×

MPC for stochastic systems. (English) Zbl 1223.93119

Findeisen, Rolf (ed.) et al., Assessment and future directions of nonlinear model predictive control. Selected papers based on the presentations at the workshop (NMPC05), Freudenstadt-Lauterbad, Germany, August 26–30, 2005. Berlin: Springer (ISBN 978-3-540-72698-2/pbk). Lecture Notes in Control and Information Sciences 358, 255-268 (2007).
Summary: Stochastic uncertainty is present in many control engineering problems, and is also present in a wider class of applications, such as finance and sustainable development. We propose a receding horizon strategy for systems with multiplicative stochastic uncertainty in the dynamic map between plant inputs and outputs. The cost and constraints are defined using probabilistic bounds. Terminal constraints are defined in a probabilistic framework, and guarantees of closed-loop convergence and recursive feasibility of the online optimization problem are obtained. The proposed strategy is compared with alternative problem formulations in simulation examples.
For the entire collection see [Zbl 1116.93009].

MSC:

93E20 Optimal stochastic control
93B51 Design techniques (robust design, computer-aided design, etc.)
93C41 Control/observation systems with incomplete information
Full Text: DOI