V utorok 13.06.2017 o 14:00 sa v miestnosti 641 
uskutoční odborný seminár pod vedením profesora Borisa Housku zo ShaghaiTech University na tému Self-reflective model predictive control.
Abstrakt (EN): This talk is about a novel control scheme, named 
self-reflective model predictive control, which takes its own 
limitations in the presence of process noise and measurement errors into
 account. In contrast to existing output-feedback MPC and persistently 
exciting MPC controllers, self-reflective MPC controllers do not only 
propagate a matrix-valued state forward in time in order to predict the 
variance of future state-estimates, but they also propagates a 
matrix-valued adjoint state backward in time. This adjoint state is used
 by the controller to compute and minimize a second order approximation 
of its own expected loss of control performance in the presence of 
random process noise and inexact state estimates. A second part of the 
talk introduces a real-time algorithm, which can exploit the particular 
structure of the self-reflective MPC problems in order to speed-up the 
online computation time. It is shown that, in contrast to generic 
state-of-the-art optimal control problem solvers, the proposed algorithm
 can solve the self-reflective optimization problems with reasonable 
additional computational effort compared to standard MPC. The advantages
 of the proposed real-time scheme are illustrated by applying it to a 
benchmark predator-prey-feeding control problem.