GAM fusion Venezuela, output analyses to create quickly maps and plots for each date
GAM fusion raster prediction Venezuela, adding log file to scrip track of script processing time
GAM fusion, VE slight modifications of functions such as model formulas input
GAM Fusion, raster prediction separation in three fuctions, Venezuela interpolation
GAM fusion function, calculation of validation metrics to follow predictions
GAM Fusion function major modification, separation of monhtly and daily steps, Venezuela prediction
Data covariates preparation, slight modifications and updates
GAM Fusion fusion initial reorganization of code to reduce time and predict for Venezuela
GAM fusion function, modifications for first fusion prediction in Venezuela
GAM fusion raster prediction, further modificationfor Venzuela tmax interp
GAM fusion function first change to adapt code for any region
GAM Fusion, Venzuela tmax interp, modification to make code more general
Data preparation Venezuela, added monthly query from Postgres station database
Venezuela preparation of data for tmax prediction
LST climatology, added tile loop, downloading and calculation of climatology for 6 tiles in Venezuela
LST climatology, added loop to produce monhtly mean and write out tif from GRASS database
LST climatology, added function to create list of files per month and other modifications
LST climatolgoy, modified download function and added section for downloading of tiles
LST climatology, initial commit script from Jim Regetz commit 01b3830e, task#375 and task#316
LST climatology, using IDRIS API modification using datetime module, OR task#375 and task#416
LST climatology initial commit script using IDRISI API and python
Kriging tmax OR raster predictions
Database stations extraction combined with covariates for tmax and any given region
Covariates production, modified projection and distance to coast, added writing up of multiband covariates brick
Covariates production, major reorganization, added sections for LST, LC and other covariates
Covariates production for processing tile/region: general code-initial commit
GAM fusion function, IBS 2013 models and additional cleaning of code
GAM fusion raster prediction, IBS 2013 run, tmax OR
GAM fusion raster prediction tmax OR, added cleaning of LST values and other modifications
GAM fusion raster prediction tmax OR, added constant sampling, multisampling,GAM bias models
GAM fusion function, added GAM models for bias surface and extraction of monthly mean tmax OR
GAM CAI function, models for IBS 2013 conference and modifications
GAM CAI raster predictions, modifcations and model running for IBS conference 2013
GAM CAI function correction constant sampling and GAM climatology models, tmax OR
GAM CAI raster prediction OR tmax,corretion constant sampling and GAM climatology models
GAM CAI function added climatology GAM models for OR tmax interpolation
GAM CAI, added constant sampling over year and monthly extraction for climatology fitting
GAM CAI function for raster prediction, task #493, tmax OR interpolationi
GAM CAI raster prediction first commit, task #491, OR tmax interpolation
Methods comp part7-task#491- SNOT-GHCN data updated script debugged to run through mcapply
Methods comp part7-task#491- SNOTEL and GHCN analyses update main script calling function
Methods comp part7-task#491- function for residuals analyses comparison SNOTEL and GHCN through dates
Methods comp part7-task#491- residuals analyses using SNOTEL data, initial commit
Methods comp part6-task#491- Download FTP script and data prepartion for SNOTEL Data
Methods comp part5-task#491- residuals analyses, spatial transect through stations with diff and elevation
Methods comp part5-task#491- initial commit, residuals analyses with focus on differences,land cover and covariates plots
Methods comp part4-task#491- residuals analyses update plot res per elevation classes
Methods comp part4- task#491-, residuals analses, cleaning, added functions, residuals by land cover and temporal profiles
Methods comp part4 task#491 initial commit, residuals analyses at specific station for FUS and CAI
Methods comp part3-task#491- clean up, verification of results for specific dates
Method comp part3,initial commit task#491 check extremes for LST and ELEV, exploratory analysis Land cover
Methods comp part2: task-#491-major modifications, transect through images and stations, temporal profiles etc.
Methods comp part2: initial commit-task#491-,accuracy and closest training stations, multisampling etc.
Method comp part1 -task#491, major clean up, production of boxplots and visual maps
Initial commit-task#491-methods comparison part 1: kriging, GAM, GWR, FUS, CAI
Accuracy and spatial distance to closest fitting stat., intial commit task #491
Multi sampling kriging raster prediction, initial commit, task #491
Multisampling Kriging function interpolation initial commit raster prediction task #491
Method comparison initial commit task #491
GAM FUSION, multi sampling function initial commit
GAM FUSION, multi sampling accuarcy assessment main script initial commit
GWR, raster pred. modification model 8, function
GWR, modification of code for model 8, raste prediction
GWR, raster prediction -function used in the main script
GWR, raster prediction full year main script
KRIGING, full raster predition over on year: code clean up
KRIGING, modified function for memory clean up and other improvements
KRIGING, raster prediction full year, function used in main script
KRIGING, raster prediction for full year using function TASK#364
KRIGING, raster prediction-major changes for spatially explicit interp.
OR, Kriging using automated fitting of variograms TASK#364
FUSION function to predict raster, clean up of mod object using as.formula
FUSION, GAM and fusion comparison raster prediction modified return object to solve memory issues in mod object
FUSION, raster prediction using function in mcapply
FUSION, using parallel for raster prediction with function
FUSION, adding option to use same proportion of training for fusion and gam
FUSION, comparison to GAM models using the same testing and training data
FUSION, using GAM for bias surface, correction aspects
FUSION, training and testing for year 2010 read from the GHCND database
FUSION, modifications saving plots and adding GAM models for delta surface
Initial modification by Benoit-adding testing points for 10 dates
Initial commit: first fusion code from Brian
OR data preparation, initial commit for extraction of covariates from raster stack
OR data preparation task#363, modified code for ghcn to create a shapefile
GHNCD station data selection using Postgres database, initial commit, task #363
GAM LST, added specific and general diagnostic measures (e.g.MAE) GAM+Kriging, task #364 and #406
GAM LST, adding lines to summarize samling RMSE using plots, task #409
GAM LST, first code to test effect of sampling on GAM, task #409
GAM LST, added model and modified summary plots, run on 365 dates GAM+Kriging, task #364 and #406
GAM LST, modify code to generalize number of models and assessment,GAM+Kriging task #364
GAM LST, major modifications to create GAM+Kriging code, task #364
GAM LST, adding lines to assess RMSE per month over 365 dates, task #406
GAM LST, added model with forest only term -364 dates assessment, task #406
GAM LST, added section to save training and test residuals in shapefiles, task #361
GAM LST, changed triple nesting lat,long,Elev to double, 365 dates run, task #406 and #361
GAM LST, used monthly LST average instead of daily, task #361
GAM LST, adding new model with grass land cover, task #361
GAM using LST as input variable task #361
GAM, modification of nesting of models and clean up, task #361
Kriging, adding LST for co-kriging: task #364