I have four variables: a point process pattern of species occurrence, rivers, ponds polygons and land image data. I would like to make a dataset similar to that of Murchison dataset using these shape layers but I have failed to manoeuvre.
I need to make a data frame from these polygon shape layers of rivers, ponds and land cover images together with the point pattern data of species occurrences I tried using a hyper frame but I am unable to use a distance function from the river or the ponds.
rivers <- readShapespatial("river.shp") ponds <- readShapeSpatial(pond.shp") fro <- read.table("fro.txt", header=TRUE) image <- raster("image.tif")
I would like to combine these four files as a single spatstat object like that of Murchison data which comes with spatstat package. if I can put them in a frame then ponds, land cover, rivers are covariates.
I have used analyst function but return errors that they can not be used as covariates, fore example x is a list can not be used as covariates particularly for ponds and rivers when I call the dist function.
Why do you need a
hyperframe? You refer to
murchison data and that is not
hyperframe. It simply a standard R
list (with extendend classes
solist for better printing and plotting in
spatstat, but the actual data structure is just a plain
To recreate the
library(spatstat) P <- murchison$gold # Points L <- murchison$faults # Lines W <- murchison$greenstone # "Windows mur <- solist(points = P, lines = L, windows = W) mur #> List of spatial objects #> #> points: #> Planar point pattern: 255 points #> window: rectangle = [352782.9, 682589.6] x [6699742, 7101484] metres #> #> lines: #> planar line segment pattern: 3252 line segments #> window: rectangle = [352782.9, 682589.6] x [6699742, 7101484] metres #> #> windows: #> window: polygonal boundary #> enclosing rectangle: [352782.9, 681699.6] x [6706467, 7100804] metres
To use the data in a model they don’t have to be collected in a single list, but it may be convenient. The following two models are identical:
(mod1 <- ppm(P ~ W)) #> Nonstationary Poisson process #> #> Log intensity: ~W #> #> Fitted trend coefficients: #> (Intercept) WTRUE #> -21.918688 3.980409 #> #> Estimate S.E. CI95.lo CI95.hi Ztest Zval #> (Intercept) -21.918688 0.1666667 -22.24535 -21.592028 *** -131.51213 #> WTRUE 3.980409 0.1798443 3.62792 4.332897 *** 22.13252 (mod2 <- ppm(points ~ windows, data = mur)) #> Nonstationary Poisson process #> #> Log intensity: ~windows #> #> Fitted trend coefficients: #> (Intercept) windowsTRUE #> -21.918688 3.980409 #> #> Estimate S.E. CI95.lo CI95.hi Ztest Zval #> (Intercept) -21.918688 0.1666667 -22.24535 -21.592028 *** -131.51213 #> windowsTRUE 3.980409 0.1798443 3.62792 4.332897 *** 22.13252
If you insist on a
hyperframe you should have a column for each measured
variable, but these are primarily used for when you have several replications
of an experiment, and is not of much use here. The function call is simply:
murhyp <- hyperframe(points = P, lines = L, windows = W)