There are many sources of water quality monitoring data including
instruments (ex: YSI instruments) and open source data sets (ex: USGS
and NDBC), all of which are susceptible to errors/inaccuracies due to
drift. driftR
provides a grammar for cleaning and correcting these
data in a “tidy”, reproducible manner.
Version 1.1 of driftR
is here! It includes:
- a streamlined
dr_read
function that includes built-in support for YSI Sonde 6600, YSI EXO, and Onset HOBO products. - new aregument in
dr_read
that gives the option to read in only clean variable names (e.g., no special characters, no spaces, etc.) using functionality from thejanitor
package. - expanded functionality for
dr_drop
, including the ability to drop by date range and by using expressions. - ability to convert observations that are likely measurement errors
to
NA
using either a date range or by using an expression using a new function calleddr_replace
. - changes under the hood to
dr_factor
that expand it ability to handle a variety of date formats automatically.
The easiest way to get driftR
is to install it from CRAN:
install.packages("driftR")
You can also install the development version of driftR
from Github
with devtools
:
# install.packages("devtools")
devtools::install_github("shaughnessyar/driftR")
The driftR
package implements a series of equations used in
Dr. Elizabeth
Hasenmueller’s
hydrology and geochemistry research. These equations correct continuous
water quality monitoring data for incremental drift that occurs over
time after calibration. There are two forms of corrections included in
the package - a one-point calibration and a two-point calibration.
One-point and two-point calibration values are suited for different
types of measurements. The package is currently written for the easiest
use with YSI multiparameter Sonde V2 series products, YSI EXO products,
and Onset HOBO products.
The figure below illustrates the difference in chloride values between
the uncorrected data and the same data with the drift corrections
implemented by driftR
applied. Note that the uncorrected data drifts
to higher values over time. driftR
uses calibration data to correct
this drift.
As shown, continuous water quality instruments drift over time, so it
becomes necessary to correct the data to maintain accuracy. driftR
provides five verbs for applying these corrections in a consistent,
reproducible manner: read, factor, correct, drop, and replace.
These verbs are designed to be implemented in that order, though there
may be multiple applications of correct for a given data set. All of
the core functions for driftR
have the dr_
prefix, making it easy to
use them interactively in RStudio.
The following example shows a simple workflow for applying these verbs to some hypothetical data:
# load the driftR package
library(driftR)
# import data exported from a Sonde
waterTibble <- dr_read(file = "data.csv", instrument = "Sonde", defineVar = TRUE,
cleanVar = TRUE, case = "snake")
# calculate correction factor and keep dateTime var
# results stored in new vector corrFac and dateTime
waterTibble <- dr_factor(waterTibble, corrFactor = corrFac, dateVar = Date,
timeVar = Time, keepDateTime = FALSE)
# apply one-point calibration to SpCond;
# results stored in new vector SpConde_Corr
waterTibble <- dr_correctOne(waterTibble, sourceVar = SpCond, cleanVar = SpCond_Corr,
calVal = 1.07, calStd = 1, factorVar = corrFac)
# apply two-point calibration to pH;
# results stored in new vector pH_Corr
waterTibble <- dr_correctTwo(waterTibble, sourceVar = pH, cleanVar = pH_Corr,
calValLow = 7.01, calStdLow = 7, calValHigh = 11.8,
calStdHigh = 10, factorVar = corrFac)
# drop observations to account for instrument equilibration
waterTibble <- dr_drop(waterTibble, head=10, tail=5)
#replace observations with NA for a date range
waterTibble <- dr_replace(waterTibble, sourceVar = pH, overwite = TRUE, dateVar = Date,
timeVar = Time, from = "2018-02-05", to = "2018-02-09")
All of the core functions return tibbles (or data frames) and make use
of the tidy evaluation pronoun .data
, so using them in concert with
the pipe (%>%
) is straightforward:
# load the driftR package
library(driftR)
# import data exported from a Sonde
waterTibble <- dr_read(file = "sondeData.csv", instrument = "Sonde", defineVar = TRUE,
cleanVar = TRUE, case = "snake")
# caclulate correction factors, apply corrections, drop observations, and replace observations
waterTibble <- waterTibble %>%
dr_factor(corrFactor = corrFac, dateVar = Date, timeVar = Time,
keepDateTime = TRUE) %>%
dr_correctOne(sourceVar = SpCond, cleanVar = SpCond_Corr, calVal = 1.07,
calStd = 1, factorVar = corrFac) %>%
dr_correctTwo(sourceVar = pH, cleanVar = pH_Corr, calValLow = 7.01, calStdLow = 7,
calValHigh = 11.8, calStdHigh = 10, factorVar = corrFac) %>%
dr_drop(head=10, tail=5) %>%
dr_replace(waterTibble, sourceVar = pH, overwite = TRUE, dateVar = Date,
timeVar = Time, from = "2018-02-05", to = "2018-02-09")
See the package website for
more information on these functions and a detailed
vignette
describing how to get started with driftR
. There is also an
additional
vignette
describing the specific ways in which dates and times can be used in
driftR
functions.
We also provide some introductory
examples
for how to use tidyr
,
ggplot2
, and several other R
packages to conduct some initial exploratory data analysis of driftR
output. Finally, we provide a third
vignette
designed for users of instruments not supported directly by driftR
who
wish to use driftR
with their data.
You can also view the help files from within R:
?dr_read
If driftR
does not seem to be working as advertised, please help us
creating a reproducible example, or
reprex
, that makes it easy to
get help. You can find additional
details in our support document.
We are interested in expanding the built-in capabilities of driftR
to
read in water quality data from other sources. As of version 1.1, we
provide built-in support for YSI Sonde 6600, YSI EXO, and Onset HOBO
products.
If you have some sample data (~500 observations are ideal) from another
model or brand of instrument and are willing to share it, please reach
out to one of the package authors or, better yet, open an
Issue. If you have
some R
skills and want to write the function yourself, feel free to
check out our contributing document and fork
driftR
.
Please note that this project is released with a Contributor Code of Conduct. By participating in this project you agree to abide by its terms.
Andrew Shaughnessy led the development of this package. He is a senior at Saint Louis University majoring in Chemistry and Environmental Science.
Christopher Prener, Ph.D. assisted in
the development of this package. He is an Assistant Professor in the
Department of Sociology and Anthropology at Saint Louis
University.
He has a broad interest in computational social science as well as the
development of R
packages to make research more reproducible and to
generalize research code.
Elizabeth Hasenmueller, Ph.D. developed the original equations that this package implements and provided the example data. She is an Assistant Professor in the Department of Earth and Atmospheric Science at Saint Louis University.