忆阻电磁感应下无乘法器的Rulkov神经元:动力学分析、能量计算和电路实现

Shaohua Zhang, Cong Wang, Hongli Zhang, Hairong Lin
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引用次数: 0

摘要

建立一个真实的、无倍增器的可实现生物神经元模型对于识别和理解自然放电行为以及促进神经形态回路的整合具有重要意义。重要的是,忆阻器在通过模拟突触或电磁感应来构建忆阻神经元和网络模型中起着至关重要的作用。然而,现有模型缺乏对初始增强极端多稳定性及其相关能量分析的考虑。为此,我们提出了一种无乘法器实现的Rulkov神经元模型,并利用一个周期忆阻器来表示电磁感应效应,从而实现了非自治忆阻Rulkov (mRulkov)神经元的仿生建模。首先,理论分析表明,时变线路平衡点的稳定性分布是由参数和忆阻器初始条件共同决定的。此外,数值模拟表明,mRulkov神经元可以表现出参数依赖的局部尖峰、局部隐藏尖峰和周期性爆发放电行为。此外,基于memductance函数的周期性特征,全面证明了mRulkov神经元的拓扑不变性。因此,局部吸引盆地、分支图和与极端多稳定性相关的吸引子可以通过切换忆阻器的初始条件来增强。值得注意的是,在Rulkov神经元中首次发现了这种新型增强的极端多稳定性。更重要的是,通过计算Hamilton能量分布揭示了与助推动力学相关的能量转换。最后,我们开发了非自治mRulkov神经元的仿真电路,并通过PSpice仿真验证了无乘法器实现的有效性和数值结果的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A multiplier-free Rulkov neuron under memristive electromagnetic induction: Dynamics analysis, energy calculation, and circuit implementation
Establishing a realistic and multiplier-free implemented biological neuron model is significant for recognizing and understanding natural firing behaviors, as well as advancing the integration of neuromorphic circuits. Importantly, memristors play a crucial role in constructing memristive neuron and network models by simulating synapses or electromagnetic induction. However, existing models lack the consideration of initial-boosted extreme multistability and its associated energy analysis. To this end, we propose a multiplier-free implementation of the Rulkov neuron model and utilize a periodic memristor to represent the electromagnetic induction effect, thereby achieving the biomimetic modeling of the non-autonomous memristive Rulkov (mRulkov) neuron. First, theoretical analysis demonstrates that the stability distribution of the time-varying line equilibrium point is determined by both the parameters and the memristor’s initial condition. Furthermore, numerical simulations show that the mRulkov neuron can exhibit parameter-dependent local spiking, local hidden spiking, and periodic bursting firing behaviors. In addition, based on the periodic characteristics of the memductance function, the topological invariance of the mRulkov neuron is comprehensively proved. Therefore, local basins of attraction, bifurcation diagrams, and attractors related to extreme multistability can be boosted by switching the memristor’s initial condition. Significantly, the novel boosted extreme multistability is discovered in the Rulkov neuron for the first time. More importantly, the energy transition associated with the boosting dynamics is revealed through computing the Hamilton energy distribution. Finally, we develop a simulation circuit for the non-autonomous mRulkov neuron and confirm the effectiveness of the multiplier-free implementation and the accuracy of the numerical results through PSpice simulations.
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