# How to simulate pink noise in R

I know that white noise can be achieved by treating the output of `rnorm()` as a timeseries. Any suggestions on how to simulate pink noise?

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Package `tuneR` has `noise` function which can generate a wave object that is either white or pink noise:

``````require(tuneR)
w <- noise(kind = c("white"))
p <- noise(kind = c("pink"))
par(mfrow=c(2,1))
plot(w,main="white noise")
plot(p,main="pink noise")
``````

EDIT: I realized that the method above doesn't generate the vector (doh). Brutal way to convert it into the vector is to add the code below:

``````writeWave(p,"p.wav")#writes pink noise on your hard drive
require(audio)#loads `audio` package to use `load.wave` function
p.vec <- load.wave("path/to/p.wav")#this will load pink noise as a vector
``````

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Isn't `p@left` enough to make a vector? (I can't check because of the CRAN failure.) –  mbq Jan 2 '12 at 12:08
Yes @mbq `p@left` works just fine! Great hint. –  Geek On Acid Jan 2 '12 at 12:14
Just out of interest, how would one write a generalized "color" noise function, i.e. suppress arbitrary regions of the bandwidth? That might be an enjoyable New Year's project for some R-nerd out there :-) –  Carl Witthoft Jan 2 '12 at 14:20
@Carl: You generate white gaussian noise, then run the samples through a filter to generate the desired power spectrum. Pink noise is defined as one with "1/f" power spectrum, so you need to design a filter with a "1/sqrt(f)" frequency response. Usually, you design a FIR (finite impulse response) filter approximating the desired response in some frequency band of interest. –  nimrodm Jan 5 '12 at 5:53
@nimrodm: thanks. That was easy enough. –  Carl Witthoft Jan 5 '12 at 12:40