knitr::opts_chunk$set( collapse = TRUE, comment = "#>"#, #fig.path = "qs_vig/" ) options(rmarkdown.html_vignette.check_title = FALSE)
reslr
Use:
# Not on CRAN yet #install.packages("reslr") #devtools::install_github("maeveupton/reslr") install_github("maeveupton/reslr")
then,
library(reslr)
Note: The JAGS software is a requirement for this instruction sheet and refer back to main vignettes for more information.
reslr
There is a large example dataset included in the reslr
package called NAACproxydata
. In this example, we demonstrate how to include proxy record data which is stored in a csv file. This csv file of data can be found in the package and the readr
function reads the csv file:
path_to_data <- system.file("extdata", "one_data_site_ex.csv", package = "reslr") example_one_datasite <- read.csv(path_to_data)
Using the reslr_load
function to read in the data into the reslr
package:
example_one_site_input <- reslr_load( data = example_one_datasite)
plot( x = example_one_site_input, title = "Plot of the raw data", xlab = "Year (CE)", ylab = "Relative Sea Level (m)", plot_tide_gauges = FALSE, plot_caption = TRUE )
Select your modelling technique from the modelling options available:
| Statistical Model | Model Information | model_type
code |
| ---- | ------- | -- |
| Errors in variables simple linear regression | A straight line of best fit taking account of any age and measurement errors in the RSL values using the method of Cahill et al (2015). Use for single proxy site. | "eiv_slr_t" |
| Errors in variables change point model | An extension of the linear regression modelling process. It uses piece-wise linear sections and estimates where/when trend changes occur in the data (Cahill et al. 2015). | "eiv_cp_t" |
| Errors in variables integrated Gaussian Process | A non linear fit that utilities a Gaussian process prior on the rate of sea-level change that is then integrated (Cahill et al. 2015). | "eiv_igp_t" |
| Noisy Input spline in time | A non-linear fit using regression splines using the method of Upton et al (2023). | "ni_spline_t" |
| Noisy Input spline in space and time | A non-linear fit for a set of sites across a region using the method of Upton et al (2023). | "ni_spline_st"|
| Noisy Input Generalised Additive model for the decomposition of the RSL signal | A non-linear fit for a set of sites across a region and provides a decomposition of the signal into regional, local-linear (commonly GIA) and local non-linear components. Again this full model is as described in Upton et al (2023). | "ni_gam_decomp" |
For this example, it is a single site and we are interested in how it varies over time select the Noisy Input spline in time. If it was multiple sites, we recommend using a spatial temporal model, i.e. Noisy Input spline in space and time, or for decomposing the signal, i.e. Noisy Input Generalised Additive model.
Once the model is chosen use the reslr_mcmc
function to run it:
res_one_site_example <- reslr_mcmc( input_data = example_one_site_input, model_type = "ni_spline_t", CI = 0.95 )
The convergence of the algorithm is examined and he parameter estimates from the model can be investigated using the following:
summary(res_one_site_example)
The model fit results can be visualised using the following function:
plot(res_one_site_example, xlab = "Year (CE)", ylab = "Relative Sea Level (m)", plot_type = "model_fit_plot" )
For the rate of change plot use:
plot(res_one_site_example, plot_type = "rate_plot" )
To examine the data creating these plots the user types the following:
output_dataframes <- res_one_site_example$output_dataframes head(output_dataframes)
To examine the additional options in the reslr
package, see the main vignette.
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