Zhang Xuelian, Chen Haohan, Cheng Siqi, Guo Feng, Jie Wenjing, Hao Jianhua
College of Chemistry and Materials Science, Sichuan Normal University, Chengdu 610066, China.
Department of Applied Physics, The Hong Kong Polytechnic University, Hung Hom, Kowloon, Hong Kong 999077, China.
ACS Appl Mater Interfaces. 2022 Oct 5;14(39):44614-44621. doi: 10.1021/acsami.2c14006. Epub 2022 Sep 22.
An artificial synapse is essential for neuromorphic computing which has been expected to overcome the bottleneck of the traditional von-Neumann system. Memristors can work as an artificial synapse owing to their tunable non-volatile resistance states which offer the capabilities of information storage, processing, and computing. In this work, memristors based on two-dimensional (2D) MXene TiC nanosheets sandwiched by Pt electrodes are investigated in terms of resistive switching (RS) characteristics, synaptic functions, and neuromorphic computing. Digital and analog RS behaviors are found to coexist depending on the magnitude of operation voltage. Digital RS behaviors with two resistance states possessing a large switching ratio exceeding 10 can be achieved under a high operation voltage. Analog RS behaviors with a series of resistance states exhibiting a gradual change can be observed at a relatively low operation voltage. Furthermore, artificial synapses can be implemented based on the memristors with the basic synaptic functions, such as long-term plasticity of long-term potentiation and depression and short-term plasticity of the paired-pulse facilitation and depression. Moreover, the "learning-forgetting" experience is successfully emulated based on the artificial synapses. Also, more importantly, the artificial synapses can construct an artificial neural network to implement image recognition. The coexistence of digital and analog RS behaviors in the 2D TiC nanosheets suggests the potential applications in non-volatile memory and neuromorphic computing, which is expected to facilitate simplifying the manufacturing complexity for complex neutral systems where analog and digital switching is essential for information storage and processing.
人工突触对于神经形态计算至关重要,人们期望神经形态计算能够克服传统冯·诺依曼系统的瓶颈。忆阻器因其可调的非易失性电阻状态而可作为人工突触,这些状态具备信息存储、处理和计算能力。在这项工作中,对基于二维(2D)MXene TiC纳米片夹在铂电极之间的忆阻器进行了电阻开关(RS)特性、突触功能和神经形态计算方面的研究。发现数字和模拟RS行为会根据操作电压的大小而共存。在高操作电压下可实现具有两个电阻状态且开关比超过10的大数字RS行为。在相对较低的操作电压下可观察到具有一系列呈逐渐变化的电阻状态的模拟RS行为。此外,基于具有基本突触功能(如长时程增强和抑制的长期可塑性以及双脉冲易化和抑制的短时程可塑性)的忆阻器可实现人工突触。而且,基于人工突触成功模拟了“学习 - 遗忘”体验。更重要的是,人工突触可构建人工神经网络以实现图像识别。二维TiC纳米片中数字和模拟RS行为的共存表明其在非易失性存储器和神经形态计算中的潜在应用,有望有助于简化复杂神经系统的制造复杂性,在这些系统中模拟和数字切换对于信息存储和处理至关重要。