Interpolation of geophysical data using continuous global surfaces

Author:

Billings Stephen D.1,Beatson Rick K.2,Newsam Garry N.3

Affiliation:

1. University of British Columbia, Geophysical Inversion Facility, 2219 Main Mall, Vancouver, British Columbia V6T 1Z4, Canada.

2. University of Canterbury, Department of Mathematics and Statistics, Private Bag 4800, Christchurch, New Zealand.

3. Defence Science and Technology Organisation, Surveillance Systems Division, P.O. Box 1500, Edinburgh, South Australia 5111, Australia.

Abstract

A wide class of interpolation methods, including thin‐plate and tension splines, kriging, sinc functions, equivalent‐source, and radial basis functions, can be encompassed in a common mathematical framework involving continuous global surfaces (CGSs). The difficulty in applying these techniques to geophysical data sets has been the computational and memory requirements involved in solving the large, dense matrix equations that arise. We outline a three‐step process for reducing the computational requirements: (1) replace the direct inversion techniques with iterative methods such as conjugate gradients; (2) use preconditioning to cluster the eigenvalues of the interpolation matrix and hence speed convergence; and (3) compute the matrix–vector product required at each iteration with a fast multipole or fast moment method.We apply the new methodology to a regional gravity compilation with a highly heterogeneous sampling density. The industry standard minimum‐curvature algorithms and several scale‐dependent CGS methods are unable to adapt to the varying data density without introducing spurious artifacts. In contrast, the thin‐plate spline is scale independent and produces an excellent fit. When applied to an aeromagnetic data set with relatively uniform sampling, the thin‐plate spline does not significantly improve results over a standard minimum‐curvature algorithm.

Publisher

Society of Exploration Geophysicists

Subject

Geochemistry and Petrology,Geophysics

Reference35 articles.

1. Bates, D. M., and Wahba, G., 1982, Computational methods for generalized cross validation on large data sets,inBaker, C., and Miller, G., Eds., Treatment of integral equations by numerical methods: Academic Press Inc.

2. Beatson, R. K., and Chacko, E., 2000, Fast evaluation of radial basis functions: A multivariate momentary evaluation scheme,inCohen, A., Rabut, C., and Schumaker, L. L., Eds., Curve and surface fitting: Saint Malo 1999, Vanderbilt Univ. Press, 37–46.

3. Fast Evaluation of Radial Basis Functions: Moment-Based Methods

4. Fast Evaluation of Radial Basis Functions: Moment-Based Methods

5. Fast Solution of the Radial Basis Function Interpolation Equations: Domain Decomposition Methods

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