Title :
Stochastic nonlinear model predictive control based on progressive density simplification
Author :
Chlebek, Christian ; Hekler, Achim ; Hanebeck, Uwe D.
Author_Institution :
Intell. Sensor-Actuator-Syst. Lab. (ISAS), Karlsruhe Inst. of Technol. (KIT), Karlsruhe, Germany
Abstract :
Increasing demand for Nonlinear Model Predictive Control with the ability to handle highly noise-corrupted systems has recently given rise to stochastic control approaches. Besides providing high-quality results within a noisy environment, these approaches have one problem in common, namely a high computational demand and, as a consequence, generally a short prediction horizon. In this paper, we propose to reduce the computational complexity of prediction and value function evaluation within the control horizon by simplifying the system progressively down to the deterministic case. Approximation of occurring probability densities by a specific representation, the deterministic Dirac mixture density, with a decreasing resolution (i.e., approximation quality) leads via natural decomposition to a point estimate and thus, can be treated in a deterministic manner. Hence, calculation of the remaining time steps requires considerably less computation time.
Keywords :
approximation theory; nonlinear control systems; predictive control; probability; stochastic systems; approximation; computational complexity; control horizon; deterministic Dirac mixture density; function evaluation; high computational demand; highly noise-corrupted systems; natural decomposition; probability densities; progressive density simplification; short prediction horizon; stochastic nonlinear model predictive control; Approximation methods; Complexity theory; Kalman filters; Robot sensing systems; Stochastic processes; Trajectory;
Conference_Titel :
Decision and Control (CDC), 2012 IEEE 51st Annual Conference on
Conference_Location :
Maui, HI
Print_ISBN :
978-1-4673-2065-8
Electronic_ISBN :
0743-1546
DOI :
10.1109/CDC.2012.6426067