Double Tank (switch)
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Revision as of 18:20, 10 December 2015 by ClemensZeile (Talk | contribs) (Created page with " === Switch === <source lang="Matlab"> %TANK Implements a switched tank filling example. % This is the tank problem as considered in % R. Vasudevan, H. Gonzalez, R. B...")
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%TANK Implements a switched tank filling example. % This is the tank problem as considered in % R. Vasudevan, H. Gonzalez, R. Bajcsy, S. S. Sastry. "Consistent % Approximations for the Optimal Control of Constrained Switched % Systems Part 2: An Implementable Algorithm". SIAM Journal on % Optimization and Control, 2013. % It is however attacked here by the moment technique developped in % M. Claeys, J. Daafouz, D. Henrion. "Modal occupation measures and % LMI relaxations for nonlinear switched systems control.". To be % published. % Copyright 2014 Mathieu Claeys, http://mathclaeys.wordpress.com/ %% Data % Scaling factors: it is essential to scale variables so that everything % falls within a unit box, otherwise moment problem will be poorly scaled % (Consider moments of the Dirac measure located at 10...) xscale = 5; tscale = 10; lscale = sqrt(5); % Relaxation order order = 3; % Choose order >= 1; %% Create problem definition structure ocpDef.nModes = 2; ocpDef.nStates = 2; ocpDef.nControls = 0; ocpDef.nLifts = 2; ocpDef.scaling.x = [xscale,xscale]; ocpDef.scaling.t = tscale; ocpDef.scaling.u = 1; ocpDef.scaling.l = [lscale,lscale]; ocpDef.dynamics{1} = @(t,x,u,l) [(1-lscale*l(1))*tscale/xscale;(lscale*l(1)-lscale*l(2))*tscale/xscale]; ocpDef.dynamics{2} = @(t,x,u,l) [(2-lscale*l(1))*tscale/xscale;(lscale*l(1)-lscale*l(2))*tscale/xscale]; ocpDef.runningCost{1} = @(t,x,u,l) 2*(x(2)*xscale-3)^2*tscale; ocpDef.runningCost{2} = @(t,x,u,l) 2*(x(2)*xscale-3)^2*tscale; ocpDef.initialCost = @(t,x,l) 0; ocpDef.terminalCost = @(t,x,l) 0; ocpDef.runningConstraints = @(t,x,u,l) [t*(1-t)>=0; % normalized time in [0,1] x(1) >= 0; % levels are positive x(2) >= 0; 0==(lscale*l(1))^2-xscale*x(1); %algebraic lifts for square roots l(1)>=0; 0==(lscale*l(2))^2-xscale*x(2); l(2)>=0;]; ocpDef.initialConstraints = @(t,x,l) [x==2/xscale;t==0]; ocpDef.terminalConstraints = @(t,x,l) [t==1]; % NB: to satisfy Putinar's theorem, there should be for each measure a ball % constraint on all variables. Ignore this assumption at your own risks. ocpDef.integralConstraints = {}; %% Construct and solve GloptiPoly problem % (requires the installation of Yalmip and a SDP solver. We recommend Mosek % for speed and SeDuMi for accuracy) % Create GloptiPoly measure objects with default names (NB: resets all % GloptiPoly states to zero). To impose specific names, construct measures % by hand. measureSystem = switchedMeasureSystem(ocpDef); % Create GloptiPoly msdp object, modeling a given order moment relaxation P = switchedRelaxation( ocpDef, measureSystem, order ); % Solve GloptiPoly problem %mset('yalmip',true); % default SDP solver of Yalmip will be called. If %commented, Yalmip is not called and GloptiPoly looks for SeDuMi. [status,obj,m] = msol(P); obj %% Solution extraction npoints.t = 51; npoints.var = 51; % NB: extract moments of one order less, because higher order moments are % very unprecise, since they are not constrained enough [t,x,u,l,d] = extractSolution( ocpDef, measureSystem, order-1, npoints ); figure plot(t,x,'*-'); xlabel('t'); ylabel('x'); legend('x_1','x_2'); figure plot(t,d(:,1),'o-',t,d(:,2),'+-'); xlabel('t'); ylabel('duty cycle'); legend('Mode 1','Mode 2'); % create/update Bocop directory toBocop('initTank',ocpDef,t,x,u,l,d);