29.4. Anexa D: Sintaxa script-urilor R din QGIS

Contributed by Matteo Ghetta - funded by Scuola Superiore Sant’Anna

Writing R scripts in Processing is a bit tricky because of the special syntax.

A Processing R script starts with defining its Inputs and Outputs, each preceded with double hash characters (##).

Before the inputs, the group to place the algoritm in can be specified. If the group already exists, the algorithm will be added to it, if not, the group will be created. In the example below, the name of the group is My group:

##My Group=group

29.4.1. Intrări

All input data and parameters have to be specified. There are several types of inputs:

  • vector: ##Layer = vector

  • vector field: ##F = Field Layer (where Layer is the name of an input vector layer the field belongs to)

  • raster: ##r = raster

  • table: ##t = table

  • number: ##Num = number

  • string: ##Str = string

  • boolean: ##Bol = boolean

  • elements in a dropdown menu. The items must be separated with semicolons ;: ##type=selection point;lines;point+lines

29.4.2. Rezultat

Ca și intrările, fiecare ieșire trebuie să fie definită la începutul script-ului:

  • vector: ##output= output vector

  • raster: ##output= output raster

  • table: ##output= output table

  • plots: ##output_plots_to_html (##showplots in earlier versions)

  • To show R output in the Result Viewer, put > in front of the command whose output you would like to show.

29.4.3. Syntax Summary for QGIS R scripts

A number of input and output parameter types are offered.

29.4.3.1. Input parameter types

Parametru

Exemplu de sintaxă

Obiecte returnate

vector

Layer = vector

sf object (or SpatialDataFrame object, if ##load_vector_using_rgdal is specified)

vector point

Layer = vector point

sf object (or SpatialDataFrame object, if ##load_vector_using_rgdal is specified)

vector line

Layer = vector line

sf object (or SpatialDataFrame object, if ##load_vector_using_rgdal is specified)

vector polygon

Layer = vector polygon

sf object (or SpatialPolygonsDataFrame object, if ##load_vector_using_rgdal is used)

multiple vector

Layer = multiple vector

sf object (or SpatialDataFrame objects if ##load_vector_using_rgdal is specified)

tabelă

Layer = table

dataframe convertit din csv, obiect implicit al funcției read.csv

field

Field = Field Layer

numele câmpului selectat, ex.: "Area"

raster

Layer = raster

Obiect RasterBrick, obiect implicit al pachetului raster

multiple raster

Layer = multiple raster

Obiect RasterBrick, obiect implicit al pachetului raster

number

N = number

numărul întreg sau zecimal ales

string

S = string

textul adăugat în casetă

longstring

LS = longstring

șirul de caractere adăugat în casetă, ar putea fi mai lung decât șirul normal

selection

S = selection first;second;third

șirul cu elementele care vor putea fi selectate din meniul derulant

crs

C = crs

string of the resulting CRS chosen, in the format: "EPSG:4326"

extent

E = extent

Obiectul extindere din pachetul raster, puteți extrage valorile astfel: E@xmin

point

P = point

când faceți clic pe hartă, puteți vedea coordonatele punctului

file

F = file

calea fișierului ales, ex.: „/home/matteo/file.txt”

folder

F = folder

calea directorului ales, ex.: „/home/matteo/Downloads”

A parameter can be OPTIONAL, meaning that it can be ignored.

In order to set an input as optional, you add the string optional before the input, e.g:

##Layer = vector
##Field1 = Field Layer
##Field2 = optional Field Layer

29.4.3.2. Output parameter types

Parametru

Exemplu de sintaxă

vector

Output = output vector

raster

Output = output raster

tabelă

Output = output table

file

Output = output file

Notă

You can save plots as png from the Processing Result Viewer, or you can choose to save the plot directly from the algorithm interface.

29.4.3.3. Corpul scriptului

The script body follows R syntax and the Log panel can help you if there is something wrong with your script.

Remember that you have to load all additional libraries in the script:

library(sp)

29.4.4. Exemple

29.4.4.1. Exemplu de ieșire vectorială

Let’s take an algorithm from the online collection that creates random points from the extent of an input layer:

##Point pattern analysis=group
##Layer=vector polygon
##Size=number 10
##Output=output vector
library(sp)
spatpoly = as(Layer, "Spatial")
pts=spsample(spatpoly,Size,type="random")
spdf=SpatialPointsDataFrame(pts, as.data.frame(pts))
Output=st_as_sf(spdf)

Explanation (per line in the script):

  1. Analiza modelului de puncte reprezintă grupul algoritmului

  2. Stratul reprezintă stratul de intrare vectorial

  3. Size is a numerical parameter with a default value of 10

  4. Ieșire reprezintă stratul vectorial care va fi creat de către algoritm

  5. library(sp) loads the sp library

  6. spatpoly = as(Layer, "Spatial") translate to an sp object

  7. Call the spsample function of the sp library and run it using the input defined above (Layer and Size)

  8. Create a SpatialPointsDataFrame object using the SpatialPointsDataFrame function

  9. Create the output vector layer using the st_as_sf function

That’s it! Just run the algorithm with a vector layer you have in the QGIS Legend, choose the number of random point. The resulting layer will be added to your map.

29.4.4.2. Exemplu de ieșire raster

The following script will perform basic ordinary kriging to create a raster map of interpolated values from a specified field of the input point vector layer by using the autoKrige function of the automap R package. It will first calculate the kriging model and then create a raster. The raster is created with the raster function of the raster R package:

##Basic statistics=group
##Layer=vector point
##Field=Field Layer
##Output=output raster
##load_vector_using_rgdal
require("automap")
require("sp")
require("raster")
table=as.data.frame(Layer)
coordinates(table)= ~coords.x1+coords.x2
c = Layer[[Field]]
kriging_result = autoKrige(c~1, table)
prediction = raster(kriging_result$krige_output)
Output<-prediction

By using ##load_vector_using_rgdal, the input vector layer will be made available as a SpatialDataFrame objects, so we avoid having to translate it from an sf object.

29.4.4.3. Exemplu de generare a unui tabel

Let’s edit the Summary Statistics algorithm so that the output is a table file (csv).

The script body is the following:

##Basic statistics=group
##Layer=vector
##Field=Field Layer
##Stat=Output table
Summary_statistics<-data.frame(rbind(
    sum(Layer[[Field]]),
    length(Layer[[Field]]),
    length(unique(Layer[[Field]])),
    min(Layer[[Field]]),
    max(Layer[[Field]]),
    max(Layer[[Field]])-min(Layer[[Field]]),
    mean(Layer[[Field]]),
    median(Layer[[Field]]),
    sd(Layer[[Field]])),
  row.names=c("Sum:","Count:","Unique values:","Minimum value:","Maximum value:","Range:","Mean value:","Median value:","Standard deviation:"))
colnames(Summary_statistics)<-c(Field)
Stat<-Summary_statistics

The third line specifies the Vector Field in input and the fourth line tells the algorithm that the output should be a table.

The last line will take the Stat object created in the script and convert it into a csv table.

29.4.4.4. Example with console output

We can use the previous example and instead of creating a table, print the result in the Result Viewer:

##Basic statistics=group
##Layer=vector
##Field=Field Layer
Summary_statistics<-data.frame(rbind(
sum(Layer[[Field]]),
length(Layer[[Field]]),
length(unique(Layer[[Field]])),
min(Layer[[Field]]),
max(Layer[[Field]]),
max(Layer[[Field]])-min(Layer[[Field]]),
mean(Layer[[Field]]),
median(Layer[[Field]]),
sd(Layer[[Field]])),row.names=c("Sum:","Count:","Unique values:","Minimum value:","Maximum value:","Range:","Mean value:","Median value:","Standard deviation:"))
colnames(Summary_statistics)<-c(Field)
>Summary_statistics

The script is exactly the same as the one above except for two edits:

  1. no output specified (the fourth line has been removed)

  2. the last line begins with >, telling Processing to make the object available through the result viewer

29.4.4.5. Exemplu de grafic

To create plots, you have to use the ##output_plots_to_html parameter as in the following script:

##Basic statistics=group
##Layer=vector
##Field=Field Layer
##output_plots_to_html
####output_plots_to_html
qqnorm(Layer[[Field]])
qqline(Layer[[Field]])

The script uses a field (Field) of a vector layer (Layer) as input, and creates a QQ Plot (to test the normality of the distribution).

The plot is automatically added to the Processing Result Viewer.