📄 chap7_9.m
字号:
%Kalman filter
%x=Ax+B(u+w(k));
%y=Cx+D+v(k)
clear all;
close all;
ts=0.001;
M=3000;
%Continuous Plant
a=25;b=133;
sys=tf(b,[1,a,0]);
dsys=c2d(sys,ts,'z');
[num,den]=tfdata(dsys,'v');
A1=[0 1;0 -a];
B1=[0;b];
C1=[1 0];
D1=[0];
[A,B,C,D]=c2dm(A1,B1,C1,D1,ts,'z');
Q=1; %Covariances of w
R=1; %Covariances of v
P=B*Q*B'; %Initial error covariance
x=zeros(2,1); %Initial condition on the state
ye=zeros(M,1);
ycov=zeros(M,1);
u_1=0;u_2=0;
y_1=0;y_2=0;
for k=1:1:M
time(k)=k*ts;
w(k)=0.10*rands(1); %Process noise on u
v(k)=0.10*rands(1); %Measurement noise on y
u(k)=1.0*sin(2*pi*1.5*k*ts);
u(k)=u(k)+w(k);
y(k)=-den(2)*y_1-den(3)*y_2+num(2)*u_1+num(3)*u_2;
yv(k)=y(k)+v(k);
%Measurement update
Mn=P*C'/(C*P*C'+R);
P=A*P*A'+B*Q*B';
P=(eye(2)-Mn*C)*P;
x=A*x+Mn*(yv(k)-C*A*x);
ye(k)=C*x+D; %Filtered value
errcov(k)=C*P*C'; %Covariance of estimation error
%Time update
x=A*x+B*u(k);
u_2=u_1;u_1=u(k);
y_2=y_1;y_1=ye(k);
end
figure(1);
plot(time,y,'k',time,yv,'k');
xlabel('time(s)');
ylabel('y-ideal signal; yv-signal with noise')
figure(2);
plot(time,y,'k',time,ye,'k');
xlabel('time(s)');
ylabel('y-ideal signal; ye-filtered signal')
figure(3);
plot(time,errcov,'k');
xlabel('time(s)');
ylabel('Covariance of estimation error');
⌨️ 快捷键说明
复制代码
Ctrl + C
搜索代码
Ctrl + F
全屏模式
F11
切换主题
Ctrl + Shift + D
显示快捷键
?
增大字号
Ctrl + =
减小字号
Ctrl + -