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areal

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Areal interpolation is the process making estimates from a source set of polygons to an overlapping but incongruent set of target polygons. One challenge with areal interpolation is that, while the processes themselves are well documented in the academic literature, implementing them often involves “reinventing the wheel” by re-creating the process in the analyst’s tool choice.

While the R package sf does offer a basic interface for areal weighted interpolation (st_interpolate_aw), it lacks some features that we use in our work. The areal package contains a suite tools for validation and estimation, providing a full-featured workflow that fits into both modern data management (e.g. tidyverse) and spatial data (e.g. sf) frameworks.

Joural of Open Souce Software Article

An article describing areal’s approach to areal weighted interpolation has been published in the The Journal of Open Source Software. The article includes benchmarking of areal performance on several data sets. Please cite the paper if you use areal in your work!

Installation

The easiest way to get areal is to install it from CRAN:

install.packages("areal")

The development version of areal can be accessed from GitHub with remotes:

# install.packages("remotes")
remotes::install_github("chris-prener/areal")

Note that installations that require sf to be built from source will require additional software regardless of operating system. You should check the sf package website for the latest details on installing dependencies for that package. Instructions vary significantly by operating system.

Usage

Two function prefixes are used in areal to allow users to take advantage of RStudio’s auto complete functionality:

Data

The package contains four overlapping data sets:

These can be used to illustrate the core functionality of the package. The following examples assume:

> library(areal)
>
> race <- ar_stl_race
> asthma <- ar_stl_asthma
> wards <- ar_stl_wards

Areal Weighted Interpolation

areal currently implements an approach to interpolation known as areal weighted interpolation. It is arguably the simplest and most common approach to areal interpolation, though it does have some drawbacks (see the areal weighted interpolation vignette for details). The basic usage of areal is through the aw_interpolate() function. This is a pipe-able function that allows for the simultaneous interpolation of multiple values.

In this first example, the total estimated population (TOTAL_E) of each ward is calculated from its overlapping census tracts:

aw_interpolate(wards, tid = WARD, source = race, sid = "GEOID", 
               weight = "sum", output = "sf", extensive = "TOTAL_E")
#> old-style crs object detected; please recreate object with a recent sf::st_crs()
#> old-style crs object detected; please recreate object with a recent sf::st_crs()
#> old-style crs object detected; please recreate object with a recent sf::st_crs()
#> old-style crs object detected; please recreate object with a recent sf::st_crs()
#> old-style crs object detected; please recreate object with a recent sf::st_crs()
#> old-style crs object detected; please recreate object with a recent sf::st_crs()
#> old-style crs object detected; please recreate object with a recent sf::st_crs()
#> old-style crs object detected; please recreate object with a recent sf::st_crs()
#> old-style crs object detected; please recreate object with a recent sf::st_crs()
#> old-style crs object detected; please recreate object with a recent sf::st_crs()
#> old-style crs object detected; please recreate object with a recent sf::st_crs()
#> old-style crs object detected; please recreate object with a recent sf::st_crs()
#> old-style crs object detected; please recreate object with a recent sf::st_crs()
#> Simple feature collection with 28 features and 4 fields
#> Geometry type: POLYGON
#> Dimension:     XY
#> Bounding box:  xmin: 733361.8 ymin: 4268336 xmax: 746157.7 ymax: 4295504
#> Projected CRS: NAD83 / UTM zone 15N
#> First 10 features:
#>    OBJECTID WARD      AREA   TOTAL_E                       geometry
#> 1         1    1  46138761  7991.565 POLYGON ((740184.2 4286431,...
#> 2         2    2 267817711 12145.021 POLYGON ((742392.1 4289178,...
#> 3         3    3  66291644  7344.287 POLYGON ((742956.1 4284113,...
#> 4         4    4  53210707  8457.672 POLYGON ((739557.6 4284080,...
#> 5         5    5  60462396  8783.377 POLYGON ((744883.8 4281632,...
#> 6         6    6  64337271 14050.399 POLYGON ((742501.6 4279976,...
#> 7         7    7 101268146 15840.086 POLYGON ((745618.6 4279867,...
#> 8         8    8  45966410 12188.131 POLYGON ((739842.8 4277724,...
#> 9         9    9  73993891 14217.149 POLYGON ((742619.4 4276734,...
#> 10       10   10  62915358 11239.213 POLYGON ((737257.7 4277050,...

This example outputs a simple features (sf) object and uses one of two options for calculating weights. All of these arguments are documented both within the package (use ?aw_interpolate) and on the package’s website.

What results from aw_interpolate() is mapped below. Total population per census tract in St. Louis is mapped on the left in panel A. Using aw_interpolate() as we did in the previous example, we estimate population counts for Wards in St. Louis from those census tract values. These estimated values are mapped on the right in panel B.

Both extensive and intensive data can be interpolated simultaneously by using both the extensive and intensive arguments. In this second example, the asthma and race data are combined, and estimates for both the population values and asthma rates are calculated for each ward from its overlapping census tracts:

# remove sf geometry
st_geometry(race) <- NULL

# create combined data
race %>%
  select(GEOID, TOTAL_E, WHITE_E, BLACK_E) %>%
  left_join(asthma, ., by = "GEOID") -> combinedData
#> old-style crs object detected; please recreate object with a recent sf::st_crs()

# interpolate
wards %>%
  select(-OBJECTID, -AREA) %>%
  aw_interpolate(tid = WARD, source = combinedData, sid = "GEOID", 
               weight = "total", output = "tibble", 
               extensive = c("TOTAL_E", "WHITE_E", "BLACK_E"),
               intensive = "ASTHMA")
#> old-style crs object detected; please recreate object with a recent sf::st_crs()
#> old-style crs object detected; please recreate object with a recent sf::st_crs()
#> old-style crs object detected; please recreate object with a recent sf::st_crs()
#> old-style crs object detected; please recreate object with a recent sf::st_crs()
#> old-style crs object detected; please recreate object with a recent sf::st_crs()
#> old-style crs object detected; please recreate object with a recent sf::st_crs()
#> old-style crs object detected; please recreate object with a recent sf::st_crs()
#> old-style crs object detected; please recreate object with a recent sf::st_crs()
#> old-style crs object detected; please recreate object with a recent sf::st_crs()
#> old-style crs object detected; please recreate object with a recent sf::st_crs()
#> old-style crs object detected; please recreate object with a recent sf::st_crs()
#> # A tibble: 28 × 5
#>     WARD BLACK_E TOTAL_E WHITE_E ASTHMA
#>    <int>   <dbl>   <dbl>   <dbl>  <dbl>
#>  1     1   7778.   7991.    153.  13.4 
#>  2     2  10552.  12042.   1308.  13.2 
#>  3     3   6627.   7334.    589.  14.1 
#>  4     4   8203.   8458.    160.  13.6 
#>  5     5   6971.   8689.   1518.  13.8 
#>  6     6   7418.  14022.   5833.  11.7 
#>  7     7   6544.  15645.   8123.   9.72
#>  8     8   3796.  12188.   7604.   9.82
#>  9     9   6351.  14095.   6786.  11.8 
#> 10    10   1667.  11239.   8703.   9.44
#> # … with 18 more rows

Another advantage of areal is that the interpolation process is not a “black box”, but rather can be manually completed if necessary. Functions for validating data, previewing the areal weights, and walking step-by-step through the interpolation process are provided. See the areal weighted interpolation vignette for additional details about this workflow.

Road-map

We are planning to experiment with at least three additional techniques for areal interpolation for possible inclusion into the package. These include:

We do not have a timeline for these experiments, though we are planning to begin experimenting with the pycnophylactic method in the coming months. We will be keeping the issues (linked to above) updated with progress. If you are interested in bringing these techniques to R, please feel free to contribute to the development of areal. The best place to start is bt checking in on our GitHub issues for each technique to see what help is needed!

Contributor Code of Conduct

Please note that this project is released with a Contributor Code of Conduct. By participating in this project you agree to abide by its terms.

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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