Bağımsız Bileşenler Analizi ile Çok Değişkenli Jeoistatistiksel Kestirim
Özet
This work is prepared with the support of TÜBİTAK Project, named ‘’Çokdeğişkenli
Jeoistatistiksel Kestirimde Dikleştirilmiş Bileşenli Yeni Yöntemlerin Geliştirilmesi’’ with
the code number 111M218. Geostatistical estimation of multvariate data is much
more difficult than univariate estimations. There are two main reasons for this
difficulty: Modeling spatial cross-correlations between variables and using model
parameters in geostatistical estimations. If there is no spatial cross-correlation
between variables, multivariate estimation is reduced to simple univariate estimation.
The main purpose of this thesis is to develope methods that reduce multivariate
problems to univariate ones. One approach is to transform spatially cross-correlated
variables to orthogonal factors which do not show spatial cross-correlations with each
other. In this study, two new methods were developed to generate orthogonal factors:
(1) Independent component analysis and (2) minimum spatial cross-correlation
method. Components derived from each method are estimated at unknown locations
and estimated values are back-transformed into original space. Perfrmance of
vi
traditional cokriging estimation method is compared to Indedepedent Component
Kriging (ICK) and Minimum Spatial Cross-correlation Kriging (MSCK). ICK and MSCK
methods were also used for determination of exploitable blocks of an andesit quarry.
The study results show that the ICK and the MSCK methods are good alternatives to
traditional cokriging estimation method.