## ----include = FALSE---------------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>", eval = identical(tolower(Sys.getenv("NOT_CRAN")), "true"), out.width = "100%" ) ## ----eval=FALSE, message=FALSE, warning=FALSE--------------------------------- # # From CRAN # install.packages("geobr") # # # Development version # utils::remove.packages('geobr') # devtools::install_github("ipeaGIT/geobr", subdir = "r-package") # ## ----message=FALSE, warning=FALSE, results='hide'----------------------------- library(geobr) library(sf) library(dplyr) library(ggplot2) ## ----message=FALSE, warning=FALSE--------------------------------------------- # Available data sets datasets <- list_geobr() head(datasets) ## ----message=FALSE, warning=FALSE--------------------------------------------- # State of Sergige state <- read_state( code_state="SE", year=2018, showProgress = FALSE ) # Municipality of Sao Paulo muni <- read_municipality( code_muni = 3550308, year=2010, showProgress = FALSE ) ggplot() + geom_sf(data = muni, color=NA, fill = '#1ba185') + theme_void() ## ----message=FALSE, warning=FALSE, results='hide'----------------------------- # All municipalities in the state of Minas Gerais muni <- read_municipality(code_muni = "MG", year = 2007, showProgress = FALSE) # All census tracts in the state of Rio de Janeiro cntr <- read_census_tract( code_tract = "RJ", year = 2010, showProgress = FALSE ) head(muni) ## ----message=FALSE, warning=FALSE--------------------------------------------- # read all intermediate regions inter <- read_intermediate_region( year = 2017, showProgress = FALSE ) # read all states states <- read_state( year = 2019, showProgress = FALSE ) head(states) ## ----message=FALSE, warning=FALSE, fig.height = 8, fig.width = 8, fig.align = "center"---- # Remove plot axis no_axis <- theme(axis.title=element_blank(), axis.text=element_blank(), axis.ticks=element_blank()) # Plot all Brazilian states ggplot() + geom_sf(data=states, fill="#2D3E50", color="#FEBF57", size=.15, show.legend = FALSE) + labs(subtitle="States", size=8) + theme_minimal() + no_axis ## ----message=FALSE, warning=FALSE, fig.height = 8, fig.width = 8, fig.align = "center"---- # Download all municipalities of Rio all_muni <- read_municipality( code_muni = "RJ", year= 2010, showProgress = FALSE ) # plot ggplot() + geom_sf(data=all_muni, fill="#2D3E50", color="#FEBF57", size=.15, show.legend = FALSE) + labs(subtitle="Municipalities of Rio de Janeiro, 2000", size=8) + theme_minimal() + no_axis ## ----message=FALSE, warning=FALSE, results='hide'----------------------------- # Read data.frame with life expectancy data df <- utils::read.csv(system.file("extdata/br_states_lifexpect2017.csv", package = "geobr"), encoding = "UTF-8") states$name_state <- tolower(states$name_state) df$uf <- tolower(df$uf) # join the databases states <- dplyr::left_join(states, df, by = c("name_state" = "uf")) ## ----message=FALSE, warning=FALSE, fig.height = 8, fig.width = 8, fig.align = "center"---- ggplot() + geom_sf(data=states, aes(fill=ESPVIDA2017), color= NA, size=.15) + labs(subtitle="Life Expectancy at birth, Brazilian States, 2014", size=8) + scale_fill_distiller(palette = "Blues", name="Life Expectancy", limits = c(65,80)) + theme_minimal() + no_axis ## ----------------------------------------------------------------------------- library(censobr) library(arrow) hs <- read_households(year = 2010, showProgress = FALSE) ## ----warning = FALSE---------------------------------------------------------- esg <- hs |> collect() |> group_by(code_muni) |> # (a) summarize(rede = sum(V0010[which(V0207=='1')]), # (b) total = sum(V0010)) |> # (b) mutate(cobertura = rede / total) |> # (c) collect() # (d) head(esg) ## ----warning = FALSE---------------------------------------------------------- # download municipality geometries muni_sf <- geobr::read_municipality(year = 2010, showProgress = FALSE) # merge data esg_sf <- left_join(muni_sf, esg, by = 'code_muni') # plot map ggplot() + geom_sf(data = esg_sf, aes(fill = cobertura), color=NA) + labs(title = "Share of households connected to a sewage network") + scale_fill_distiller(palette = "Greens", direction = 1, name='Share of\nhouseholds', labels = scales::percent) + theme_void()