I'm trying to fit a function in R and therefor I use nls(). Is there a way to prevent the fitted function from falling below zero?

An easy work around would be to rise the parameter `b0`

in the target function after the fit, but this is actually not what I want because I expect a real fit with the constraint of beeing positive to lead to a better result.

```
y=c(m1,m2,m3,m4,m5,m6,m7,m8,m9,m10)
d=data.frame(seq(1, 10, 1),y=y)
fitFun <- function(x, add, b0, b1) {b0 + (x+add)^b1}
m=nls(y~fitFun(x,add,intercept,power),d,start=list(intercept=1,power=3.5,add=2),trace=T)
```