optimization of delayed differential equations (dde)

Hello,
I try to optimise (finding the parameter's value) in the system of dde, unfortunately I can't find any example how to do it. I used to optimization of ode using ode45 solver with lsqlin for instance. I will appreciate the help. The dde23 seems not to be working with lsqlin. I will appreciate any help.

1 Commento

Torsten
Torsten il 9 Mag 2022
Modificato: Torsten il 9 Mag 2022
Do you have a code for your model equations set up with dde23 ?
If yes, you should include it and tell which parameter(s) you are trying to optimize on the basis of which input data.

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 Risposta accettata

Torsten
Torsten il 9 Mag 2022
Modificato: Torsten il 9 Mag 2022
Make the best of it.
pTrue = [1 1 1 1 1 1 1 1 1];
time = 0:7;
Y = ...;
Am1=[1,1.1,1.4,0.7,0.8,1.6,2,1.5];
Bm1=[1.5,1.0,0.4,1.7,0.9,1.3,1.5,1.4];
Am=@(t)interp1(time,Am1,t)
Bm=@(t)interp1(time,Bm1,t)
p = lsqnonlin(@(p) Errors(p,time,Y,Am,Bm),0.8*pTrue)
function res = Errors(p,time,Y,Am,Bm)
lags=[1,2];
[T,SOL]=dde23(@(t,y,Z)ddefunEx(t,y,Z,p,Am,Bm), lags, [1,1,1,1], time);
res = Y-SOL;
res = res(:);
end
function dydt = ddefunEx(t,y,Z,p,Am,Bm)
ylag1 = Z(:,1);
ylag2 = Z(:,2);
E1p=y(1)
E2p=y(2)
A1=y(3)
B1=y(4)
n_A=p(1);%0.6;
n_B=p(2);%0.1;
KE1=p(3);%0.2;
KE2=p(4);%0.2;
Vp_A=p(5);%1.2;
Vp_B=p(6);%1.5;
alpha_p=p(7);%0.4;
kA=p(8);%0.4;
kB=p(9);%1.2;
%Auxiliary equations
ALPHA1=n_A*E1p*A1/(KE1*(1+A1))-A1;
ALPHA2=n_B*E2p*B1/(KE2*(1+B1))-B1;
dydt= [Vp_A*Am(t)-alpha_p*ylag1(1);
Vp_B*Bm(t)-alpha_p*ylag1(2);
kA*Am(t)-ylag2(3)-ALPHA1+ALPHA2;
kB*Bm(t)-ylag2(4)+ALPHA1-ALPHA2];
end

4 Commenti

these command is not running in my matlab...please share all code..
how to plot graphs between lags and variables for dde ?...please reply ..
What do you mean by your question ? The line
[T,SOL]=dde23(@(t,y,Z)ddefunEx(t,y,Z,p,Am,Bm), lags, [1,1,1,1], time);
gives you a solution SOL at times T that you can plot. How do you think that the lags come into play ?

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Più risposte (1)

% I'm embedding simplified version of the system. I run it the function ddedunEx to get simulated data (Y) and then try to optimise for the values of the parameters against obtained earlier data.
function dydt = ddefunEx(t,y,Z,p)
%global p
ylag1 = Z(:,1);
ylag2 = Z(:,2);
time=0:7;
E1p=y(1)
E2p=y(2)
A1=y(3)
B1=y(4)
Am1=[1,1.1,1.4,0.7,0.8,1.6,2,1.5];
Bm1=[1.5,1.0,0.4,1.7,0.9,1.3,1.5,1.4];
Am=interp1(time,Am1,t)
Bm=interp1(time,Bm1,t)
n_A=p(1);%0.6;
n_B=p(2);%0.1;
KE1=p(3);%0.2;
KE2=p(4);%0.2;
Vp_A=p(5);%1.2;
Vp_B=p(6);%1.5;
alpha_p=p(7);%0.4;
kA=p(8);%0.4;
kB=p(9);%1.2;
%Auxiliary equations
ALPHA1=n_A*E1p*A1/(KE1*(1+A1))-A1;
ALPHA2=n_B*E2p*B1/(KE2*(1+B1))-B1;
dydt= [Vp_A*Am-alpha_p*ylag1(1);
Vp_B*Bm-alpha_p*ylag1(2);
kA*Am-ylag2(3)-ALPHA1+ALPHA2;
kB*Bm-ylag2(4)+ALPHA1-ALPHA2;];
end
%lags=[1,2];
%tspan=0:7;
%sol = dde23(@ddefunEx, lags, [1,1,1,1], tspan);
%figure(2)
%plot(sol.x,sol.y)
%%%%%%%%%%%%% Obtaining data
%Y=sol.y+0.05*randn(size(sol.x));
function res=Errors(p,Y)
tspan=0:7;;
x0=[4;1];
lags=[1,2];
[T,X]=dde23(@ddefunEx, lags, [1,1,1,1], tspan);
res1=(X(:,1)-Y(:,1));
res2=(X(:,2)-Y(:,2));
res3=(X(:,3)-Y(:,3));
res4=(X(:,4)-Y(:,4));
res=abs(res1)+abs(res2) +abs(res3)+abs(res4);
%pTrue=[0.6;0.1;0.2;0.2];
%[pOpt,resnorm,res,exitflag,~,lambda,J]=...
% lsqnonlin(@(p) Errors(p,Y),0.8*pTrue);

2 Commenti

these command is not running in my matlab...please share all code..
what are define Am1 and Bm1 ?

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