Model Type and Other Transformations
Functions
| idfrd | Frequency response data or model | 
| idpoly | Polynomial model with identifiable parameters | 
| idtf | Transfer function model with identifiable parameters | 
| idss | State-space model with identifiable parameters | 
| compreal | Compute companion state-space realization (Since R2023b) | 
| modalreal | Compute modal state-space realization (Since R2023b) | 
| noisecnv | Transform identified linear model with noise channels to model with measured channels only | 
| translatecov | Translate parameter covariance across model transformation operations | 
| merge | Merge estimated models | 
| append | Group models by appending their inputs and outputs | 
| noise2meas | Noise component of linear identified model | 
| absorbDelay | Replace time delays by poles at z = 0 or phase shift | 
| chgTimeUnit | Change time units of dynamic system | 
| chgFreqUnit | Change frequency units of frequency-response data model | 
| fdel | Delete specified data from frequency response data (FRD) models | 
| stack | Build model array by stacking models or model arrays along array dimensions | 
| ss2ss | State coordinate transformation for state-space model | 
Topics
- Using Identified Models for Control Design ApplicationsUsing System Identification Toolbox™ models with Control System Toolbox™ software. 
- Subreferencing ModelsCreating models with subsets of inputs and outputs from multivariable models at the command line. 
- State-Space RealizationsA state-space model can be expressed in an infinite number of realizations. Common forms, sometimes called canonical forms, include modal, companion, observable, and controllable forms. 
- Concatenating ModelsHorizontal and vertical concatenation of model objects at the command line. 
- Merging ModelsHow to merge models to obtain a single model with parameters that are statistically weighed means of the parameters of the individual models. 
- Treating Noise Channels as Measured InputsConvert noise channels to measured channels and include the variance of the innovations. 
- Transforming Between Linear Model RepresentationsConverting between state-space, polynomial, and frequency-response representations. 
- Reducing Model Order Using Pole-Zero PlotsYou can use pole-zero plots of linear identified models to evaluate whether it might be useful to reduce model order. 
- Create and Plot Identified Models Using Control System Toolbox SoftwareIdentify models and use the Linear System Analyzer to plot the models.