The real power of tidyhydat
comes with its ability to efficiently import hydrometric data into R which then can be used in conjunction with R’s vast array of packages; tidyhydat
gets hydrometric data into R and allows the user to start conducting data analysis as quickly as possible. This vignette is designed to take a user through two short examples of importing data using tidyhydat
for use in hydrological visualization and analysis and will therefore use additional tools beyond simply the functions in tidyhydat
.
tidyhydat
is designed to exist as a “tidy tool” that is complementary to the tidyverse suite of packages. This vignette assumes some familiarity with basic tidy tools particularly dplyr
, tidyr
, ggplot2
and lubridate
. The R for Data Science book by Garrett Grolemund and Hadley Wickham is an enormously useful book both for general R use and for tidyhydat
. The following is a list of useful links to begin learning particular aspect of each tidyverse
package:
dplyr
: https://dplyr.tidyverse.org/tidyr
: https://tidyr.tidyverse.org/ggplot2
: https://ggplot2.tidyverse.org/lubridate
: https://lubridate.tidyverse.org/In this section, we will be using dplyr
, a data manipulation package, ggplot2
, an extremely simple yet powerful data visualization tool, lubridate
a package that aids significantly in working with date and times in R and of course tidyhydat
. Take a deep breathe. Though this might seem like an overwhelming onslaught of information on packages, each of these packages will save you considerable time with relatively minimal learning investment.
library(tidyhydat)
library(dplyr)
library(ggplot2)
library(lubridate)
Use tidyhydat
to find the longest flow record in the Canadian hydrometric network then illustrate the use and ease of ggplot2
to create some visualizations of the discharge data.
Your first step is to download the HYDAT database which tidyhydat
facilitates for you:
download_hydat()
You can see where the database was downloaded by running hy_dir()
. This should be the only instance where you will need to interact directly with HYDAT. Each tidyhydat
function prefixed with hy
will automatically know where to look for HYDAT saving you the trouble. When using tidyhydat
, often your first task is to find the station(s) that you are interested in. Because we are interested in the longest record we can extract that information with hy_stn_data_range()
and then feed that information to hy_daily_flows()
like this:
<- hy_stn_data_range() %>%
longest_record_data filter(DATA_TYPE == "Q", RECORD_LENGTH == max(RECORD_LENGTH)) %>%
pull_station_number() %>%
hy_daily_flows()
Let’s break this down line by line to understand how tidyhydat
uses tidy tools. First we are interested in getting data on record length:
hy_stn_data_range()
## Queried from version of HYDAT released on 2022-01-17
## Observations: 12,055
## Station(s) returned: 7,923
## Stations requested but not returned:
## All stations returned.
## # A tibble: 12,055 x 6
## STATION_NUMBER DATA_TYPE SED_DATA_TYPE Year_from Year_to RECORD_LENGTH
## <chr> <chr> <chr> <int> <int> <int>
## 1 01AA002 Q <NA> 1967 1977 11
## 2 01AD001 Q <NA> 1918 1997 80
## 3 01AD002 Q <NA> 1926 2019 94
## 4 01AD003 H <NA> 2011 2018 8
## 5 01AD003 Q <NA> 1951 2018 68
## 6 01AD004 H <NA> 1980 2019 35
## 7 01AD004 Q <NA> 1968 1979 12
## 8 01AD005 H <NA> 1966 1974 9
## 9 01AD008 H <NA> 1972 1974 3
## 10 01AD009 H <NA> 1973 1982 10
## # ... with 12,045 more rows
Our objective here is to filter from this data for the station that has the longest record of flow (DATA_TYPE == "Q"
). You’ll also notice this symbol %>%
which in R is called a pipe. In code, read it as the word then. So for the data_range data we want to grab the data then filter it by flow (“Q”) in DATA_TYPE
and then by the maximum value of RECORD_LENGTH
:
hy_stn_data_range() %>%
filter(DATA_TYPE == "Q", RECORD_LENGTH == max(RECORD_LENGTH))
## Queried from version of HYDAT released on 2022-01-17
## Observations: 1
## Station(s) returned: 1
## Stations requested but not returned:
## All stations returned.
## # A tibble: 1 x 6
## STATION_NUMBER DATA_TYPE SED_DATA_TYPE Year_from Year_to RECORD_LENGTH
## <chr> <chr> <chr> <int> <int> <int>
## 1 02HA003 Q <NA> 1860 2020 161
then pull the STATION_NUMBER
that has the longest record:
hy_stn_data_range() %>%
filter(DATA_TYPE == "Q", RECORD_LENGTH == max(RECORD_LENGTH)) %>%
pull_station_number()
## [1] "02HA003"
then feed that number to hy_daily_flows()
<- hy_stn_data_range() %>%
longest_record_data filter(DATA_TYPE == "Q", RECORD_LENGTH == max(RECORD_LENGTH)) %>%
pull_station_number() %>%
hy_daily_flows()
The result of this collection of simple functions is that we’ve extracted data the entire daily flow dataset (from 1860-2016) from station 02HA003
.If we wanted more information on this station we could query other tables in HYDAT for more information. The hy_stations()
function is very useful and outputs considerable metadata on a given station (converted here to a list for viewing purposes):
hy_stations(station_number = unique(longest_record_data$STATION_NUMBER)) %>%
as.list()
## $STATION_NUMBER
## [1] "02HA003"
##
## $STATION_NAME
## [1] "NIAGARA RIVER AT QUEENSTON"
##
## $PROV_TERR_STATE_LOC
## [1] "ON"
##
## $REGIONAL_OFFICE_ID
## [1] 5
##
## $HYD_STATUS
## [1] "ACTIVE"
##
## $SED_STATUS
## [1] NA
##
## $LATITUDE
## [1] 43.15694
##
## $LONGITUDE
## [1] -79.04722
##
## $DRAINAGE_AREA_GROSS
## [1] 686000
##
## $DRAINAGE_AREA_EFFECT
## [1] NA
##
## $RHBN
## [1] FALSE
##
## $REAL_TIME
## [1] FALSE
##
## $CONTRIBUTOR_ID
## [1] 647
##
## $OPERATOR_ID
## [1] 337
##
## $DATUM_ID
## [1] 10
##
## attr(,"missed_stns")
## character(0)
We now know that this station is actually NIAGARA RIVER AT QUEENSTON in Ontario and has an upstream drainage basin area of 686,000 square kilometres. As a first step toward visualization, let’s simply plot the time series for the entire record with a smoother added:
%>%
longest_record_data ggplot(aes(x = Date, y = Value)) +
geom_line(alpha = 0.5) +
geom_point(size = 0.25) +
geom_smooth() +
labs(y = "Discharge (m)") +
theme_minimal()
You can see very clearly where continuous monitoring was established. However, this type of plot obscures much of the data that we are interested in. We could plot all the years on the same axis and separate year by line colour. That requires a little bit of manipulation ahead of plotting using both dplyr
and lubridate
. Remember you can run a pipe adding one line at a time and comparing the outputs to get a sense of what each step is doing:
%>%
longest_record_data mutate(dayofyear = yday(Date), Year = year(Date)) %>%
mutate(dayofyear_formatted = as.Date(dayofyear - 1, origin = "2016-01-01")) %>% ## leap year as placeholder
ggplot(aes(x = dayofyear_formatted, y = Value, colour = Year)) +
geom_line() +
scale_x_date(date_labels = "%b %d") +
labs(y = "Discharge (m)") +
theme_minimal()
This still is not a very useful plot mostly because our colour range still doesn’t resolve year very well and any intra-annual is not visible with this plot. Consider, for example, if rather than a line plot we use a tile plot and modified our colour scale to include more colours:
%>%
longest_record_data mutate(dayofyear = yday(Date), Year = year(Date)) %>%
mutate(dayofyear_formatted = as.Date(dayofyear - 1, origin = "2016-01-01")) %>%
ggplot(aes(x = dayofyear_formatted, y = Year, fill = Value)) +
geom_tile() +
scale_x_date(date_labels = "%b") +
scale_y_reverse(expand = c(0, 0)) +
scale_fill_viridis_c(name = "Discharge (m^3/s)") +
labs(y = "Year", x = "Date") +
theme_minimal() +
theme(legend.position="bottom")
This type of plot provides a clear indicator of discharge patterns over time. Our analysis ends here but one can imagine drawing in climate indices and variation to help explain periods of extreme discharge.
Evaluate current conditions in the station from Nunavut with longest record that is also in the Reference Hydrometric Basin Network relative to historical values.
For our second example, we will illustrate how to calculate a common metric used in hydrology: percentiles. For this approach we will use another piped series of functions to zero in on the station that we want. The packages we need for this example are loaded first:
library(tidyhydat)
library(dplyr)
library(ggplot2)
library(lubridate)
The pipe below finds the active station that has realtime data in the Reference Hydrometric Basin Network (RHBN) in the territory of Nunavut that has the longest record then grabs all the daily flow information:
<- hy_stations() %>%
nunavut_stn_flows filter(HYD_STATUS == "ACTIVE") %>%
filter(REAL_TIME == TRUE) %>%
filter(RHBN == TRUE) %>%
filter(PROV_TERR_STATE_LOC == "NU") %>%
pull_station_number() %>%
hy_stn_data_range() %>%
filter(DATA_TYPE == "Q") %>%
filter(RECORD_LENGTH == max(RECORD_LENGTH)) %>%
pull_station_number() %>%
hy_daily_flows()
We can now evaluate the historical distribution of data collection to put some real time data into historical context. First we need to calculate where an individual observation is distributed against all other observations on that day for every day. The prctile
column tells us what percentage of values on that same day over the entire data record fall above and below the observations on that row. We are restricting our analysis to the last thirty days from when this vignette was last compiled. The ecdf()
function creates an equation to calculate percentiles based on the Value
column (i.e discharge) then takes each individual observation of Value
and calculates the percentile.
<- nunavut_stn_flows %>%
pct_flow mutate(dayofyear = yday(Date), Year = year(Date)) %>%
filter(dayofyear %in% yday(seq.Date(from = (Sys.Date()-30),
to = Sys.Date(), by = "day"))) %>%
group_by(dayofyear) %>%
mutate(prctile = ecdf(Value)(Value)) %>%
mutate(Date_no_year = dmy(paste0(day(Date),"-",month(Date),"-",year(Sys.Date())))) %>%
ungroup()
To collect real time data, we can use the realtime_dd()
function in tidyhydat
. Because real time data is collected in hourly (or higher) intervals and we are operating on a daily basis, we first need to take a daily mean of discharge. Again this is accomplished in a pipe:
<- realtime_dd(unique(nunavut_stn_flows$STATION_NUMBER)) %>%
nunavut_realtime mutate(Date_day = as.Date(Date)) %>%
group_by(Date_day) %>%
summarise(Value = mean(Value, na.rm = TRUE), .groups = "drop")
Finally we can plot all of this on to one figure. This type of plot is useful to combine historical data sources with real time data and provide a visual assessment of how typical flows in a given system are.
ggplot(pct_flow, aes(x = Date_no_year, y = Value)) +
geom_point(aes(colour = prctile)) +
geom_line(data = nunavut_realtime, aes(x = Date_day), colour = "black") +
geom_point(data = nunavut_realtime, aes(x = Date_day, shape = factor(year(Date_day))), colour = "black") +
scale_colour_viridis_c(name = "Discharge Percentile") +
scale_shape_discrete(name = "Year") +
theme_minimal() +
labs(title = "Historical flow relative to current year",
subtitle = "Current year flows are displayed in black",
caption = "Real time data is presents AS IS and represents unapproved data",
x = "Date", y = "Discharge (m^3/s)")
CAUTION: All real time data are presented AS IS and represents unapproved data.