A practical guide to geostatistical mapping
On Fri, 31 Aug 2018, Tomislav Hengl wrote:
I am working on a rmarkdown update of the practical guide to GM (the working title is "A practical guide to spatial prediction with R"). As soon as I clean up these reports on my desk I will get on it (in about 2 months should be online). My apologies to you and all other users for untidy website / my tardiness.
Tom, This is excellent news! I sent you a message yesterday at the e-mail address on the web site only to have it bounce as 'user known in this domain.'
In the meantime you might also find this useful: https://envirometrix.github.io/PredictiveSoilMapping/
Thank you. I don't know if r-sig-geo is an appropriate forum for my questions that are not specific to applying R packages, but to geostatistics themselves. If not, I'd appreciate a pointer to a more appropriate place. One thing I've noticed in my readings about geostatistics is that (quite appropriately) most are research oriented and written by academic geostatisticians and ecologists. My work as an environmental science consultant, an applied aqutic ecologist who left academia for the private sector several decades ago, means that all data available to me are generated by regulatory requirements, not by the needs for a research project. And, the overwhelming number involve aquatic chemistry (and biota such as fish) which adds the constant movement of the medium into consideration. This makes it difficult for me to translate examples such as the Meuse example in Chapter 5 to my projects. Currently I'm looking at mercury concentrations in a river system and the sampling locations have an intereesting pattern of clumps on the mainstem by major tributaries and are otherwise quite dispersed. As a non-mathemtical statistician I've currently no idea how to conduct exploratory analyses on such data. And, there's the temporal aspct to be considered, too. I've much to learn because there's a real need for the application of spatio-temporal statistics in regulatory environmental science instead of the deterministic, differential equation models currently demanded by regulators. Best regards, Rich