Introduction to Applied Geostatistics
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Description: In Applied Geostatistics the authors demonstrate how simple statistical methods can be used to analyse earth science data. In clear language, they explain how various forms of the estimation method called kriging can be employed for specific problems. A case study of a simulated deposit is the focus for the book. This model helps the student develop an understanding of how statistical tools work, serving as a tutorial to guide readers through their first independent geostatistical study.
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All the information you need in one place! Each Study Brief is a summary of one specific subject; facts, figures, and explanations to help you learn faster.
List price: $119.95
Copyright year: 1989
Publisher: Oxford University Press, Incorporated
Publication date: 1/11/1990
Size: 6.25" wide x 9.50" long x 1.00" tall
|The exhaustive dataset|
|The sample data set|
|The sample data set spatial continuity|
|Random function models,|
|Modelling the sample variogram|
|Estimating a distribution|
|Change of support|
|Final thoughts, appendices|
|Walker Lake datasets|
|Probabilistic models for continuous random variables|