Joseph Dianavinnarasi, Kumarasamy Suresh, Jose Sayooj Aby, Rajagopal Karthikeyan
Center for Computational Biology, Easwari Engineering College, Chennai, Tamilnadu 600089 India.
Centre for Computational Modelling, Chennai Institute of Technology, Chennai, Tamilnadu 600069 India.
Cogn Neurodyn. 2024 Dec;18(6):4089-4099. doi: 10.1007/s11571-024-10165-2. Epub 2024 Nov 14.
In this study, we investigate the impact of first and second-order coupling strengths on the stability of a synchronization manifold in a Discrete FitzHugh-Nagumo (DFHN) neuron model with memristor coupling. Master Stability Function (MSF) is used to estimate the stability of the synchronized manifold. The MSF of the DFHN model exhibits two zero crossings as we vary the coupling strengths, which is categorized as class . Interestingly, both zero-crossing points demonstrate a power-law relationship with respect to both the first-order coupling strength and flux coefficient, as well as the second-order coupling strength and flux coefficient. In contrast, the zero crossings follow a linear relationship between first-order and second-order coupling strength. These linear and nonlinear relationships enable us to forecast the zero-crossing point and, consequently, determine the coupling strengths at which the stability of the synchronization manifold changes for any given set of parameters. We further explore the regime of the stable synchronization manifold within a defined parameter space. Lower values of both first and second-order coupling strengths have minimal impact on the transition between stable and unstable synchronization regimes. Conversely, higher coupling strengths lead to a shrinking regime of the stable synchronization manifold. This reduction follows an exponential relationship with the coupling strengths. This study is helpful in brain-inspired computing systems by understanding synchronization stability in neuron models with memristor coupling. It helps to create more efficient neural networks for tasks like pattern recognition and data processing.
在本研究中,我们研究了一阶和二阶耦合强度对具有忆阻器耦合的离散FitzHugh-Nagumo(DFHN)神经元模型中同步流形稳定性的影响。主稳定性函数(MSF)用于估计同步流形的稳定性。当我们改变耦合强度时,DFHN模型的MSF呈现出两个零交叉点,这被归类为 类。有趣的是,两个零交叉点相对于一阶耦合强度和通量系数以及二阶耦合强度和通量系数都呈现出幂律关系。相比之下,零交叉点在一阶和二阶耦合强度之间呈现线性关系。这些线性和非线性关系使我们能够预测零交叉点,并因此确定对于任何给定参数集,同步流形稳定性发生变化时的耦合强度。我们进一步探索了在定义参数空间内稳定同步流形的区域。一阶和二阶耦合强度的较低值对稳定和不稳定同步状态之间的转变影响最小。相反,较高的耦合强度会导致稳定同步流形的区域缩小。这种缩小与耦合强度呈指数关系。这项研究通过理解具有忆阻器耦合的神经元模型中的同步稳定性,有助于脑启发式计算系统。它有助于创建更高效的神经网络来执行模式识别和数据处理等任务。