CDS 110b: Linear Quadratic Regulators: Difference between revisions
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{{cds110b- | {{cds110b-wi08 lecture|prev=Optimal Control|next=Receding Horizon Control}} | ||
This lecture provides a brief derivation of the linear quadratic regulator (LQR) and describes how to design an LQR-based compensator. The use of integral feedback to eliminate steady state error is also described. __NOTOC__ | This lecture provides a brief derivation of the linear quadratic regulator (LQR) and describes how to design an LQR-based compensator. The use of integral feedback to eliminate steady state error is also described. __NOTOC__ | ||
* {{cds110b-wi08 pdfs|L3-1_lqr.pdf|Lecture Presentation}} | |||
* {{cds110b-wi08 pdfs|hw3.pdf|Homework 3}} - due 30 Jan 08 | |||
* {{cds110b-wi08 pdfs|pvtol_lqr.m|pvtol_lqr.m}} - MATLAB script demonstrating LQR design | |||
* {{cds110b-pdfs| | |||
* {{cds110b-pdfs| | |||
== References and Further Reading == | == References and Further Reading == | ||
* R. M. Murray, ''Optimization-Based Control''. Preprint, 2008: {{cds110b-wi08 pdfs|optimal_26Jan08.pdf|Chapter 2 - Optimal Control}} | |||
* Lewis and Syrmos, Section 3.4 - this follows the derivation in the notes above. I am not putting in a scan of this chapter since the course text is available, but you are free to have a look via [http://books.google.com/books?ie=UTF-8&hl=en&vid=ISBN0471033782&id=jkD37elP6NIC Google Books]. | |||
* Friedland, Ch 9 - the derivation of the LQR controller is done differently, so it gives an alternate approach. | |||
== Frequently Asked Questions == | == Frequently Asked Questions == | ||
'''Q: What do you mean by penalizing something, from <math>Q_x \geq 0</math> "penalizes" state error?''' | |||
<blockquote> | |||
<p>According to the form of the quadratic cost function <math>J</math>, there are three quadratic terms such | |||
as <math>x^T Q_x x</math>, <math>u^T Q_u u</math>, and <math>x(T)^T P_1 x(T)</math>. When <math>Q_x \geq 0</math> and if <math>Q_x</math> is relative big, the value of <math>x</math> will have bigger contribution to the value of <math>J</math>. In order to keep <math>J</math> small, <math>x</math> must be relatively small. So selecting a big <math>Q_x</math> can keep <math>x</math> in small value regions. This is what the "penalizing" means.</p> | |||
<p>So in the optimal control design, the relative values of <math>Q_x</math>, <math>Q_u</math>, and <math>P_1</math> represent how important <math>X</math>, <math>U</math>, and <math>X(T)</math> are in the designer's concerns.</p> | |||
<p>Zhipu Jin,13 Jan 03</p> | |||
</blockquote> |
Latest revision as of 03:29, 2 March 2008
CDS 110b | ← Schedule → | Project | Course Text |
This lecture provides a brief derivation of the linear quadratic regulator (LQR) and describes how to design an LQR-based compensator. The use of integral feedback to eliminate steady state error is also described.
- Lecture Presentation
- Homework 3 - due 30 Jan 08
- pvtol_lqr.m - MATLAB script demonstrating LQR design
References and Further Reading
- R. M. Murray, Optimization-Based Control. Preprint, 2008: Chapter 2 - Optimal Control
- Lewis and Syrmos, Section 3.4 - this follows the derivation in the notes above. I am not putting in a scan of this chapter since the course text is available, but you are free to have a look via Google Books.
- Friedland, Ch 9 - the derivation of the LQR controller is done differently, so it gives an alternate approach.
Frequently Asked Questions
Q: What do you mean by penalizing something, from "penalizes" state error?
According to the form of the quadratic cost function , there are three quadratic terms such as , , and . When and if is relative big, the value of will have bigger contribution to the value of . In order to keep small, must be relatively small. So selecting a big can keep in small value regions. This is what the "penalizing" means.
So in the optimal control design, the relative values of , , and represent how important , , and are in the designer's concerns.
Zhipu Jin,13 Jan 03