1 / 21

SYSTEMS Identification

SYSTEMS Identification. Ali Karimpour Assistant Professor Ferdowsi University of Mashhad. Reference: “System Identification Theory For The User” Lennart Ljung(1999) “Practical Issues of System Identification” Lennart Ljung (2007)

Télécharger la présentation

SYSTEMS Identification

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. SYSTEMSIdentification Ali Karimpour Assistant Professor Ferdowsi University of Mashhad Reference: “System Identification Theory For The User” Lennart Ljung(1999) “Practical Issues of System Identification” Lennart Ljung (2007) “Perspectives on System Identification” Lennart Ljung (2009)

  2. Lecture 1 Perspective on System Identification Topics to be covered include: • System Identification. • Place System Identification on the global map. Who are our neighbors in this part of universe? • Discuss some open areas in System Identification.

  3. System Identification System Identification:The art and science of building mathematical models of dynamic systems from observed input-output data. System Identification is look for sustainable description by proper decision on: Model complexity Information contents in the data Effective Validation

  4. Dynamic systems System:An object in which variables of different kinds interact and produce observable signals. Stimuli:External signals that affects system. Dynamic System:A system that the current output value depends not only on the current external stimuli but also on their earlier value. Time series:A dynamic system whose external stimuli are not observed.

  5. Unmeasured disturbance v Measured disturbance y w u Output Input Dynamic systems Stimuli Input Disturbance It can be manipulated by the observer. It can not be manipulated by the observer. Measured Unmeasured Dynamic system

  6. Wind, outdoor temperature v Solar radiation y w u Storage temperature Pump velocity A solar heated house Dynamic system

  7. chord, vibaration airflow v y Sound Speech generation Dynamic system Time series:A dynamic system whose external stimuli are not observed.

  8. Model types Buildingmodels Models Model:Relationship among observed signals. 1- Mental models 2- Graphical models 3- Mathematical (analytical) models 4- Software models • Split up system into subsystems, • Joined subsystems mathematically, 1- Modeling • Does not necessarily involve any experimentation on the actual system. • It is directly based on experimentation. 2- System identification • Input and output signals from the system are recorded. 3- Combined

  9. The fiction of a true model

  10. The Core The Core:The core of estimating models is statistical theory. • Model: m • True Description: S • Model Class: M • Complexity (Flexibility): C • Information: Z • Estimation • Validation • Model Fit: F(m,Z)

  11. Squeeze out the relevant information in data. Estimation A template problem: Curve fitting No more satisfaction All data contains signal and noise.

  12. Fit measuregood agreement with data Complexity measureNot too complex is a random variable since of irrelevant part of data (noise). Estimation The simplest explanation is usually the correct one. So the conceptual process for estimation is:

  13. The System Identification Problem 1- Select an input signal to apply to the process. 2- Collect the corresponding output data. 3- Scrutinize the corresponding output data to find out if some preprocessing … 4- Specify a model structure. 5- Find the best model in this structure. 6- Evaluate the property of model. 7- Test a new structure, go to step 4. 8- If the model is not adequate, go to step 3 or 1.

  14. The System Identification Problem 1- Choice of Input Signals. • Filtered Gaussian White Noise. • Random Binary Noise. • Pseudo Random Binary Noise, PRBS. • Multi-Sines. • Chirp Signals or Swept Sinusoids. • Periodic Inputs. 2- Preprocessing Data. • Drifts and Detrending. • Prefiltering. 3- Selecting Model Structures. • Looking at the Data. • Getting a Feel for the Difficulties. • Examining the Difficulties. • Fine Tuning Orders and Noise Structures . • Accepting the Models .

  15. The Communities around the core ML Methods, Bootstrap method,… 1- Statistics. 2- Econometrics and time series analysis. 3- Statistical learning theory. 4- Machine learning. 5- Manifold learning. 6- Chemo metrics. 7- Data Mining. 8- Artificial Neural Network. 9- Fitting Ordinary Differential equation to data. 10- System Identification.

  16. Some Open Areas in System Identification • Spend more time with neighbors. • Model Reduction and System Identification. • Issues in Identification of Non-linear Systems. • Meet Demand from Industry. • Convexification.

  17. Model Reduction System identification is really “system approximation” and therefore closely related to model reduction. Linear systems – Linear models. Divide, conquer and reunite. Non-linear systems – Linear models. Is it good for control? Non-linear systems – nonlinear reduced models. Much work remains.

  18. Linear Systems – Linear ModelsDivide-Conquer-Reunite Helicopter data: 1 pulse input; 8 outputs (only 3 shown here) State space of order 20 wanted.

  19. Reunite Order reduction Linear Systems – Linear ModelsDivide-Conquer-Reunite Next fit 8 SISO models of order 12, one for each output

  20. Linear Systems – Linear ModelsDivide-Conquer-Reunite Reduce model from 96 to 20

  21. Convexification

More Related