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gain-scheduled model predictive control switches between a predefined set of mpc controllers, in a coordinated fashion, to control a nonlinear plant over a wide range of operating conditions. use this approach if a single prediction model cannot provide adequate controller performance. to implement gain-scheduled mpc, first design a model predictive controller for each operating point, and then design a scheduling signal that switches the controllers at run time. to reduce online computational effort, you can also implement gain-scheduled explicit mpc in simulink®. for more information, see .
functions
compute gain-scheduling mpc control action at a single time instant | |
option set for mpcmove function | |
mpc controller state |
blocks
simulate switching between multiple implicit mpc controllers | |
multiple explicit mpc controllers |
topics
gain-scheduled mpc basics
control a nonlinear plant over a wide range of operating conditions by switching between a predefined set of mpc controllers in a coordinated fashion.
control a nonlinear system by designing multiple mpc controllers for different plant operating conditions.
case studies
control a nonlinear chemical reactor using a gain-scheduled model predictive controller as the reactor transitions from one operating condition to another.
implement gain-scheduled mpc control of a nonlinear plant using the multiple mpc controllers block and multiple explicit mpc controllers block.
control an inverted pendulum in an unstable equilibrium position using a gain-scheduled model predictive controller.