Hi I took the example from: stat.ethz.ch

```
## Now let's look at some artificial data:
x <- seq(100000)/1000 # pretend we're sampling at 1 kHz
## We'll put in two frequency components, plus a dc offset
f1 <- 5 # Hz
f2 <- 2 # Hz
y <- 0.1*sin(2*pi*f1*x) + sin(2*pi*f2*x) + 50
fft.y <- fft(y)
delta <- x[2] - x[1]
f.Nyquist <- 1 / 2 / delta
f <- f.Nyquist*c(seq(length(x)/2), -rev(seq(length(x)/2)))/(length(x)/2)
par(mfrow=c(2,2))
plot(x,y, type='l', xlim=c(0,20))
plot(f, Mod(fft.y), type='l', log='y')
## Now let's zoom in and mark the points were I expect to see peaks:
plot(f, Mod(fft.y), type='l', log='y', xlim=c(-10,10))
```

Right now I do have a dataframe to analyse - df. First column (V1) of df is date, second is value (V2). I set the points but I am always getting one more fft value as in f (what is doing Nyquist). So getting: "'x' and 'y' lengths differ". Don't know where the problem is!

```
y <- df$V2
fft.y <- fft(y)
delta <- 10 # I know that there are 10sec between values
f.Nyquist <- 1 / 2 / delta
f <- f.Nyquist*c(seq(length(df$V1)/2), -rev(seq(length(df$V1)/2)))/(length(df$V1)/2)
```

df looks like:

```
07032012-185821;20.0
07032012-185831;12.0
07032012-185841;14.0
```

and there are around 20000 obersvations

Thanks for help!

`df`

? – Nishanth May 6 '13 at 12:41`runif`

. – Paul Hiemstra May 6 '13 at 12:55