Service Patterns and Calendar Schedules

Flavio Poletti

Overview

Each trip in a GTFS feed is referenced to a service_id (in trips.txt). The GTFS reference specifies that a “service_id contains an ID that uniquely identifies a set of dates when service is available for one or more routes”. A service could run on every weekday or only on Saturdays for example. Other possible services run only on holidays during a year, independent of weekdays. However, feeds are not required to indicate anything with service_ids and some feeds even use a unique service_id for each trip and day. In this vignette, we’ll look at a general way to gather information on when trips run by using “service patterns”.

Service patterns can be used to find a typical day for further analysis like routing or trip frequencies for different days.

Prepare data

We use a feed from the New York Metropolitan Transportation Authority. It is provided as a sample feed with tidytransit but you can read it directly from the MTA’s website.

local_gtfs_path <- system.file("extdata", "google_transit_nyc_subway.zip", package = "tidytransit")
gtfs <- read_gtfs(local_gtfs_path)
# gtfs <- read_gtfs("http://web.mta.info/developers/data/nyct/subway/google_transit.zip")

Tidytransit provides a dates_services (stored in the list .) that indicates which service_id runs on which date. This is later useful for linking dates and trips via service_id.

head(gtfs$.$dates_services)
## # A tibble: 6 × 2
##   date       service_id             
##   <date>     <chr>                  
## 1 2018-06-24 ASP18GEN-1037-Sunday-00
## 2 2018-06-24 ASP18GEN-2048-Sunday-00
## 3 2018-06-24 ASP18GEN-3041-Sunday-00
## 4 2018-06-24 ASP18GEN-4049-Sunday-00
## 5 2018-06-24 ASP18GEN-5048-Sunday-00
## 6 2018-06-24 ASP18GEN-6030-Sunday-00

To understand service patterns better we need information on weekdays and holidays. With a calendar table we know the weekday and possible holidays for each date. We’ll use a minimal example with two holidays.

holidays = tribble(~date, ~holiday,
  ymd("2018-07-04"), "Independence Day",
  ymd("2018-09-03"), "Labor Day")

calendar = tibble(date = unique(gtfs$.$dates_services$date)) %>% 
  mutate(
    weekday = (function(date) {
      c("Sunday", "Monday", "Tuesday", 
        "Wednesday", "Thursday", "Friday", 
        "Saturday")[as.POSIXlt(date)$wday + 1]
    })(date)
  )

calendar <- calendar %>% left_join(holidays, by = "date")
head(calendar)
## # A tibble: 6 × 3
##   date       weekday   holiday
##   <date>     <chr>     <chr>  
## 1 2018-06-24 Sunday    <NA>   
## 2 2018-06-25 Monday    <NA>   
## 3 2018-06-26 Tuesday   <NA>   
## 4 2018-06-27 Wednesday <NA>   
## 5 2018-06-28 Thursday  <NA>   
## 6 2018-06-29 Friday    <NA>

To analyse on which dates trips run and to group similar services we use service patterns. Such a pattern simply lists all dates a trip runs on. For example, a trip with a pattern like 2019-03-07, 2019-03-14, 2019-03-21, 2019-03-28 runs every Thursday in March 2019. To handle these patterns, we create a servicepattern_id using a hash function. Ideally there are the same number of servicepattern_ids and service_ids. However, in real life feeds this is rarely the case. In addition, the usability of service patterns depends largely on the feed and its complexity.

gtfs <- set_servicepattern(gtfs)

Our gtfs feed now contains the data frame servicepatterns which links each servicepattern_id to an existing service_id (and by extension trip_id).

head(gtfs$.$servicepatterns)
## # A tibble: 6 × 2
##   service_id                servicepattern_id
##   <chr>                     <chr>            
## 1 ASP18GEN-1037-Sunday-00   s_a4c6b26        
## 2 ASP18GEN-1038-Saturday-00 s_c578d4a        
## 3 ASP18GEN-1087-Weekday-00  s_e25d6ca        
## 4 ASP18GEN-2042-Saturday-00 s_c578d4a        
## 5 ASP18GEN-2048-Sunday-00   s_a4c6b26        
## 6 ASP18GEN-2097-Weekday-00  s_e25d6ca

In addition, gtfs$.$dates_servicepatterns has been created which connects dates and service patterns (like dates_services). We can compare the number of service patterns to the number of services.

head(gtfs$.$dates_servicepatterns)
## # A tibble: 6 × 2
##   date       servicepattern_id
##   <date>     <chr>            
## 1 2018-06-24 s_128de43        
## 2 2018-06-24 s_a4c6b26        
## 3 2018-06-25 s_d7d9701        
## 4 2018-06-25 s_e25d6ca        
## 5 2018-06-26 s_498c8ac        
## 6 2018-06-26 s_d7d9701
# service ids used
n_services <- length(unique(gtfs$trips$service_id)) # 70

# unique date patterns 
n_servicepatterns <- length(unique(gtfs$.$servicepatterns$servicepattern_id)) # 7

The feed uses 70 service_ids but there are actually only 7 different date patterns. Other feeds might not have such low numbers, for example the Swiss GTFS feed uses around 15’600 service_ids which all identify unique date patterns.

Analyse Data

Exploration Plot

We’ll now try to figure out usable names for those patterns. A good way to start is visualising the data.

date_servicepattern_table <- gtfs$.$dates_servicepatterns %>% left_join(calendar, by = "date")

ggplot(date_servicepattern_table) + theme_bw() + 
  geom_point(aes(x = date, y = servicepattern_id, color = weekday), size = 1) + 
  scale_x_date(breaks = scales::date_breaks("1 month")) + theme(legend.position = "bottom")

The plot shows that pattern s_128de43 runs on every Sunday from July until October without exceptions. s_a4c6b26 also runs on Sundays but it also covers a Monday (September 3rd). Similarly, the date pattern s_f3bcc6f runs every Saturday. s_d7d9701 covers weekdays (Mondays through Friday), s_e25d6ca seems to do the same through November with some exceptions.

Names for service patterns

It’s generally difficult to automatically generate readable names for service patterns. Below you see a semi automated approach with some heuristics. However, the workflow depends largely on the feed and its structure. You might also consider setting names completely manually.

suggest_servicepattern_name = function(dates, calendar) {
  servicepattern_calendar = tibble(date = dates) %>% left_join(calendar, by = "date")
  
  # all normal dates without holidays
  calendar_normal = servicepattern_calendar %>% filter(is.na(holiday))
  
  # create a frequency table for all calendar dates without holidays
  weekday_freq = sort(table(calendar_normal$weekday), decreasing = T)
  n_weekdays = length(weekday_freq)
  
  # all holidays that are not covered by normal weekdays anyways
  calendar_holidays <- servicepattern_calendar %>% filter(!is.na(holiday)) %>% filter(!(weekday %in% names(weekday_freq)))

  if(n_weekdays == 7) {
    pattern_name = "Every day"
  }
  # Single day service
  else if(n_weekdays == 1) {
    wd = names(weekday_freq)[1]
    # while paste0(weekday, "s") is easier, this solution can be used for other languages
    pattern_name = c("Sunday"  = "Sundays", 
        "Monday"    = "Mondays", 
        "Tuesday"   = "Tuesdays", 
        "Wednesday" = "Wednesdays",
        "Thursday"  = "Thursdays",  
        "Friday"    = "Fridays",  
        "Saturday"  = "Saturdays")[wd]
  } 
  # Weekday Service
  else if(n_weekdays == 5 && 
      length(intersect(names(weekday_freq), 
        c("Monday", "Tuesday", "Wednesday", "Thursday", "Friday"))) == 5) {
    pattern_name = "Weekdays"
  }
  # Weekend
  else if(n_weekdays == 2 && 
      length(intersect(names(weekday_freq), c("Saturday", "Sunday"))) == 2) {
    pattern_name = "Weekends"
  }
  # Multiple weekdays that appear regularly
  else if(n_weekdays >= 2 && (max(weekday_freq) - min(weekday_freq)) <= 1) {
    wd = names(weekday_freq)
    ordered_wd = wd[order(match(wd, c("Monday", "Tuesday", "Wednesday", "Thursday", "Friday", "Saturday", "Sunday")))]
    pattern_name = paste(ordered_wd, collapse = ", ")
  } 
  # default
  else {
    pattern_name = paste(weekday_freq, names(weekday_freq), sep = "x ", collapse = ", ")
  }
  
  # add holidays
  if(nrow(calendar_holidays) > 0) {
    pattern_name <- paste0(pattern_name, " and ", paste(calendar_holidays$holiday, collapse = ", "))
  }
  
  pattern_name <- paste0(pattern_name, " (", min(dates), " - ", max(dates), ")") 

  return(pattern_name)
}

We’ll apply this function to our service patterns and create a table with ids and names.

servicepattern_names = gtfs$.$dates_servicepatterns %>% 
  group_by(servicepattern_id) %>% summarise(
    servicepattern_name = suggest_servicepattern_name(date, calendar)
  )

print(servicepattern_names)
## # A tibble: 7 × 2
##   servicepattern_id servicepattern_name                                         
##   <chr>             <chr>                                                       
## 1 s_128de43         Sundays (2018-06-24 - 2018-09-30)                           
## 2 s_498c8ac         Tuesday, Wednesday, Thursday, Friday (2018-06-26 - 2018-11-…
## 3 s_a4c6b26         Sundays and Labor Day (2018-06-24 - 2018-10-28)             
## 4 s_c578d4a         Saturdays and Independence Day (2018-06-30 - 2018-11-03)    
## 5 s_d7d9701         Weekdays (2018-06-25 - 2018-10-05)                          
## 6 s_e25d6ca         Weekdays (2018-06-25 - 2018-11-02)                          
## 7 s_f3bcc6f         Saturdays (2018-06-30 - 2018-10-06)

Visualise services

Plot calendar for each service pattern

We can plot the service pattern like a calendar to visualise the different patterns. The original services can be plotted similarly (given it’s not too many) by using dates_services and service_id.

dates = gtfs$.$dates_servicepatterns
dates$wday <- lubridate::wday(dates$date, label = T, abbr = T, week_start = 7)
dates$week_nr <- lubridate::week(dates$date)

dates <- dates %>% group_by(week_nr) %>% summarise(week_first_date = min(date)) %>% right_join(dates, by = "week_nr")

week_labels = dates %>% select(week_nr, week_first_date) %>% unique()

ggplot(dates) + theme_bw() +
  geom_tile(aes(x = wday, y = week_nr), color = "#747474") +
  scale_x_discrete(drop = F) +
  scale_y_continuous(trans = "reverse", labels = week_labels$week_first_date, breaks = week_labels$week_nr) +
  theme(legend.position = "bottom", axis.text.x = element_text(angle = 90, hjust = 1)) +
  labs(x = NULL, y = "Date of Sundays") +
  facet_wrap(~servicepattern_id, nrow = 1)

Plot number of trips per day as calendar

We can plot the number of trips for each day as a calendar heat map.

trips_servicepattern = left_join(select(gtfs$trips, trip_id, service_id), gtfs$.$servicepatterns, by = "service_id")
trip_dates = left_join(gtfs$.$dates_servicepatterns, trips_servicepattern, by = "servicepattern_id")
## Warning in left_join(gtfs$.$dates_servicepatterns, trips_servicepattern, : Detected an unexpected many-to-many relationship between `x` and `y`.
## ℹ Row 1 of `x` matches multiple rows in `y`.
## ℹ Row 19550 of `y` matches multiple rows in `x`.
## ℹ If a many-to-many relationship is expected, set `relationship =
##   "many-to-many"` to silence this warning.
trip_dates_count = trip_dates %>% group_by(date) %>% summarise(count = dplyr::n()) 
trip_dates_count$weekday <- lubridate::wday(trip_dates_count$date, label = T, abbr = T, week_start = 7)
trip_dates_count$day_of_month <- lubridate::day(trip_dates_count$date)
trip_dates_count$first_day_of_month <- lubridate::wday(trip_dates_count$date - trip_dates_count$day_of_month,  week_start = 7)
trip_dates_count$week_of_month <- ceiling((trip_dates_count$day_of_month - as.numeric(trip_dates_count$weekday) - trip_dates_count$first_day_of_month) / 7)
trip_dates_count$month <- lubridate::month(trip_dates_count$date, label = T, abbr = F)

ggplot(trip_dates_count, aes(x = weekday, y = -week_of_month)) + theme_bw() +
  geom_tile(aes(fill = count, colour = "grey50")) +
  geom_text(aes(label = day_of_month), size = 3, colour = "grey20") +
  facet_wrap(~month, ncol = 3) +
  scale_fill_gradient(low = "cornsilk1", high = "DarkOrange", na.value="white")+
    scale_color_manual(guide = "none", values = "grey50") +
  theme(axis.text.y = element_blank(), axis.ticks.y = element_blank()) +
  theme(panel.grid = element_blank()) +
  labs(x = NULL, y = NULL, fill = "# trips") +
  coord_fixed()