Statistical estimation of polynomial generalized covariance functions and hydrologic applications

@inproceedings{Kitanidis1983StatisticalEO,
  title={Statistical estimation of polynomial generalized covariance functions and hydrologic applications},
  author={Peter K. Kitanidis},
  year={1983}
}
Minimum-variance unbiased linear estimation theory has found many applications in the analysis of spatial rainfall and Hydrogeologic data: estimation of point values or areal averages, calculation of variances of estimation error, and network design. However, the important problem of inferring the spatial structure or interdependence of the function of interest has received relatively less attention. Three methods for the estimation of the parameters of Matheron's polynomial generalized… CONTINUE READING

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