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Monthly air passengers and landings at San Francisco International Airport (SFO)

Home Page: https://ramikrispin.github.io/sfo/

License: Other

R 100.00%
sfo airport airlines statistics passengers

sfo's Introduction

sfo

CRAN_Status_Badge lifecycle License: MIT GitHub commit

The sfo package summarizes the monthly air passengers and landings at San Francisco International Airport (SFO) between 2005 and 2022. Data source: San Francisco data portal - DataSF API

Installation

Install the stable version from CRAN:

install.packages("sfo")

or install the development version from Github:

# install.packages("devtools")
devtools::install_github("RamiKrispin/sfo", ref = "main")

Datasets

The sfo package provides the following two datasets:

  • sfo_passengers - air traffic passengers statistics
  • sfo_stats - air traffic landings statistics

More information about the datasets is available in the following vignette.

Examples

The sfo_passengers dataset provides monthly summary of the number of passengers in SFO airport by different categories (such as terminal, geo, type, etc.):

library(sfo)

data("sfo_passengers")

head(sfo_passengers)
#>   activity_period    operating_airline operating_airline_iata_code
#> 1          202212          EVA Airways                          BR
#> 2          202212          EVA Airways                          BR
#> 3          202212             Emirates                          EK
#> 4          202212             Emirates                          EK
#> 5          202212 Flair Airlines, Ltd.                          F8
#> 6          202212 Flair Airlines, Ltd.                          F8
#>      published_airline published_airline_iata_code   geo_summary  geo_region
#> 1          EVA Airways                          BR International        Asia
#> 2          EVA Airways                          BR International        Asia
#> 3             Emirates                          EK International Middle East
#> 4             Emirates                          EK International Middle East
#> 5 Flair Airlines, Ltd.                          F8 International      Canada
#> 6 Flair Airlines, Ltd.                          F8 International      Canada
#>   activity_type_code price_category_code      terminal boarding_area
#> 1           Deplaned               Other International             G
#> 2           Enplaned               Other International             G
#> 3           Deplaned               Other International             A
#> 4           Enplaned               Other International             A
#> 5           Deplaned            Low Fare International             A
#> 6           Enplaned            Low Fare International             A
#>   passenger_count
#> 1           12405
#> 2           15151
#> 3           13131
#> 4           14985
#> 5            2543
#> 6            2883

The sfo_stats dataset provides monthly statistics on the air traffic landing at SFO airport:

data("sfo_stats")

head(sfo_stats)
#>   activity_period operating_airline operating_airline_iata_code
#> 1          202212        Air Canada                          AC
#> 2          202212   Delta Air Lines                          DL
#> 3          202212   Delta Air Lines                          DL
#> 4          202212  WestJet Airlines                          WS
#> 5          202212  WestJet Airlines                          WS
#> 6          202212  WestJet Airlines                          WS
#>   published_airline published_airline_iata_code   geo_summary geo_region
#> 1        Air Canada                          AC International     Canada
#> 2   Delta Air Lines                          DL      Domestic         US
#> 3   Delta Air Lines                          DL      Domestic         US
#> 4  WestJet Airlines                          WS International     Canada
#> 5  WestJet Airlines                          WS International     Canada
#> 6  WestJet Airlines                          WS International     Canada
#>   landing_aircraft_type aircraft_body_type aircraft_manufacturer aircraft_model
#> 1             Passenger          Wide Body                Boeing           B773
#> 2             Passenger        Narrow Body                Airbus           A319
#> 3             Passenger        Narrow Body                Airbus           A320
#> 4             Passenger        Narrow Body                Boeing           B38M
#> 5             Passenger        Narrow Body                Boeing           B737
#> 6             Passenger        Narrow Body                Boeing           B738
#>   aircraft_version landing_count total_landed_weight
#> 1                -             1              554000
#> 2                -           163            22459444
#> 3                -            43             6114514
#> 4                -             5              764000
#> 5                -             5              646000
#> 6                -             3              438900

Total number of passngers

The total number of passengers in most recent month by activity_type_code and geo_region:

library(dplyr)

sfo_passengers %>%
  filter(activity_period == max(activity_period)) %>%
  group_by(activity_type_code, geo_region) %>%
  summarise(total = sum(passenger_count), .groups = "drop")
#> # A tibble: 19 × 3
#>    activity_type_code geo_region            total
#>    <chr>              <chr>                 <int>
#>  1 Deplaned           Asia                 147461
#>  2 Deplaned           Australia / Oceania   45950
#>  3 Deplaned           Canada                53237
#>  4 Deplaned           Central America       12749
#>  5 Deplaned           Europe               124301
#>  6 Deplaned           Mexico                64121
#>  7 Deplaned           Middle East           28921
#>  8 Deplaned           US                  1353634
#>  9 Enplaned           Asia                 166684
#> 10 Enplaned           Australia / Oceania   44286
#> 11 Enplaned           Canada                57280
#> 12 Enplaned           Central America       15475
#> 13 Enplaned           Europe               135635
#> 14 Enplaned           Mexico                73971
#> 15 Enplaned           Middle East           31446
#> 16 Enplaned           US                  1382565
#> 17 Thru / Transit     Australia / Oceania    2817
#> 18 Thru / Transit     Europe                 2496
#> 19 Thru / Transit     US                     3129

The sankey_ly function enables us to plot the distribution of a numeric variable by multiple categorical variables. The following example shows the distribution of the total United Airlines passengers during 2019 by a terminal, travel type (domestic and international), geo, and travel direction (deplaned, enplaned, and transit):

sfo_passengers %>% 
  filter(operating_airline == "United Airlines",
         activity_period >= 201901 & activity_period < 202001) %>%
  mutate(terminal = ifelse(terminal == "International", "international", terminal)) %>%
  group_by(operating_airline,activity_type_code, geo_summary, geo_region,  terminal) %>%
  summarise(total = sum(passenger_count), .groups = "drop") %>%
  sankey_ly(cat_cols = c("operating_airline", "terminal","geo_summary", "geo_region", "activity_type_code"), 
            num_col = "total",
            title = "Dist. of United Airlines Passengers at SFO During 2019")

Total number of landing

The total number of landings during the most recent month by activity_type_code and aircraft_manufacturer:

sfo_stats %>% 
  filter(activity_period == 202212,
         aircraft_manufacturer != "") %>%
  group_by(aircraft_manufacturer) %>%
  summarise(total_landing = sum(landing_count),
            `.groups` = "drop") %>%
  arrange(-total_landing) %>%
  plot_ly(labels = ~ aircraft_manufacturer,
          values = ~ total_landing) %>%
  add_pie(hole = 0.6) %>%
  layout(title = "Landing Distribution by Aircraft Manufacturer during Dec 2022")

The following Sankey plot demonstrates the distribution of the number of landing in SFO by region and aircraft type, manufacturer, and body type during Dec 2022:

sfo_stats %>%
  filter(activity_period == 202212) %>%
  group_by(geo_summary, geo_region, landing_aircraft_type, aircraft_manufacturer, aircraft_body_type) %>%
  summarise(total_landing = sum(landing_count),
  groups = "drop") %>%
  sankey_ly(cat_cols = c("geo_summary", "geo_region", 
                         "landing_aircraft_type", 
                         "aircraft_manufacturer",
                         "aircraft_body_type"),
            num_col = "total_landing",
            title = "Landing Summary by Geo Region and Aircraft Type During Dec 2022")

sfo's People

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sfo's Issues

can't install package

devtools::install_github("RamiKrispin/sfo") Error: Failed to install 'unknown package' from GitHub: HTTP error 404. No commit found for the ref master Did you spell the repo owner (RamiKrispin) and repo name (sfo) correctly? - If spelling is correct, check that you have the required permissions to access the repo.
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