Can anyone help me in understanding an algorithm and tell me where am i wrong in simulating the adaptive filter
2 vues (au cours des 30 derniers jours)
Afficher commentaires plus anciens
PARVATHY NAIR
le 30 Déc 2022
Commenté : PARVATHY NAIR
le 6 Jan 2023
Hi
I came across a paper titled 'Framework for automated earthquake event detection based on denoising By Adaptive Filter'.The thing which fancied me is that based on how they achieved convergence by adding/subtracting a small value called 'mu_extra'.Based on the paper,i also tried to simulate the same but i didnt get the output as expected.
i have also attached the paper along with it
kindly check and help me
clc;
clear all;
close all;
%sys_desired = [86 -294 -287 -262 -120 140 438 641 613 276 -325 -1009 -1487 -1451 -680 856 2954 5206 7106 8192 8192 7106 5206 2954 856 -680 -1451 -1487 -1009 -325 276 613 641 438 140 -120 -262 -287 -294 86] * 2^(-15);
%sys_desired = [-3 0 19 32 19 0 -3]*2^(-15);
%a=importdata("G:\Project\BKHL.HHE.new.dat");
digfilt = designfilt('lowpassfir', 'PassbandFrequency', 10, 'StopbandFrequency',20,'SampleRate', 100);
for itr=1:100
%% Defining input and initial Model Coefficients
%input
x=randn(1,60000);
%a=importdata("G:\Project\BKHL.HHE.new.dat");
%x=a';
%% EVSS LMS
model_coeff_evss = zeros(1,length(digfilt.Coefficients));
%% Initial Values of Model Tap
model_tap = zeros(1,length(digfilt.Coefficients));
%% System Output where a 40 dB Noise floor is added
noise_floor = 40;
sys_opt = filter(digfilt.Coefficients,1,x)+awgn(x,noise_floor)-x;
%sys_opt = awgn(x,noise_floor);
mu_min = 0.007;
% input variance
input_var = var(x);
% upper bound = 1/(filter_length * input variance)
mu_max = 1/(input_var*length(digfilt.Coefficients));
%mu_max=0.025;
%% Defining initial parameters for EVSS-LMS algorithm
mu_EVSS(1)=0.025;
mu_EXTRA=1.5*10^(-4);
%% EVSS LMS ALGORITHM
for i=1:length(x)
% model tap values (shifting of tap values by one sample to right)
model_tap1=[x(i) model_tap(1:end-1)];
% model output
model_out_evss(i) = model_tap1 * model_coeff_evss';
% error
e_evss(i) = sys_opt(i) - model_out_evss(i);
%Updating the coefficients
model_coeff_evss = model_coeff_evss + mu_EVSS(i) * e_evss(i) * model_tap;
if mu_EVSS(i)>mu_min
c=1;
else mu_EVSS(i)<=mu_min;
c=2^( 5);
end
mu_EVSS(i+1) = c * mu_EVSS(i) + mu_EXTRA * sign(e_evss(i));
end
%% Storing the e_square values after a whole run of VSS LMS algorithm
err_EVSS(itr,:) = e_evss.^2;
%% Printing the iteration number
clc
disp(char(strcat('iteration no : ',{' '}, num2str(itr) )))
end
figure;
plot(10*log10(mean(err_EVSS)), '-b');
title('Error Curve Plot for VSS LMS Algorithm'); xlabel('iterations');ylabel('MSE(dB)');legend('VSS LMS Algorithm')
grid on
for the above code I conceived from these paper,the mse is not converging.
why is it so.
if my code is wrong,kindly correct me.
0 commentaires
Réponse acceptée
Mathieu NOE
le 2 Jan 2023
hello again
try this updated code
some minor bugs and missing mu min / max bounding code (see comments with % <= here)
clc;
clear all;
close all;
%sys_desired = [86 -294 -287 -262 -120 140 438 641 613 276 -325 -1009 -1487 -1451 -680 856 2954 5206 7106 8192 8192 7106 5206 2954 856 -680 -1451 -1487 -1009 -325 276 613 641 438 140 -120 -262 -287 -294 86] * 2^(-15);
%sys_desired = [-3 0 19 32 19 0 -3]*2^(-15);
%a=importdata("G:\Project\BKHL.HHE.new.dat");
digfilt = designfilt('lowpassfir', 'PassbandFrequency', 10, 'StopbandFrequency',20,'SampleRate', 100);
sys_desired = digfilt.Coefficients;
length_fir = length(sys_desired);
for itr=1:100
%% Defining input and initial Model Coefficients
%input
x=randn(1,3000);
%a=importdata("G:\Project\BKHL.HHE.new.dat");
%x=a';
%% EVSS LMS
model_coeff_evss = zeros(1,length_fir);
%% Initial Values of Model Tap
model_tap = zeros(1,length_fir);
%% System Output where a 40 dB Noise floor is added
noise_floor = 40;
d = randn(size(x))*10^(-noise_floor/20);
sys_opt = filter(sys_desired,1,x)+d;
mu_min = 0.007;
% input variance
input_var = var(x);
% upper bound = 1/(filter_length * input variance)
mu_max = 1/(input_var*length_fir);
%% Defining initial parameters for EVSS-LMS algorithm
mu_EVSS(1) = 0.025;
mu_EXTRA = 1.5*10^(-4);
%% EVSS LMS ALGORITHM
for i=1:length(x)
% model tap values (shifting of tap values by one sample to right)
model_tap=[x(i) model_tap(1:end-1)];
% model output
model_out_evss(i) = model_tap * model_coeff_evss';
% error
e_evss(i) = sys_opt(i) - model_out_evss(i);
%Updating the coefficients
model_coeff_evss = model_coeff_evss + mu_EVSS(i) * e_evss(i) * model_tap;
if mu_EVSS(i)>mu_min
c=1;
else mu_EVSS(i)<=mu_min;
c=2^(-5); % <= here
mu_EVSS(i) = mu_min; % <= here (missing line)
end
if mu_EVSS(i)>mu_max
mu_EVSS(i) = mu_max; % <= here (missing line)
end
mu_EVSS(i+1) = c * mu_EVSS(i) + mu_EXTRA * sign(e_evss(i));
end
%% Storing the e_square values after a whole run of VSS LMS algorithm
err_EVSS(itr,:) = e_evss.^2;
%% Printing the iteration number
clc
disp(char(strcat('iteration no : ',{' '}, num2str(itr) )))
end
figure;
plot(10*log10(mean(err_EVSS,1)),'-b');
title('VSS LMS Algorithms'); xlabel('iterations');ylabel('MSE(dB)');
grid on;
figure;
plot(sys_desired,'-*b');
hold on;
plot(model_coeff_evss, '-*m');
legend('FIR model','VSSLMS FIR ID');
5 commentaires
Mathieu NOE
le 6 Jan 2023
hello
simply because I don't have access to the awgn function (belongs to Communication Toolbox I believe)
but my own code does exactly the same thing (adding white noise)
Plus de réponses (0)
Voir également
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!