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A high efficient next generation reservoir computing to predict and generate chaos with application for secure communication
IET Communications, Volume: 17, Issue: 4
Swansea University Author: Lijie Li
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DOI (Published version): 10.1049/cmu2.12559
Abstract
In this work, a high efficient next generation reservoir computing (HENG-RC) paradigm that adopts the principle of local states correlation and attention mechanism is proposed, which is able to process dynamical information generated by both the low dimensional and very large spatiotemporal chaotic...
Published in: | IET Communications |
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ISSN: | 1751-8628 1751-8636 |
Published: |
Institution of Engineering and Technology (IET)
2022
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Online Access: |
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URI: | https://cronfa.swan.ac.uk/Record/cronfa62214 |
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Abstract: |
In this work, a high efficient next generation reservoir computing (HENG-RC) paradigm that adopts the principle of local states correlation and attention mechanism is proposed, which is able to process dynamical information generated by both the low dimensional and very large spatiotemporal chaotic systems (VLSCS). From a dynamical system perspective, the dynamical characteristics such as density distribution, Poincaré plots and max Lyapunov exponents of the proposed HENG-RC are studied. It is revealed that the trained model can be seen as a data-driven chaotic system. Furthermore, a novel scheme of secure communication based on chaotic synchronization of two HENG-RC systems is designed, of which the security is enhanced as the intruder needs to know simultaneously the training signal and details of the parameter setting in the HENG-RC. The digital implementation using field programmable gate array is experimentally realised, proving the feasibility of the secure communication scheme. |
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Keywords: |
chaos synchronisation; data-driven; next generation reservoir computing; secure communication; time series prediction |
College: |
Faculty of Science and Engineering |
Funders: |
China Postdoctoral Science Foundation. Grant Number: 2019T120447 |
Issue: |
4 |