Skip to content

steeleb/Rubin_etal_repository

Repository files navigation

Rubin, et al. Code Repository

R programs used for the Rubin, et al. manuscript Contact: hrubin@vols.utk.edu

This is a repository of the code used to complete analyses in the Rubin, et al. manuscript 'Remote Sensing of Lake Water Clarity: Performance and Transferability of Both Historical Algorithms and Machine Learning'

Raw data are not stored in this repository, but can be made available upon request.

Descriptions of programs within this repository:

band_ratio_architecture update 01.19.R - This program calculates new coefficients for historical algorithms and applies the machine learning algorithm developed in the program 'Random Forest Full Dataset 128 trees 11Jan2021.' It also calculates pseudo-R^2, MAE and RMSE for training and testing sets.

Random Forest Full Dataset 128 trees 11Jan2021.R - This program builds a random forest model on the training data for this analysis.

iterate_by_day.R - This program applies each historical and machine learning algorithm over the data on a day-by-day basis.

boxplot_figure_daybyday_wholedataset_mae_rmse.R - This program creates all non-mapped figures in the manuscript.

About

R programs used for the Rubin, et al. manuscript

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages