## Warning: package 'knitr' was built under R version 4.3.1
Calendar-based graphics turn out to be a useful tool for visually
unfolding people’s daily schedules in detail, such as hourly foot
traffic in the CBD, daily residential electricity demand and etc. It
arranges the values according to the corresponding dates into a calendar
layout, which is comprised of weekdays in columns and weeks of a month
in rows for a common monthly calendar. The idea originates from Van Wijk and Van Selow (1999) and is implemented in
a couple of R packages (ggTimeSeries and
ggcal), yet they all
are a variant of heatmap in temporal context. We extend the
calendar-based graphics to a broader range of applications using linear
algebra tools. For example, (1) it not only handles the data of daily
intervals but also of higher frequencies like hourly data; (2) it is no
longer constrained to a heatmap but can be used with other types of
Geoms; (3) the built-in calendars include monthly,
weekly, and daily types for the purpose of comparison
between different temporal components. The frame_calendar()
function returns the computed calendar grids as a data frame or a tibble
according to its data input, and ggplot2 takes care of the
plotting as you usually do with a data frame.
We are going to use Melbourne pedestrian data (shipped with the package) as an example throughout the vignette, which is sourced from Melbourne Open Data Portal. The subset of the data contains 7 sensors counting foot traffic at hourly intervals across the city of Melbourne from January to April in 2017.
library(tidyr)
library(dplyr)
library(viridis)
library(sugrrants)
pedestrian17 <- filter(hourly_peds, Year == "2017")
pedestrian17
#> # A tibble: 19,488 × 10
#> Date_Time Date Year Month Mdate Day Time Sensor_ID
#> <dttm> <date> <dbl> <ord> <dbl> <ord> <dbl> <dbl>
#> 1 2017-01-01 00:00:00 2017-01-01 2017 January 1 Sunday 0 18
#> 2 2017-01-01 00:00:00 2017-01-01 2017 January 1 Sunday 0 13
#> 3 2017-01-01 00:00:00 2017-01-01 2017 January 1 Sunday 0 9
#> 4 2017-01-01 00:00:00 2017-01-01 2017 January 1 Sunday 0 6
#> 5 2017-01-01 00:00:00 2017-01-01 2017 January 1 Sunday 0 25
#> # ℹ 19,483 more rows
#> # ℹ 2 more variables: Sensor_Name <chr>, Hourly_Counts <dbl>
We’ll start with one sensor only–Melbourne Convention Exhibition
Centre–to explain the basic use of the frame_calendar()
. As
it attempts to fit into the tidyverse framework, the interface
should be straightforward to those who use tidyverse on a daily
basis. The first argument is the data
so that the data
frame can directly be piped into the function using %>%
.
A variable indicating time of day could be mapped to x
, a
value variable of interest mapped to y
. date
requires a Date
variable to organise the data into a
correct chronological order . See ?frame_calendar()
for
more options. In this case, Time as hour of day is used for
x
and Hourly_Counts as value for y
.
It returns a data frame including newly added columns .Time and
.Hourly_Counts with a “.” prefixed to the variable names. These
new columns contain the rearranged coordinates for the calendar plots
later.
centre <- pedestrian17 %>%
filter(Sensor_Name == "Melbourne Convention Exhibition Centre")
centre_calendar <- centre %>%
frame_calendar(x = Time, y = Hourly_Counts, date = Date, calendar = "monthly")
centre_calendar
#> # A tibble: 2,880 × 12
#> Date_Time Date Year Month Mdate Day Time Sensor_ID
#> <dttm> <date> <dbl> <ord> <dbl> <ord> <dbl> <dbl>
#> 1 2017-01-01 00:00:00 2017-01-01 2017 January 1 Sunday 0 25
#> 2 2017-01-01 01:00:00 2017-01-01 2017 January 1 Sunday 1 25
#> 3 2017-01-01 02:00:00 2017-01-01 2017 January 1 Sunday 2 25
#> 4 2017-01-01 03:00:00 2017-01-01 2017 January 1 Sunday 3 25
#> 5 2017-01-01 04:00:00 2017-01-01 2017 January 1 Sunday 4 25
#> # ℹ 2,875 more rows
#> # ℹ 4 more variables: Sensor_Name <chr>, Hourly_Counts <dbl>, .Time <dbl>,
#> # .Hourly_Counts <dbl>
Consequently, .Time and .Hourly_Counts are mapped
to the x and y axes respectively, grouped by Date when using
geom_line()
. The transformed .Time and
.Hourly_Counts variables no longer carry their initial
meanings, and thereby their values are meaningless.
To make the plot more accessible and informative, we provide another
function prettify()
to go hand in hand with
frame_calendar()
. It takes a ggplot
object and
gives sensible breaks and labels. It can be noted that the
calendar-based graphic depicts time of day, day of week, and other
calendar effects like public holiday in a clear manner.
Scaling is controlled by the scale
argument:
fixed
is the default suggesting to be scaled globally. The
figure above shows the global scale that enables overall comparison.
Another option free
means to be scaled for each daily block
individually. It puts more emphasis on a single day shape instead of
magnitude comparison.
centre_calendar_free <- centre %>%
frame_calendar(x = Time, y = Hourly_Counts, date = Date, calendar = "monthly",
scale = "free", ncol = 4)
p2 <- ggplot(centre_calendar_free,
aes(x = .Time, y = .Hourly_Counts, group = Date)) +
geom_line()
prettify(p2)
The other two choices are free_wday
and
free_mday
, scaled conditionally on each weekday and each
day of month respectively. The code snippet below gives the scaling by
weekdays so that it enables to compare the magnitudes across Mondays,
Tuesdays, and so on.
group_by
We can also superimpose one sensor on top of the other. Without using
group_by()
, they will share the common scale on the
overlaying graph.
two_sensors <- c("Lonsdale St (South)", "Melbourne Convention Exhibition Centre")
two_sensors_df <- pedestrian17 %>%
filter(Sensor_Name %in% two_sensors)
two_sensors_calendar <- two_sensors_df %>%
frame_calendar(x = Time, y = Hourly_Counts, date = Date, ncol = 4)
p4 <- ggplot(two_sensors_calendar) +
geom_line(
data = filter(two_sensors_calendar, Sensor_Name == two_sensors[1]),
aes(.Time, .Hourly_Counts, group = Date), colour = "#1b9e77"
) +
geom_line(
data = filter(two_sensors_calendar, Sensor_Name == two_sensors[2]),
aes(.Time, .Hourly_Counts, group = Date), colour = "#d95f02"
)
prettify(p4)
The frame_calendar()
function can be naturally combined
with group_by()
. Each grouping variable will have its own
scale, making their magnitudes incomparable across different
sensors.
grped_calendar <- two_sensors_df %>%
group_by(Sensor_Name) %>%
frame_calendar(x = Time, y = Hourly_Counts, date = Date, ncol = 4)
p5 <- grped_calendar %>%
ggplot(aes(x = .Time, y = .Hourly_Counts, group = Date)) +
geom_line(aes(colour = Sensor_Name)) +
facet_grid(Sensor_Name ~ .) +
scale_color_brewer(palette = "Dark2") +
theme(legend.position = "bottom")
prettify(p5)
It’s not necessarily working with lines but other geoms too. One example is a lag scatterplot on a “daily” calendar. Lagged hourly counts are plotted against hourly counts in each daily cell using a point geom.
centre_lagged <- centre %>%
mutate(Lagged_Counts = dplyr::lag(Hourly_Counts))
centre_lagged_calendar <- centre_lagged %>%
frame_calendar(x = Hourly_Counts, y = Lagged_Counts, date = Date,
calendar = "daily")
p6 <- centre_lagged_calendar %>%
ggplot(aes(x = .Hourly_Counts, y = .Lagged_Counts, group = Date)) +
geom_point(size = 0.5)
prettify(p6, size = 3)
#> Warning: Removed 1 rows containing missing values (`geom_point()`).
Furthermore, the argument y
can take multiple variable
names in combination with vars()
. The rectangular glyphs
arranged on a “weekly” calendar are plotted to illustrate the usage of
the multiple y
s and the differences between sensors. The
long data format is firstly converted to the wide format using
tidyr::spread()
(Wickham 2014). These two sensors
are variables rather than values now, and hence can be passed to
y
.
two_sensors_wide <- two_sensors_df %>%
select(-Sensor_ID) %>%
spread(key = Sensor_Name, value = Hourly_Counts) %>%
rename(
Lonsdale = `Lonsdale St (South)`,
Centre = `Melbourne Convention Exhibition Centre`
) %>%
mutate(
Diff = Centre - Lonsdale,
More = if_else(Diff > 0, "Centre", "Lonsdale")
)
sensors_wide_calendar <- two_sensors_wide %>%
frame_calendar(x = Time, y = vars(Centre, Lonsdale), date = Date,
calendar = "weekly")
sensors_wide_calendar
#> # A tibble: 2,880 × 14
#> Date_Time Date Year Month Mdate Day Time Lonsdale Centre
#> <dttm> <date> <dbl> <ord> <dbl> <ord> <dbl> <dbl> <dbl>
#> 1 2017-01-07 00:00:00 2017-01-07 2017 January 7 Satu… 0 442 185
#> 2 2017-01-07 01:00:00 2017-01-07 2017 January 7 Satu… 1 428 85
#> 3 2017-01-07 02:00:00 2017-01-07 2017 January 7 Satu… 2 255 41
#> 4 2017-01-07 03:00:00 2017-01-07 2017 January 7 Satu… 3 220 11
#> 5 2017-01-07 04:00:00 2017-01-07 2017 January 7 Satu… 4 88 21
#> # ℹ 2,875 more rows
#> # ℹ 5 more variables: Diff <dbl>, More <chr>, .Time <dbl>, .Centre <dbl>,
#> # .Lonsdale <dbl>
Having multiple y
s makes it a little easier when mapping
to some geoms that contain the ymin
and ymax
arguments, such as geom_rect
and geom_ribbon
.
Interestingly, Lonsdale Street is busier than the Convention Centre in
the evening, vice versa in the day time.
p7 <- sensors_wide_calendar %>%
ggplot() +
geom_rect(aes(
xmin = .Time, xmax = .Time + 0.005,
ymin = .Lonsdale, ymax = .Centre, fill = More
)) +
scale_fill_brewer(palette = "Dark2") +
theme(legend.position = "bottom")
prettify(p7)
Can we plot a heatmap using frame_calendar()
too? Yep,
either x
or y
can be given as 1 implying
identity across days. If both x
and y
are
given as 1, only calendar grids are returned. A heatmap therefore can be
drawn.
centre_daily <- centre %>%
group_by(Date) %>%
summarise(Max_Counts = max(Hourly_Counts)) %>%
ungroup()
centre_max_calendar <- centre_daily %>%
frame_calendar(x = 1, y = 1, date = Date, calendar = "monthly")
head(centre_max_calendar)
#> # A tibble: 6 × 4
#> Date Max_Counts .x .y
#> <date> <dbl> <dbl> <dbl>
#> 1 2017-01-01 2930 0.537 0.894
#> 2 2017-01-02 1432 0.0750 0.783
#> 3 2017-01-03 1432 0.152 0.783
#> 4 2017-01-04 1175 0.229 0.783
#> 5 2017-01-05 1134 0.306 0.783
#> 6 2017-01-06 1008 0.383 0.783
As its name suggests, frame_calendar()
just gives a
rearranged data frame and leaves the plotting to ggplot2. This
lends itself to more flexibility in calendar-based visualisation. In
addition, some of these plots shown above may be produced using facets
on temporal units by ggplot2; however,
frame_calendar()
coupled with ggplot2 is much
faster than facet_*
as it’s lighter weight. Lastly, it can
handle long historical temporal data easily on a limited screen space as
a result of calendar-based glyphs.
Looking for a fully-fledged faceting method, with formal labels and
axes? Check out facet_calendar()
.