RandState: [] DataUsed: [1x1 struct] Termination: [1x1 struct]

For example, find out more information about the termination conditions.

sys.Report.Termination

`ans = `*struct with fields:*
WhyStop: 'No improvement along the search direction with line search.'
Iterations: 7
FirstOrderOptimality: 85.9759
FcnCount: 123
UpdateNorm: 9.9156
LastImprovement: 0

The report includes information on the number of iterations and the reason the estimation stopped iterating.

Load the input-output data `z1`

, which is stored in an
`iddata`

object. This is the same data used to estimate a
fourth-order model in State-Space Model.

load iddata1 z1;

Determine the optimal model order by specifying argument `nx`

as a
range from `1:10`

.

nx = 1:10; sys = ssest(data,nx);

An automatically generated plot shows the Hankel singular values for models of the
orders specified by `nx`

.

States with relatively small Hankel singular values can be safely discarded. The
suggested default order choice is `2`

.

Select the model order in the **Chosen Order** list and click
**Apply**.

Load time-domain system response data.

load iddata7 z7;

Identify a fourth-order state-space model of the data. Specify a known delay of `2`

seconds for the first input and `0`

seconds for the second input.

```
nx = 4;
sys = ssest(z7(1:300),nx,'InputDelay',[2;0]);
```

Modify the canonical form of the A, B, and C matrices, include a feedthrough term in the D matrix, and eliminate disturbance-model estimation in the K matrix.

Load input-output data and estimate a fourth-order system using the `ssest`

default options.

load iddata1 z1 sys1 = ssest(z1,4);

Specify the companion form and compare the `A`

matrix with the default `A`

matrix.

sys2 = ssest(z1,4,'Form','Companion'); A1 = sys1.A

`A1 = `*4×4*
-0.5155 -3.8483 0.6657 -0.2666
5.8665 -2.7285 1.0649 -1.4694
-0.4487 0.9308 -0.6235 18.8148
-0.4192 0.5595 -16.0688 0.5399

A2 = sys2.A

A2 =4×410^{3}× 0 0 0 -7.1122 0.0010 0 0 -0.9547 0 0.0010 0 -0.3263 0 0 0.0010 -0.0033

Include a feedthrough term and compare `D`

matrices.

```
sys3 = ssest(z1,4,'Feedthrough',1);
D1 = sys1.D
```

D1 = 0

D3 = sys3.D

D3 = 0.0339

Eliminate disturbance modeling and compare `K`

matrices.

sys4 = ssest(z1,4,'DisturbanceModel','none'); K1 = sys1.K

`K1 = `*4×1*
0.0520
0.0973
0.0151
0.0270

K4 = sys4.K

`K4 = `*4×1*
0
0
0
0

Specify `ssest`

estimate initial states as independent estimation parameters.

`ssest`

can handle initial states using one of several methods. By default, `ssest`

chooses the method automatically based on your estimation data. You can choose the method yourself by modifying the option set using `ssestOptions`

.

Load the input-output data `z1`

and estimate a second-order state-space model `sys`

using the default options. Use the syntax that returns initial states `x0`

.

load iddata1 z1 [sys,x0] = ssest(z1,2); x0

`x0 = `*2×1*
0
0

By default, the estimation is performed using the `'auto'`

setting for `InitialState`

. Find out which method `ssest`

applied by reviewing the value of `InitialState`

in `sys.Repor`

t.

sys.Report.InitialState

ans = 'zero'

The software applied the '`zero'`

method, meaning that the software set the initial states to zero instead of estimating them. This selection is consistent with the `0`

values returned for `x0`

.

Specify that `ssest`

estimate the initial states instead as independent parameters using the `'estimate'`

setting. Use `ssestOptions`

to create a modified option set and specify that option set to estimate a new model.

opt = ssestOptions('InitialState','estimate'); [sys1,x0] = ssest(z1,2,opt); x0

`x0 = `*2×1*
0.0068
0.0052

`x0`

now has estimated parameters with nonzero values.

Obtain a regularized fifth-order state-space model for a second-order system from a narrow bandwidth signal.

Load estimation data.

load regularizationExampleData eData;

Create the transfer function model used for generating the estimation data (true system).

trueSys = idtf([0.02008 0.04017 0.02008],[1 -1.561 0.6414],1);

Estimate an unregularized state-space model.

opt = ssestOptions('SearchMethod','lm'); m = ssest(eData,5,'form','modal','DisturbanceModel','none','Ts',eData.Ts,opt);

Estimate a regularized state-space model.

opt.Regularization.Lambda = 10; mr = ssest(eData,5,'form','modal','DisturbanceModel','none','Ts',eData.Ts,opt);

Compare the model outputs with the estimation data.

compare(eData,m,mr);

Compare the model impulse responses.

impulse(trueSys,m,mr,50); legend('trueSys','m','mr');

Estimate a state-space model of measured input-output data. Configure the parameter constraints and initial values for estimation using a state-space model.

Create an `idss`

model to specify the initial parameterization for estimation.

A = blkdiag([-0.1 0.4; -0.4 -0.1],[-1 5; -5 -1]); B = [1; zeros(3,1)]; C = [1 1 1 1]; D = 0; K = zeros(4,1); x0 = [0.1 0.1 0.1 0.1]; Ts = 0; init_sys = idss(A,B,C,D,K,x0,Ts);

Setting all entries of `K`

to `0`

creates an `idss`

model with no state disturbance element.

Use the `Structure`

property to fix the values of some of the model parameters. Configure the model so that `B`

and `K`

are fixed, and only the nonzero entries of `A`

are estimable.

init_sys.Structure.A.Free = (A~=0); init_sys.Structure.B.Free = false; init_sys.Structure.K.Free = false;

The entries in `init_sys.Structure.A.Free`

determine whether the corresponding entries in `init_sys.A`

are free (`true`

) or fixed (`false`

).

Load the measured data and estimate a state-space model using the parameter constraints and initial values specified by `init_sys`

.

load iddata2 z2; sys = ssest(z2,init_sys);

The estimated parameters of `sys`

satisfy the constraints specified by `init_sys`

.

`data`

— Estimation data`iddata`

object | `frd`

object | `idfrd`

objectEstimation data, specified as an `iddata`

object, an
`frd`

object, or an `idfrd`

object.

For time-domain estimation, `data`

must be an `iddata`

object containing the input and output signal values.

For frequency-domain estimation, `data`

can be one of the
following:

`nx`

— Order of estimated model`1:10`

(default) | positive integer scalar | positive integer vector | `0`

Order of the estimated model, specified as a nonnegative integer or as a vector containing a range of positive integers.

If you already know what order you want your estimated model to have, specify

`nx`

as a scalar.If you want to compare a range of potential orders to choose the most effective order for your estimated model, specify the range in

`nx`

.`ssest`

creates a Hankel singular-value plot that shows the relative energy contributions of each state in the system. States with relatively small Hankel singular values contribute little to the accuracy of the model and can be discarded with little impact. The index of the highest state you retain is the model order. The plot window includes a suggestion for the order to use. You can accept this suggestion or enter a different order. For an example, see Determine Optimal Estimated Model Order.If you do not specify

`nx`

, the software automatically chooses`nx`

from the range`1:10`

.If you are identifying a static system, set

`nx`

to`0`

.

`opt`

— Estimation options`ssestOptions`

option setEstimation options, specified as an `ssestOptions`

option set. Options specified by `opt`

include:

Estimation objective

Handling of initial conditions

Regularization

Numerical search method used for estimation

For examples showing how to use `opt`

, see Estimate Initial States as Independent Parameters and Estimate State-Space Model Using Regularization.

`init_sys`

— Linear system that configures initial parameterization of sys`idss`

model | structureLinear system that configures the initial parameterization of
`sys`

, specified as an `idss`

model or as a
structure. You obtain `init_sys`

by either performing an estimation
using measured data or by direct construction.

If `init_sys`

is an `idss`

model,
`ssest`

uses the parameter values of `init_sys`

as the initial guess for estimating `sys`

. For information on how to
specify `idss`

, see Estimate State-Space Models with Structured Parameterization.
`ssest`

honors constraints on the parameters of
`init_sys`

, such as fixed coefficients and minimum/maximum bounds.

Use the `Structure`

property of `init_sys`

to
configure initial parameter values and constraints for the *A*,
*B*, *C*, *D*, and
*K* matrices. For example:

To specify an initial guess for the

*A*matrix of`init_sys`

, set`init_sys.Structure.A.Value`

as the initial guess.To specify constraints for the

*B*matrix of`init_sys`

:Set

`init_sys.Structure.B.Minimum`

to the minimum*B*matrix valueSet

`init_sys.Structure.B.Maximum`

to the maximum*B*matrix valueSet

`init_sys.Structure.B.Free`

to indicate if entries of the*B*matrix are free parameters for estimation

To set more complex constraints, such as interdependence of coefficients, use grey-box estimation using

`greyest`

and`idgrey`

.

You must assign finite initial values for all matrix parameters.

If `init_sys`

is not a state-space (`idss`

) model, the software first converts `init_sys`

to
an `idss`

model. `ssest`

uses the parameters of
the resulting model as the initial guess for estimation.

If you do not specify `opt`

and `init_sys`

was
obtained by estimation, then the software uses estimation options from
`init_sys.Report.OptionsUsed`

.

For an example, see Estimate Partially Known State-Space Model Using Structured Estimation.

Specify optional
comma-separated pairs of `Name,Value`

arguments. `Name`

is
the argument name and `Value`

is the corresponding value.
`Name`

must appear inside quotes. You can specify several name and value
pair arguments in any order as
`Name1,Value1,...,NameN,ValueN`

.

`sys = ssest(data,nx,'Ts',0.1)`

`'Ts'`

— Sample time of estimated model`0`

(continuous time) (default) | sample time of data `data.Ts`

) | positive scalarSample time of the estimated model, specified as the comma-separated pair
consisting of `'Ts'`

and either `0`

or a positive scalar.

For continuous-time models, specify

`'Ts'`

as`0`

.For discrete-time models, specify

`'Ts'`

as the data sample time in the units stored in the`TimeUnit`

property.

`'InputDelay'`

— Input delays`0`

(default) | scalar | vectorInput delay for each input channel, specified as the comma-separated pair
consisting of `'InputDelay'`

and a numeric vector.

For continuous-time models, specify

`'InputDelay'`

in the time units stored in the`TimeUnit`

property.For discrete-time models, specify

`'InputDelay'`

in integer multiples of the sample time`Ts`

. For example, setting`'InputDelay'`

to`3`

specifies a delay of three sampling periods.

For a system with *N _{u}* inputs, set

`InputDelay`

to an
To apply the same delay to all channels, specify `InputDelay`

as a scalar.

`'Form'`

— Type of canonical form`'free'`

(default) | `'modal'`

| `'companion'`

| `'canonical'`

Type of canonical form of `sys`

, specified as the
comma-separated pair consisting of `'Form'`

and one of the following values:

`'free'`

— All entries of the matrices*A*,*B*,*C*,*D*, and*K*are treated as free.`'modal'`

— Obtain`sys`

in modal form.`'companion'`

— Obtain`sys`

in companion form.`'canonical'`

— Obtain`sys`

in the observability canonical form [1].

For more information, see Estimate State-Space Models with Canonical Parameterization. For an example, see Modify Form, Feedthrough, and Disturbance-Model Matrices.

`'Feedthrough'`

— Direct feedthrough from input to output`0`

(default) | `1`

| logical vectorDirect feedthrough from input to output, specified as the comma-separated pair
consisting of `'Feedthrough'`

and a logical vector of length
*N _{u}*, where

`Feedthrough`

as a logical scalar, that value is applied to
all the inputs. For static systems, the software always assumes
`'Feedthrough'`

is `1`

.For an example, see Modify Form, Feedthrough, and Disturbance-Model Matrices.

`'DisturbanceModel'`

— Option to estimate noise component parameters`'estimate'`

(default) | `'none'`

Option to estimate noise component parameters in the K matrix, specified as the
comma-separated pair consisting of `'DisturbanceModel'`

and one of
the following values:

`'estimate'`

— Estimate the noise component. The*K*matrix is treated as a free parameter.`'none'`

— Do not estimate the noise component. The elements of the*K*matrix are fixed at zero.

For frequency-domain data, the software assumes that
`'DisturbanceModel'`

is `'none'`

.

For more information, see Estimate State-Space Models with Canonical Parameterization. For an example, see Modify Form, Feedthrough, and Disturbance-Model Matrices.

`sys`

— Identified state-space model`idss`

modelIdentified state-space model, returned as an `idss`

model. This model is created using the specified model orders,
delays, and estimation options.

Information about the estimation results and options used is stored in the
`Report`

property of the model. `Report`

has the
following fields.

Report Field | Description | ||||||||||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|

`Status` | Summary of the model status, which indicates whether the model was created by construction or obtained by estimation. | ||||||||||||||||||

`Method` | Estimation command used. | ||||||||||||||||||

`InitialState` | How initial states were handled during estimation, returned as one of the following values: `'zero'` — The initial state is set to zero.`'estimate'` — The initial state is treated as an independent estimation parameter.`'backcast'` — The initial state is estimated using the best least squares fit.Column vector of length *Nx*, where*Nx*is the number of states. For multi-experiment data, a matrix with*Ne*columns, where*Ne*is the number of experiments.Parametric initial condition object ( `x0obj` ) created using`idpar` . Only for discrete-time state-space models.
This field is especially useful when the
| ||||||||||||||||||

`N4Weight` | Weighting scheme used for singular-value decomposition by the N4SID algorithm, returned as one of the following values: `'MOESP'` — Uses the MOESP algorithm.`'CVA'` — Uses the Canonical Variable Algorithm.`'SSARX'` — A subspace identification method that uses an ARX estimation-based algorithm to compute the weighting.
This option is especially useful when the
| ||||||||||||||||||

`N4Horizon` | Forward and backward prediction horizons used by the N4SID algorithm,
returned as a row vector with three elements —
| ||||||||||||||||||

`Fit` | Quantitative assessment of the estimation, returned as a structure. See Loss Function and Model Quality Metrics for more information on these quality metrics. The structure has the following fields:
| ||||||||||||||||||

`Parameters` | Estimated values of model parameters. | ||||||||||||||||||

`OptionsUsed` | Option set used for estimation. If no custom options were configured,
this is a set of default options. See | ||||||||||||||||||

`RandState` | State of the random number stream at the start of estimation.
Empty, | ||||||||||||||||||

`DataUsed` | Attributes of the data used for estimation. Structure with the following fields:
| ||||||||||||||||||

`Termination` | Termination conditions for the iterative search used for prediction error minimization. Structure with the following fields:
For
estimation methods that do not require numerical search optimization,
the |

For more information on using `Report`

, see Estimation Report.

`x0`

— Initial states computed during estimationcolumn vector | matrix

Initial states computed during the estimation, returned as an array containing a column vector corresponding to each experiment.

This array is also stored in the `Parameters`

field of the model
`Report`

property.

For an example, see Estimate Initial States as Independent Parameters.

In modal form, *A* is a block-diagonal matrix. The block
size is typically 1-by-1 for real eigenvalues and 2-by-2 for complex
eigenvalues. However, if there are repeated eigenvalues or clusters
of nearby eigenvalues, the block size can be larger.

For example, for a system with eigenvalues $$({\lambda}_{1},\sigma \pm j\omega ,{\lambda}_{2})$$,
the modal *A* matrix is of the form

$$\left[\begin{array}{cccc}{\lambda}_{1}& 0& 0& 0\\ 0& \sigma & \omega & 0\\ 0& -\omega & \sigma & 0\\ 0& 0& 0& {\lambda}_{2}\end{array}\right]$$

In the companion realization, the characteristic polynomial of the system
appears explicitly in the rightmost column of the *A* matrix.

For a system with characteristic polynomial

$$P(s)={s}^{n}+{\alpha}_{1}{s}^{n-1}+\dots +{\alpha}_{n-1}s+{\alpha}_{n}$$

the corresponding companion *A* matrix is

$$A=\left[\begin{array}{ccc}\begin{array}{l}0\\ 1\\ 0\\ 0\\ \vdots \\ 0\end{array}& \begin{array}{l}0\\ 0\\ 1\\ 0\\ \vdots \\ 0\end{array}& \begin{array}{ccc}\begin{array}{cc}\begin{array}{l}0\\ 0\\ 0\\ 1\\ \vdots \\ 0\end{array}& \begin{array}{l}\dots \\ \dots \\ \dots \\ \dots \\ \ddots \\ \dots \end{array}\end{array}& \begin{array}{l}0\\ 0\\ 0\\ 0\\ \vdots \\ 1\end{array}& \begin{array}{l}-{\alpha}_{n}\\ -{\alpha}_{n-1}\\ -{\alpha}_{n-2}\\ -{\alpha}_{n-3}\\ \text{}\vdots \\ -{\alpha}_{1}\end{array}\end{array}\end{array}\right]$$

The companion transformation requires that the system be controllable from the first input. The companion form is poorly conditioned for most state-space computations; avoid using it when possible.

`ssest`

initializes the parameter estimates using either a noniterative
subspace approach or an iterative rational function estimation approach. It then refines the
parameter values using the prediction error minimization approach. For more information, see
`pem`

and `ssestOptions`

.

[1] Ljung, L. *System Identification: Theory for the
User*, Second Edition. Upper Saddle River, NJ: Prentice Hall PTR,
1999.

Accelerate code by automatically running computation in parallel using Parallel Computing Toolbox™.

Parallel computing support is available for estimation using the
`lsqnonlin`

search method (requires Optimization
Toolbox™). To enable parallel computing, use `ssestOptions`

, set `SearchMethod`

to
`'lsqnonlin'`

, and set
`SearchOptions.Advanced.UseParallel`

to `true`

.

For example:

```
opt = ssestOptions;
opt.SearchMethod = 'lsqnonlin';
opt.SearchOptions.Advanced.UseParallel = true;
```

`canon`

|`iddata`

|`idfrd`

|`idgrey`

|`idss`

|`n4sid`

|`pem`

|`polyest`

|`procest`

|`ssestOptions`

|`ssregest`

|`tfest`

- Estimate State-Space Models at the Command Line
- Estimate State-Space Models with Free-Parameterization
- Estimate State-Space Models with Canonical Parameterization
- Estimate State-Space Models with Structured Parameterization
- Use State-Space Estimation to Reduce Model Order
- What Are State-Space Models?
- Supported State-Space Parameterizations
- State-Space Model Estimation Methods
- Regularized Estimates of Model Parameters
- Estimating Models Using Frequency-Domain Data

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