Title: QUANTIZED CONTROL and GEOMETRIC OPTIMIZATION
1QUANTIZED CONTROL andGEOMETRIC OPTIMIZATION
Francesco Bullo and Daniel Liberzon
Coordinated Science Laboratory Univ. of Illinois
at Urbana-Champaign U.S.A.
CDC 2003
2CONSTRAINED CONTROL
3LIMITED INFORMATION SCENARIO
4MOTIVATION
- Limited communication capacity
- many systems/tasks share network cable or
wireless medium - microsystems with many sensors/actuators on one
chip
- Need to minimize information transmission
(security)
- Event-driven actuators
- PWM amplifier
- manual car transmission
- stepping motor
5QUANTIZER GEOMETRY
Dynamics change at boundaries gt hybrid
closed-loop system
Chattering on the boundaries is possible (sliding
mode)
6QUANTIZATION ERROR and RANGE
7OBSTRUCTION to STABILIZATION
Assume fixed
8BASIC QUESTIONS
- What can we say about a given quantized system?
- How can we design the best quantizer for
stability?
9BASIC QUESTIONS
- What can we say about a given quantized system?
- How can we design the best quantizer for
stability?
10STATE QUANTIZATION LINEAR SYSTEMS
11LINEAR SYSTEMS (continued)
12NONLINEAR SYSTEMS
For linear systems, we saw that if
gives then
automatically gives
when
This is robustness to measurement errors
13SUMMARY PERTURBATION APPROACH
14BASIC QUESTIONS
- What can we say about a given quantized system?
- How can we design the best quantizer for
stability?
15LOCATIONAL OPTIMIZATION NAIVE APPROACH
Compare mailboxes in a city, cellular base
stations in a region
16MULTICENTER PROBLEM
This is the center of enclosing sphere of
smallest radius
iterate
17Play movie step3-animation.fli
18LOCATIONAL OPTIMIZATION REFINED APPROACH
Only applicable to linear systems
19WEIGHTED MULTICENTER PROBLEM
on not containing 0 (annulus)
Lloyd algorithm as before
20Play movie step5-animation.fli
21RESEARCH DIRECTIONS