Space/time geostatistics, Bayesian Maximum Entropy
Changed:
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FUNCTIONS
+ general statistics (histograms, probability plots) + variogram and cross variogram calculations in space/time (any spatial dimension)
+ BME using probabilistic and hard data + BME using interval and hard data + BME using hard data only (simple kriging) + BME using probabilistic and hard data with a trend model + BME using interval and hard data with a trend model + BME using hard data with a trend model (ordinary kriging and kriging with trend) + all estimation can use vector fields (e.g. cokriging) and be in the space/time domain + all estimation can be with transformation to handle non-Gaussian data + LU simulation + sequential gaussian simulation
> >
FUNCTIONS
+ general statistics (histograms, probability plots) + variogram and cross variogram calculations in space/time (any spatial dimension)
+ BME using probabilistic and hard data + BME using interval and hard data + BME using hard data only (simple kriging) + BME using probabilistic and hard data with a trend model + BME using interval and hard data with a trend model + BME using hard data with a trend model (ordinary kriging and kriging with trend) + all estimation can use vector fields (e.g. cokriging) and be in the space/time domain + all estimation can be with transformation to handle non-Gaussian data + LU simulation + sequential gaussian simulation
CODES
Matlab codes available on request.
TIP
BMElib implements space/time estimation using the Bayesian Maximum Entropy (BME) theory. BME is a very general framework, which leads to the well known kriging algorithms (simple, ordinary, with mean trend model) as a special case under some limiting conditions (when unsing only hard data, etc.), but provides a more comprehensive model when using both hard AND soft data (as well as many other sorts of knowledge bases).
George Christakos and Marc Serre University of North Carolina USA
Patrick Bogaert Universit? Catholique de Louvain Belgium
marc_serre@unc.edu
PLATFORM
MATLAB
PURPOSE
Space/time geostatistics, Bayesian Maximum Entropy
FUNCTIONS
+ general statistics (histograms, probability plots) + variogram and cross variogram calculations in space/time (any spatial dimension)
+ BME using probabilistic and hard data + BME using interval and hard data + BME using hard data only (simple kriging) + BME using probabilistic and hard data with a trend model + BME using interval and hard data with a trend model + BME using hard data with a trend model (ordinary kriging and kriging with trend) + all estimation can use vector fields (e.g. cokriging) and be in the space/time domain + all estimation can be with transformation to handle non-Gaussian data + LU simulation + sequential gaussian simulation
CODES
Matlab codes available on request.
TIP
BMElib implements space/time estimation using the Bayesian Maximum Entropy (BME) theory. BME is a very general framework, which leads to the well known kriging algorithms (simple, ordinary, with mean trend model) as a special case under some limiting conditions (when unsing only hard data, etc.), but provides a more comprehensive model when using both hard AND soft data (as well as many other sorts of knowledge bases).
George Christakos and Marc Serre University of North Carolina USA
Patrick Bogaert Universit? Catholique de Louvain Belgium
marc_serre@unc.edu
PLATFORM
MATLAB
PURPOSE
Space/time geostatistics, Bayesian Maximum Entropy
FUNCTIONS
+ general statistics (histograms, probability plots) + variogram and cross variogram calculations in space/time (any spatial dimension)
+ BME using probabilistic and hard data + BME using interval and hard data + BME using hard data only (simple kriging) + BME using probabilistic and hard data with a trend model + BME using interval and hard data with a trend model + BME using hard data with a trend model (ordinary kriging and kriging with trend) + all estimation can use vector fields (e.g. cokriging) and be in the space/time domain + all estimation can be with transformation to handle non-Gaussian data + LU simulation + sequential gaussian simulation
CODES
Matlab codes available on request.
TIP
BMElib implements space/time estimation using the Bayesian Maximum Entropy (BME) theory. BME is a very general framework, which leads to the well known kriging algorithms (simple, ordinary, with mean trend model) as a special case under some limiting conditions (when unsing only hard data, etc.), but provides a more comprehensive model when using both hard AND soft data (as well as many other sorts of knowledge bases).