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  4. Event-Triggered Learning for Resource-Efficient Networked Control
 
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2018
Conference Paper
Titel

Event-Triggered Learning for Resource-Efficient Networked Control

Abstract
Common event-triggered state estimation (ETSE) algorithms save communication in networked control systems by predicting agents' behavior, and transmitting updates only when the predictions deviate significantly. The effectiveness in reducing communication thus heavily depends on the quality of the dynamics models used to predict the agents' states or measurements. Event-triggered learning is proposed herein as a novel concept to further reduce communication: whenever poor communication performance is detected, an identification experiment is triggered and an improved prediction model learned from data. Effective learning triggers are obtained by comparing the actual communication rate with the one that is expected based on the current model. By analyzing statistical properties of the inter-communication times and leveraging powerful convergence results, the proposed trigger is proven to limit learning experiments to the necessary instants. Numerical and physical experiments demonstrate that event-triggered learning improves robustness toward changing environments and yields lower communication rates than common ETSE.
Author(s)
Solowjow, Friedrich
Baumann, Dominik
Garcke, Jochen
Trimpe, Sebastian
Hauptwerk
Annual American Control Conference, ACC 2018
Konferenz
American Control Conference (ACC) 2018
Thumbnail Image
DOI
10.23919/ACC.2018.8431102
Externer Link
Externer Link
Language
English
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Fraunhofer-Institut für Algorithmen und Wissenschaftliches Rechnen SCAI
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