Reduced order model predictive control method based on decomposition of discrete-time linear systems

A reduced order model predictive control method is discussed for constrained discrete-time linear systems. By employing an alternative decomposition of finite-horizon linear systems, a model predictive control method, which works effectively for large systems, is obtained. The proposed method is illustrated with numerical examples.

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