Parameter estimation of SEIHRDBP model
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% I want simulate "parameter estimation of SEIHRDBP Model", where
% S=susceptible, E=exposed, I=infected, H=hospitalised, R=recovered,
% D=death, B=buried, P=pathogen. I tried Matlab codes from the Matlab
% community but couldn't get right. The parameters here are assumed values
% Parameter value
% Delta = params(1); mu = params(2); delta = params(3); gamma = params(4); gamma1 = params(5);
% eta = params(6); xi = params(7); d = params(8); b = params(9); phip = params(10);
% d1 = params(11); b1 = params(12); alpha = params(13); sigma = params(14);
% eta1 = params(15); beta = params(16); beta1 = params(17); beta2 = params(18); beta3 = params(19);
% betap = params(20);
% params= [10, 0.5, 0.5, 0.005, 0.12, 0.12, 0.6, 0.8, 0.5, 0, 0.04, 0.04, 0.03, 0.04, 0.04, 0.006, 0.002, 0.012, 0.0012; 0.01];
% dxdt = zeros(8, 1); % initializing the state variables
% params = zeros(20, 1); % initializing the parameters
%
% dxdt(1) = params(1) - (params(16)*x(3) + params(17)*x(4) + params(18)*x(6)+ params(19)*x(7) + params(20)*x(8))*x(1)-params(2)*x(1);
% dxdt(2) =(params(16)*x(3) + params(17)*x(4) + params(18)*x(6)+ params(19)*x(7) + params(20)*x(8))*x(1) - (params(2) + params(3))*x(2);
% dxdt(3) = params(3)*x(2) - (params(2) + params(4) + params(5))*x(1);
% dxdt(4) = params(5)*x(3) - (params(6) + params(7) + params(2))*x(4);
% dxdt(5) = params(7)*x(4) - params(2)*x(5);
% dxdt(6) = params(4)*x(3) + params(6)*x(4) -params(8)*x(6);
% dxdt(7) = params(8)*x(6) - params(9)*x(7);
% dxdt(8) = params(10) + params(14)*x(3) + params(15)*x(4) + params(11)*x(6) + params(12)*x(7) -params(13)*x(8);
% This is code I tried. I basically used this help site: https://uk.mathworks.com/matlabcentral/answers/1710260-need-help-with-ode-parameter-estimation
% The c1---c8 are the state variables, while the theta1---theta20 are the parameter values.
t=[0.1
0.2
0.4
0.6
0.8
1
1.5
2
3
4
5
6];
c=[0.902 0.06997 0.02463 0.00218 0.902 0.06997 0.02463 0.00218
0.8072 0.1353 0.0482 0.008192 0.8072 0.1353 0.0482 0.008192
0.6757 0.2123 0.0864 0.0289 0.6757 0.2123 0.0864 0.0289
0.5569 0.2789 0.1063 0.06233 0.5569 0.2789 0.1063 0.06233
0.4297 0.3292 0.1476 0.09756 0.4297 0.3292 0.1476 0.09756
0.3774 0.3457 0.1485 0.1255 0.3774 0.3457 0.1485 0.1255
0.2149 0.3486 0.1821 0.2526 0.2149 0.3486 0.1821 0.2526
0.141 0.3254 0.194 0.3401 0.141 0.3254 0.194 0.3401
0.04921 0.2445 0.1742 0.5277 0.04921 0.2445 0.1742 0.5277
0.0178 0.1728 0.1732 0.6323 0.0178 0.1728 0.1732 0.6323
0.006431 0.1091 0.1137 0.7702 0.006431 0.1091 0.1137 0.7702
0.002595 0.08301 0.08224 0.835 0.002595 0.08301 0.08224 0.835];
theta0 = rand(20,1);
[theta,Rsdnrm,Rsd,ExFlg,OptmInfo,Lmda,Jmat]=lsqcurvefit(@SEIHRDBP,theta0,t,c,zeros(size(theta0)));
fprintf(1,'\tRate Constants:\n')
for k1 = 1:length(theta)
fprintf(1, '\t\tTheta(%d) = %8.5f\n', k1, theta(k1))
end
tv = linspace(min(t), max(t));
Cfit = SEIHRDBP(theta, tv);
% figure
% hd = plot(t, c, 'p');
% for k1 = 1:size(c,2)
% CV(k1,:) = hd(k1).Color;
% hd(k1).MarkerFaceColor = CV(k1,:);
% end
% hold on
% hlp = plot(tv, Cfit);
% for k1 = 1:size(c,2)
% hlp(k1).Color = CV(k1,:);
% end
% hold off
% grid
% xlabel('Time')
% ylabel('Population')
% legend(hlp, compose('C_%d',1:size(c,2)), 'Location','best')
%
function C=SEIHRDBP(theta,t)
c0=theta(end-3:end);
[T,Cv]=ode45(@DifEq,t,c0);
%
function dC=DifEq(t,c)
dcdt=zeros(8,1);
dcdt(1) = theta(1) - (theta(16)*c(3) + theta(17)*c(4) + theta(18)*c(6)+ theta(19)*c(7) + theta(20)*c(8))*c(1)-theta(2)*c(1);
dcdt(2) =(theta(16)*c(3) + theta(17)*c(4) + theta(18)*c(6)+ theta(19)*c(7) + theta(20)*c(8))*c(1) - (theta(2) + theta(3))*c(2);
dcdt(3) = theta(3)*c(2) - (theta(2) + theta(4) + theta(5))*c(1);
dcdt(4) = theta(5)*c(3) - (theta(6) + theta(7) + theta(2))*c(4);
dcdt(5) = theta(7)*c(4) - theta(2)*c(5);
dcdt(6) = theta(4)*c(3) + theta(6)*c(4) -theta(8)*c(6);
dcdt(7) = theta(8)*c(6) - theta(9)*c(7);
dcdt(8) = theta(10) + theta(14)*c(3) + theta(15)*c(4) + theta(11)*c(6) + theta(12)*c(7) -theta(13)*c(8);
dC=dcdt;
end
C=Cv;
end
% Please can some help check it for me. I have attached the observed caese of all the state variables(SEIHRDBP)
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