From Wikipedia, the free encyclopedia
Geostatistics is a branch of statistics focusing on spatiotemporal datasets.
Developed originally to predict probable distributions for mining operations, it is
currently applied in diverse disciplines including petroleum
geology, hydrogeology, hydrology, meteorology, oceanography, geochemistry, geometallurgy, geography, forestry, environmental
control, landscape ecology, soil science, and agriculture (esp. in precision farming). Geostatistics is
applied in varied branches of geography, particularly those involving the
spread of disease (epidemiology), the practice of commerce
and military planning (logistics), and the development of efficient
spatial
networks. Geostatistics are incorporated in tools such as geographic information systems (GIS) and digital elevation models.
History
Background
Devil's Punchbowl Waterfall,
New Zealand may be studied using
geostatistics
When any phenomena is measured, the observation methodology will
dictate the accuracy of subsequent analysis; in geography, this
issue is complicated by unique variables and spatial patterns such
as geospatial topology. An interesting
feature in geostatistics is that every location displays some form
of spatial pattern, whether in the form of the environment, climate, pollution, urbanization or human health. This is not to state that all variables
are spatially dependent, simply that variables are incapable of
measurement separate from their surroundings, such that there can
be no perfect control population. Whether the study is concerned
with the nature of traffic patterns in an urban core, or with the
analysis of weather patterns over the Pacific, there are always
variables which escape measurement; this is determined directly by
the scale and distribution of the data collection, or survey, and
its methodology. Limitations in data collection make it impossible
to make a direct measure of continuous spatial data without
inferring probabilities, some of these probability functions are
applied to create an interpolation surface - predicting
unmeasured variables at innumerable locations.
Geostatistical terms
Sampling
methodology
See Statistics
Criticism
Jan W Merks, a mineral sampling expert consultant from Canada, has strongly
criticized[1]
geostatistics since 1992. Referring to it as "voodoo science"[2]
and "scientific fraud", he claims that geostatistics is an invalid
branch of statistics.
Merks submits[2]
that geostatistics
- ignores the variance of Agterberg's distance-weighted average
point grade,
- ignores the concept of degrees of freedom of a
data set when testing for
spatial
dependence by applying Fisher's F-test to the variance of a set and the
first variance term of the ordered set,
- abuses statistics by not using analysis of variance
properly,
- replaced genuine variances of single distance-weighted
average point grades with pseudo-variances of
sets of distance-weighted average point grades, violating
the one-to-one correspondence between variances and functions such
as Agterberg's distance-weighted average point grade.
Furthermore, Merks claims geostatistics inflates mineral reserve
and resources such as in the case of Bre-X's fraud. Merks's expertise and credibility
are supported by several company executives, who regularly hire his
consulting services[3].
Philip and Watson have also criticized geostatistics in the past
[4].
There is a consensus that inappropriate use of geostatistics
makes the method susceptible to erroneous reading of results[3][5].
Related
software
- gslib is a set of fortran
77 routines (open source) implementing most of the classical
geostatistics estimation and simulation algorithms
- sgems is a cross-platform (windows, unix),
open-source software that implements most of the classical
geostatistics algorithms (kriging, Gaussian and indicator
simulation, etc) as well as new developments (multiple-points
geostatistics). It also provides an interactive 3D visualization
and offers the scripting capabilities of python.
- gstat is an open source computer code for
multivariable geostatistical modelling, prediction and simulation.
The gstat functionality is also available as an S extension, either
as R package or S-Plus library.
- besides gstat, R has at least six other
packages dedicated to
geostatistics and other areas in spatial statistics.
Notes
References
- Armstrong, M and Champigny, N, 1988, A Study on Kriging Small
Blocks, CIM Bulletin, Vol 82, No 923
- Armstrong, M, 1992, Freedom of Speech? De
Geeostatisticis, July, No 14
- Champigny, N, 1992, Geostatistics: A tool that
works, The Northern Miner, May 18
- Clark I, 1979, Practical Geostatistics,
Applied Science Publishers, London
- David, M, 1977, Geostatistical Ore Reserve Estimation, Elsevier
Scientific Publishing Company, Amsterdam
- Hald, A, 1952, Statistical Theory with Engineering
Applications, John Wiley & Sons, New York
- Chilès, J.P., Delfiner, P. 1999. Geostatistics: modelling
spatial uncertainty, Wiley Series in Probability and Mathematical
Statistics, 695 pp.
- Deutsch, C.V., Journel, A.G, 1997. GSLIB: Geostatistical
Software Library and User's Guide (Applied Geostatistics Series),
Second Edition, Oxford University Press, 369 pp., http://www.gslib.com/
- Deutsch, C.V., 2002. Geostatistical Reservoir Modeling, Oxford
University Press, 384 pp., http://www.statios.com/WinGslib/index.html
- Isaaks, E.H., Srivastava R.M.: Applied Geostatistics.
1989.
- ISO/DIS 11648-1 Statistical aspects of sampling from bulk
materials-Part1: General principles
- Journel, A G and Huijbregts, 1978, Mining Geostatistics,
Academic Press
- Kitanidis, P.K.: Introduction to Geostatistics: Applications in
Hydrogeology, Cambridge University Press. 1997.
- Lantuéjoul, C. 2002. Geostatistical simulation: models and
algorithms. Springer, 256 pp.
- Lipschutz, S, 1968, Theory and Problems of Probability,
McCraw-Hill Book Company, New York.
- Matheron, G. 1962. Traité de géostatistique appliquée. Tome 1,
Editions Technip, Paris, 334 pp.
- Matheron, G. 1989. Estimating and choosing, Springer-Verlag,
Berlin.
- McGrew, J. Chapman, & Monroe, Charles B., 2000. An
introduction to statistical problem solving in geography, second
edition, McGraw-Hill, New York.
- Merks, J W, 1992, Geostatistics or voodoo
science, The Northern Miner, May 18
- Merks, J W, Abuse of statistics, CIM
Bulletin, January 1993, Vol 86, No 966
- Myers, Donald E.; "What Is
Geostatistics?
- Philip, G M and Watson, D F, 1986,
Matheronian Geostatistics; Quo Vadis?, Mathematical Geology, Vol
18, No 1
- Sharov, A: Quantitative Population Ecology, 1996, http://www.ento.vt.edu/~sharov/PopEcol/popecol.html
- Shine, J.A., Wakefield, G.I.: A comparison of supervised
imagery classification using analyst-chosen and
geostatistically-chosen training sets, 1999, http://www.geovista.psu.edu/sites/geocomp99/Gc99/044/gc_044.htm
- Strahler, A. H., and Strahler A., 2006, Introducing Physical
Geography, 4th Ed., Wiley.
- Volk, W, 1980, Applied Statistics for Engineers, Krieger
Publishing Company, Huntington, New York.
- Wackernagel, H. 2003. Multivariate geostatistics, Third
edition, Springer-Verlag, Berlin, 387 pp.
- Yang, X. S., 2009, Introductory Mathematics for Earth
Scientists, Dunedin Academic Press, 240pp.
- Youden, W J, 1951, Statistical Methods for Chemists: John Wiley
& Sons, New York.
See also
External
links