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Neural Robust Stabilization via Event-Triggering Mechanism and Adaptive Learning Technique
Jul 10, 2018Author:
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 Title: Neural Robust Stabilization via Event-Triggering Mechanism and Adaptive Learning Technique  

Authors: Wang, D; Liu, DR  

Author Full Names: Wang, Ding; Liu, Derong  

Source: NEURAL NETWORKS, 102 27-35; 10.1016/j.neunet.2018.02.007 JUN 2018  

Language: English  

Abstract: The robust control synthesis of continuous-time nonlinear systems with uncertain term is investigated via event-triggering mechanism and adaptive critic learning technique. We mainly focus on combining the event-triggering mechanism with adaptive critic designs, so as to solve the nonlinear robust control problem. This can not only make better use of computation and communication resources, but also conduct controller design from the view of intelligent optimization. Through theoretical analysis, the nonlinear robust stabilization can be achieved by obtaining an event-triggered optimal control law of the nominal system with a newly defined cost function and a certain triggering condition. The adaptive critic technique is employed to facilitate the event-triggered control design, where a neural network is introduced as an approximator of the learning phase. The performance of the event-triggered robust control scheme is validated via simulation studies and comparisons. The present method extends the application domain of both event-triggered control and adaptive critic control to nonlinear systems possessing dynamical uncertainties. (c) 2018 Elsevier Ltd. All rights reserved.  

ISSN: 0893-6080  

eISSN: 1879-2782  

IDS Number: GB8DS  

Unique ID: WOS:000429306200004  

PubMed ID: 29524765  

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