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Duality and Equivalence in Estimation and Control

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Title: Duality and Equivalence in Estimation and Control


1
Duality and Equivalence in Estimation and Control
  • (chapter 15 in Linear Estimation)
  • Katrin Strandemar and Märta Barenthin

2
Contents
  • Definition of dual basis
  • Reasons for introducing dual bases
  • Applications for dual basis
  • Equivalence basic properties
  • Equivalence applications
  • Criticism

3
Use 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
4
Dual basis vectors
Definition of dual basis
Set of linearly independent vectors
quantities we want to estimate
observations
5
Dual basis gramian
Definition of dual basis
GRAMIAN
Since z,y linearly independent vectors
6
Dual basis definition
Definition of dual basis
7
Algebraic Specification
Definition of dual basis
Span the same linearspace
From definition
8
Algebraic Specification
Definition of dual basis
With gramian
9
Geometric Specification
Definition of dual basis
span same space
10
Estimators via the dual basis
Reasons for introducing dual bases
Ex. 2. Project z onto Ly
11
Why introduce dual bases?
Reasons for introducing dual bases
Ex. 1. Project x onto Lz,y
if z and y orthogonal
12
Application to Linear Models
Applications for dual basis
  • Suppose satisfy
  • Then the dual basis also satisfy
    a linear model
  • where


  • Remember Katrins slide interesting connection!

13
Equivalent 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.

14
Equivalence 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.

15
Equivalence 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.

16
Summary
Equivalence basic properties
Stochastic/deterministic
Type of base
Duality
Same solution (equivalence)
17
Solve 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
18
Equivalence applications
  • Solve the dual stochastic problem instead.
  • The solution to this problem can be found
    with Bryson-Frazier (BF)-like smoothing formulas

19
Summary
  • 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.

20
Criticism
  • 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).

21
Questions?
22
Bonus 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.
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