---
title: "geobounds: Download administrative boundaries in R"
description: "Download, inspect and map administrative boundaries"
bibliography: REFERENCES.bib
link-citations: true
vignette: >
  %\VignetteIndexEntry{geobounds: Download administrative boundaries in R}
  %\VignetteEngine{quarto::html}
  %\VignetteEncoding{UTF-8}
---

<!-- geobounds.qmd is generated from geobounds.qmd.orig. Please edit that file -->



```{=html}
<div class="callout callout-style-default callout-important callout-titled">
<div class="callout-header d-flex align-content-center">
<div class="callout-icon-container"><i class="callout-icon"></i></div>
<div class="callout-title-container flex-fill">Important</div>
</div>
<div class="callout-body-container callout-body">
```

The package code is MIT licensed. Downloaded boundaries and figures derived from
them retain the licenses and attribution requirements of **geoBoundaries** and
their original sources. Check the boundary metadata before reuse.

```{=html}
</div>
</div>
```

## Introduction

The **geobounds** package provides an interface for downloading and working with
administrative boundaries from the
[**geoBoundaries**](https://www.geoboundaries.org/) Global Database of Political
Administrative Boundaries [@10.1371/journal.pone.0231866].

The default **gbOpen** release type covers countries worldwide across multiple
ADM levels. Its boundaries use multiple open licenses, including ODbL, CC BY
and CC BY-SA. The package also supports **gbHumanitarian** and
**gbAuthoritative**, which differ in their sources, validation processes and
licensing. With **geobounds**, you can download boundaries as **sf** objects,
inspect boundary metadata, cache downloaded files and integrate boundaries
into spatial workflows.

This vignette keeps the main workflow in one place. It first explains how to
[choose the right boundary type](#understanding-the-boundaries), then covers
[cache management](#cache-management-and-performance) and finishes with a
[spatial analysis example](#spatial-analysis-workflows).

## Understanding the boundaries

The **geoBoundaries** database is designed for scientific and academic use, with
quality assurance that includes manual review and hand digitization of physical
maps where necessary.

This precision comes at a cost: some files can be quite large and may take
longer to download. For visualization or general mapping purposes, we recommend
using simplified boundaries by setting `simplified = TRUE`.


``` r
library(geobounds)
library(ggplot2)
library(dplyr)

# Compare resolutions.
norway <- gb_get_adm0("NOR") |>
  mutate(res = "Full resolution")
print(object.size(norway), units = "Mb")
#> 26.5 Mb

norway_simp <- gb_get_adm0(country = "NOR", simplified = TRUE) |>
  mutate(res = "Simplified")
print(object.size(norway_simp), units = "Mb")
#> 1.5 Mb

norway_all <- bind_rows(norway, norway_simp)

# Plot with ggplot2.
ggplot(norway_all) +
  geom_sf(fill = "#BA0C2F", color = "#00205B") +
  facet_wrap(vars(res)) +
  theme_minimal() +
  labs(
    caption = paste(
      "Sources: geoBoundaries and the original boundary provider,",
      "check gb_get_metadata() for the license"
    )
  )
```

<div class="figure">
<img src="./norway-1.png" alt="Comparison between full-resolution and simplified boundaries." width="100%" />
<p class="caption">Comparison between full-resolution and simplified boundaries.</p>
</div>

### Individual country boundaries

The **geoBoundaries** API provides [individual country
boundaries](https://www.geoboundaries.org/countryDownloads.html) that reflect how
countries represent their own boundaries, without special identification of
disputed areas.

Download individual country boundaries with `gb_get()` or the `gb_get_adm*()`
wrappers. Borders are not guaranteed to align perfectly, gaps may exist between
countries and disputed territories may not be represented consistently.


``` r
india_pak <- gb_get_adm0(c("India", "Pakistan"))

# Highlight the disputed Kashmir area.
ggplot(india_pak) +
  geom_sf(aes(fill = shapeName), alpha = 0.5) +
  scale_fill_manual(values = c("#FF671F", "#00401A")) +
  labs(
    fill = "Country",
    title = "Map of India and Pakistan",
    subtitle = "Note the overlap in the Kashmir region",
    caption = paste(
      "Sources: geoBoundaries and the original boundary providers,",
      "check gb_get_metadata() for licenses"
    )
  )
```

<div class="figure">
<img src="./intersect-1.png" alt="Map showing overlap in the disputed Kashmir area." width="100%" />
<p class="caption">Map showing overlap in the disputed Kashmir area.</p>
</div>

Each individual country boundary is governed by the license identified in its
boundary metadata.


``` r
gb_get_metadata(c("India", "Pakistan"), adm_lvl = "ADM0") |>
  select(
    boundaryName,
    boundaryLicense,
    boundarySource,
    licenseSource
  )
#> # A tibble: 2 × 4
#>   boundaryName boundaryLicense                                      boundarySource licenseSource
#>   <chr>        <chr>                                                <chr>          <chr>        
#> 1 India        CC0 1.0 Universal (CC0 1.0) Public Domain Dedication geoBoundaries… commons.wiki…
#> 2 Pakistan     Open Data Commons Open Database License 1.0          OpenStreetMap… www.openstre…
```

When sharing a boundary or a derived product, attribute **geoBoundaries** and
the original providers shown in the metadata. Include the applicable license,
link to its terms and indicate modifications when required. ODbL and CC BY-SA
data may impose share-alike obligations beyond attribution.

### Global composite boundaries

Use `gb_get_world()` for global composite boundaries that standardize disputed
areas and fill gaps between borders. These boundaries are also known as
Comprehensive Global Administrative Zones (CGAZ). They differ from individual
country boundaries in three important ways:

1.  Extensive simplification keeps file sizes small enough for most desktop
    software.
2.  Disputed areas are removed and replaced with polygons following United
    States Department of State definitions.
3.  Gaps between borders are filled.

CGAZ boundaries and figures are not covered by the package's MIT license.
Follow the citation and use information included in each downloaded CGAZ
archive.


``` r
cgaz_india_pak <- gb_get_world(c("India", "Pakistan"))

ggplot(cgaz_india_pak) +
  geom_sf(aes(fill = shapeName), alpha = 0.5) +
  scale_fill_manual(values = c("#FF671F", "#00401A")) +
  labs(
    fill = "Country",
    title = "Map of India and Pakistan",
    subtitle = "CGAZ does not overlap",
    caption = "Source: geoBoundaries (CGAZ)"
  )
```

<div class="figure">
<img src="./cgaz-1.png" alt="Map showing no overlap in Kashmir, provided by CGAZ." width="100%" />
<p class="caption">Map showing no overlap in Kashmir, provided by CGAZ.</p>
</div>

## Cache management and performance

**geobounds** stores downloaded files in a cache directory so repeated requests
for the same country and ADM level can reuse the cached file. For example:


``` r
# Show the current cache directory.
current <- gb_detect_cache_dir()
#> ℹ 'C:\Users\RUNNER~1\AppData\Local\Temp\Rtmp6LfQDv'

current
#> [1] "C:\\Users\\RUNNER~1\\AppData\\Local\\Temp\\Rtmp6LfQDv"

# Change to a new cache directory.
newdir <- file.path(tempdir(), "/geoboundvignette")
gb_set_cache_dir(newdir)
#> ✔ geobounds cache directory is 'C:\Users\RUNNER~1\AppData\Local\Temp\Rtmp6LfQDv//geoboundvignette'.
#> ℹ To use this cache directory in future sessions, call `gb_set_cache_dir()` with `install = TRUE`.

# Download the example data.
example <- gb_get_adm0("Vatican City", quiet = FALSE)
#> ℹ Downloading file from <https://github.com/wmgeolab/geoBoundaries/raw/9469f09/releaseData/gbOpen/VAT/ADM0/geoBoundaries-VAT-ADM0-all.zip>.
#> → Cache directory is 'C:\Users\RUNNER~1\AppData\Local\Temp\Rtmp6LfQDv//geoboundvignette/gbOpen'.

# Restore the cache directory.
gb_set_cache_dir(current)
#> ✔ geobounds cache directory is 'C:\Users\RUNNER~1\AppData\Local\Temp\Rtmp6LfQDv'.
#> ℹ To use this cache directory in future sessions, call `gb_set_cache_dir()` with `install = TRUE`.

current == gb_detect_cache_dir()
#> ℹ 'C:\Users\RUNNER~1\AppData\Local\Temp\Rtmp6LfQDv'
#> [1] TRUE
```

To clear the cache, use `gb_clear_cache()`.

Use the `cache_dir` argument to set a cache directory for an individual function
call.

## Spatial analysis workflows

Because boundaries are returned as **sf** objects, you can combine them with
other spatial data:

- Clip raster data to administrative units.
- Compute zonal statistics.
- Create choropleth maps.
- Perform spatial joins with survey or tabular data.

This example creates a choropleth map using metadata from individual country
boundaries and global composite boundaries from CGAZ:


``` r
# Get boundary metadata.
latam_meta <- gb_get_metadata(adm_lvl = "ADM0") |>
  select(boundaryISO, boundaryName, Continent, worldBankIncomeGroup) |>
  filter(Continent == "Latin America and the Caribbean") |>
  glimpse()
#> Rows: 47
#> Columns: 4
#> $ boundaryISO          <chr> "ABW", "AIA", "ARG", "ATG", "BES", "BHS", "BLM", "BLZ", "BOL", "B…
#> $ boundaryName         <chr> "Aruba", "Anguilla", "Argentina", "Antigua and Barbuda", "Bonaire…
#> $ Continent            <chr> "Latin America and the Caribbean", "Latin America and the Caribbe…
#> $ worldBankIncomeGroup <chr> "High-income Countries", "No income group available", "High-incom…

# Adjust factors.
latam_meta$income_factor <- factor(
  latam_meta$worldBankIncomeGroup,
  levels = c(
    "High-income Countries",
    "Upper-middle-income Countries",
    "Lower-middle-income Countries",
    "Low-income Countries"
  )
)

# Get global composite boundaries from CGAZ.
latam_sf <- gb_get_world(adm_lvl = "ADM0") |>
  inner_join(latam_meta, by = c("shapeGroup" = "boundaryISO"))

ggplot(latam_sf) +
  geom_sf(aes(fill = income_factor)) +
  scale_fill_brewer(palette = "Greens", direction = -1) +
  guides(fill = guide_legend(position = "bottom", nrow = 2)) +
  coord_sf(
    crs = "+proj=laea +lon_0=-75 +lat_0=-15"
  ) +
  labs(
    title = "World Bank Income Group",
    subtitle = "Latin America and the Caribbean",
    fill = "",
    caption = "Source: geoBoundaries (CGAZ and gbOpen metadata)"
  )
```

<div class="figure">
<img src="./choro-1.png" alt="World Bank Income Group: Latin America and the Caribbean." width="100%" />
<p class="caption">World Bank Income Group: Latin America and the Caribbean.</p>
</div>

## Summary

The **geobounds** package supports reproducible workflows for downloading,
caching and visualizing administrative boundaries. The returned **sf** objects
can be used directly in mapping, spatial analysis and data integration
workflows.

## References
