Cari Blog Ini

Diberdayakan oleh Blogger.
Jumat, 27 Desember 2013

ESTIMATION OF PERIODOGRAM

ESTIMATION OF PERIODOGRAM - welcome to the blog Software Gadget the end of this much calm product information launcing, yes every day there are always products that are removed from various brands, both physical hardware products and software that need new knowledge to use it, well now we will discuss first about ESTIMATION OF PERIODOGRAM as you search we have collected a lot of data to make this information as complete as possible for you, please read:

Articles : ESTIMATION OF PERIODOGRAM
full Link : ESTIMATION OF PERIODOGRAM

You can also see our article on:


ESTIMATION OF PERIODOGRAM

ESTIMATION OF PERIODOGRAM
AIM
To estimate the power spectral density of a given signal using periodogram
in MATLAB.
THEORY
The power spectral density (PSD) of a WSS process is the Fourier transform of the autocorrelation sequence. Periodogram is a non-parametric method to estimate PSD
() = (k)
For an autocorrelation ergodic process and an unlimited amount of data, the autocorrelation sequence may be detemined by using the time average
(k) = (n+k)x*(n)
If x(n) is only measured over a finite interval, say n=1,2,…N-1, then the autocorrelation sequence must be estimated using with a finite sum
(r) = () (n+k)x*(n)
In order to ensure that the value of x(n) that is fully outside the interval [0,N-1] are excluded and written as follows
(k) = () (n+k)x*(n) k=0,1,2….,N-1.
Taking the discrete Fourier transform of rx^(k) leads to an estimation of the power spectrum known as the periodogram.
() = (k)
The periodogram
() = ()() = ()
Where XN(ejw) is the discrete time Fourirer transform of the N-point data sequence XN(n)
() = (n) =
ALGORITHM
STEP 1: Compute the value of x.
STEP 2: Perform periodogram function for x signal.
STEP 3: Using pwelch function, smoothen the output of periodogram signal.

STEP 4: Plot the graph for input and output signal


PROGRAM
##########################################################
clc;
clear all;
close all;
fs=1000;
t=0.1:1/fs:0.3;
x=cos(2*pi*t*200)+0.1*randn(size(t));
figure(1);
plot(x);
title('input signal');
xlabel('time');
ylabel('amplitude');
figure(2);
periodogram(x,[],'one sided',512,fs);
figure(3);
pwelch(x,30,10,[],fs,'one sided');
#############################################################

RESULT
 Thus the MATLAB program to estimate the power spectral density of given signal using periodogram is executed and output is plotted.




so much information ESTIMATION OF PERIODOGRAM

hopefully the information ESTIMATION OF PERIODOGRAM that we provide can be useful for you in the set of technology products that fit your daily needs,

have just read the article titled ESTIMATION OF PERIODOGRAM if you feel useful information and you want to bookmark or share please use the link https://ramblingsofker.blogspot.com/2013/12/estimation-of-periodogram.html and do not forget to go back to this blog if you want to know information about the latest gadgets.

Tag :
Share on Facebook
Share on Twitter
Share on Google+
Tags :

Related : ESTIMATION OF PERIODOGRAM

0 komentar:

Posting Komentar