Fu Sen, Yao Zhengjun, Qian Caixia, Wang Xia
College of Materials Science and Technology, Nanjing University of Aeronautics and Astronautics, Nanjing 211100, China.
Aircraft Technology Branch of Hunan Aerospace Co., Ltd., Changsha 410000, China.
Entropy (Basel). 2023 Aug 25;25(9):1261. doi: 10.3390/e25091261.
At present, memristive neural networks with various topological structures have been widely studied. However, the memristive neural network with a star structure has not been investigated yet. In order to investigate the dynamic characteristics of neural networks with a star structure, a star memristive neural network (SMNN) model is proposed in this paper. Firstly, an SMNN model is proposed based on a Hopfield neural network and a flux-controlled memristor. Then, its chaotic dynamics are analyzed by using numerical analysis methods including bifurcation diagrams, Lyapunov exponents, phase plots, Poincaré maps, and basins of attraction. The results show that the SMNN can generate complex dynamical behaviors such as chaos, multi-scroll attractors, and initial boosting behavior. The number of multi-scroll attractors can be changed by adjusting the memristor's control parameters. And the position of the coexisting chaotic attractors can be changed by switching the memristor's initial values. Meanwhile, the analog circuit of the SMNN is designed and implemented. The theoretical and numerical results are verified through MULTISIM simulation results. Finally, a color image encryption scheme is designed based on the SMNN. Security performance analysis shows that the designed cryptosystem has good security.
目前,具有各种拓扑结构的忆阻神经网络已得到广泛研究。然而,具有星形结构的忆阻神经网络尚未被研究。为了研究具有星形结构的神经网络的动态特性,本文提出了一种星形忆阻神经网络(SMNN)模型。首先,基于霍普菲尔德神经网络和磁通控制忆阻器提出了一种SMNN模型。然后,利用包括分岔图、李雅普诺夫指数、相图、庞加莱映射和吸引子盆地等数值分析方法对其混沌动力学进行了分析。结果表明,SMNN可以产生诸如混沌、多涡卷吸引子和初始增强行为等复杂的动力学行为。多涡卷吸引子的数量可以通过调整忆阻器的控制参数来改变。并且共存混沌吸引子的位置可以通过切换忆阻器的初始值来改变。同时,设计并实现了SMNN的模拟电路。通过MULTISIM仿真结果验证了理论和数值结果。最后,基于SMNN设计了一种彩色图像加密方案。安全性能分析表明,所设计的密码系统具有良好的安全性。