Complex dynamical analysis of a discrete memristive neural network and its DSP implementation

Zhitang Han, Yinghong Cao, Bo Sun, Jun Mou
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Abstract

This paper introduces a discrete memristor model and verifies the correctness of the model through circuit simulation. A six-dimensional discrete neural network was built by coupling the Rulkov neuron and the KTZ neuron. Dynamical analyses show that this neural network has multiple firing patterns when the memristor parameters and coupling coefficient are varied in the appropriate ranges, such as periodic firing, quasi-periodic firing, chaotic firing, and hyperchaotic firing. In addition, the coexisting multiple firing patterns and state transition phenomena of this neural network are revealed. Finally, the complexity analysis shows that the generated chaotic sequences have high pseudo-randomness, and the hardware implementation is completed in the Digital Signal Processor (DSP). This paper provides a reference for the study of memristive neural networks and communication encryption.

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离散记忆神经网络的复杂动力学分析及其 DSP 实现
本文介绍了一种离散忆阻器模型,并通过电路仿真验证了该模型的正确性。通过 Rulkov 神经元和 KTZ 神经元的耦合,建立了一个六维离散神经网络。动力学分析表明,当记忆器参数和耦合系数在适当范围内变化时,该神经网络具有多种发射模式,如周期性发射、准周期性发射、混沌发射和超混沌发射。此外,还揭示了该神经网络并存的多重发射模式和状态转换现象。最后,复杂性分析表明生成的混沌序列具有很高的伪随机性,并在数字信号处理器(DSP)中完成了硬件实现。本文为研究记忆神经网络和通信加密提供了参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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