Skip to content

Latest commit

 

History

History
70 lines (56 loc) · 3.68 KB

tutorial.md

File metadata and controls

70 lines (56 loc) · 3.68 KB

Tutorial

  • To understand how to submit to the IIASA database, read this REMIND tutorial.
  • In the following, we differentiate templates (list of variables and corresponding units used in a project) and mappings (specifying which PIAM variable will be mapped to a project variable).

Mappings

Mappings found in the inst/mappings folder serve to map variables from the PIAM framework to variables needed for the submission to databases. The mappings are ;-separated files, using # as comment character, with the following mandatory columns:

  • variable: name of the variable in the project template
  • unit: unit corresponding to variable
  • piam_variable: name of the variable in REMIND / MAgPIE / EDGE-T etc. reporting
  • piam_unit: unit corresponding to piam_variable
  • piam_factor: factor with which the piam_variable has to be multiplied for units to match

Recommended column:

  • description: description text defining the variable. Never use " and ; in the text.
  • source: abbreviation of the PIAM part where the piam_variable comes from. Use B = Brick, C = MAGICC, M = MAgPIE, R = REMIND, S = SDP postprocessing, T = EDGE-Transport. This column is used to select the variables passed to remind2 and coupling tests. If the variable is not normally reported, add a small x after the model abbreviation for it to be skipped.

Additionally, some mappings use those columns:

  • idx: serial number of variable
  • Tier: importance of variable. 1 means most important
  • Comment: place for comments

To edit a mapping in R, use:

mappingdata <- getMapping("AR6")
...
write.csv2(mappingdata, "test.csv", na = "", row.names = FALSE, quote = FALSE)

Opening the csv files in Excel can be problematic, as it sometimes changes values and quotation marks. You can edit the files in LibreOffice Calc using these settings in the Text Import dialog:

  • Text Import with:
    • Character set: Unicode (UTF-8)
    • Separated by: Semicolon.
  • Save with:
    • Character set: Unicode (UTF-8)
    • Field Delimiter: ;
    • String Delimiter: (none)

The github diff on a large semicolon-separated file is often unreadable. For a human-readable output, save the old version of the mapping and run:

remind2::compareScenConf(fileList = c("oldfile.csv", "mappingfile.csv"), row.names = NULL)

Model intercomparison

  • To compare the results of different models, pass as modeldata a quitte object or a csv/xlsx file. You get a PDF document for each scenario and each model with area plots for all the summation groups in AR6 (or NAVIGATE) summation files plus line plots for each variable in the lineplotVariables vector you supplied. It takes some time, better use a slurm job for:

    plotIntercomparison(modeldata, summationsFile = "AR6", lineplotVariables = c("Temperature|Global Mean", "Population"))
    
  • If your modeldata is not well filtered such that for example model regions are not too different, you can use interactive = TRUE which allows to select models, regions, scenarios and variables that you like in your PDF. As lineplotVariables, you can also specify mapping names.

    plotIntercomparison(modeldata, summationsFile = "AR6", lineplotVariables = c("AR6", "AR6_NGFS"), interactive = TRUE)