- Each column of W corresponds to one sample W(k)∼CN(0,I(nc)).
- This ensures that the total variance remains 1, as expected for standard complex Gaussian noise.
Gaussian complex distribution over noise vector
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Hello,
Hope everyone is well!
I have a channel input-output relation : Y(k)= H(k) X(k) + W(k) with k=1,...,L
W(k)~CN(0,I(nc)) where W(k) is a gaussian vector, CN is a complex gaussian and I(nc) is an identity matrix of dimension nc.
How can I generate multiple random variables for W(k)?
Is it correct to write :
V=(randn(0,I) + i*randn(0,I))
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AR
el 20 de Jun. de 2025
To generate a complex Gaussian random vector, the standard approach is to combine two independent real Gaussian vectors (for the real and imaginary parts) and scale by 1/√2 to maintain unit variance.
If you want to generate L such vectors each of dimension nc × 1, use:
W = (randn(n_c, L) + 1i * randn(n_c, L)) / sqrt(2);
Additionally, the function “randn” expects integer dimensions, like “randn(rows, cols)”
You can refer to the following documentation page for more information:
I hope this helps!
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