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Subject: adaptive dynamical Bayesian inference
Subject: coupled oscillators
Subject: time window determination


Year: 2020


Type: Article



Title: Towards a Protocol for Adaptive Dynamical Bayesian Inference: Case of Limit-Cycle Oscillators


Author: Lukarski, Dushko
Author: Spasevska, Hristina
Author: Stankovski Tomislav



Abstract: Several methods exist that allow the study of the interactions between dynamic systems in nature. Among them is the method of dynamic Bayesian inference, which allows reconstruction of a model that describes the interactions between different dynamical systems, based on the measured time series originating from these systems. Based on an investigation of a known system of two coupled phase oscillators, an algorithm for improving this method has been proposed, by adaptively determining two parameters that were previously arbitrarily selected – the time win-dow and the propagation parameter. This paper presents the results of the evaluation of the introduced algorithm on a second system of coupled oscillators - limit-cycle Poincaré oscillators in the presence of noise. The performed analysis confirmed the relevance of the proposed algorithm for improved model inference, which allows for a deeper understanding of the interactions described by the coupling functions of the dynamical systems.


Publisher: Faculty of Electrical Engineering and Information Technologies, Ss. Cyril and Methodius University in Skopje


Relation: Journal of Electrical Engineering and Information Technologies



Identifier: oai:repository.ukim.mk:20.500.12188/10377
Identifier: http://hdl.handle.net/20.500.12188/10377
Identifier: 534.322.3.015:57.08]:519.226



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Towards a Protocol for Adaptive Dynamical Bayesian Inference: Case of Limit-Cycle Oscillators202031