ScholarMate
客服热线:400-1616-289

Robustification of Learning Observers to Uncertainty Identification via Time-Varying Learning Intensity

Zhang, Chengxi*; Ahn, Choon Ki*; Wu, Jin; He, Wei; Jiang, Yi; Liu, Ming
Science Citation Index Expanded
北京科技大学

摘要

This brief studies the simultaneous estimation of states and uncertainties in general continuous-time systems. In particular, we present a novel time-varying learning intensity (TLI) learning observer (LO). It has the advantage of inheriting the valuable properties of conventional LOs with a simple structure, i.e., the uncertainty estimation is achieved using simply one algebraic equation with low computational costs. The foremost difference in comparison with conventional LOs is the utilization of the TLI approach, which attenuates the overshooting response in the case of large estimation errors and obtains decent performance improvement. Simulations for constant and time-varying signals demonstrate a notable performance boost of TLI-LO.

关键词

Estimation Uncertainty Observers Time-varying systems Mathematical model Estimation error Circuits and systems Learning observer time-varying learning intensity uncertainty estimation