The hardware and bandwidth for this mirror is donated by METANET, the Webhosting and Full Service-Cloud Provider.
If you wish to report a bug, or if you are interested in having us mirror your free-software or open-source project, please feel free to contact us at mirror[@]metanet.ch.
This vignette demonstrates acquiring, processing and rudimentarily visualising the distribution of Colibri species.
The query uses the quality = "research"
parameter to
focus on more reliable data (i.e. observations that have been identified
as the same taxon by several iNaturalist contributors, of animals that
are not in captivity).
library(rinat)
<- get_inat_obs(taxon_name = "Colibri",
colibri quality = "research",
maxresults = 1000)
Which species are listed?
library(dplyr)
%>% pull(scientific_name) %>% unique()
colibri #> [1] "Colibri cyanotus" "Colibri coruscans" "Colibri cyanotus cabanidis"
#> [4] "Colibri delphinae" "Colibri thalassinus" "Colibri serrirostris"
#> [7] "Colibri coruscans coruscans"
We can process the data to merge the subspecies into the corresponding species, and remove rows with missing coordinates. Parsing the date and time of observation can also be useful.
library(stringr)
library(lubridate)
<- colibri %>%
col_sp filter(!is.na(longitude)) %>%
mutate(scientific_name = word(scientific_name, 1, 2)) %>%
mutate(datetime = ymd_hms(datetime))
A histogram can be useful to get an idea of the range of dates.
library(ggplot2)
ggplot(col_sp, aes(x = datetime)) +
geom_histogram()
Expectedly, observations are mostly recent. Although earlier observations can be submitted, iNaturalist was launched in 2008, which means the vast majority of the observations are from after 2008.
Let’s now visualise the observations’ locations with ggplot2.
ggplot(data = col_sp, aes(x = longitude,
y = latitude,
colour = scientific_name)) +
geom_polygon(data = map_data("world"),
aes(x = long, y = lat, group = group),
fill = "grey95",
color = "gray40",
size = 0.1) +
geom_point(size = 0.7, alpha = 0.5) +
# this guarantees the map is not stretched
coord_fixed(xlim = range(col_sp$longitude),
ylim = range(col_sp$latitude)) +
theme_bw()
Using ggforce’s geom_mark_*()
functions, we can
highlight and annotate the different species directly on the plot. We
expand the x and y axes limits to make space for the additions.
# define expansion factors for giving space to ellipses and labels
<- c(0.5, 0.5)
exp_fact library(ggforce)
ggplot(data = col_sp, aes(x = longitude,
y = latitude,
colour = scientific_name)) +
geom_polygon(data = map_data("world"),
aes(x = long, y = lat, group = group),
fill = "grey95",
color = "gray40",
size = 0.1) +
geom_point(size = 0.7, alpha = 0.5) +
# annotate with a hulls and labels
geom_mark_hull(aes(label = scientific_name,
fill = scientific_name),
expand = unit(1, "mm"),
radius = unit(1, "mm"),
label.fill = "transparent") +
# expand axes here
scale_x_continuous(expand = exp_fact) +
scale_y_continuous(expand = exp_fact) +
coord_fixed(xlim = range(col_sp$longitude),
ylim = range(col_sp$latitude)) +
theme_bw() +
# remove the superfluous legend
theme(legend.position = "none")
Some observations could have been misidentified, misplaced, or simply
be an exception that is not representative of the common range of the
species. One way to remove these outliers could be to compute for each
observation the distance to the nearest other observation belonging to
the same species. For that, we first convert to an sf
object, split it into separate species, and use the functions
st_nearest_feature()
to identify the closest feature and
st_distance()
to compute the distance.
library(sf)
library(purrr)
<- col_sp %>%
col_dist st_as_sf(coords = c("longitude", "latitude"), crs = "WGS84") %>%
split(.$scientific_name) %>%
map_dfr(~ mutate(.x,
nearest_id = st_nearest_feature(.x),
nearest = geometry[nearest_id],
dist_nearest = st_distance(geometry, nearest, by_element = TRUE)))
Let’s highlight the observations that are at least 1000 km away from another observation of the same species:
ggplot(data = col_dist, aes(colour = scientific_name)) +
geom_sf() +
geom_sf(data = col_dist %>% filter(as.integer(dist_nearest) > 1e6),
colour = "red", size = 5, shape = 1)
We can now reuse the same visualisation code as before, with the outliers filtered out:
<- col_sp %>%
col_clean anti_join(col_dist %>% filter(as.integer(dist_nearest) > 1e6),
by = "id") # filter outliers out
ggplot(col_clean, aes(x = longitude, y = latitude,
colour = scientific_name)) +
geom_polygon(data = map_data("world"),
aes(x = long, y = lat, group = group),
fill = "grey95",
color = "gray40",
size = 0.1) +
geom_point(size = 0.7, alpha = 0.5) +
geom_mark_hull(aes(label = scientific_name,
fill = scientific_name),
expand = unit(1, "mm"),
radius = unit(1, "mm"),
label.fill = "transparent") +
scale_x_continuous(expand = exp_fact) +
scale_y_continuous(expand = exp_fact) +
coord_fixed(xlim = range(col_clean$longitude),
ylim = range(col_clean$latitude)) +
theme_bw() +
theme(legend.position = "none")
Note that this outlier detection method will not always be useful. For example, one outlier specimen could have been recorded in several separate observations, and therefore wouldn’t be filtered out based on distance.
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.