plot_split_crd {agricolaeplotr} | R Documentation |
Plot Split Plot Designs (crd)
Description
Plot a design of a split plot experiment with a complete randomized design (crd) from design.split
Usage
plot_split_crd(
design,
nrows,
ncols,
factor_name_1 = "T1",
factor_name_2 = "T2",
labels = "plots",
subplots = TRUE,
width = 1,
height = 1,
space_width = 0.95,
space_height = 0.85,
reverse_y = FALSE,
reverse_x = FALSE
)
Arguments
design |
outdesign from |
nrows |
Number of rows for the design |
ncols |
Number of columns for the design |
factor_name_1 |
string Which factor should be used for plotting, needs to be a column in outdesign$book |
factor_name_2 |
string Which factor should be used for plotting, needs to be a column in outdesign$book |
labels |
string Describes the column from that the plots are taken to display them |
subplots |
should the plot function return the subplots (default) or main plots? |
width |
numeric value, describes the width of a plot in an experiment |
height |
numeric value, describes the height of a plot in an experiment |
space_width |
numeric value, describes the share of the space of the plots. 0=only space, 1=no space between plots in term of width |
space_height |
numeric value, describes the share of the space of the plots. 0=only space, 1=no space between plots in term of height |
reverse_y |
boolean, should the plots of the experiment be changed in reverse order in Row direction? use reverse_y=TRUE to have same sketch as in agricolae. default:reverse_y=FALSE |
reverse_x |
boolean, should the plots of the experiment be changed in reverse order in column direction? default:reverse_x=FALSE |
Value
ggplot
graphic that can be modified, if wished
Examples
library(agricolaeplotr)
library(agricolae)
T1<-c('a','b','c','d','e','f','g')
T2<-c('v','w','x','y','zzz')
r <- 4
outdesign2 <- design.split(trt1=T1, trt2=T2, r=r,
serie = 2, seed = 0, kinds = 'Super-Duper',
randomization=TRUE,first=TRUE,design = 'crd')
plot_split_crd(outdesign2,ncols = 6,nrows=5)
outdesign2 <- design.split(trt1=T1, trt2=T2, r=r,
serie = 2, seed = 0, kinds = 'Super-Duper',
randomization=FALSE,first=TRUE,design = 'crd')
plot_split_crd(outdesign2,ncols = 6,nrows=5)