Numéro |
J. Phys. IV France
Volume 107, May 2003
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Page(s) | 577 - 580 | |
DOI | https://doi.org/10.1051/jp4:20030369 |
J. Phys. IV France 107 (2003) 577
DOI: 10.1051/jp4:20030369
Interactive visualization applied to multivariate geochemical data: A case study
K. GrünfeldEngineering Geology, Royal Institute of Technology, 10044 Stockholm, Sweden
Abstract
Geochemical survey data have commonly been analysed combining methods from several disciplinesstatistics,
geostatistics, geographic information technology, visualization. In initial stages of analysis, tables are often
used to describe the data and present statistical measures. Far too often the original data are manipulated in one or
another way, for example, using mathematical transformations, or interpolation of points to a surface. It is the author's
opinion that raw geochemical data should be used in initial stages of data description, thus preserving the original
details. This is not a simple task, as geochemical data are commonly complex, multivariate, and collected on irregular
grid. Data contain outliers, element contents vary within thousands of ppm (parts per million), and different chemical
elements may be correlated. In the present study a graphical approach has been used to study distribution of 5 heavy
metals in glacial till. Using interactive visualization and multiple linked views of the data, the following issues were
addressed: multi-element outliers, spatial trends, multi-element correlations and patterns. Interactive graphical
techniques proved to be especially suitable for studying outliers and identifying and locating samples that are
redundant and may be removed from data without loss of information. Visualization using linked views gave valable
insights about metal correlations and spatial trends. As the development of appropriate tools for analysing multivariate
spatial data are still in its early stages, visualization freeware seems to be a good alternative providing powerful, easy
to use and intuitive techniques for exploratory data analysis.
© EDP Sciences 2003