Questions tagged [kriging]

A statistical interpolation method, also known as Gaussian process regression, most used in geo-statistics. The goal is to map a surface given limited sample data. The process evaluates the variability of supplied data, then uses a weighted average of neighbouring points -- considering both distance and direction -- to interpolate the desired map points.

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Performing an ordinary kriging on MATLAB

I'm trying to use the function from the following link to perform an ordinary kriging on my data in MATLAB! https://www.mathworks.com/matlabcentral/fileexchange/29025-ordinary-kriging It seems simple ...
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Interpolating (kriging?) Grid Data in MATLAB

I have Lat, Lon, and NO2 data that are gridded. I'm trying to select a few points from this data and interpolated out some data/a plot, comparing how this interpolated data/plot improves as I ...
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Linear Interpolation with krige-Function in R

I'm doing a regression kriging in R and have already done the ordinary kriging with the residuals which worked absolutely fine. Now I want to do the linear regression with three prediction variables ...
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Using scikit-learn's GaussianProcessRegressor in place of GaussianProcess for a Kriging interpolation

I have a dataset of temperature observations from various meteorological stations across a 2D area. I'm trying to perform a Kriging analysis to create a gridded dataset. I've been able to do this ...
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Interpolating values of a vector with Gaussian Process / Kriging in Python

I'm attempting to interpolate wind speed and direction values on a map given some lat/long coordinates and then compare those values to my observed values. A couple papers suggest that Gaussian ...
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142 views

Kriging with gstat : “Covariance matrix singular at location” with predict

I am trying to do an estimation by kriging with gstat, but can never achieve it because of an issue with the covariance matrix. I never have estimates on the locations I want, because they are all ...
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How to make a Prediction Grid (like “meuse.grid”) for kriging in R? [duplicate]

I have the following data: X,Y,magV 11.651288,52.138404,2.5164 11.651289,52.138404,2.5051 11.651290,52.138404,2.5148 11.651290,52.138404,2.5203 11.651290,52.138404,2.5020 11.651290,52.138404,2.5109 ...
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How to apply kriging for 3D arrays in Python?

I have a 3D numpy array with some elevation values. I would like to apply kriging interpolation method to them and get a full valued array with same given shape. My purpose is to create a surface ...
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106 views

Problem in exporting a kriging map as Raster

I created a kriging map which was created by using the kriging() and image() functions of the kriging package (table is the data with the coords and values): krig <- kriging(table@coords[ ,1], ...
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cokriging: unable to fit variogram with subseted data (zero distance semivariance error)

I can't get the fit.lmc function of gstat to fit variograms when the principal and auxiliary variables are not exactly colocated. For example with the meuse dataset, consider we krige lead as ...
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27 views

Problems with kriging function in R

I have a dataframe named as kef, consisted of 512 rows, and the fields x, y (referring to coordinates) and v (refering to a certain numeric value for each cell). I also have a map layer named as ...
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image.plot Error: increasing 'x' and 'y' values expected

I'm having issues with plotting kriging predictions using image.plot. My code is: x<-seq(460000, 820000, l=51) y<-seq(-1900000,-1000000, l=51) grid<-expand.grid(x=x, y=y) kc<-krige....
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GAM with “gp” smoother: predict at new locations

I am using the following geoadditive model library(gamair) library(mgcv) data(mack) mack$log.net.area <- log(mack$net.area) gm2 <- gam(egg.count ~ s(lon,lat,bs="gp",k=100,m=c(2,10,1)) + ...
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Creating an irregular grid for kriging using the geoR package

I'm trying to create an irregular grid for kriging with the geoR package. The area in question is the country of Malawi. The data are currently in UTM projection: data@bbox min max x ...
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what are the equations for 3D ordinary kriging

Im looking for a set of equations that describes ordinary kriging in 3 dimensions, try as i might, i can only find them for 2 dimensions. i.e i want to be able to interpolate a Z axis given the X and ...
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94 views

How to extract specific values with point coordinates from Kriging interpolations made in R?

By using R version 3.4.2 and the library "geoR", I made kriging interpolations for different variables (bellow I give an example of my process). I also made a matrix with the coordinates for 305 trees ...
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196 views

Conditional simulation (with Kriging) in R with parallelization?

I am using gstat package in R to generate sequential gaussian simulations. My pc have 4 cores and I tried to parallelize the krige() function using the parallel package following the script provided ...
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96 views

Kriging at a single spatial point?

This question may have to do with my poor knowledge of kriging - is it possible to compute kriged value at a single spatial location? As I understand it, a typical kriging method uses the spatial ...
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Trouble overlaying kriged data on google map

In the code below, I am trying to overlay kriged meuse data on to google map usingggmap().The code seems to work ok all the way down toget_map(),but gets stuck in some kind of huge computation (RAM ...
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569 views

Spatio-temporal kriging in python using sklearn?

I have weather data available for about 6 weather stations. For all these stations I have the longitude and latitude available, and also the datetime (every 10 minutes from beginning of 2016 or so). I ...
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R_Co-kriging when the variable of interest and auxiliary variable(s) are not measured at the same locations

This is the first time I'm using co-kriging in gstat. My problem is that I'm not sure how to prepare the data frame to supply to co-kriging when the variable of interest and auxiliary variables are ...
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160 views

Haversine distance in sklearn.gaussian_process.kernels

Is there a builtin way to pass custom distance functions to be used by the kernels you could use for Gaussian Process Models? In particular, I have geographic data in lat/lon coordinates, so using ...
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97 views

Obtaining theoretical semivariogram from parametrized covariance function (STK)

I have been using the STK toolbox for a few days, for kriging of environmental parameter fields, i.e. in a geostatistical context. I find the toolbox very well implemented and useful (big thanks to ...
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geoR kriging error: solve.default

I am trying to do kriging in geoR for a fairly large area (~1 million km^2). It is for my thesis, so unfortunately I cannot share the data. I have already checked for duplicated in the coordinates and ...
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iOS map kriging (interpolation)

Is there any way (or framework) which will allow me to krig my map. I have a few sensors on my map, each with a value (which is dynamic), and based on that value the surrounding area should be painted ...
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Issue in kriging some rainfall records using hydrokrige function in hydroTSM package

I have been trying to use hydrokrige function (hydroTSM package) to interpolate rainfall data. For some data it seems to be working fine while I can't make sense of result I am getting for some ...
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Is Monte Carlo sampling in gstat: sequential Gaussian Simulation duplicitous?

How can I control over sampling in sequential Gaussian simulation? For example in the following code, how can I guarantee that the Monte Carlo samples are not duplicitous? library(sp) library(gstat) ...
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Regression Kriging of binomial data in geoRglm R package

I am using binom.krige() function of the R package geoRglm for determining the spatial predictions of a binary (0, 1) response variable with several continuous as well as discrete covariates. Using ...
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617 views

Variogram Iteration Warning

I would like to perform kriging using a variable call "Secchi.Disk" from a data set I have. However, when fitting the variogram I get the following warming message Warning message: In fit.variogram(v,...
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291 views

object not a >= 2-column array

I am learning to krige in R and am stuck with this error "object not a >=2-column array". I converted my initial data frame to a spatial data frame by assigning coordinates as follows: coordinates(...
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322 views

Universal kriging using lat long gstat R

I'm new at R and I'm having some trouble to perform a universal kriging with gstat R. As Hengl et al. (2004) say "Universal kriging should be reserved for the case where the drift (or trend) is ...
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Creating Heat Map using Krigging

I'm trying to create a good heat map using Krigging for missing values. I have the following data, that contains all the values that have been measured for RLevel. I followed the following link ...
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108 views

why does the kriging give the same values as the observed?

I did kriging using spPredict from spBayes package for Bayesian kriging and krige from gstat package for non-Bayesian kriging. I didn't use any covariates (only constant mean term) and used 1283 ...
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669 views

python 3D coordinate point cloud interpolation

I have a np array of coordinates - Data[:,0] = x[:] Data[:,1] = y[:] Data[:,2] = z[:] This represents a point cloud with an area of missing data. How would you go about using this as the input ...
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R 'automap' how to create prediction grid to use with AutoKrige (e.g. meuse.grid)?

I'm having a lot of difficulty creating a prediction grid (for the new_data argument) to use with the autoKrige function in the automap package. I've already tried following the steps in this post (...
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How to regid station data into grid data in R

I have some station data and I am trying to regrid the station data into grid data. I have tried the autoKrigefunction but an error occurs. I wonder if someone can help me, thanks. The test data can ...
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How can I interpolate station data with Kriging in Python?

Browsing the web I've found that some tools to use Kriging in Python are pyKriging and Gaussian Process Regression. However, I couldn't make any of them to work. The first one doesn't work for me (can'...
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How to do kriging on a country map from a linear model

I would like to use ordinary kriging get model predictions on a grid. In my code underneath, GPS is a 'SpatialPointsDataFrame' and EU is a 'SpatialPolygonDataFrame'. All covariates for estimating the ...
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How to back transform normal score transformed data

I have daily rainfall from 61 gauging stations for 12 years in a catchment(8000 Km2). The goal is create 5Km and 25 Km resolution gridded daily rainfall product. As the no of stations are small and ...
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Cross-validation for kriging in R: how to include the trend while reestimating the variogram using xvalid?

I have a question very specific for the function xvalid (package geoR) in R which is used in spatial statistics only, so I hope it's not too specific for someone to be able to answer. In any case, ...
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397 views

Underlay a vector image to a grid for kriging in R

After searching around a lot, asking, and doing some code, I kinda got the bare minimum for doing kriging in R's gstat. Using 4 points (I know, totally bad), I kriged the unsampled points located ...
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Create Grid in R for kriging in gstat

lat long 7.16 124.21 8.6 123.35 8.43 124.28 8.15 125.08 Consider these coordinates, these coordinates correspond to weather stations that measure rainfall data. The intro to the gstat ...
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375 views

Create variogram in R's gstat package

Suppose I have rainfall data taken at four weather stations over the span of 2004-2016. I fed the data into a database for retrieval in R. My goal is to take the data for every single day from that ...
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123 views

How to write a formula in a loop for autoKrige {automap} in R

I have a large matrix and the column names are as follows: colid=vector(length = 60) for(i in 1"60) { colid[i]=paste0("V",i) } When I use the autoKrige function in automap, a formula must be ...
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592 views

Get data array from object in Python

I'm using a library which produces 3 plots given an object k. I need to figure the data points (x,y,z) that produced these plot, but the problem is that the plots comes from a function from k. The ...
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290 views

How to apply universal kriging with custom prediction spatial grid using autoKrige in R

I want to apply universal kriging on a dataset using the autokrige function in R. I would like to create my own custom, spatial grid for the predicted points (for the new_data argument of autokrige). ...
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726 views

Local Block Kriging with Local Variogram with gstat

I have been unable to find any information specific to local block kriging with a local variogram using the gstat package in R. There is freeware called VESPER from the Australian Center for Precision ...
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333 views

Perform Kriging Interpolation using Arcpy

I have list of point feature class. I am trying to write a python script to perform Krigging interpolation. I am getting error massage in this code "Point_Num" is not defined, Below script i am ...
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141 views

What is the difference between the R code for ordinary kriging and block kriging used gstat package and the krige() function?

i have some problems with block kriging. First I create a grid (5000*5000 m). Than i exclude stations, which are very close to each other. The next step is creating the variogram and the fit.variogram....
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Why the RMSE for Kriging is not strictly decreasing for increasing training data?

I am using gstat package for ordinary kriging and using the walker lake data (data size = 470). I have randomly taken 20 from that data in each trial and calculate the rmse for randomly chosen ...