Performance Analysis of Stochastic Model Predictive Control with Direct and Indirect Feedback
Metadata only
Datum
2021Typ
- Conference Paper
Abstract
Stochastic model predictive control (SMPC) approximates the solution to constrained stochastic optimal control problems by solving a simplified problem repeatedly over a reduced prediction horizon. This paper demonstrates and discusses significant open challenges for current SMPC methods in terms of their closed-loop performance and conservatism regarding constraint satisfaction. In particular, we compare two forms of formulating chance constraints in SMPC. First, we consider a direct feedback formulation, which corresponds to the typical implementation of SMPC. Direct feedback formulates chance constraints for the predicted state distribution conditioned on the current measured state at each time step during the receding horizon control. Indirect feedback, in contrast, formulates constraints by introducing a suitable nominal state, which allows to enforce chance constraints on the closed loop. In numerical examples, we demonstrate that direct feedback, i.e. the typical form of SMPC, can result in significant conservatism, allowing almost no constraint violations. This results in significantly reduced performance, which we show can be alleviated with indirect feedback formulations. In addition, we prove that indirect feedback can recover the unconstrained optimal solution given by LQR control whenever it is feasible also for the constrained optimal control problem. © 2020 IEEE. Mehr anzeigen
Publikationsstatus
publishedExterne Links
Buchtitel
2020 59th IEEE Conference on Decision and Control (CDC)Seiten / Artikelnummer
Verlag
IEEEKonferenz
Organisationseinheit
09563 - Zeilinger, Melanie / Zeilinger, Melanie
Förderung
157601 - Safety and Performance for Human in the Loop Control (SNF)
Anmerkungen
Due to the Coronavirus (COVID-19) the conference was conducted virtually.