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An RRAM with a 2D Material Embedded Double Switching Layer for Neuromorphic Computing

机译:具有用于神经形态计算的2D材料嵌入式双交换层的RRAM

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Resistive random-access memory (RRAM) has shown great potential for neuromorphic engineering, due to its ability of emulating neural network and simple structure. To mimic the brain-learning behavior, two types of neural actions, short-term plasticity (STP) and long-term potentiation (LTP), should be imitated perfectly. In this work, we propose a unique RRAM cell with a double switching layer, in which a 2D material is embedded as a separation layer. Within a proper voltage range of stress, the mobile oxygen ions are blocked by the single atomic layer, and hence the subsequent relaxation of oxygen ions leads to a volatile switching characteristic. Owing to this volatile characteristic, the proposed device can mimic neural actions, STP and LTP, by a simple pulse train with different repetitions and frequencies without the complicated pulse settings of spike-timing-dependent plasticity (STDP). For various learning algorithms in future brain-inspired applications, different switching materials with different bind energies and relaxation times of oxygen ions can be utilized.
机译:电阻随机存取存储器(RRAM)具有模拟神经网络的能力和简单的结构,因此在神经形态工程学中显示出巨大的潜力。为了模仿大脑的学习行为,应该完美地模仿两种类型的神经动作,即短期可塑性(STP)和长期增强(LTP)。在这项工作中,我们提出了一种具有双交换层的独特RRAM单元,其中嵌入了2D材料作为分隔层。在适当的应力电压范围内,可移动的氧离子被单个原子层阻挡,因此,氧离子的随后松弛导致挥发性的开关特性。由于具有这种易变的特性,所提出的设备可以通过具有不同重复和频率的简单脉冲序列来模拟神经动作,STP和LTP,而无需复杂的脉冲时间依赖性可塑性(STDP)脉冲设置。对于未来大脑启发性应用中的各种学习算法,可以使用具有不同结合能和氧离子弛豫时间的不同开关材料。

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