File:SG RLS LMS chan var.png
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SG_RLS_LMS_chan_var.png (561 × 420 pixels, file size: 12 KB, MIME type: image/png)
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Summary
DescriptionSG RLS LMS chan var.png |
English: Developed according to TU Ilmenau teaching materials.
clear all; close all; clc
%% Initialization
% channel parameters
sigmaS = 1; %signal power
sigmaN = 0.01; %noise power
% CSI (channel state information):
% the channel for the transmission of the first NS1 training symbols
channel1 = [0.722 - 0.779i; -0.257 - 0.722i; -0.789 - 1.862i];
% the channel for the transmission of the next NS2 training symbols
channel2 = [-0.831 - 0.661i;-1.071 - 0.961i; -0.551 - 0.311i];
M = 5; % filter order
% step sizes
mu_LMS = [0.01,0.07];
mu_SG = [0.01,0.07];
% symbols / ensembles
NS1 = 500;
NS2 = 500;
NS = NS1+NS2;
NEnsembles = 1000; %number of ensembles
%% Compute Rxx and p
%the maximum index of channel taps (l=0,1...L):
L = length(channel1) - 1;
H = convmtx(channel1, M-L); %channel matrix (Toeplitz structure)
Rnn = sigmaN*eye(M); %the noise covariance matrix
% Inline functions:
calc_Rxx = @(channel) ...
sigmaS*(convmtx(channel, M-L)*convmtx(channel, M-L)')+sigmaN*eye(M);
calc_p = @(channel) sigmaS*(convmtx(channel,M-L))*[1; zeros(M-L-1, 1)];
Rxx = zeros(M,M,2);
p = zeros(M,2);
A = calc_Rxx(channel1);
Rxx(:,:,1) = calc_Rxx(channel1);
Rxx(:,:,2) = calc_Rxx(channel2);
p(:,1) = calc_p(channel1);
p(:,2) = calc_p(channel2);
% An inline function to calculate MSE(w) for a weight vector w
calc_MSE = @(w, ch) real(w'*Rxx(:,:,ch)*w - w'*p(:, ch) - p(:, ch)'*w + sigmaS);
%% Adaptive Equalization
N_test = 2;
MSE_LMS = zeros(NEnsembles, NS, N_test);
MSE_SG = zeros(NEnsembles, NS, N_test);
MSE_RLS = zeros(NEnsembles, NS, N_test);
for nEnsemble = 1:NEnsembles
%initial symbols:
symbols1 = sigmaS*sign(randn(1,NS1));
symbols2 = sigmaS*sign(randn(1,NS2));
%received noisy symbols:
X1 = convmtx(channel1, M-L)*hankel(symbols1(1:M-L),[symbols1(M-L:end),zeros(1,M-L-1)]) + ...
sqrt(sigmaN)*(randn(M,NS1)+1j*randn(M,NS1))/sqrt(2);
X2 = convmtx(channel2, M-L)*hankel(symbols2(1:M-L),[symbols2(M-L:end),zeros(1,M-L-1)]) + ...
sqrt(sigmaN)*(randn(M,NS2)+1j*randn(M,NS2))/sqrt(2);
X = [X1, X2];
symbols = [symbols1, symbols2];
for n_mu = 1:N_test
w_LMS = zeros(M,1);
w_SG = zeros(M,1);
p_SG = zeros(M,1);
R_SG = zeros(M);
for n = 1:NS
if n <= NS1, curh = 1; else curh = 2; end
%% LMS - Least Mean Square
e = symbols(n) - w_LMS'*X(:,n);
w_LMS = w_LMS + mu_LMS(n_mu)*X(:,n)*conj(e);
MSE_LMS(nEnsemble,n,n_mu)= calc_MSE(w_LMS, curh);
%% SG - Stochastic gradient
R_SG = 1/n*((n-1)*R_SG + X(:,n)*X(:,n)');
p_SG = 1/n*((n-1)*p_SG + X(:,n)*conj(symbols(n)));
w_SG = w_SG + mu_SG(n_mu)*(p_SG - R_SG*w_SG);
MSE_SG(nEnsemble,n,n_mu)= calc_MSE(w_SG, curh);
end
end
%RLS - Recursive Least Squares
lambda_RLS = [0.8; 1]; %forgetting factors
for n_lambda=1:length(lambda_RLS)
%Initialize the weight vectors for RLS
delta = 1;
w_RLS = zeros(M,1);
P = eye(M)/delta; % (n-1)-th iteration, where n = 1,2...
PI = zeros(M,1); % n-th iteration
K = zeros(M,1);
for n=1:NS
if n <= NS1, curh = 1; else curh = 2; end
% the recursive process of RLS
PI = P*X(:,n);
K = PI/(lambda_RLS(n_lambda)+X(:,n)'*PI);
ee = symbols(n) - w_RLS'*X(:,n);
w_RLS = w_RLS + K*conj(ee);
MSE_RLS(nEnsemble,n,n_lambda)= calc_MSE(w_RLS, curh);
P = P/lambda_RLS(n_lambda) - K/lambda_RLS(n_lambda)*X(:,n)'*P;
end
end
end
%% Wiener Solution
MSE_Wiener(1:NS1) = calc_MSE(Rxx(:,:,1)\p(:,1),1);
MSE_Wiener(NS1+1:NS) = calc_MSE(Rxx(:,:,2)\p(:,2),2);
MSE_LMS_1 = mean(MSE_LMS(:,:,1));
MSE_LMS_2 = mean(MSE_LMS(:,:,2));
MSE_SG_1 = mean(MSE_SG(:,:,1));
MSE_SG_2 = mean(MSE_SG(:,:,2));
MSE_RLS_1 = mean(MSE_RLS(:,:,1));
MSE_RLS_2 = mean(MSE_RLS(:,:,2));
figure(1)
n = 1:NS;
m= [2 4 6 10 30 60 100 300 600 1000];
semilogy(m, MSE_LMS_1(m),'+','linewidth',2, 'color','blue');
hold all;
semilogy(m, MSE_LMS_2(m),'o','linewidth',2, 'color','blue');
semilogy(m, MSE_SG_1(m),'+','linewidth',2, 'color','red');
semilogy(m, MSE_SG_2(m),'o','linewidth',2, 'color','red');
semilogy(m, MSE_RLS_1(m),'+','linewidth',2, 'color','green');
semilogy(m, MSE_RLS_2(m),'o','linewidth',2, 'color','green');
semilogy(n, MSE_Wiener(n), 'color','black','linewidth',2);
semilogy(n, MSE_LMS_1(n),'linewidth',2, 'color','blue');
semilogy(n, MSE_LMS_2(n),'linewidth',2, 'color','blue');
semilogy(n, MSE_SG_1(n),'linewidth',2, 'color','red');
semilogy(n, MSE_SG_2(n),'linewidth',2, 'color','red');
semilogy(n, MSE_RLS_1(n),'linewidth',2, 'color','green');
semilogy(n, MSE_RLS_2(n),'linewidth',2, 'color','green');
grid on
xlabel('Ns');
ylabel('MSE');
title(['LMS, SG, RLS, \sigma_N= ' num2str(sigmaN) ', \sigma_S= '...
num2str(sigmaS) ', M= ' num2str(M) ', L= ' num2str(L) ]);
legend(['LMS, \mu=' num2str(mu_LMS(1))],['LMS, \mu=' num2str(mu_LMS(2))],...
['SG, \mu=' num2str(mu_SG(1))],['SG, \mu=' num2str(mu_SG(2))],...
['RLS, \lambda=' num2str(lambda_RLS(1))],['RLS, \lambda=' ...
num2str(lambda_RLS(2))],'Weiner solution',2);
axis([0 NS 0.002 1])
|
Date | |
Source | Own work |
Author | Kirlf |
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Date/Time | Thumbnail | Dimensions | User | Comment | |
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current | 19:05, 15 July 2019 | 561 × 420 (12 KB) | Kirlf | Noise power are fixed in the signal model. | |
16:24, 2 March 2019 | 561 × 420 (12 KB) | Kirlf | User created page with UploadWizard |
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