The goal of tbrf is to provide time-window based rolling statistical
functions. The package differs from other rolling statistic packages
because the intended use is for irregular measured data. Although tbrf
can be used to apply statistical functions to regularly sampled data, `zoo`

, `RcppRoll`

,
and other packages provide fast, efficient, and rich implementations of
rolling/windowed functions.

An appropriate example case is water quality data that is measured at irregular time intervals. Regulatory compliance is often based on a statistical average measure or exceedance probability applied to all samples collected in the previous 7-years. tbrf can be used to display regulatory status at any sample point.

tbrf identifies the previous n measurements within the specified time window, applies the function, and outputs a variable with the result of the rolling statistical measure.

tbrf is available on CRAN:

`install.packages("tbrf")`

The development version is maintained on github and can be installed as:

```
install.packages(remotes)
::install_github("mps9506/tbrf") remotes
```

`tbr_binom`

: Rolling binomial probability with confidence intervals.`tbr_gmean`

: Rolling geometric mean with confidence intervals.`tbr_mean`

: Rolling mean with confidence intervals.`tbr_median`

: Rolling median with confidence intervals.`tbr_misc`

: Accepts user specified function.`tbr_sd`

: Rolling standard deviation.`tbr_sum`

: Rolling sum.

See:

https://mps9506.github.io/tbrf/

Plot a rolling 1-hour mean:

```
library(tbrf)
library(dplyr)
library(ggplot2)
library(ggalt)
= 3 * sin(2 * seq(from = 0, to = 4*pi, length.out = 100)) + rnorm(100)
y = sample(seq(as.POSIXct(strptime("2017-01-01 00:01:00", "%Y-%m-%d %H:%M:%S")),
time as.POSIXct(strptime("2017-01-01 23:00:00", "%Y-%m-%d %H:%M:%S")),
by = "min"), 100)
<- data_frame(y, time)
df
%>%
df tbr_mean(y, time, "hours", n = 1) %>%
ggplot() +
geom_point(aes(time, y)) +
geom_step(aes(time, mean))
```

Plot a rolling 3-hour mean:

```
%>%
df tbr_mean(y, time, "hours", n = 3) %>%
ggplot() +
geom_point(aes(time, y)) +
geom_step(aes(time, mean))
```

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.

tbrf code is released under GPL-3 | LICENSE.md

`binom_ci()`

is an implementation of code licensed under
GPL (>=2) by Frank Harrellâ€™s `Hmisc`

package.

```
library(tbrf)
date()
## [1] "Tue Mar 24 07:45:05 2020"
::test()
devtools## v | OK F W S | Context
## / | 0 | core functions work in piped workflow- | 1 | core functions work in piped workflow- | 5 | core functions work in piped workflowv | 6 | core functions work in piped workflow [0.3 s]
## / | 0 | core functions return expected errors and messagesv | 7 | core functions return expected errors and messages
## / | 0 | core functions return expected structures and values\ | 2 | core functions return expected structures and values- | 5 | core functions return expected structures and values\ | 6 | core functions return expected structures and valuesv | 6 | core functions return expected structures and values [1.1 s]
## / | 0 | internal statistical functions return expected values| | 3 | internal statistical functions return expected values- | 5 | internal statistical functions return expected valuesv | 11 | internal statistical functions return expected values [0.3 s]
##
## == Results ===================================================================================================
## Duration: 1.8 s
##
## OK: 30
## Failed: 0
## Warnings: 0
## Skipped: 0
```