Title: Duality and Equivalence in Estimation and Control
1Duality and Equivalence in Estimation and Control
- (chapter 15 in Linear Estimation)
- Katrin Strandemar and Märta Barenthin
2Contents
- Definition of dual basis
- Reasons for introducing dual bases
- Applications for dual basis
- Equivalence basic properties
- Equivalence applications
- Criticism
3Use of more general vectors This allows more
general concepts of inner product
Definition of dual basis
In this case Using a ring rather than a field
allows us to use matrix-valued inner products
GRAMIANS
4Dual basis vectors
Definition of dual basis
Set of linearly independent vectors
quantities we want to estimate
observations
5Dual basis gramian
Definition of dual basis
GRAMIAN
Since z,y linearly independent vectors
6Dual basis definition
Definition of dual basis
7Algebraic Specification
Definition of dual basis
Span the same linearspace
From definition
8Algebraic Specification
Definition of dual basis
With gramian
9Geometric Specification
Definition of dual basis
span same space
10Estimators via the dual basis
Reasons for introducing dual bases
Ex. 2. Project z onto Ly
11Why introduce dual bases?
Reasons for introducing dual bases
Ex. 1. Project x onto Lz,y
if z and y orthogonal
12Application to Linear Models
Applications for dual basis
- Suppose satisfy
- Then the dual basis also satisfy
a linear model - where
-
- Remember Katrins slide interesting connection!
13Equivalent Stochastic and Deterministic Problems
Equivalence basic properties
- Equivalence between a stochastic and
deterministic problems. - Stochastic filtering problem consider zero mean
random variables - Now construct equivalent deterministic
least-squares problem.
14Equivalence basic properties
- Equivalent deterministic least-squares problem
given a vector y and a matrix H, solve - So when we solve the stochastic problem we are
also solving the deterministic problem. - Equivalent problems gain matrix
identical. -
15Equivalence for Dual Problems
Equivalence basic properties
- Remember Katrins part about duality.
- This suggests that there are dual stochastic and
deterministic problems that are equivalent. - Stochastic
- Deterministic
- Same gain matrix
-
- dual stochastic and the dual deterministic
problems are equivalent.
16Summary
Equivalence basic properties
Stochastic/deterministic
Type of base
Duality
Same solution (equivalence)
17Solve deterministic problem with smoothing
techniques
Equivalence applications
- Deterministic problem solve dual
stochastic problem instead. - Use formulas based on the Bryson-Frazier
smoothing formulas. - Application linear quadratic tracking
- Deterministic tracking problem
Keep close to track
Limited input
Condition on terminal state
18Equivalence applications
- Solve the dual stochastic problem instead.
- The solution to this problem can be found
with Bryson-Frazier (BF)-like smoothing formulas
19Summary
- We have introduced a dual basis.
- Estimation problem can be solved in dual basis
instead. - Equivalence between stochastic and deterministic
problems. - Use duality/equivalence to solve for example
linear tracking problem with smoothing formulas. -
-
20Criticism
- High level of generality
-
- Difficult to get an intuitive feeling about dual
bases. - Applications more discussion about advantages
with dual/equivalent approach compared to other
methods (for example dynamic programming).
21Questions?
22Bonus Slide More Applications
Equivalence applications
- Application 2 problems with causality
constraints. - Application 3 measurement feedback control.
- Compute a feedback law when the feedback is
restricted to be a function of noisy
measurements. - This is called the separation principle
- Feedback law is a function of the state
estimator. - Estimated state is calculated separately from
control law. - Application 3 problems in the frequency domain.