Synchronization in STDP-driven memristive neural networks with time-varying topology
Synchronization is a widespread phenomenon in the brain. Despite numerous studies, the specific parameter configurations of the synaptic network structure and learning rules needed to achieve robust and enduring synchronization in neurons driven by spike-timing-dependent plasticity (STDP) and tempor...
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Main Authors | , , |
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Format | Journal Article |
Language | English |
Published |
17.04.2023
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Subjects | |
Online Access | Get full text |
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Summary: | Synchronization is a widespread phenomenon in the brain. Despite numerous
studies, the specific parameter configurations of the synaptic network
structure and learning rules needed to achieve robust and enduring
synchronization in neurons driven by spike-timing-dependent plasticity (STDP)
and temporal networks subject to homeostatic structural plasticity (HSP) rules
remain unclear. Here, we bridge this gap by determining the configurations
required to achieve high and stable degrees of complete synchronization (CS)
and phase synchronization (PS) in time-varying small-world and random neural
networks driven by STDP and HSP. In particular, we found that decreasing $P$
(which enhances the strengthening effect of STDP on the average synaptic
weight) and increasing $F$ (which speeds up the swapping rate of synapses
between neurons) always lead to higher and more stable degrees of CS and PS in
small-world and random networks, provided that the network parameters such as
the synaptic time delay $\tau_c$, the average degree $\langle k \rangle$, and
the rewiring probability $\beta$ have some appropriate values. When $\tau_c$,
$\langle k \rangle$, and $\beta$ are not fixed at these appropriate values, the
degree and stability of CS and PS may increase or decrease when $F$ increases,
depending on the network topology. It is also found that the time delay
$\tau_c$ can induce intermittent CS and PS whose occurrence is independent $F$.
Our results could have applications in designing neuromorphic circuits for
optimal information processing and transmission via synchronization phenomena. |
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DOI: | 10.48550/arxiv.2304.08281 |