He Shaobo, Vignesh D, Rondoni Lamberto, Banerjee Santo
School of Automation and Electronic Information, Xiangtan University, Xiangtan, 411105, China.
Department of Mathematics, School of Engineering and Technology, CMR University, Chagalahatti, Bangalore, 562149, Karnataka, India.
Neural Netw. 2023 Oct;167:572-587. doi: 10.1016/j.neunet.2023.08.041. Epub 2023 Sep 1.
This article introduces a novel model of asymmetric neural networks combined with fractional difference memristors, which has both theoretical and practical implications in the rapidly evolving field of computational intelligence. The proposed model includes two types of fractional difference memristor elements: one with hyperbolic tangent memductance and the other with periodic memductance and memristor state described by sine functions. The authenticity of the constructed memristor is confirmed through fingerprint verification. The research extensively investigates the dynamics of a coupled neural network model, analyzing its stability at equilibrium states, studying bifurcation diagrams, and calculating the largest Lyapunov exponents. The results suggest that when incorporating sine memristors, the model demonstrates coexisting state variables depending on the initial conditions, revealing the emergence of multi-layer attractors. The article further demonstrates how the memristor state shifts through numerical simulations with varying memductance values. Notably, the study emphasizes the crucial role of memductance (synaptic weight) in determining the complex dynamical characteristics of neural network systems. To support the analytical results and demonstrate the chaotic response of state variables, the article includes appropriate numerical simulations. These simulations effectively validate the presented findings and provide concrete evidence of the system's chaotic behavior.
本文介绍了一种结合分数阶差分忆阻器的新型非对称神经网络模型,该模型在快速发展的计算智能领域具有理论和实际意义。所提出的模型包括两种类型的分数阶差分忆阻器元件:一种具有双曲正切忆导,另一种具有周期忆导且忆阻器状态由正弦函数描述。通过指纹验证确认了所构建忆阻器的真实性。该研究广泛研究了耦合神经网络模型的动力学,分析了其在平衡态的稳定性,研究了分岔图,并计算了最大李雅普诺夫指数。结果表明,当纳入正弦忆阻器时,该模型根据初始条件展示了共存的状态变量,揭示了多层吸引子的出现。本文通过对不同忆导值的数值模拟进一步展示了忆阻器状态如何转变。值得注意的是,该研究强调了忆导(突触权重)在确定神经网络系统复杂动力学特性方面的关键作用。为了支持分析结果并展示状态变量的混沌响应,本文包含了适当的数值模拟。这些模拟有效地验证了所呈现的发现,并为系统的混沌行为提供了具体证据。