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Event-Triggered Model Reference Adaptive Control for Linear Partially Time-Variant Continuous-Time Systems With Nonlinear Parametric Uncertainty

Jiang, Yi; Shi, Dawei; Fan, Jialu; Chai, Tianyou*; Chen, Tongwen
Science Citation Index Expanded
东北大学; 北京理工大学; 6; 1

摘要

In this work, we develop an event-triggered adaptive control approach for solving the state tracking problem of linear partially time-variant continuous-time systems with the nonlinear state-dependent matched parametric uncertainty under unknown system dynamics. First, an event-triggered model reference adaptive controller is designed, which is composed of event-triggered adaptive laws based on the event-updated information and an event-triggering condition depending on the state tracking error of the controlled plant and reference model. Then, the state-tracking error and the error between control parameters and ideal ones of the resulting closed-loop system are proven to be uniformly ultimately bounded. Moreover, based on the designed event-triggering condition, the interevent time between two consecutive triggering points is proven to have a positive lower bound. Finally, a simulation example is provided to show the effectiveness of the proposed approach.

关键词

Adaptation models Uncertainty Closed loop systems Adaptive control Nonlinear systems Automation Computational modeling Event-triggered adaptive control linear partially time-variant continuous-time (CT) systems model reference adaptive control (MRAC) nonlinear state-dependent matched parametric uncertainty