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Introduction to aopdata

2024-08-27

This vignette introduces the aopdata package.

aopdata is an R package to download data from the Access to Opportunities Project (AOP). The AOP is a research initiative led by the Institute for Applied Economic Research (Ipea) with the aim to study transport access to opportunities in Brazilian cities.

The aopdata package brings annual estimates of access to employment, health, education and social protection services by transport mode at a fine spatial resolution for the 20 largest cities in Brazil. The package also brings data on the spatial distribution of population by sex, race, income and age, as well as the distribution of jobs, schools, healthcare facilities and social assistance reference centers.

Data for 2017, 2018 and 2019 are already available, and cover accessibility estimates by car and active transport modes (walking and cycling) for the 20 largest cities in the country, and by public transport for over 9 major cities. For more information on the AOP website.

Installation

You can install aopdata from CRAN, or the development version from GitHub.

# CRAN
install.packages("aopdata")

# dev version from github
utils::remove.packages('aopdata')
devtools::install_github("ipeaGIT/aopdata", subdir = "r-package")

Overview of the package

The aopdata package includes five core functions.

For a detailed explanations of these functions, check the vignettes: - Mapping urban accessibility - Mapping population data - Mapping land use data - Analyzing inequality in access to opportunities

Basic Usage

First, you need to load the package.

library(aopdata)

Data dictionary

The dictionary of data columns is presented in the documentation of each function. However, you can also open the data dictionary on a web browser by running:

# for English
aopdata_dictionary(lang = 'en')

# for Portuguese
aopdata_dictionary(lang = 'pt')

Accessibility estimates

The read_access() function downloads accessibility estimates for a given city, mode and year. For the sake of convenience, this function will also automatically download the population and land use data for the cities selected. Note that accessibility estimates are available for peak and off-peak periods for public_transportand car modes.

# Download accessibility, population and land use data
cur <- read_access(
          city = 'Curitiba', 
          mode = 'public_transport', 
          peak = TRUE,
          year = 2019,
          showProgress = FALSE
          )

You many also set the parameter geometry = TRUE so that functions return a spatial sf object with the geometries of the H3 spatial grid.

# Download accessibility, population and land use data
cur <- read_access(
          city = 'Curitiba', 
          mode = 'public_transport', 
          peak = TRUE,
          year = 2019,
          geometry = TRUE
          )

Population and land use data

In case you are only interested in using the population and land use data generated by the Access to Opportunities Project, you can download these data sets separately. Please note that the population available comes from the latest Brazilian 2010 census, while land use data cna be downloaded for 2017, 2018 or 2019.

# Land use data
lnu_for <- read_landuse(
                city = 'Fortaleza', 
                year = 2019,
                geometry = TRUE,
                showProgress = FALSE
                )

# Population data
pop_for <- read_population(
                city = 'Fortaleza', 
                year = 2010,
                geometry = TRUE,
                showProgress = FALSE
                )

Read only spatial grid data

In case you would like to download only the H3 spatial grid of cities in the AOP project, you can use the read_grid() function.

h3_for <- read_grid(city = 'Fortaleza', showProgress = FALSE)

head(h3_for)
#> Simple feature collection with 6 features and 4 fields
#> Geometry type: POLYGON
#> Dimension:     XY
#> Bounding box:  xmin: -38.50828 ymin: -3.889301 xmax: -38.4983 ymax: -3.878958
#> Geodetic CRS:  WGS 84
#>            id_hex abbrev_muni name_muni code_muni
#> 1 89801040323ffff         for Fortaleza   2304400
#> 2 89801040327ffff         for Fortaleza   2304400
#> 3 8980104032bffff         for Fortaleza   2304400
#> 4 8980104032fffff         for Fortaleza   2304400
#> 5 89801040333ffff         for Fortaleza   2304400
#> 6 89801040337ffff         for Fortaleza   2304400
#>                             geom
#> 1 POLYGON ((-38.50232 -3.8858...
#> 2 POLYGON ((-38.50527 -3.8840...
#> 3 POLYGON ((-38.49932 -3.8841...
#> 4 POLYGON ((-38.50227 -3.8824...
#> 5 POLYGON ((-38.50237 -3.8893...
#> 6 POLYGON ((-38.50532 -3.8875...

Note

In all of the functions above, note that:

df <- read_access(city = 'cur', 
                  mode = 'public_transport', 
                  year = 2019,
                  peak = TRUE,
                  showProgress = FALSE)

df <- read_grid(city = 'for', showProgress = FALSE)
all <- read_landuse(city = 'all', year = 2019)

Acknowledgement

The R package aopdata is developed by a team at the Institute for Applied Economic Research (Ipea), Brazil.

Citation

If you use this package in your own work, please cite it as one of the publications below:

Population and land use data

Accessibility data

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.
Health stats visible at Monitor.