Conditional Lyapunov exponents and transfer entropy in coupled bursting neurons under excitation and coupling mismatch
•A new method for computing conditional Lyapunov exponent is proposed.•The synchronism of Hindmarsh-Rose (HR) neurons is analyzed from different perspectives.•The stability and information flux are evaluated for coupled HR neurons under different scenarios.•The results reveal a particular structure...
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Veröffentlicht in: | Communications in nonlinear science & numerical simulation 2018-03, Vol.56, p.419-433 |
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Sprache: | eng |
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Zusammenfassung: | •A new method for computing conditional Lyapunov exponent is proposed.•The synchronism of Hindmarsh-Rose (HR) neurons is analyzed from different perspectives.•The stability and information flux are evaluated for coupled HR neurons under different scenarios.•The results reveal a particular structure on the synchronization region, how it grows under bi-directional coupling and robustness under excitation shift.
This work has a twofold aim: (a) to analyze an alternative approach for computing the conditional Lyapunov exponent (λcmax) aiming to evaluate the synchronization stability between nonlinear oscillators without solving the classical variational equations for the synchronization error dynamical system. In this first framework, an analytic reference value for λcmax is also provided in the context of Duffing master-slave scenario and precisely evaluated by the proposed numerical approach; (b) to apply this technique to the study of synchronization stability in chaotic Hindmarsh-Rose (HR) neuronal models under uni- and bi-directional resistive coupling and different excitation bias, which also considered the root mean square synchronization error, information theoretic measures and asymmetric transfer entropy in order to offer a better insight of the synchronization phenomenon. In particular, statistical and information theoretical measures were able to capture similarity increase between the neuronal oscillators just after a critical coupling value in accordance to the largest conditional Lyapunov exponent behavior. On the other hand, transfer entropy was able to detect neuronal emitter influence even in a weak coupling condition, i.e. under the increase of conditional Lyapunov exponent and apparently desynchronization tendency. In the performed set of numerical simulations, the synchronization measures were also evaluated for a two-dimensional parameter space defined by the neuronal coupling (emitter to a receiver neuron) and the (receiver) excitation current. Such analysis is repeated for different feedback couplings as well for different (emitter) excitation currents, revealing interesting characteristics of the attained synchronization region and conditions that facilitate the emergence of the synchronous behavior. These results provide a more detailed numerical insight of the underlying behavior of a HR in the excitation and coupling space, being in accordance with some general findings concerning HR coupling topologies. As a perspective, besides th |
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ISSN: | 1007-5704 1878-7274 |
DOI: | 10.1016/j.cnsns.2017.08.022 |