How can i generate Gaussian random process using Matlab with zero mean and unit variance ?
Gaussian random variable can be implemented by
w=(1/sqrt(2*pi))*exp((t.^2)/2);
but what about Gaussian random process ?
How can i generate Gaussian random process using Matlab with zero mean and unit variance ? Gaussian random variable can be implemented by w=(1/sqrt(2*pi))*exp((t.^2)/2); but what about Gaussian random process ? 

If the Gaussian process is white (no correlation between samples at different instants), just use
where If you need to introduce correlation between samples (that is, the values at different instants are correlated), the usual approach is to generate a white Gaussian process and then apply a lowpass filter (using For example,
You can see that the filtered signal (red) has smoother time variations, because of the (auto)correlation introduced by the filter. 


randn
.... – Oliver Charlesworth Dec 3 '13 at 17:33t
with every differentt
producing a different random variable. @user2942448 Which Gaussian random process do you have in mind? – Strategy Thinker Dec 3 '13 at 19:17randn
permits that. But without further qualification, I'd interpret "Gaussian process" to mean uncorrelated Gaussian samples. – Oliver Charlesworth Dec 3 '13 at 20:46