Design of backstepping control for nonlinear systems based on command filter and uncertainty estimation
Yongbo Sun, Lan Zhou, Fuxi Jiang, Meiliu Li, Wenbin XiaoAbstract
This paper presents an improved command‐filtered backstepping control strategy for a class of multisource‐disturbed nonlinear systems based on an active‐uncertainty‐estimation‐and‐compensation approach. Exploiting the available model information of a plant, a reduced‐order extended‐state observer is designed to estimate a matched total uncertainty. Command filters are constructed to estimate virtual control inputs. Both the estimated states and estimation errors are used for the construction of the backstepping control law, which guarantees the stability of the system and compensates for uncertainties. Moreover, a particle swarm optimization algorithm is adopted to simultaneously optimize the state observer gain and backstepping control gains. Finally, a case study on a rotational system shows that the presented method achieves better uncertainty suppression and tracking performance in both transient and steady state than other related methods.