Synchronization in STDP-driven memristive neural networks with time-varying topology

IF 1.8 4区 生物学 Q3 BIOPHYSICS
Marius E. Yamakou, Mathieu Desroches, Serafim Rodrigues
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Abstract

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.

Abstract Image

时变拓扑stdp驱动记忆神经网络的同步。
同步是大脑中普遍存在的现象。尽管有大量的研究,但在由spike- time -dependent plasticity (STDP)和受稳态结构可塑性(HSP)规则驱动的时间网络驱动的神经元中,实现稳健和持久同步所需的突触网络结构的具体参数配置和学习规则仍不清楚。在这里,我们通过确定在由STDP和HSP驱动的时变小世界随机神经网络中实现高且稳定程度的完全同步(CS)和相位同步(PS)所需的配置来弥补这一差距。我们特别发现,在小世界和随机网络中,减小P(增强STDP对平均突触权值的强化作用)和增大F(加快神经元间突触交换速率),在突触延时[公式:见文]、平均度[公式:见文]、重布线概率[公式:]等网络参数的条件下,总能获得更高且更稳定的CS和PS度。有一些合适的值。当[公式:见文]、[公式:见文]、[公式:见文]不固定在这些适当的值时,CS和PS的程度和稳定性会随着F的增大而增大或减小,这取决于网络拓扑结构。我们还发现,时间延迟[公式:见文]可以诱导间歇性的CS和PS,它们的发生是独立的F.我们的研究结果可以应用于设计神经形态电路,通过同步现象实现最优的信息处理和传输。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Biological Physics
Journal of Biological Physics 生物-生物物理
CiteScore
3.00
自引率
5.60%
发文量
20
审稿时长
>12 weeks
期刊介绍: Many physicists are turning their attention to domains that were not traditionally part of physics and are applying the sophisticated tools of theoretical, computational and experimental physics to investigate biological processes, systems and materials. The Journal of Biological Physics provides a medium where this growing community of scientists can publish its results and discuss its aims and methods. It welcomes papers which use the tools of physics in an innovative way to study biological problems, as well as research aimed at providing a better understanding of the physical principles underlying biological processes.
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