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HOW CAN I CALCULATE THE SIGNAL TO NOISE RATIO(SNR) OF A CHIRP SIGNAL

I have a signal which is comprised of 4 chirp signals and an additive noise with the same sampling frequency and size is generated now i need to calculate the SNR of the signal and noise . Also if I am correct to vary the signal to noise ratio is it ok if I vary the amplitudes of chirp signals and also the noise by multiplying it with a factor : ex:
 
 
noise = randn(size(t));
where t = 0:1e-4:1;

and to increase the noise

{new noise = 2*noise ;}

is this correct?? and to increase the amplitudes of the signal is this the way to change the signal to noise ratio:

y3 = 5* chirp(t,600,t1,800,'linear');  

???????y4 = 3.5*chirp(t,900,t1,980,'linear'); 


NOTE:-

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NR = Psignal / Pnoise = (Asignal / Anoise)^2
Where P is power, and A is amplitude. I would calculate the RMS amplitudes and use those in the above formula.
 
RMS means Root-Mean-Square. That is, you square your signal, calculate the mean of that, and take the square root. Just define a wee anonymous function for clarity:
 
 
RMS = @(x) sqrt(mean(x.^2));



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