
impactr is a package with functions to read, process and
analyse raw accelerometer data related to mechanical loading variables.
You can learn more about this package features and how to use it in
vignette("impactr").
To install the latest stable version of impactr from CRAN, run:
install.packages("impactr")You can also install the development version from GitHub with:
# install.packages("devtools")
devtools::install_github("verasls/impactr")library(impactr)
read_acc(impactr_example("hip-raw.csv")) |>
define_region(
start_time = "2021-04-06 15:45:00",
end_time = "2021-04-06 15:45:30"
) |>
specify_parameters(
acc_placement = "hip",
subj_body_mass = 78
) |>
filter_acc() |>
use_resultant() |>
find_peaks(vector = "resultant") |>
predict_loading(
outcome = "grf",
vector = "resultant",
model = "walking/running"
)
#> # Start time: 2021-04-06 15:43:00
#> # Sampling frequency: 100Hz
#> # Accelerometer placement: Hip
#> # Subject body mass: 78kg
#> # Filter: Butterworth (4th-ord, low-pass, 20Hz)
#> # Data dimensions: 26 × 3
#> timestamp resultant_peak_acc resultant_peak_grf
#> <dttm> <dbl> <dbl>
#> 1 2021-04-06 15:45:00 1.32 1466.
#> 2 2021-04-06 15:45:01 1.36 1469.
#> 3 2021-04-06 15:45:04 1.30 1464.
#> 4 2021-04-06 15:45:04 2.32 1543.
#> 5 2021-04-06 15:45:05 1.50 1480.
#> 6 2021-04-06 15:45:06 1.68 1494.
#> 7 2021-04-06 15:45:06 1.51 1480.
#> 8 2021-04-06 15:45:07 1.96 1515.
#> 9 2021-04-06 15:45:08 1.37 1470.
#> 10 2021-04-06 15:45:08 1.86 1508.
#> # ℹ 16 more rows
Need a high-speed mirror for your open-source project?
Contact our mirror admin team at info@clientvps.com.
This archive is provided as a free public service to the community.
Proudly supported by infrastructure from VPSPulse , RxServers , BuyNumber , UnitVPS , OffshoreName and secure payment technology by ArionPay.