This package offers a handy tool to calculate carbon footprints from air travel based on IATA airport codes or latitude and longitude.
Package footprint
uses the the Haversine great-circle
distance formula to calculate distance between airports or distance
between latitude and longitude pairs. This distance is then used to
derive a carbon footprint estimate, which is based on converstion
factors from the Department for Environment, Food & Rural Affairs
(UK) 2019 Greenhouse Gas Conversion Factors for Business Travel (air):
https://www.gov.uk/government/publications/greenhouse-gas-reporting-conversion-factors-2019.
DEFRA’s conversion factors are a widely used tool for calculating emissions for a variety of industries. For business air travel, they consider trip length (domestic, short-haul, long-haul, and international), flight class (e.g. economy, first), and various types of emissions, with and without radiative forcing.
Their methodology
for determining distance states that anything within the UK is
“domestic”, and that flights up to 3,700km are “short-haul”. “Long haul”
is over 3,700km. “International” flights are those that occur entirely
outside of the UK. Neither domestic nor international was clearly
defined, so definitions from the US
Environmental Protection Agency were considered. Based on these two
data sources, the footprint
calculates distance as
follows:
EPA | DEFRA/footprint |
Distance |
---|---|---|
Short-haul | Domestic | < 483 km |
Medium-haul | Short-haul | 483 to 3,700 km |
Long-haul | Long-haul | > 3700 km |
You can use pairs of three-letter IATA airport codes to calculate
distance. This function uses the airportr
package, which contains the data and does the work of getting the
distance between airports. Note: the airportr
package offers a number of useful functions for looking up airports by
city or name and getting the IATA airport codes.
The airport_footprint()
functions takes a three-letter
IATA code for the departure airport (case insensitive), a three-letter
IATA code for the arrival airport (case insensitive), a
flightClass
(e.g. “Economy), and a emissions metric
(e.g. ”co2e”). The latter two arguments are case sensitive. See
?airport_footprint
for more information on arguments.
The example below calculates a simple footprint estimation for an economy flight from Los Angeles International (LAX) to Heathrow (LHR). The estimate will be in CO2e (carbon dioxide equivalent, including radiative forcing). The output is always in kilograms.
If there is a layover in Chicago, you could calculate each leg of the trip as follows:
We can calculate the footprint for multiple itineraries at the same
time and add to an existing data frame using mutate
. Here
is some example data:
travel_data <- tibble(name = c("Mike", "Will", "Elle"),
from = c("LAX", "LGA", "TYS"),
to = c("PUS", "LHR", "TPA"))
name | from | to |
---|---|---|
Mike | LAX | PUS |
Will | LGA | LHR |
Elle | TYS | TPA |
Here is how you can take the from
and to
data and calculate emissions for each trip. The following function
calculates an estimate for CO2 (carbon dioxide with radiative
forcing).
name | from | to | emissions |
---|---|---|---|
Mike | LAX | PUS | 1434.663 |
Will | LGA | LHR | 825.497 |
Elle | TYS | TPA | 136.721 |
If you have a list of cities, it might be easier to calculate
emissions based on longitude and latitude rather than trying to locate
the airports used. For example, one could take city and state data and
join that with data from maps::us.cities
to quickly get
latitude and longitude. They can then use the
latlong_footprint()
function to easily calculate emissions
based on either a single itinerary or multiple itineraries:
The following example calculates the footprint of a flight from Los
Angeles (34.052235, -118.243683) to Busan, South Korea (35.179554,
129.075638). It assumes an average passenger (no
flightClass
argument is included) and its output will be in
kilograms of CO2e (the default)
You can use mutate
to calculate emissions based on a
dataframe of latitude and longitude pairs.
Here is some example data:
travel_data2 <- tribble(~name, ~departure_lat, ~departure_long, ~arrival_lat, ~arrival_long,
# Los Angeles -> Busan
"Mike", 34.052235, -118.243683, 35.179554, 129.075638,
# New York -> London
"Will", 40.712776, -74.005974, 51.52, -0.10)
name | departure_lat | departure_long | arrival_lat | arrival_long |
---|---|---|---|---|
Mike | 34.05224 | -118.24368 | 35.17955 | 129.0756 |
Will | 40.71278 | -74.00597 | 51.52000 | -0.1000 |
And here is code to apply it to a dataframe:
travel_data2 %>%
rowwise() %>%
mutate(emissions = latlong_footprint(departure_lat,
departure_long,
arrival_lat,
arrival_long))
name | departure_lat | departure_long | arrival_lat | arrival_long | emissions |
---|---|---|---|---|---|
Mike | 34.05224 | -118.24368 | 35.17955 | 129.0756 | 1881.589 |
Will | 40.71278 | -74.00597 | 51.52000 | -0.1000 | 1090.260 |