```
#create log probablity plot
#MPM 131201
#Make some dummy data
set.seed(21)
Dt<-as.data.frame(rlnorm(625, log(10), log(2.5)))
names(Dt)<-"Au_ppm"
#Create probablity scale lines and associated labels -
PrbGrd <- qnorm(c(0.001,0.01, 0.05, 0.10,0.20,0.30,0.40, 0.50, 0.60, 0.70,0.80,0.90,0.95,0.99,0.999))
PrbGrdL<-c("0.1","1","5","10","20","30","40","50","60","70","80","90","95","99","99.9")
#create some value grid lines then convert to logs
ValGrd<-c(seq(0.001,0.01,0.001),seq(0.01,0.1,0.01),seq(0.1,1,0.1),seq(1,10,1),seq(10,100,10))
ValGrd<-log10(ValGrd)
#load up lattice packages - latticeExtra for nice log scale
require(lattice)
require(latticeExtra)
#Use qqmath to make the plot (note lattice does not work for weighted data - shame about that)
qqmath(~ Au_ppm,
data= Dt,
distribution = function(p) qnorm(p),
main = "Normal probablity / log (base 10) plot",
pch=20,
cex=0.5,
xlab="Normal distribution scale (%)",
scales=list(y=list(log=10,alternating=1),x = list(at = PrbGrd, labels = PrbGrdL, cex = 0.8)),
yscale.components=yscale.components.log10ticks,
panel=function(x,...){
panel.abline(v=PrbGrd ,col="grey",lty=3)
panel.abline(h=ValGrd,col="grey",lty=3)
panel.qqmath(x,distribution=qnorm)
}
)
```