The output of a filter is given by π¦(π) = cos(πΌ) β π₯(π) + sin(πΌ)β π₯(π β 1)
e) In real applications, you have mostly access to independent,zero mean, unit-variance Gaussian distributed samples π€(π). How canyou built (from π€(π)) samples π₯(π) with power spectral density asin point b)? Verify on Matlab.
For you Information:
b) The random input signal π₯(π) consists of zero mean Gaussiandistributed samples with power spectral density π
ππ,π½(π) = rect ((πβ π½/2)/π½) , π β 0,1 , π½ π [0,1]. Find the powerspectral density π
ππ,πΌ,π½(π) of output π¦(π).
The output of a filter is given by 𝑦(𝑛) = cos(𝛼) β 𝑥(𝑛) + sin(𝛼) β 𝑥(𝑛 β 1) e) In real applications, you have mostly acc
-
- Site Admin
- Posts: 899603
- Joined: Mon Aug 02, 2021 8:13 am