The purpose of this vignette is to introduce a new argument interpolation_type = "crawl"
for the anipaths::animate_paths()
function. This interpolation type is based on the correlated random walk model implemented in the crawl
package and offers an alternative to the spline-based general additive model (GAM) from the mgcv
(see also Buderman et al. (2016)). The primary benefits of the new interpolation type are (i) an alternative form of temporal dependence that may be more consistent with real animal movement, and (ii) the potential to simulate several realizations from the fitted correlated random walk model to better depict uncertainty for animal trajectories.
New types of plots are also offered when using the crawl
interpolation including points, points with tails, blur points, and blur points with tails. Blur points are semi-transparent and vary in diameter according to point-wise uncertainty estimates. For example, if uncertainty is large, the blur effect will be larger in diameter.
In addition to anipaths
, load packages tidyverse
, and magrittr
to prepare the data.
library(anipaths)
library(tidyverse)
library(magrittr)
The vultures
dataset is a built in data inside the anipaths
package. We will use vultures
to illustrate the functionality of the package. To prepare the data, we need to create a time stamp variable of class numeric
or POSIX
. If you wish to specify the interval of predicted time as a character string (e.g., "day"
), the class of your time variable must be POSIX
.
%<>%
vultures mutate(POSIX = as.POSIXct(timestamp, tz = "UTC"))
<- vultures %>%
vultures_spring11 filter(POSIX > as.POSIXct("2011-04-05", origin = "1970-01-01") &
< as.POSIXct("2011-05-05", origin = "1970-01-01")
POSIX &
%in%
(individual.local.identifier c('Argentina', 'Domingo', 'La Pampa', 'Whitey', 'Young Luro'))
)
In addition, the data must have an easting/longitude and northing/latitude variable. You can set the name for your coordinate using the coord
argument (default is c("x", "y")
).
crawl
Interpolation with TailsThis animation will interpolate synchronized paths for each animal in the vultures
data. A default value of 5 simulated trajectories will be generated in addition to a single best-estimate of the true trajectories. The animation will represent each animal with one point, and 5 + 1 lines for each simulation and best prediction paths.
animate_paths(paths = vultures_spring11,
delta.t = "day",
coord = c("location.long", "location.lat"),
Time.name = "POSIX",
ID.name = "individual.local.identifier",
interpolation_type = "crawl",
simulation = TRUE)
The interval of time can also be changed to several hours instead of days. At this finer resolution the simulated trajectories are more visible, although it does take longer to produce the animation because more images are used.
animate_paths(paths = vultures_spring11,
delta.t = 3600 * 4,
coord = c("location.long", "location.lat"),
Time.name = "POSIX",
ID.name = "individual.local.identifier",
interpolation_type = "crawl",
simulation = TRUE)
Besides an individual point for each animal, a blur point is also available to depict pointwise uncertainty. The larger the blurred point, the larger the uncertainty.
animate_paths(paths = vultures_spring11,
delta.t = 3600 * 6,
coord = c("location.long", "location.lat"),
Time.name = "POSIX",
ID.name = "individual.local.identifier",
interpolation_type = "crawl",
crawl.plot.type = "blur.tail")
crawl
Interpolation with Tails and BackgroundTo add a ggmap
background from Google, we first need to register our API key using the register_google()
function from the ggmap
package. The function will throw an error if registration has not been done before hand.
Set the argument background = TRUE
in the animate_paths()
function to get a background from Google map. This TRUE
statement will produce an automatically chosen background map that attempts to match the extent of the data. Another way to set a background is to provide information on the center, zoom, and type of the desired map tiles.
<- list(center = c(-70, -20),
background zoom = 4,
maptype = "satellite")
Once a background has been defined, simply run the animate_paths()
function with an additional parameter background = background
.
library(ggmap)
animate_paths(paths = vultures_spring11,
delta.t = 3600 * 6,
coord = c("location.long", "location.lat"),
Time.name = "POSIX",
ID.name = "individual.local.identifier",
background = background,
interpolation_type = "crawl", simulation = TRUE)
crawl
InterpolationSometimes it is useful good to focus on a single animal to see their movement in details with a a zoomed in window. We can focus on one individual in the vultures application by first sub-setting the data to select only one animal. For this example, we isolated Irma in the animation.
<- vultures_spring11 %>%
vultures_Whitey filter(individual.local.identifier == "Whitey")
Then, run the same animate_paths
function with the same parameters as specified before.
animate_paths(paths = vultures_Whitey,
delta.t = 3600 * 4,
coord = c("location.long", "location.lat"),
Time.name = "POSIX",
ID.name = "individual.local.identifier",
interpolation_type = "crawl", background = T,
simulation = TRUE, main = "Whitey")
simulation
: change this parameter to FALSE
to see only one best estimate of the continuous trajectory of the animal instead of multiple relationssimulation.iter
: change this value to higher or lower than 5 to see more or fewer predicted realizationstheme_map
: add a customized theme for the background of the animation other than a map backgroundFor more information about each parameters, run ?anipaths::animate_paths
.