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technical > isatis geostatistical software

Geostatistics is now widely recognized by the mining industry as being a particularly effective tool at all stages from initial feasibility studies to production control. Quantitative Group (QG) are users of the leading commercial geostatistical software system Isatis. Our familiarity with this product allows us to provide tailored training solutions for mining industry clients.

Training using Isatis: tailored to your operational needs

QG's principals are serious industrial users of this software and can provide excellent practical (hand-on) training. This can be provided in conjunction with classroom style geostatistical training or "stand alone". To obtain more information about Isatis, contact the developers Geovariances.

Geostatistical software: UNIX and Win 2000/XP/NT

Isatis is a specialist geostatistical package which offers all the geostatistical techniques within a user-friendly, windows-mouse-icon interface. It offers geologists and mining engineers a wide range of tools for mining data analysis, estimation and simulations of deposits. Import/Export facilities exist to allow Isatis to "talk" to any mining or geological software. Isatis is available to run in native Unix or using Hummingbird on Windows platforms.

Powerful graphics

Graphical features have been included so that users can quickly visualize their data and results . Moreover graphical tools are essential in some statistical tasks such as the exploratory data analysis or variogram modelling. The initial graphical outputs generated by Isatis are produced using sensible default values. If the user is satisfied with the graphic, it can be printed directly. If the user wishes to modify the graphic the figure can be saved as a Metafile and the Isatis module Mfedit used to conveniently modify any graphic parameter.

Exploratory Data Analysis (EDA) for geostatistics

Classical statistics as well as geostatistical analysis are available simultaneously in the same exploratory module. The various applications and tools used for spatial and non-spatial data analysis include a large variety of univariate or multivariate statistics in linked graphical displays. They allow the user to check the impact of selecting or discarding some data, for example.

Statistics for earth scientists

A wide range of statistics are computed by Isatis. They describe:
  • the location of the data distribution with the number of defined samples, the minimum and the maximum values, the mean and the quantities;
  • the variability of the data with the variance and the standard deviation;
  • the shape of the distribution with the coefficient of skewness, the kurtosis and the coefficient of variation;

In the multivariate analysis, the correlation matrix between the variables is also provided.

Isatis can create histograms, QQ plots, scattergrams, cumulative frequency plots.

Principal components analysis [PCA] for geochemical and other data

Multivariate statistical analysis can be handled by Isatis, specifically PCA.

This widely used statistical method for multivariate data analysis enables a quick analysis of several variables at a time. The orthogonal factors and different types of graphical outputs are computed: basemaps, scatter plots, spin plots (representation of samples where three variables are defined - these can be three factors), circle of correlations (unit circle representing the coefficients of correlation according to the factors, and thus the 'affinities' and 'antagonisms' between variables) and scree graph (this graph shows the evolution of the different eigen values related to the factors and how they replicate the global variability).

Spatial data analysis and variography

A wide range of statistical values are computed by Isatis, including:

Base map to make proportional "post plots" of data: see where the highs and lows are... and how they are linked

The samples are represented by a symbol, the dimension of which is proportional to the value of the variable. When the data is collected on a regular grid, the base map is displayed in raster mode. Other representations are also available such as literal maps (each sample location is plotted with the value of the data), contour maps (to visualise the general trend of the data), symbolic maps (the data is classified into classes which are represented by a symbol or a color - this can produce indicator maps if only two classes are defined) or gradient maps (represented as proportional and directional arrows).

H-scatterplots: a complement to variograms to assess spatial continuity

This X-Y representation of two variables is meant to analyze the spatial continuity of the data and display all the pairs of samples which are separated by a certain distance along a given direction. If you like, it 'explodes' each point plotted on a variogram. The coordinates correspond to the value of the first variable at the first sample location versus the value of the second variable (which can be identical to the first one) at the second sample location. The shape of the cloud of points spreads out as the spatial correlation between the two samples decreases or the relationship between the two variables weakens. This tool is complementary to the variogram approach.

Variograms: the fundamental tool of geostatistics - Isatis has many types

Variograms are the fundamental tools of geostatistics. They characterise the correlation between samples and between variables as a function of the distance. In Isatis, the variogram may be calculated in various directions or specifically along lines (e.g. down-the-hole). The cloud of pairs from which the curves are derived can also be displayed and used for exploration. The variogram can be replaced by a large variety of representations of the spatial variability (in total, 18 representations or "types of variogram" are available, among them the covariance, general and pair-wise relative variograms, the correlogram, the madogram, the rodogram...etc. etc.).

Variograms of normal Gaussian scores: efficient detection of anisotropy and structure

Isatis can make Gaussian transforms (among many others, such a logs). The resulting data can be assessed with variogram tools to allow variography of noisy, high nugget situations more feasible. This is very useful in many mining (gold, uranium, precious metals) and environmental (trace element pollution) situations.

Variograms of Indicators: Indicator variograms have many practical uses

Isatis can make indicator transforms. Again, the resulting data can be assessed with variogram tools to allow variography of noisy, high nugget situations more feasible. As for Gaussian cases, this is very suited to many mining (gold, uranium, precious metals) and environmental (trace element pollution) variables. Indicators also allow the spatial analysis of behaviour at variable cut offs to be characterised.

Variogram surface: or variogram "maps"

This representation of the variogram in all directions is a good visual tool to identify possible anisotropy in the data. The principle is to define a grid such that the origin of the space is located at the center of this grid. Each pair of samples corresponds to a distance and a direction, which can be converted into a grid cell to which is associated a measure of spartial variability or correlation.

Linear and non-linear, stationary and non-stationary geostatistics

Isatis can handle both stationary and non-stationary techniques, and will provide both kriging and non-linear estimators (lognormal kriging, disjunctive kriging, uniform conditioning, service variables, etc.), not to mention grade or indicator conditional simulations.

Linear methods

Isatis can perform a wide range of geostatistical and non-geostatistical linear estimations for points and blocks, including:
  • Inverse (power of the) distance
  • Nearest neighbour
  • Least square fit (order 2)
  • Moving average (moving window mean)
  • Moving median
  • Moving projected slope
  • Discrete spline
  • Ordinary Kriging
  • Simple Kriging
  • Cokriging
  • Kriging with a spline generalised covariance

and more...

Kriging neighbourhood testing: quantified search analysis

Isatis can perform a quantified search analysis. This is a critical step in the kriging process and also in setting up the conditioning of simulations. The analysis is graphical and interactive and provides a range of statistics for assessing the quality of kriging given a specified variogram, block size, search, data geometry etc. These statistics include:
  • estimation variance
  • weight of the mean in a simple kriging
  • slope of the regression of true on estimated values
  • kriging weights (graphical display/map)

etc...

Non-Linear estimation: beyond ordinary kriging

Many advanced non-linear estimation methods are available, including:
  • Uniform Conditioning for recoverable reserves
  • Disjunctive Kriging for non linear problems
  • Lognormal Kriging for highly skeewed distributions
  • Indicator Kriging for the estimation of discrete variables
  • Factorial Kriging Analysis to extract components of a model

Grade tonnage curve tools

Coherent geostatistical models provide solutions to problems such as: the formulation of grade tonnage relationships, the determination of cut-off grades, sampling pattern optimization, selectivity studies and the evaluation of the support effect on ore reserves.Grade distributions can be modelled using Gaussian anamorphosis techniques. The discrete Gaussian model of change of support allows the influence of the size of the selective mining units (SMU) on grade tonnage curves to be studied. The same model can be used to obtain local grade tonnage relationships (uniform conditioning).
 
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Scott Jackson (left), Scott Dunham (centre), and John Vann (right) are the Directors of Quantitative Group
 

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