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Can't see any effect of NoiseVariance with idpoly and lsim

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Bill Tubbs
Bill Tubbs el 11 de Jul. de 2020
Respondida: Bill Tubbs el 11 de Jul. de 2020
I'm trying to simulate this system with an output disturbance.
With or without NoiseVariance specified I cannot see any difference in the output.
% Plant model
A = [1 -0.8];
B = 0.4;
d = 2;
C = 1;
D = conv(A,[1 -1]);
nT = 8;
Ts = 1;
Vq = 1;
sys = idpoly(A,B,C,D,1,Vq,Ts,'IODelay',d)
t = [0:nT]'*Ts;
u = ones(nT+1,1);
% Simulation
y = lsim(sys,u,t);
sim_data = table(t, u, y, ...
'VariableNames', {'t','u','y'})
figure
subplot(2,1,1)
plot(sim_data.t, sim_data.y, 'o-')
grid on
legend('y(k)')
subplot(2,1,2)
stairs(sim_data.t, sim_data.u, 'LineWidth',2)
grid on
legend('u(k)')
xlabel('t')
sim_data =
9×3 table
t u y
_ _ ______
0 1 0
1 1 0
2 1 0.4
3 1 0.72
4 1 0.976
5 1 1.1808
6 1 1.3446
7 1 1.4757
8 1 1.5806
I've read the documentation, tried looking for examples, ...
What am I doing wrong?

Respuestas (1)

Bill Tubbs
Bill Tubbs el 11 de Jul. de 2020
Maybe lsim is not the right function to use. I solved the problem by using sim instead, which has options including to add noise:
% Simulation
opt = simOptions('AddNoise',true);
y = sim(sys,u,opt);
I didn't know about sim. According to the documentation, the differences between the two functions are:
y = sim(sys,udata) returns the simulated response of an identified model using the input data, udata.
whereas:
y = lsim(sys,u,t) simulates the (time) response of continuous or discrete linear systems to arbitrary inputs.
Not sure I understand the differences...

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