Model Predictive Control Toolbox
This example shows how to design model predictive controller with mixed input/output constraints.
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The basic setup of the MPC controller includes:
A double integrator as the prediction model
Prediction horizon of 20
Control horizon of 20
Input constraints -1 <= u(t) <= 1
Define the MPC Controller setup:
model = tf(1,[1 0 0]); % Prediction model Ts = .1; % Sampling time p = 20; % Prediction horizon m = 20; % Control horizon mpc_controller = mpc(model,Ts,p,m); % MPC object mpc_controller.MV = struct('Min',-1,'Max',1); % Input saturation constraints
-->The "Weights.ManipulatedVariables" property of "mpc" object is empty. Assuming default 0.00000. -->The "Weights.ManipulatedVariablesRate" property of "mpc" object is empty. Assuming default 0.10000. -->The "Weights.OutputVariables" property of "mpc" object is empty. Assuming default 1.00000.
The sum of the input u(t) and output y(t) must be nonnegative and smaller than 1.2:
0 <= u(t) + y(t) <= 1.2
To impose this combined (mixed) I/O constraint, formulate it as a set of inequality constraints involving u(t) and y(t):
u(t) + y(t) <= 1.2 -u(t) + -y(t) <= 0
Define initial conditions:
x01 = 0; % Initial state: First integrator x02 = 0; % Initial state: Second integrator
Open and simulate the Simulink® model:
if ~mpcchecktoolboxinstalled('simulink') disp('Simulink(R) is required to run this example.') return end open_system('mpc_mixedconstraints'); % Open Simulink(R) Model sim('mpc_mixedconstraints'); % Start Simulation
-->Converting the "Model.Plant" property of "mpc" object to state-space. -->Converting model to discrete time. -->The "Model.Noise" property of the "mpc" object is empty. Assuming white noise on each measured output channel.
As you can see, the MPC Controller always keeps the sum u+y between 0 and 1.2 while tracking the reference signal r=1.