School of Electrical and Power Engineering, China University of Mining and Technology, No. 1 Daxue Road, Xuzhou, Jiangsu 221116, China.
School of Engineering, Deakin University, 75 Pigdons Road, Waurn Ponds, Victoria 3216, Australia.
Chaos. 2020 Mar;30(3):033108. doi: 10.1063/5.0002076.
Crosstalk phenomena taking place between synapses can influence signal transmission and, in some cases, brain functions. It is thus important to discover the dynamic behaviors of the neural network infected by synaptic crosstalk. To achieve this, in this paper, a new circuit is structured to emulate the Coupled Hyperbolic Memristors, which is then utilized to simulate the synaptic crosstalk of a Hopfield Neural Network (HNN). Thereafter, the HNN's multi-stability, asymmetry attractors, and anti-monotonicity are observed with various crosstalk strengths. The dynamic behaviors of the HNN are presented using bifurcation diagrams, dynamic maps, and Lyapunov exponent spectrums, considering different levels of crosstalk strengths. Simulation results also reveal that different crosstalk strengths can lead to wide-ranging nonlinear behaviors in the HNN systems.
突触之间发生的串扰现象会影响信号传递,在某些情况下还会影响大脑功能。因此,发现受突触串扰影响的神经网络的动态行为非常重要。为此,本文构建了一个新的电路来模拟耦合双曲磁阻,然后利用该电路模拟了 Hopfield 神经网络 (HNN) 的突触串扰。此后,观察了不同串扰强度下 HNN 的多稳定性、非对称吸引子和反单调性。通过分岔图、动态图和 Lyapunov 指数谱考虑不同的串扰强度,给出了 HNN 的动态行为。模拟结果还表明,不同的串扰强度会导致 HNN 系统产生广泛的非线性行为。