School of Science, Hunan City University, Yiyang, 413000, People's Republic of China.
Information Systems Department, College of Computer and Information Sciences, Imam Mohammad Ibn Saud Islamic University (IMSIU), Riyadh, 11432, Saudi Arabia.
Sci Rep. 2023 Oct 24;13(1):18180. doi: 10.1038/s41598-023-45227-8.
The multiple activities of neurons frequently generate several spiking-bursting variations observed within the neurological mechanism. We show that a discrete fractional-order activated nerve cell framework incorporating a Caputo-type fractional difference operator can be used to investigate the impacts of complex interactions on the surge-empowering capabilities noticed within our findings. The relevance of this expansion is based on the model's structure as well as the commensurate and incommensurate fractional-orders, which take kernel and inherited characteristics into account. We begin by providing data regarding the fluctuations in electronic operations using the fractional exponent. We investigate two-dimensional Morris-Lecar neuronal cell frameworks via spiked and saturated attributes, as well as mixed-mode oscillations and mixed-mode bursting oscillations of a decoupled fractional-order neuronal cell. The investigation proceeds by using a three-dimensional slow-fast Morris-Lecar simulation within the fractional context. The proposed method determines a method for describing multiple parallels within fractional and integer-order behaviour. We examine distinctive attribute environments where inactive status develops in detached neural networks using stability and bifurcation assessment. We demonstrate features that are in accordance with the analysis's findings. The Erdös-Rényi connection of asynchronization transformed neural networks (periodic and actionable) is subsequently assembled and paired via membranes that are under pressure. It is capable of generating multifaceted launching processes in which dormant neural networks begin to come under scrutiny. Additionally, we demonstrated that boosting connections can cause classification synchronization, allowing network devices to activate in conjunction in the future. We construct a reduced-order simulation constructed around clustering synchronisation that may represent the operations that comprise the whole system. Our findings indicate the influence of fractional-order is dependent on connections between neurons and the system's stored evidence. Moreover, the processes capture the consequences of fractional derivatives on surge regularity modification and enhance delays that happen across numerous time frames in neural processing.
神经元的多种活动经常在神经机制中产生几种被观察到的爆发式爆发变化。我们表明,一个包含 Caputo 型分数差分算子的离散分数阶激活神经细胞框架可以用于研究复杂相互作用对我们研究中发现的涌流增强能力的影响。这种扩展的相关性基于模型的结构以及相称和不相称的分数阶,它们考虑了内核和继承的特征。我们首先提供关于使用分数指数的电子操作波动的数据。我们通过尖峰和饱和属性,以及解耦分数阶神经元细胞的混合模式振荡和混合模式爆发振荡,研究二维 Morris-Lecar 神经元细胞框架。在分数背景下,通过三维慢快 Morris-Lecar 模拟进行调查。所提出的方法确定了一种用于描述分数和整数阶行为中多个并行的方法。我们研究了分离神经网络中失活状态发展的独特属性环境,使用稳定性和分岔评估。我们展示了与分析结果一致的特征。随后,通过受压力的膜将异步化转换的神经网络(周期性和可操作)的 Erdös-Rényi 连接组装并配对。它能够产生多方面的启动过程,使休眠神经网络开始受到关注。此外,我们证明了增强连接可以导致分类同步,允许网络设备在未来协同激活。我们构建了一个围绕聚类同步构建的降阶模拟,它可以表示构成整个系统的操作。我们的研究结果表明,分数阶的影响取决于神经元之间的连接和系统存储的证据。此外,这些过程捕获了分数导数对涌流规则性修改的影响,并增强了神经处理中多个时间框架内发生的延迟。