Here is a method using a lookup table of thresholds and associated colours to map the colours to the variable of interest.

```
# make a grid 'Grd' of points and number points for side of square 'GrdD'
Grd <- expand.grid(seq(0.5,400.5,10),seq(0.5,400.5,10))
GrdD <- length(unique(Grd$Var1))
# Add z-values to the grid points
Grd$z <- rnorm(length(Grd$Var1), mean = 10, sd =2)
# Make a vector of thresholds 'Brks' to colour code z
Brks <- c(seq(0,18,3),Inf)
# Make a vector of labels 'Lbls' for the colour threhsolds
Lbls <- Lbls <- c('0-3','3-6','6-9','9-12','12-15','15-18','>18')
# Make a vector of colours 'Clrs' for to match each range
Clrs <- c("grey50","dodgerblue","forestgreen","orange","red","purple","magenta")
# Make up lookup dataframe 'LkUp' of the lables and colours
LkUp <- data.frame(cbind(Lbls,Clrs),stringsAsFactors = FALSE)
# Add a new variable 'Lbls' the grid dataframe mapping the labels based on z-value
Grd$Lbls <- as.character(cut(Grd$z, breaks = Brks, labels = Lbls))
# Add a new variable 'Clrs' to the grid dataframe based on the Lbls field in the grid and lookup table
Grd <- merge(Grd,LkUp, by.x = 'Lbls')
# Plot the grid using the 'Clrs' field for the colour of each point
plot(Grd$Var1,
Grd$Var2,
xlim = c(0,400),
ylim = c(0,400),
cex = 1.0,
col = Grd$Clrs,
pch = 20,
xlab = 'mX',
ylab = 'mY',
main = 'My Grid',
axes = FALSE,
labels = FALSE,
las = 1
)
axis(1,seq(0,400,100))
axis(2,seq(0,400,100),las = 1)
box(col = 'black')
legend("topleft", legend = Lbls, fill = Clrs, title = 'Z')
```