Inverse Problems. Example Direct problem given polynomial find zeros Inverse problem given zeros...

23
Inverse Problems
  • date post

    22-Dec-2015
  • Category

    Documents

  • view

    225
  • download

    1

Transcript of Inverse Problems. Example Direct problem given polynomial find zeros Inverse problem given zeros...

Inverse Problems

Example

Direct problem

given polynomial

find zeros

Inverse problem

given zeros

find polynomial

Well-posedness

A problem is well posed if

Existence

- there exists a solution of the problem

Uniqueness

- there is at most one solution of the problem

Stability

- the solution depends continuously on the data

Example (ill-posed problem)Operator

}0)0(:]1,0[{]1,0[: yCyYCXK

t

dssxtKx0

)()(

Norm

problem is not stable

.

Perturb by y )/sin( 2 t

error in data

error in solution

1

Inverse problem

Given , compute such that , ie., x yKx 'yx Yy

The worst-case errorYXK :

linear

bounded

YX , Banach

Y

X

.

.

XX 1

stronger norm

11:. xcx

X

Inverse problem

Given , compute such that x yKx Yy

In general, we do not have the data …y

… but the perturbed data …y

},,:sup{:).,,(1111ExKxXxxExx

YX F

The worst-case errorYXK :

linear

bounded

YX , Banach

Y

X

.

.

XX 1

stronger norm

11:. xcx

X

Worst case error:

},,:sup{:).,,(111ExKxXxxE

YX F

Assume

-

-

- extra information for solutions and

Y

yy

)(XKy

21

Ex

21

Ex

The worst-case error (example)

YXK : ]1,0[2LYX

t

dssxtKx0

)()(

}0)0(',0)1(:)1,0({: 21 xxHxX

stronger norm 2'':1 L

xx

2.L

3/13/2

1).,,( EE F

It can then be shown:

Regularisation Theory

- compact operator

- one to one

-

YXK :

For , we would want to solve)(XKy

yKx

We actually know ... Yy

yy

yKx

Xdim

Problem!

???)(XKy

Find an approximation for x x

Aim

XXKK )(:1

Idea: Construct a suitable bounded approximation

of

XYR :

- small error (hopefully not much worse than the worst case error!)

- depends continuously on x y

Approximation

Ryx

)(XKy

Regularisation Strategy

XXKK )(:1

Idea: Construct a suitable bounded approximation

of

XYR :

Definition: A regularisation strategy is a family of linear and bounded operators

such that

0,: XYR

XxxKxR

,lim0

Theorem: (due to being compact)

1- is not uniformly bounded

2- Convergence is not uniform, but point wise

R

K

Error

yKx

End problem... Perturbed problem...

)(XKy

Yy

yRx :,

xx ,

xKxRR

xKxRyyR

xyRyRyR

XYR : XXKK )(:1approximations

of

Error

yxK )(

End problem...

)(XKy

xKxRRxx ,

When 0

R

0 xKxR

0

Perturbed problem...

Yy

XYR : XXKK )(:1approximations

of

MinimizationxKxRRxx

,

xKxRR min

Regularisation Strategy

XXKK )(:1

Idea: Construct a suitable bounded approximation

of

XYR :

Definition: A regularisation strategy is a family of linear and bounded operators

such that

0,: XYR

XxxKxR

,lim0

The worst-case error (example)

YXK : ]1,0[2LYX

t

dssxtKx0

)()(

}0)0(',0)1(:)1,0({: 21 xxHxX

stronger norm 2'':1 L

xx

2.L

3/13/2

1).,,( EE F

It can then be shown:

]1,0[2LY

}0)0(|)1,0({ 2 xLxX

Example of a regularisation strategy

YXK : ]1,0[2LYX

t

dssxtKx0

)()(

2.L

':1 yyK

Regularisation strategy:

)2/()2/(

)(

tyty

tyR

Example of a regularisation strategy

It can be shown, for a priori information

)2/()2/(

)(

tyty

tyR

221

,2

Eccxx

L

ExL

2''

Choose3

3 /)( Ec

3/13/2

1).,,( EE F

Then…

3/13/2),(2

EcxxL

asymptotically optimal

FilteringYXK :

compact

),( jjj yx singular system for K

jjj j

xyyx ),(1

1

is the solution of yKx

It can be shown

jj yx , orthonormal systems such that

...21 singular values of K

jjj yKx and jjj xyK *

Filtering

jjj j

xyyx ),(1

1

is the solution of yKx

Regularisation strategy (Filtering):

jjj j

j xyyq

yR ),(),(

:1

regularizing filter :q

1),( q

1),( q 0 when

)()(),( cRcq

Tykhonov Regularisation

YXK : compact

),( jjj yx singular system for K

jjj j

j xyyq

yR ),(),(

:1

)(),( 2

2

q

Rewrite :

Landweber Iteration

yKx

yaKxKaKIx ** )(

Iterative process

;00 x yaKxKaKIx mm *1* )(

Then

,yRx mm

1

0

** )(m

k

km KKaKIaRwhere

Landweber Iteration

1

0

** )(m

k

km KKaKIaR

YXK : compact and 210K

a

XYRm :

defines a regularization strategy

It can be shown…

Choices for m

accuracy of : large

stability of : small

an optimal choice can be made…

mR

mR

m

m

Conclusion

-Worst case error

- Regularisation strategies

- Filtering

- Tykhonov Regularisation

- Landweber Iteration