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In total, we need N*N=64 times of complex multiplications and N*(N-1)=56 times of complex additions. | In total, we need N*N=64 times of complex multiplications and N*(N-1)=56 times of complex additions. | ||
− | In decimation-in-time FFT algorithm, we keep on decimating the number of points by 2 until we get 2 points DFT. At most, we can decimate <math>v= | + | In decimation-in-time FFT algorithm, we keep on decimating the number of points by 2 until we get 2 points DFT. At most, we can decimate <math>v=log_2 N</math> times. As a result, we get v levels of DFT. For each level, we need N/2 times of complex multiplications and N times of complex additions. |
− | In total, we need <math>\frac{N}{2} | + | In total, we need <math>\frac{N}{2}log_2 N=12</math>N times of complex multiplications and <math>Nlog_2 N=24</math> times of complex additions. |
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Revision as of 12:08, 19 October 2010
Homework 6 Solution
Q1.
Matlab code:
Assign the value of parameters and then call the function signalDFT
For example, in case 6 type following command in the command window of Matlab:
N=20;
w1=0.62831853;
k=0.2;
w2=0.79168135;
[x,X]=signal(w1,w2,k,N);
Plot result:
Q2.
Recall the definition of DFT: $ X[k]=\sum_{n=0}^{N-1} x[n]e^{-j2\pi k/N} $
In this question N=8
If we use summation formula to compute DFT, for each k, we need N times complex multiplications and N times complex additions.
In total, we need N*N=64 times of complex multiplications and N*(N-1)=56 times of complex additions.
In decimation-in-time FFT algorithm, we keep on decimating the number of points by 2 until we get 2 points DFT. At most, we can decimate $ v=log_2 N $ times. As a result, we get v levels of DFT. For each level, we need N/2 times of complex multiplications and N times of complex additions.
In total, we need $ \frac{N}{2}log_2 N=12 $N times of complex multiplications and $ Nlog_2 N=24 $ times of complex additions.
Q3.
Q4.
Q5.
Q6.
Q7.