This vignette assumes a basic understanding of
define_water
and the S4 water
class. See
vignette("intro", package = "tidywater")
for more
information. Additionally, for more information on tidywater’s
_chain
and pluck_waters
functions, please see
the
vignette("help_functions_chemdose_ph", package = "tidywater")
.
In this analysis, a hypothetical drinking water utility sources their water from a river and a lake, both of which have high hardness. The operators are investigating whether blending up to 5 MGD from two groundwater wells will reduce the total hardness below 200 mg/L as CaCO3.
First, let’s take a look at the available groundwater data from Well
A and Well B. We use define_water_chain
so that other
models can be added to the dataframe.
# Read in data from Wells A and B
raw_wells_water <- tibble(
Well = c("A", "B"),
ph = c(8, 9),
alk = c(100, 150),
temp = c(18, 19),
ca = c(5, 10),
cond = c(500, 900),
tds = c(300, 500),
na = c(100, 200),
k = c(0, 20),
cl = c(0, 30),
so4 = c(0, 0)
) %>%
define_water_chain() %>%
balance_ions_chain()
raw_wells_water
># defined_water Well
># 1 <S4 class 'water' [package "tidywater"] with 62 slots> A
># 2 <S4 class 'water' [package "tidywater"] with 62 slots> B
># balanced_water
># 1 <S4 class 'water' [package "tidywater"] with 62 slots>
># 2 <S4 class 'water' [package "tidywater"] with 62 slots>
It’s always a good idea to verify our code is working properly. To
make sure that our data was balanced using
balance_ions_chain
, we can plot our water
class using plot_ions
. The below example shows how to index
a water
class column:
dataframe$water_class_column[[row_number]]
Let’s continue with our blending analysis. We’re going to treat our
two wells as a single groundwater source. Blending can be calculated as
Well_A_ratio * Well_A concentration + Well_B_ratio *
Well_B_concentration. This is fine for most parameters, but for pH and
acid/base equilibrium species, blending is a little more complicated.
Enter: blend_waters
. This function blends waters as you’d
expect, and does all the pH blending math for you. In the example below,
we’re going to be blending inefficiently. But don’t worry, there will be
a better blending example later.
To mix our two wells, we will blend row 1 of
balanced_water
with row 2 of balanced_water
.
This “vertical” blending is not efficient and will not be useful for
large data frames. water
objects cannot be pivoted, hence
the row-to-row blending. In later examples, we will actually blend
columns, which is more amenable to piped code chunks.
The balanced_water
function takes 2 or more waters (must
be of the water
class), and corresponding ratios for each
water.
# Blend "vertically": blends the data in well A's row with that of well B's.
# The pluck function from the purrr package is useful for indexing a water class column
### First, index the water column using the name or number of the column (ie "balanced_water" or 3 (column number))
### Next, index the row
blended_wells_water <- blend_waters(
waters = c(
pluck(raw_wells_water, "balanced_water", 1),
pluck(raw_wells_water, 3, 2)
),
ratios = c(.5, .5)
)
# outputs a water class object.
blended_wells_water
># pH (unitless): 8.72
># Temperature (deg C): 18.5
># Alkalinity (mg/L CaCO3): 125
># Use summary functions or slot names to view other parameters.
We will create a data frame of the blend scenarios we will be modeling, in this case, we are varying flow rates from the different sources.
# Assume wells can contribute up to 5 MGD each
groundwater <- tibble(Wells_flow = c(0, 2.5, 5))
# Blending scenarios and the resulting source water ratios
scenarios <- tibble(
surface_flow = seq(2, 20, 2),
River_flow = c(seq(2, 10, 2), rep(10, 5)),
Lake_flow = c(rep(0, 5), seq(2, 10, 2)),
) %>%
mutate(group = row_number()) %>%
cross_join(groundwater) %>%
mutate(
total_flow = River_flow + Lake_flow + Wells_flow,
River_ratio = River_flow / total_flow,
Lake_ratio = Lake_flow / total_flow,
Wells_ratio = Wells_flow / total_flow
)
To finish blending our wells, we will transform the
blended_wells
water
object into a data frame
containing a water
column.
The river and lake sources don’t require any mixing. We’ll set up
their raw data and balance the ions using
define_water_chain
to make a data frame with a
water
column. In balance_ions_chain
, we are
specifying the name of the output columns so we can use the different
water sources later. Most of tidywater’s _chain
functions
have the option to name the output column. Defaults vary depending on
the _chain
function.
Wells_water <- tibble(wells = c(blended_wells_water))
River_water <- tibble(
ph = 7, temp = 20, alk = 200, tds = 950, cond = 1400,
tot_hard = 300, na = 100, cl = 150, so4 = 200
) %>%
define_water_chain() %>%
balance_ions_chain(output_water = "river") %>%
select(-defined_water)
Lake_water <- tibble(
ph = 7.5, temp = 19, alk = 180, tds = 900, cond = 1000,
tot_hard = 350, ca_hard = 250, na = 100, cl = 100, so4 = 150
) %>%
define_water_chain() %>%
balance_ions_chain(output_water = "lake") %>%
select(-defined_water)
Now that we have our 3 sources defined, balanced, and cleaned up, we
can blend them. This next code chunk showcases the power of working in a
data frame. We’ll use blend_waters_chain
, the helper
function for blend_waters
. We already created
water
class columns above, so we’ll use those column names
in the waters
argument. The ratios for each water source
were calculated in the scenarios
data frame. We’ll pass the
names of those ratio columns into the ratio
argument. The
ratios must always add up to 1, otherwise the function will not run.
blend_water <- scenarios %>%
cross_join(Wells_water) %>%
cross_join(River_water) %>%
cross_join(Lake_water) %>%
blend_waters_chain(
waters = c("wells", "river", "lake"),
ratios = c("Wells_ratio", "River_ratio", "Lake_ratio")
)
With all three source waters blended for each tested scenario, we can
pull out a parameter of interest using pluck_water
.
Finally, we finish by plotting our parameter of interest with the
ggplot
package.
plotting_data <- blend_water %>%
pluck_water(input_water = "blended_water", "tot_hard")
# Plot the results!
ggplot(plotting_data, aes(x = total_flow, y = blended_water_tot_hard, color = as.character(Wells_flow))) +
geom_point() +
labs(
y = "Hardness (mg/L as CaCO3)", color = "Well Flow (MGD)",
x = "Total Plant Flow (MGD)"
)
In this tutorial, we learned how to use the blend_waters
function to determine resulting water quality of multipled mixed
sources. The function inputs water
objects and their
blending ratios, and outputs a new column storing updated parameters
with the class water
.
We also got more practice using helper functions with the
_chain
suffix and also pluck_water
. For more
context on helper functions or to learn more about the
chemdose_ph
and solvedose_ph
functions, please
see
vignette("help_functions_chemdose_ph", package = "tidywater")
.