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• DEPARTMENT OF ELECTRONICS ENGINEERING 
NON PARAMETRIC METHODS FOR PSE 
PRESENTED BY: 
BHAVIKA JETHANI (2) SUPRIYA ASUTKAR (8) 
BHUSHAN GADGE (9) ROHIT NANDANWAR(10) 
1
Advanced Digital Signal Presentation 
Topics to be covered : 
 Non-parametric methods of Power Spectrum 
Estimation. 
 The Bartlett Method 
 The Welch Method 
 The Blackman and Tukey Method 
 Comparison of performance of Non-periodic 
Power Spectral Estimation Methods 
2
• The well known form of power density spectrum 
estimate is called as periodogram 
• Periodogram is not a consistent estimate of true 
Power Density Spectrum. 
• That means, it does not converge to the true power 
density spectrum. 
• So the emphasis of classical Non-parametric Methods 
is on obtaining a consistent estimate of power 
spectrum through some averaging and smoothing 
operations performed directly on the periodogram or 
directly on the autocorrelation. 
3
NON-PARAMETERIC METHODS FOR POWER 
SPECTRAL ESTIMATION 
The power spectrum methods described 
are the classical methods developed by Bartlett(1948) 
,Blackman and Tukey (1958) ,and Welch (1967), 
These methods make no assumption about how the 
data were generated and hence are called 
nonparametric. 
4
Since the estimates are based entirely on 
a finite record of data ,the frequency resolution of 
these methods is , at best , equal to the spectral width 
of the rectangular window of length N, which is 
approximately 1/N at the -3dB points. We shall be 
more precise in specifying the frequency resolution of 
the specific methods. All the estimation techniques 
described in this presentation “Decrease the frequency 
resolution in order to reduce the variance in the 
spectral estimate”. 
5
THE BARTLETT METHOD : AVERAGING PERIODOGRAMS 
------ (1) 
------ (2) 
6
Finally , we average the periodograms for the K segments 
to obtain the bartlett power spectrum estimate. 
------ (3) 
The statistical properties of this estimate are easily obtained. 
The mean value is 
------ (4) 
7
as : 
where , 
------ (5) 
------ (6) 
is the frequency characteristics of the Bartlett window . 
------ (7) 
8
In return for this reduction in resolution , we have reduced the 
variance. The variance of the Bartlett estimate is 
------ (8) 
In general, the variance of the estimate does not delay to 
zero as M tends to infinity. The variance for the Bartlett window is as 
follows : 
------ (9) 
9
The Welch Method: 
Averaging the periodogram. 
Welch made two modification in Bartlett method. 
First he allows data segment to overlap. 
Second is to window the data segments prior to 
computing the periodogram 
Xi(n)= x(n+iD), n=0,1,. . . . . M-1 
i = 0,1 . . . . . N-1 
10
……..(1) 
Where U is a normalization factor for the power in the window 
function is selected as 
………(2) 
The Welch power spectrum estimate is the average of these 
modified periodogram, that is 
……..(3) 11
…..(4) 
……..(5) 
………(6) 
……..(7) 
12
……(8) 
……(9) 
……(10) 
…….(11) 
……..(12)13
BLACKMAN AND TUKEY METHOD:SMOOTHING THE PERIODOGRAM 
•In this method , the sample auto correlation sequence is windowed first 
and then Fourier transformed to yield the estimate of the power 
spectrum. 
•For values of data points of m approaching N, the variance of these 
estimates is very high 
•Thus Blackman Tukey Estimate is - 
----- (1) 
14
CONT... 
•Where w(n) is window function having length (2M-1) and is zero for m≥ M 
•Frequency domain equivalent expression can be given as- 
Where Pxx(f) is periodogram 
----- (2) 
•The effect of windowing the autocorrelation is to smooth the periodogram 
estimate. 
15
CONT... 
•The window sequence w(n) should be symmetric (even) 
about m=0 
W(f) ≥ 0, |f| ≤ 1/2 
•This ensures that ≥ 0 for |f| ≤ 1/2 
----- (3) 
•However some of the window function do not satisfy this condition and may 
result in negative spectrum estimates 
•The expected value of Blackman – Tukey power spectrum estimate is- 
----- (4) 
16
CONT... 
----- (5) 
Putting eqn (5) in (6) 
----- (6) 
•The expected value of the Blackman –Tukey power spectrum estimate is- 
----- (7) 
....In time domain 
17
CONT... 
•Where Barlett window- 
•W(n) should be narrower than Wb(m) to smooth the Periodogram 
----- (8) 
----- (9) 
----- (10) 
18
CONT... 
•Variance of Blackman Tukey power spectrum estimate is 
•Assuming that the random process is Gaussian 
----- (11) 
----- (12) 
19
Substituting eqn (12) in eqn (11) 
CONT... 
•First term is square of the mean of Pxx(f) which is to be subtracted 
•For N » M, [sinπ(θ+α)N ] and [sinπ(θ+α)N] will be relatively narrow 
Therefore- 
----- (13) 
20
CONT... 
•The variance of Pxx becomes- 
•Where below term is assumed as- 
----- (14) 
----- (15) 
----- (16) 
21
CONT... 
•When w(f) is narrowed compare to true power spectrum further approximate as- 
----- (17) 
22
PERFORMANCE CHARACTERISTICS 
OF NON-PARAMETRIC POWER SPECTRAL ESTIMATORS 
In this section the Quality of three methods i.e. Bartlett, Welch and Blackman 
and Tukey power spectral estimate is being compared. 
 QUALITY is defined as ratio of mean square to variance of power spectrum 
estimate. 
Lets take example of periodogram: 
periodogram has mean and variance as 
----- (1) 
----- (2) 
23
----- (3) 
As indicated earlier periodogram is asymptotically unbiased estimate of power spectrum 
but it is not consistent also since variance does not tends to zero as N tends to infinity. 
Substituting eqn (2) and (3) in eqn (1) 
The fact that Qp is fixed and independent of data length N is another indication of 
poor quality of the estimate 
24
1. Bartlett power spectrum estimate: 
The mean and variance of Bartlett power spectrum estimate is 
----- (4) 
----- (5) 
----- (put (4) & (5) in (1) 
25
2.Welch power spectral estimate : 
The mean and variance of power spectrum estimate is 
----- (7) 
----- (6) 
Put (6) and (7) in (1) 
26
3.BLACKMAN-TUKEY POWER SPECTRAL ESTIMATE : 
The mean and variance of this estimate is 
----- (8) 
----- (9) 
----- (10) 
Put 8 , 9 , 10 in 1 
27
SUMMARY OF QUALITY OF POWER SPECTRAL ESTIMATE 
CONCLUSION: 
1. Welch and Blackman-Tukey power spectrum estimate is somewhat better 
than Bartlett 
2. However the difference in their performance is relatively small. 
3. The main point is that Quality factor increases as N length of data increases. 
4. This characteristic behavior is not shared by periodogram. 
5. Furthermore Quality factor depends on product of length N and freq 
resolution Δf 
6.For desired level of quality Δf can be decreased(freq resolution increased)by 
increasing length N of data and vice versa. 
28
COMPUTATIONAL REQUIREMENT OF POWER SPECTRAL ESTIMATE 
The other important aspect of nonparametric power spectrum estimate is their 
computational requirement. For this comparison we assume the estimates are 
based on fixed amount of data and specified resolution of Δf the radix 2FFT 
algorithm is assumed in all the computation. We shall count only the number of 
complex multiplication required to compute the power spectrum estimate. 
29
2 N additional computation is required for windowing. 
Blackman-Tukey Power Spectral Estimate 
We cant use N point DFT for its computation because its maximum value limits 
to 1024 point DFT for which we required 2M point DFT and one 2M point 
IDFT hence we are using the FFT algorithm. 
30
Conclusion 
• There is additional M computation required for 
Fourier transform of the windowed 
autocorrelation sequence but still the number 
of computation Is increased by a small amount 
• We conclude that Welch method requires a little 
more computational power than do the other 2 
methods 
• Bartlett requires the smallest number of 
computation 
31
Ex.. A freq resolution is 0.09 and N=100 samples . Determine the quality factor, recorded length and 
no. of computation requirements for Bartlett , Welch and Blackman – Tukey methods. 
32 
Solution:- Given- Δf = 0.09 
N=100 
1] Barlett method:- 
Quality factor (QB ) =1.11 N ΔF 
= 1.11 X 100 X0.09 
= 9.99 
Recorded length(M)=0.9/Δf 
=0.9/0.09 
=10 
No. of FFT’s=N/M 
=100/10 
=10 
No. of computations =N/2 log2 0.9/Δf 
=100/2 log2 0.9/0.09 
=166 
L = 1.1NΔf x M 
= 99.9 
BARLETT METHOD
33 
2] Welch method :- 
Quality factor (Qw)=0.78N ΔF (Non-overlapping) 
= 0.78 X 100 X0.09 
= 7.02 
Recorded length(m)=1.28/Δf 
=1.28/0.09 
=14.22 
No. of FFT’s=2N/M OR =1.56 N ΔF 
=2 X100/14.22 =1.56 X 100 X 0.09 
=14.06 =14.04 
No. of computations =N X log2 X 1.28/Δf (Non – overlapping) 
=100 log 2 x 1.28/0.09 
=383 
QB=1.39NΔF (50% overlapping) 
=1.39x100x0.09 
=12.51 
Total no. of computations= N Log2 x5.12/Δf (50% overlapping) 
=583 
Welch method
34 
3]Blackman- Tukey method :- 
Quality factor (QB)=2.34N ΔF (Non-overlapping) 
= 2.34 X 100 X0.09 
= 21.06 
Recorded length(2M)=1.28/Δf 
=1.28/0.09 
=14.22 
M=7.11 
No. of FFT’s=N/M 
=2 X100/14.22 
=14.06 
No. of computations =N X log2 X 1.28/Δf 
=100 log 2 x 1.28/0.09 
=383 
BLACKMAN TUKEY 
METHOD
References: 
1. Digital signal processing 
Fourth edition by JOHN G. PROAKIS , DIMITRIS G. MANOLAKIS 
2. Statistical spectral analysis 
A non - probabilistic theory , Prentice Hall 
3. Statistical Digital Signal Processing And Modelling ,Monson H. Hayes 
4. Digital signal processing and its application by Ramesh Babu. 
35
36

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non parametric methods for power spectrum estimaton

  • 1. • DEPARTMENT OF ELECTRONICS ENGINEERING NON PARAMETRIC METHODS FOR PSE PRESENTED BY: BHAVIKA JETHANI (2) SUPRIYA ASUTKAR (8) BHUSHAN GADGE (9) ROHIT NANDANWAR(10) 1
  • 2. Advanced Digital Signal Presentation Topics to be covered :  Non-parametric methods of Power Spectrum Estimation.  The Bartlett Method  The Welch Method  The Blackman and Tukey Method  Comparison of performance of Non-periodic Power Spectral Estimation Methods 2
  • 3. • The well known form of power density spectrum estimate is called as periodogram • Periodogram is not a consistent estimate of true Power Density Spectrum. • That means, it does not converge to the true power density spectrum. • So the emphasis of classical Non-parametric Methods is on obtaining a consistent estimate of power spectrum through some averaging and smoothing operations performed directly on the periodogram or directly on the autocorrelation. 3
  • 4. NON-PARAMETERIC METHODS FOR POWER SPECTRAL ESTIMATION The power spectrum methods described are the classical methods developed by Bartlett(1948) ,Blackman and Tukey (1958) ,and Welch (1967), These methods make no assumption about how the data were generated and hence are called nonparametric. 4
  • 5. Since the estimates are based entirely on a finite record of data ,the frequency resolution of these methods is , at best , equal to the spectral width of the rectangular window of length N, which is approximately 1/N at the -3dB points. We shall be more precise in specifying the frequency resolution of the specific methods. All the estimation techniques described in this presentation “Decrease the frequency resolution in order to reduce the variance in the spectral estimate”. 5
  • 6. THE BARTLETT METHOD : AVERAGING PERIODOGRAMS ------ (1) ------ (2) 6
  • 7. Finally , we average the periodograms for the K segments to obtain the bartlett power spectrum estimate. ------ (3) The statistical properties of this estimate are easily obtained. The mean value is ------ (4) 7
  • 8. as : where , ------ (5) ------ (6) is the frequency characteristics of the Bartlett window . ------ (7) 8
  • 9. In return for this reduction in resolution , we have reduced the variance. The variance of the Bartlett estimate is ------ (8) In general, the variance of the estimate does not delay to zero as M tends to infinity. The variance for the Bartlett window is as follows : ------ (9) 9
  • 10. The Welch Method: Averaging the periodogram. Welch made two modification in Bartlett method. First he allows data segment to overlap. Second is to window the data segments prior to computing the periodogram Xi(n)= x(n+iD), n=0,1,. . . . . M-1 i = 0,1 . . . . . N-1 10
  • 11. ……..(1) Where U is a normalization factor for the power in the window function is selected as ………(2) The Welch power spectrum estimate is the average of these modified periodogram, that is ……..(3) 11
  • 13. ……(8) ……(9) ……(10) …….(11) ……..(12)13
  • 14. BLACKMAN AND TUKEY METHOD:SMOOTHING THE PERIODOGRAM •In this method , the sample auto correlation sequence is windowed first and then Fourier transformed to yield the estimate of the power spectrum. •For values of data points of m approaching N, the variance of these estimates is very high •Thus Blackman Tukey Estimate is - ----- (1) 14
  • 15. CONT... •Where w(n) is window function having length (2M-1) and is zero for m≥ M •Frequency domain equivalent expression can be given as- Where Pxx(f) is periodogram ----- (2) •The effect of windowing the autocorrelation is to smooth the periodogram estimate. 15
  • 16. CONT... •The window sequence w(n) should be symmetric (even) about m=0 W(f) ≥ 0, |f| ≤ 1/2 •This ensures that ≥ 0 for |f| ≤ 1/2 ----- (3) •However some of the window function do not satisfy this condition and may result in negative spectrum estimates •The expected value of Blackman – Tukey power spectrum estimate is- ----- (4) 16
  • 17. CONT... ----- (5) Putting eqn (5) in (6) ----- (6) •The expected value of the Blackman –Tukey power spectrum estimate is- ----- (7) ....In time domain 17
  • 18. CONT... •Where Barlett window- •W(n) should be narrower than Wb(m) to smooth the Periodogram ----- (8) ----- (9) ----- (10) 18
  • 19. CONT... •Variance of Blackman Tukey power spectrum estimate is •Assuming that the random process is Gaussian ----- (11) ----- (12) 19
  • 20. Substituting eqn (12) in eqn (11) CONT... •First term is square of the mean of Pxx(f) which is to be subtracted •For N Âť M, [sinπ(θ+Îą)N ] and [sinπ(θ+Îą)N] will be relatively narrow Therefore- ----- (13) 20
  • 21. CONT... •The variance of Pxx becomes- •Where below term is assumed as- ----- (14) ----- (15) ----- (16) 21
  • 22. CONT... •When w(f) is narrowed compare to true power spectrum further approximate as- ----- (17) 22
  • 23. PERFORMANCE CHARACTERISTICS OF NON-PARAMETRIC POWER SPECTRAL ESTIMATORS In this section the Quality of three methods i.e. Bartlett, Welch and Blackman and Tukey power spectral estimate is being compared.  QUALITY is defined as ratio of mean square to variance of power spectrum estimate. Lets take example of periodogram: periodogram has mean and variance as ----- (1) ----- (2) 23
  • 24. ----- (3) As indicated earlier periodogram is asymptotically unbiased estimate of power spectrum but it is not consistent also since variance does not tends to zero as N tends to infinity. Substituting eqn (2) and (3) in eqn (1) The fact that Qp is fixed and independent of data length N is another indication of poor quality of the estimate 24
  • 25. 1. Bartlett power spectrum estimate: The mean and variance of Bartlett power spectrum estimate is ----- (4) ----- (5) ----- (put (4) & (5) in (1) 25
  • 26. 2.Welch power spectral estimate : The mean and variance of power spectrum estimate is ----- (7) ----- (6) Put (6) and (7) in (1) 26
  • 27. 3.BLACKMAN-TUKEY POWER SPECTRAL ESTIMATE : The mean and variance of this estimate is ----- (8) ----- (9) ----- (10) Put 8 , 9 , 10 in 1 27
  • 28. SUMMARY OF QUALITY OF POWER SPECTRAL ESTIMATE CONCLUSION: 1. Welch and Blackman-Tukey power spectrum estimate is somewhat better than Bartlett 2. However the difference in their performance is relatively small. 3. The main point is that Quality factor increases as N length of data increases. 4. This characteristic behavior is not shared by periodogram. 5. Furthermore Quality factor depends on product of length N and freq resolution Δf 6.For desired level of quality Δf can be decreased(freq resolution increased)by increasing length N of data and vice versa. 28
  • 29. COMPUTATIONAL REQUIREMENT OF POWER SPECTRAL ESTIMATE The other important aspect of nonparametric power spectrum estimate is their computational requirement. For this comparison we assume the estimates are based on fixed amount of data and specified resolution of Δf the radix 2FFT algorithm is assumed in all the computation. We shall count only the number of complex multiplication required to compute the power spectrum estimate. 29
  • 30. 2 N additional computation is required for windowing. Blackman-Tukey Power Spectral Estimate We cant use N point DFT for its computation because its maximum value limits to 1024 point DFT for which we required 2M point DFT and one 2M point IDFT hence we are using the FFT algorithm. 30
  • 31. Conclusion • There is additional M computation required for Fourier transform of the windowed autocorrelation sequence but still the number of computation Is increased by a small amount • We conclude that Welch method requires a little more computational power than do the other 2 methods • Bartlett requires the smallest number of computation 31
  • 32. Ex.. A freq resolution is 0.09 and N=100 samples . Determine the quality factor, recorded length and no. of computation requirements for Bartlett , Welch and Blackman – Tukey methods. 32 Solution:- Given- Δf = 0.09 N=100 1] Barlett method:- Quality factor (QB ) =1.11 N ΔF = 1.11 X 100 X0.09 = 9.99 Recorded length(M)=0.9/Δf =0.9/0.09 =10 No. of FFT’s=N/M =100/10 =10 No. of computations =N/2 log2 0.9/Δf =100/2 log2 0.9/0.09 =166 L = 1.1NΔf x M = 99.9 BARLETT METHOD
  • 33. 33 2] Welch method :- Quality factor (Qw)=0.78N ΔF (Non-overlapping) = 0.78 X 100 X0.09 = 7.02 Recorded length(m)=1.28/Δf =1.28/0.09 =14.22 No. of FFT’s=2N/M OR =1.56 N ΔF =2 X100/14.22 =1.56 X 100 X 0.09 =14.06 =14.04 No. of computations =N X log2 X 1.28/Δf (Non – overlapping) =100 log 2 x 1.28/0.09 =383 QB=1.39NΔF (50% overlapping) =1.39x100x0.09 =12.51 Total no. of computations= N Log2 x5.12/Δf (50% overlapping) =583 Welch method
  • 34. 34 3]Blackman- Tukey method :- Quality factor (QB)=2.34N ΔF (Non-overlapping) = 2.34 X 100 X0.09 = 21.06 Recorded length(2M)=1.28/Δf =1.28/0.09 =14.22 M=7.11 No. of FFT’s=N/M =2 X100/14.22 =14.06 No. of computations =N X log2 X 1.28/Δf =100 log 2 x 1.28/0.09 =383 BLACKMAN TUKEY METHOD
  • 35. References: 1. Digital signal processing Fourth edition by JOHN G. PROAKIS , DIMITRIS G. MANOLAKIS 2. Statistical spectral analysis A non - probabilistic theory , Prentice Hall 3. Statistical Digital Signal Processing And Modelling ,Monson H. Hayes 4. Digital signal processing and its application by Ramesh Babu. 35
  • 36. 36