If you choose to construct your own version of the distribution, you might be interested in **distr**. It (and the related packages **distrEx**, **distrSim**, **distrTEst**, **distrTeach** and **distrDoc**) have been written to provide a unified interface for constructing new distributions from existing ones. (I constructed this example with the help of the wonderful vignette that accompanies the **distrDoc** package and which can be gotten by typing `vignette("distr")`

.)

This implements the split normal distribution, which may not be exactly what you are after. Using the **distr** toolset, though, it shouldn't be too hard to adjust this to fit your exact needs.

```
library(distr)
## Construct the distribution object.
## Here, it's a split normal distribution with mode=0, and lower- and
## upper-half standard deviations of 1 and 2, respectively.
splitNorm <- UnivarMixingDistribution(Truncate(Norm(0,2), upper=0),
Truncate(Norm(0,1), lower=0),
mixCoeff=c(0.5, 0.5))
## Construct its density function ...
dsplitNorm <- d(splitNorm)
## ... and a function for sampling random variates from it
rsplitNorm <- r(splitNorm)
## Compare the density it returns to that from rnorm()
dsplitNorm(-1)
# [1] 0.1760327
dnorm(-1, sd=2)
# [1] 0.1760327
## Sample and plot a million random variates from the distribution
x <- rsplitNorm(1e6)
hist(x, breaks=100, col="grey")
## Plot the distribution's continuous density
plot(splitNorm, to.draw.arg="d")
```