zonal
is an active package for intersecting vector aggregation units with large gridded data. While there are many libraries that seek to tackle this problem (see credits) we needed a library that could handle large gridded extents storing categorical and continuous data, with multiple time layers with both many small vector units and few large units.
The package offers 3 main options through a common syntax:
The ability to pregenerate weighting grids and applying those over large datasets distrbuted across files (e.g. 30 years of daily data stored in annula files). Rapid data summarization is supported by collapse and data.table.
Thin wrappers over pure exact_extract() when appropriate (e.g. calling a core exactrextractr
function)
Flexible custom functions that are easily applied over multi layer files (e.g. geometric means and circular means)
You can install the development version of zonal
with:
# install.packages("remotes")
remotes::install_github("mikejohnson51/zonal")
This is a basic example that takes a NetCDF file containing a 4km grid for the continental USA and daily precipitation for the year 1979 (365 layers). Our goal is to subset this file to the southern USA, and compute daily county level averages. The result is a daily rainfall average for each county.
library(zonal)
AOI <- AOI::aoi_get(state = "south", county = "all")
d = rast("to_build/pr_2022.nc")
system.time({
pr_zone <- execute_zonal(data = d,
geom = AOI,
ID = "fip_code",
join = TRUE)
})
#> user system elapsed
#> 5.150 0.766 5.963
data <- pr_zone %>%
as.data.frame() %>%
slice_max(rowSums(select(., c(starts_with('mean'))))) %>%
select(fip_code, starts_with('mean')) %>%
pivot_longer(-fip_code, names_to = "day", values_to = "prcp") %>%
mutate(day = as.numeric(gsub("mean.precipitation_amount_day.", "", day)))
head(data)
#> # A tibble: 6 × 3
#> fip_code day prcp
#> <chr> <dbl> <dbl>
#> 1 37175 44560 27.0
#> 2 37175 44561 17.2
#> 3 37175 44562 0.00712
#> 4 37175 44563 0
#> 5 37175 44564 0.0782
#> 6 37175 44565 3.15
One of the largest limitations of existing utilities is the ability to handle categorical data. Here we show an example for a 1km grid storing land cover data from MODIS. This grid was creating by mosacing 19 MODIS tiles covering CONUS. The summary function for this categorical frequency is “freq”.
system.time({
lc <- execute_zonal(data = rast("to_build/2019-01-01.tif"),
geom = AOI,
ID = "fip_code",
fun = "frac")
})
#> user system elapsed
#> 2.097 0.113 2.242
Here lets look at a quick integration of the AOI
/opendap.catalog
/zonal
family. The goal is to find monthly mean, normal (1981-2010), rainfall for all USA counties in the south.
library(climateR)
AOI <- AOI::aoi_get(state = "FL", county = "all")
system.time({
data <- climateR::dap(
URL = "https://cida.usgs.gov/thredds/dodsC/bcsd_obs",
AOI = AOI,
startDate = "1995-01-01",
verbose = FALSE,
varname = "pr"
) |>
execute_zonal(geom = AOI, ID = "fip_code", join = TRUE)
})
#> user system elapsed
#> 0.408 0.040 2.460
plot(data[grepl("mean", names(data))], border = NA)