Modeling and Inversion of Self Potential Data
Author(s)
Minsley, Burke J.
DownloadMinsley_thesis2007.pdf (7.704Mb)
Other Contributors
Massachusetts Institute of Technology. Earth Resources Laboratory
Metadata
Show full item recordAbstract
This dissertation presents data processing techniques relevant to the acquisition, modeling,
and inversion of self-potential data. The primary goal is to facilitate the interpretation
of self-potentials in terms of the underlying mechanisms that generate the
measured signal. The central component of this work describes a methodology for
inverting self-potential data to recover the three-dimensional distribution of causative
sources in the earth. This approach is general in that it is not specific to a particular
forcing mechanism, and is therefore applicable to a wide variety of problems.
Self-potential source inversion is formulated as a linear problem by seeking the
distribution of source amplitudes within a discretized model that satisfies the measured
data. One complicating factor is that the potentials are a function of the earth
resistivity structure and the unknown sources. The influence of imperfect resistivity
information in the inverse problem is derived, and illustrated through several synthetic
examples.
Source inversion is an ill-posed and non-unique problem, which is addressed by
incorporating model regularization into the inverse problem. A non-traditional regularization
method, termed “minimum support,” is utilized to recover a spatially compact
source model rather than one that satisfies more commonly used smoothness constraints.
Spatial compactness is often an appropriate form of prior information for the
inverse source problem. Minimum support regularization makes the inverse problem
non-linear, and therefore requires an iterative solution technique similar to iteratively
re-weighted least squares (IRLS) methods. Synthetic and field data examples are
studied to illustrate the efficacy of this method and the influence of noise, with applications
to hydrogeologic and electrochemical self-potential source mechanisms.
Finally, a novel technique for pre-processing self-potential data collected with arbitrarily
complicated survey geometries is presented. This approach overcomes the
inability of traditional processing methods to produce a unique map of the potential
field when multiple lines of data form interconnected loops. The data are processed
simultaneously to minimize mis-ties on a survey-wide basis using either an l[subscript 2] or l[subscript 1]
measure of misfit, and simplifies to traditional methods in the absence of survey complexity.
The l[subscript 1] measure requires IRLS solution methods, but is more reliable in the
presence of data outliers.
Date issued
2007-06Publisher
Massachusetts Institute of Technology. Earth Resources Laboratory
Series/Report no.
Earth Resources Laboratory Industry Consortia Annual Report;2007-09