Heo Jungang, Kim Seongmin, Kim Sungjun, Kim Min-Hwi
Division of Electronics and Electrical Engineering, Dongguk University, Seoul, 04620, Republic of Korea.
School of Electrical and Electronics Engineering and Department of Intelligent Semiconductor Engineering, Chung-Ang University, Seoul, 06974, Republic of Korea.
Adv Sci (Weinh). 2024 Nov;11(42):e2405768. doi: 10.1002/advs.202405768. Epub 2024 Sep 5.
This study presents findings that demonstrate the possibility of simplifying neural networks by inducing multifunctionality through separate manipulation within a single material. Herein, two-terminal memristor W/ZnTe/W devices implemented a multifunctional memristor comprising a selector, synapse, and a neuron using an ovonic threshold switching material. By setting the low-current level (µA) in the forming process, a stable memory-switching operation is achieved, and the capacity to implement a synapse is demonstrated based on paired-pulse facilitation/depression, potentiation/depression, spike-amplitude-dependent plasticity, and spike-number-dependent plasticity outcomes. Based on synaptic behavior, the Modified National Institute of Standards and Technology database image classification accuracy is up to 90%. Conversely, by setting the high-current level (mA) in the forming process, the stable bipolar threshold switching operation and good selector characteristics (300 ns switching speed, free-drift, recovery properties) are demonstrated. In addition, a stochastic neuron is implemented using the stochastic switching response in the positive voltage region. Utilizing stochastic neurons, it is possible to create a generative restricted Boltzmann machine model.
本研究展示了一些发现,这些发现表明通过在单一材料内进行单独操控来诱导多功能性,从而简化神经网络是有可能的。在此,两终端忆阻器W/ZnTe/W器件使用硫系化合物阈值开关材料实现了一种多功能忆阻器,该多功能忆阻器包含一个选择器、一个突触和一个神经元。通过在形成过程中设置低电流水平(微安),实现了稳定的记忆切换操作,并基于双脉冲易化/抑制、增强/抑制、峰电位幅度依赖可塑性和峰电位数量依赖可塑性结果证明了实现突触的能力。基于突触行为,改进的美国国家标准与技术研究院数据库图像分类准确率高达90%。相反,通过在形成过程中设置高电流水平(毫安),证明了稳定的双极阈值开关操作和良好的选择器特性(300纳秒开关速度、无漂移、恢复特性)。此外,利用正电压区域中的随机开关响应实现了一个随机神经元。利用随机神经元,可以创建一个生成性受限玻尔兹曼机模型。