基于Ag的神经形态设备的可扩展解决方案配方。

IF 4.703 3区 材料科学
Tejaswini S. Rao, Indrajit Mondal, Bharath Bannur, Giridhar U. Kulkarni
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引用次数: 0

摘要

集成性和可扩展性在以大脑为灵感的智能系统的发展中提出了重大问题。在这里,我们报道了一种使用Ag有机前体通过化学脱湿工艺制造的自形成Ag器件,该器件提供了易于加工、可扩展性和灵活性,在一定程度上解决了上述问题。旋涂、前体稀释和溶剂使用的条件各不相同,以获得不同的脱水结构(大致分为双峰和几乎单峰)。进行微观研究以深入了解除湿机制。所选择的双峰和几乎单峰器件的电学行为与它们微观结构的统计分析有关。提出了一种电容模型,将电获得的阈值电压(Vth)与各种微观参数联系起来。在具有代表性的几乎单峰和双峰器件中模拟了突触功能,如短时增强(STP)和长时增强(LTP),双峰器件显示出更好的性能。其中一种认知行为,联想学习,是在一个双峰装置中模拟的。通过制造1000多个器件证明了可扩展性,其中96%的器件表现出开关行为。还制造了一种柔性装置,展示了突触功能(STP和LTP)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A scalable solution recipe for a Ag-based neuromorphic device

A scalable solution recipe for a Ag-based neuromorphic device

A scalable solution recipe for a Ag-based neuromorphic device

A scalable solution recipe for a Ag-based neuromorphic device

Integration and scalability have posed significant problems in the advancement of brain-inspired intelligent systems. Here, we report a self-formed Ag device fabricated through a chemical dewetting process using an Ag organic precursor, which offers easy processing, scalability, and flexibility to address the above issues to a certain extent. The conditions of spin coating, precursor dilution, and use of solvents were varied to obtain different dewetted structures (broadly classified as bimodal and nearly unimodal). A microscopic study is performed to obtain insight into the dewetting mechanism. The electrical behavior of selected bimodal and nearly unimodal devices is related to the statistical analysis of their microscopic structures. A capacitance model is proposed to relate the threshold voltage (Vth) obtained electrically to the various microscopic parameters. Synaptic functionalities such as short-term potentiation (STP) and long-term potentiation (LTP) were emulated in a representative nearly unimodal and bimodal device, with the bimodal device showing a better performance. One of the cognitive behaviors, associative learning, was emulated in a bimodal device. Scalability is demonstrated by fabricating more than 1000 devices, with 96% exhibiting switching behavior. A flexible device is also fabricated, demonstrating synaptic functionalities (STP and LTP).

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来源期刊
Nanoscale Research Letters
Nanoscale Research Letters NANOSCIENCE & NANOTECHNOLOGY-MATERIALS SCIENCE, MULTIDISCIPLINARY
CiteScore
15.00
自引率
0.00%
发文量
110
审稿时长
2.5 months
期刊介绍: Nanoscale Research Letters (NRL) provides an interdisciplinary forum for communication of scientific and technological advances in the creation and use of objects at the nanometer scale. NRL is the first nanotechnology journal from a major publisher to be published with Open Access.
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