This is a very strange situation that I've come across. Basically, I'm trying to fit a cumulative distribution function to the G function of my data. After doing so, I want to plot the the model and the original data, and output this as PDF. I'll allow the code to explain (simply copy and paste):

```
library(spatstat)
data(swedishpines)
mydata <- swedishpines
mydata.Gest <- Gest(mydata)
Gvalues <- mydata.Gest$rs
count <- (which(Gvalues == 1))[1]
new_r <- seq(1/count, length(Gvalues)/count, by = 1/count)
GvsR_dataframe <- data.frame(G <- Gvalues, R <- new_r)
themodel <- suppressWarnings(nls(G ~ pnorm(R, mean, sd), data = GvsR_dataframe, start = list(mean=0.4, sd=0.2), trace = FALSE))
pdf(file = "ModelPlot.pdf")
plot(mydata.Gest, cbind(rs, theo) ~ new_r, lty = c(1, 2), col = c("black", "red"), xlim = c(0, max(new_r)), ylim = c(0,1), main = paste("Model-fitting for G Function \n Mean = ",as.numeric(coef(themodel)[1]),"\n Standard Deviation = ",as.numeric(coef(themodel)[2]), sep=''), ylab = "G(r)", xlab = "Distance Between Particles (r)", legend = NULL)
lines(new_r, predict(themodel), lty = 2, col = "blue")
legend("bottomright", c("CSR", "Swedish Pines", "Normal Probability \n Density Function"), lty = c(2, 4, 1, 2), col = c("red", "black", "blue"), bg = 'grey', border = 'black')
graphics.off()
```

The above code works perfectly.

Now for the strange part.

When I encapsulate all of the commands after `mydata <- swedishpines`

as a function, and cause `mydata`

to be an input to this function, it doesn't work any longer. The following code *should* perform just as the last segment of code did, but it does not.

```
library(spatstat)
data(swedishpines)
mydata <- swedishpines
ModelFit <- function(mydata) {
mydata.Gest <- Gest(mydata)
Gvalues <- mydata.Gest$rs
count <- (which(Gvalues == 1))[1]
new_r <- seq(1/count, length(Gvalues)/count, by = 1/count)
GvsR_dataframe <- data.frame(G <- Gvalues, R <- new_r)
themodel <- suppressWarnings(nls(G ~ pnorm(R, mean, sd), data = GvsR_dataframe, start = list(mean=0.4, sd=0.2), trace = FALSE))
pdf(file = "ModelPlot.pdf")
plot(mydata.Gest, cbind(rs, theo) ~ new_r, lty = c(1, 2), col = c("black", "red"), xlim = c(0, max(new_r)), ylim = c(0,1), main = paste("Model-fitting for G Function \n Mean = ",as.numeric(coef(themodel)[1]),"\n Standard Deviation = ",as.numeric(coef(themodel)[2]), sep=''), ylab = "G(r)", xlab = "Distance Between Particles (r)", legend = NULL)
lines(new_r, predict(themodel), lty = 2, col = "blue")
legend("bottomright", c("CSR", "Swedish Pines", "Normal Probability \n Density Function"), lty = c(2, 4, 1, 2), col = c("red", "black", "blue"), bg = 'grey', border = 'black')
graphics.off()
}
ModelFit(mydata)
```

The following error occurs:

```
Error in eval(expr, envir, enclos) : object 'new_r' not found
```

I'm VERY confused. I've been working on this for a long time, and just could not come up with a solution to this problem. The PDF is outputted, but it is corrupt, and will not open. I have no idea why `new_r`

'disappears', but in doing so, it causes all of the plotting operations to halt. Obviously `new_r`

is local to the function `ModelFit`

, but it almost seems as though it's local to certain areas in the function, as well.

Any help would be greatly appreciated.