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Implementation of Migration detection algorithm, published by Chi et al. (2020) in A general approach to detecting migration events in digital trace data
The package can be installed as follows:
First, make sure your data into the format required by the package: Two aligned vectors for each individual, one with locations and one with timestamps.
library(MigrationDetectR)
# Load an example trace
trace <- example_trace
# a vector of `POSIXct` timestamps
timestamps = example_trace$timestamp
tail(timestamps)
# a vector of `character` locations
locations = example_trace$location
tail(locations)
The basic usage consists of two steps:
First, use the detect_segments
function to identify segments of continuous residence.
# Detect segments
segments <-
detect_segments(
locs = locations,
times = timestamps,
param_min_days = 3,
param_prop_days = 0.06,
param_window_size_days = 7)
nrow(segments) # check the number of detected segments
Second, use the identify_migrations
function on the segments to detect migrations. To optionally determine the best split time, pass the original locations and timestamps vectors. Note that this increases the computational load substantially.
migrations <-
identify_migrations(
segs = segments$segments,
locs = segments$locs,
min_res_length = 90,
occurrence_locs = trace$location,
occurrence_times = trace$timestamp
)
nrow(migrations) # check the number of identified migrations
head(migrations) # check the detected migrations
The functions process one user at a time. Datasets with multiple users need to be split. For very large datasets, we recommend to apply the function with some degree of parallelization.
Alternatively, consider the Python implementation.
The UKIS team creates and adapts libraries which simplify the usage of satellite data:
German Aerospace Center (DLR)
This software is licensed under the Apache 2.0 License.
Copyright (c) 2023 German Aerospace Center (DLR) * German Remote Sensing Data Center * Department: Geo-Risks and Civil Security
See NEWS.
The UKIS team welcomes contributions from the community. For more detailed information, see our guide on contributing if you’re interested in getting involved.
The DLR project Environmental and Crisis Information System (the German abbreviation is UKIS, standing for Umwelt- und Kriseninformationssysteme aims at harmonizing the development of information systems at the German Remote Sensing Data Center (DFD) and setting up a framework of modularized and generalized software components.
UKIS is intended to ease and standardize the process of setting up specific information systems and thus bridging the gap from EO product generation and information fusion to the delivery of products and information to end users.
Furthermore, the intention is to save and broaden know-how that was and is invested and earned in the development of information systems and components in several ongoing and future DFD projects.
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.
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