Case Study: Maidstone

Analysis summary

  • You calculated the BNA score for Maidstone, UK within a biking distance of 3 km.

  • The analysis took 23.44 minutes to run.

  • The analysis corresponds to the OSM boundary area (red) based on its Lower Layer Superoutput Areas (LSOA) (green).

Results

Score/Value
Overall Score 59.44
Population 167730
Length of Low Stress Network (km) 2484.9
Length of High Stress Network (km) 1151.6
People
Total People 64.54
Opportunity
Employment 62.33
K-12 Education 78.53
Technical/vocational school 50.6
Higher Education 30.97
Total Opportunity 60.56
Core Services
Doctor offices/clinics 40.16
Dentist offices 78.11
Hospitals 43.38
Pharmacies 42.08
Supermarkets 66.32
Social services 35.77
Total Core Services 50.67
Retail
Total Retail shopping 58.86
Recreation
Parks 80.28
Recreational trails 83.99
Community centers 39.35
Total Recreation 71.35
Transit
Total Transit 53.24

Setup info

To run this analysis, the user should:

  1. Create a database on its PostgreSQL. To test connection an empty table on the database called “test” should be created on the public schema.
    • Tip: Run FULL VACUUM/ANALYZE frequently to the database to improve performance.
    • Follow the tips on this presentation to increase performance of the database.
  2. Set path variables for osm2pgsql and osm2pgrouting.

  3. Create a password file on %APPDATA%/postgresql/pgpass.conf with the format hostname:port:database:username:password

Data sources

Population
Jobs
Region Source Description Source Description
US Not added yet. Not added yet.
Europe GEOSTAT - EUROSTAT Population grid per squared kilometer for 2011. No data available for the whole continent with high spatial resolution.
UK Office of National Statistics - UK Population estimates for mid-2017 at LSOA and MSOA level. Office of National Statistics - UK Flow commute data for the 2011 Census at LSOA and MSOA level, where the total number of trips per super-output area where aggregated.
The Netherlands CBS (Centraal Bureau voor de Statistiek) - NL District and neighborhood map with associated key figures for 2017. LISA (National Information System for Workplaces) dataset Jobs per municipality. To estimate jobs at neighborhood level an weighted estimation was made with the number of jobs in the whole municipality hafly weighted by the fraction of the neighborhood area, and hafly weighted by the fraction of companies in the neighborhood. This approach needs to be validated, however it is one way to approximate it, given that LISA data at this aggregation level has to be bought and is not open data.
---
title: "BNA Report"
output:
  html_notebook:
    highlight: haddock
    theme: journal
---

```{r setup, include=FALSE}
knitr::opts_knit$set(root.dir = normalizePath("../"))
knitr::read_chunk(
  "../scripts/analysis.R"
)
```

# Case Study: `r sa_name` {.tabset}

## Analysis summary

```{r database, include = FALSE}
db_name = "bna_europe"
local_host = "localhost"
port_num = 5432
user_name = "postgres"
db_pass = rstudioapi::askForPassword("Database password")
```

```{r variables, warning = FALSE, include = FALSE}
## Basic variables to set 
country = "UK" # Possible options: UK, US, Netherlands, NA
sa_name = "Maidstone" # study area
sa_crs = 3857 # crs
biking_distance = 3000 ## in meters

area_type = "osm" ## possible options: "
                  ## "osm" for any country
                  ## "ttwa" for the UK

min_area = "lsoa" ## possible options: 
                  ## "geostat" for any country, 
                  ## "lsoa" or "msoa" for the UK
                  ## "cb" for the US (not yet)
                  ## "buurt" for the Netherlands

## If the analysis runs with the GEOSTAT population grid as min_area
subdivisions = 4
```

* You calculated the BNA score for 
<span style="color:#BB616D">**`r sa_name`, `r country`**</span> 
within a biking distance of 
<span style="color:#BB616D">**`r biking_distance/1000`**</span> km.

* The analysis took **`r round(as.numeric(duration),2)` minutes** to run.

* The analysis corresponds to the 
<span style="color:#BB616D">**`r ifelse(area_type == "ttwa","Travel to Work Area","OSM boundary area")`**</span> (red) based on 
<span style="color:#BB616D">**`r ifelse(min_area == "msoa","its Middle Layer Superoutput Areas (MSOA)",ifelse(min_area == "lsoa","its Lower Layer Superoutput Areas (LSOA)",ifelse(min_area == "cb","its census blocks",ifelse(min_area == "buurt","its neighborhood areas","a subdivided population grid from GEOSTAT"))))`**</span> (green).

```{r area, include=FALSE, cache = FALSE}
```

```{r network, include = FALSE, cache = FALSE}
```

```{r min_area, cache = FALSE, include=FALSE}
```

```{r plot_area, fig.width = 8, fig.height= 5, echo = FALSE, warning = FALSE, message = FALSE}
library(tmap)

tmap_mode("view")
tmap_leaflet(
     tm_view(
     basemaps = "CartoDB.Positron"
   ) +
     tm_shape(min_area_grid) +
     tm_polygons(
       border.col = "green",
       alpha = 0
      ) +
     tm_shape(boundary) +
     tm_polygons(
       border.col = "red",
       alpha = 0,
       lwd = 4
      ) 
)
```

```{r reachable_roads, include = FALSE, cache = FALSE}
```

```{r accessibility, include = FALSE, cache = FALSE}
```

```{r overall_score, include = FALSE, cache = FALSE}
```

## Results

```{r, include = FALSE, warning = FALSE}
## Call data into R
library(sf)
bna_score <- st_read(
  dsn = connection,
  layer = c("generated","sa_pop_grid")
)

stress_network <- st_read(
  dsn = connection,
  query = "SELECT ft_seg_stress, tf_seg_stress, geom FROM received.sa_ways"
)

## Establish colors and breaks for the BNA display based on the PfB visualizer
bna_pal <- c("#FC7151","#DC7E6A","#C98875","#C08B83","#AD9396",
             "#9C9A9F","#929EAC","#78AAC5","#6FADCB","#49BFE6")

bna_breaks <- c(6,12,18,24,30,36,42,48,54,100)

stress_network$ft_stress <- ifelse(stress_network$ft_seg_stress == 1,"low stress","high stress")
stress_network$tf_stress <- ifelse(stress_network$tf_seg_stress == 1,"low stress","high stress")

## Call plotting library and set to mode view
library(tmap)
tmap_mode("view")
```

```{r, fig.width = 10, fig.height= 5, fig.align = 'center', echo = FALSE, warning = FALSE}
int_map <- 
  tmap::tmap_leaflet(
     tmap::tm_view(
     basemaps = c(
       "CartoDB.Positron",
       "CartoDB.DarkMatter",
       "OpenStreetMap.Mapnik"
     )
   ) +
     tmap::tm_shape(bna_score) +
     tmap::tm_polygons(
       col = "overall_score",
       style = "fixed",
       breaks = bna_breaks,
       palette = bna_pal,
       alpha = 0.8,
       title = "BNA score",
       border.col = NULL,
       colorNA = NULL,
       showNA = FALSE
      ) +
     tmap::tm_shape(stress_network) +
     tmap::tm_lines(
       col = "ft_stress", 
       colorNA = NULL,
       showNA = FALSE,
       palette = c("firebrick1", "deepskyblue3"),
       title.col = "Stress network"
      ) +
     tmap::tm_shape(stress_network) +
     tmap::tm_lines(
       col = "tf_stress", 
       colorNA = NULL,
       showNA = FALSE,
       palette = c("firebrick1", "deepskyblue3"),
       legend.col.show = FALSE
      )
  )

int_map
```

```{r display_table, include = TRUE, echo = FALSE, cache = FALSE}
```

```{r duration, include = FALSE, cache = FALSE}
```

## Setup info

To run this analysis, the user should:

1. Create a database on its PostgreSQL. To test connection an empty table on the database called "test" should be created on the public schema. 
    + Tip: Run FULL VACUUM/ANALYZE frequently to the database to improve performance.
    + Follow the tips on [this presentation](https://thebuild.com/presentations/not-your-job.pdf) to increase performance of the database.

2. Set path variables for `osm2pgsql` and `osm2pgrouting`.

3. Create a password file on `%APPDATA%/postgresql/pgpass.conf` with the format *hostname:port:database:username:password*


## Data sources

```{r, echo = FALSE}
library(kableExtra)
tbl <- data.frame(
  Region = cell_spec(
    c(
      "US",
      "Europe",
      "UK",
      "The Netherlands"
    )
  ),
  source_pop = cell_spec(
    c(
      "",
      "GEOSTAT - EUROSTAT",
      "Office of National Statistics - UK",
      "CBS (Centraal Bureau voor de Statistiek) - NL"
    ),
    link = c(
      "",
      "https://ec.europa.eu/eurostat/web/gisco/geodata/reference-data/population-distribution-demography/geostat",
      "https://www.ons.gov.uk/peoplepopulationandcommunity/populationandmigration/populationestimates",
      "https://www.cbs.nl/nl-nl/dossier/nederland-regionaal/geografische%20data/wijk-en-buurtkaart-2017"
    )
  ),
  desc_pop = cell_spec(
    c(
      "Not added yet.",
      "Population grid per squared kilometer for 2011.",
      "Population estimates for mid-2017 at LSOA and MSOA level.",
      "District and neighborhood map with associated key figures for 2017."
    )
  ),
  source_jobs = cell_spec(
    c(
      "",
      "",
      "Office of National Statistics - UK",
      "LISA (National Information System for Workplaces) dataset"
    ), 
    link = c(
      "",
      "",
      "https://wicid.ukdataservice.ac.uk/cider/wicid/downloads.php?guest=1",
      "https://www.lisa.nl/data/gratis-data/overzicht-lisa-data-per-gemeente"
    )
  ),
  desc_jobs = cell_spec(
    c(
      "Not added yet.",
      "No data available for the whole continent with high spatial resolution.",
      "Flow commute data for the 2011 Census at LSOA and MSOA level, where the total number of trips per super-output area where aggregated.",
      "Jobs per municipality. To estimate jobs at neighborhood level an weighted estimation was made with the number of jobs in the whole municipality hafly weighted by the fraction of the neighborhood area, and hafly weighted by the fraction of companies in the neighborhood. This approach needs to be validated, however it is one way to approximate it, given that LISA data at this aggregation level has to be bought and is not open data."
    )
  )
)

names(tbl) <- c("Region", "Source", "Description", "Source", "Description")

kable(tbl, align = "c", escape = FALSE) %>%
  kable_styling("striped", "bordered", font_size = 10, full_width = T) %>% 
  add_header_above(c(" ", "Population" = 2, "Jobs" = 2)) %>% 
  column_spec(3, width_max = "10cm") %>% 
  column_spec(5, width_max = "10cm")
```

