![]() |
(38) |
Given the usual linearized fitting goal between
data space and model space, ,the simplest image of the model space results from
application of the adjoint operator
.Unless
has no physical units, however,
the physical units of
do not match those of
,so we need a scaling factor.
The theoretical solution
suggests that the scaling units should be those of
.We could probe the operator
or its adjoint with white noise or a zero-frequency input.
Bill Symes suggests we probe with
the data
because it has the spectrum of interest.
He proposes we make our image with
where we choose the weighting function to be
![]() |
(39) |
![]() |
(40) |
To go beyond the scaled adjoint we can use as a preconditioner.
To use
as a preconditioner
we define implicitly a new set of variables
by the substitution
.Then
.To find
instead of
,we do CD iteration
with the operator
instead of with
.As usual, the first step of the iteration is to use the adjoint
of
to form the image
.At the end of the iterations,
we convert from
back to
with
.The result after the first iteration
turns out to be the same as Symes scaling.
By (39), has physical units inverse to
.Thus the transformation
has no units
so the
variables have physical units of data space.
Experimentalists might enjoy seeing the
solution
with its data units more than viewing the solution
with its more theoretical model units.
The theoretical solution for underdetermined systems
suggests
an alternate approach using instead
.A possibility for
is
![]() |
(41) |
Experience tells me that a broader methodology is needed.
Appropriate scaling is required in both data space and model space.
We need something that includes a weight for each space,
and
where
.
I have a useful practical example (stacking in v(z) media)
in another of my electronic books (BEI),
where I found both
and
by iterative guessing.
But I don't know how to give you a simple strategy
that is not iterative.
Either this is a major unsolved opportunity
for a theorist,
or I'll need to write down my iterative guess.
The PhD thesis of James Rickett experiments extensively with data space and model space weighting functions in the context of seismic velocity estimation.