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Robust Semidefinite Programming and Its Application to Sampled-Data Control

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Title: Robust Semidefinite Programming and Its Application to Sampled-Data Control


1
Robust Semidefinite Programming andIts
Application to Sampled-Data Control
Workshop on Uncertain Dynamical Systems
  • Yasuaki Oishi (Nanzan University)
  • Udine, Italy
  • August 26, 2011

Joint work with Teodoro Alamo
2
1. Introduction
Robust semidefinite programming problems
  • Optimization problems constrained by uncertain
  • linear matrix inequalities
  • Many applications in robust control

Robust SDP problem
3
This talk general nonlinear parameter dependence
  • How to obtain the sufficient condition?
  • How to make the condition less conservative?

Key idea DC-representations
difference of two convex functions
Tuan--Apkarian--Hosoe--Tuy 00 Bravo--Alamo--Fia
cchini--Camacho 07
4
2. Preparations
Problem
  • Assumption

5
DC-representation
convex
convex
Example
6
Example
7
3. Proposed approach
  • Key step obtaining bounds

concave
convex
8
Obtaining bounds
9
(No Transcript)
10
  • Approximate solution
  • Number of LMIs

cf. NP-hardness
11
Reduction of conservatism
  • Adaptive division

12
  • Quality of the approximation
  • depends on the choice

13
  • Measure of conservatism

Theorem
14
Example
15
Example
16
4. Application to sampled-data control
  • Analysis and design of such sampled-data systems

Fridman et al. 04Hetel et al. 06Mirkin
07Naghshtabrizi et al. 08 Suh 08Fujioka
09Skaf--Boyd 09O.--Fujioka 10Seuret 11...
17

O.--Fujioka 10
  • Formulation into a robust SDP
  • Avoiding a numerical problem for a small sampling

interval
18
6. Summary
Robust SDP problems with nonlinear param. dep.
  • Conservative approach using DC-representations
  • Concave and convex bounds
  • Approximate problem
  • Reduction of conservatism
  • Optimization of the bounds w.r.t. some measure
  • Application to sampled-data control
  • Combination with the polynomial-based methods

Chesi--Hung 08Peaucelle--Sato 09O. 09
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