用于提高铁电突触晶体管学习精度和降低编程能耗的脉冲程序

IF 2.4 4区 物理与天体物理 Q3 MATERIALS SCIENCE, MULTIDISCIPLINARY Current Applied Physics Pub Date : 2024-08-02 DOI:10.1016/j.cap.2024.07.018
Jae Yeob Lee , Cheol Jun Kim , Minkyung Ku , Tae Hoon Kim , Taehee Noh , Seung Won Lee , Yoonchul Shin , Ji-Hoon Ahn , Bo Soo Kang
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引用次数: 0

摘要

神经形态计算是以并行数据处理和自适应学习为特征的新一代计算技术。提高学习精度的两个重要因素是权重更新的 "动态范围 "和 "线性"。在铁电突触晶体管中,权重更新可以通过调整外加电压来调制。为了提高学习精度和降低编程能耗,电压脉冲序列必须经过精心优化。在这项研究中,我们根据突触器件的特性研究了神经形态计算的学习精度,并根据脉冲程序研究了程序能耗。我们通过改变突触可塑性的脉冲程序,展示了铁电薄膜晶体管模拟电导特性的变化,讨论了提高学习精度的特性,并比较了不同脉冲程序的编程能耗。我们提出了一种对数递增阶梯脉冲程序,它能降低编程能耗并提高学习精度。
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Pulse program for improving learning accuracy and reducing programming energy consumption of ferroelectric synaptic transistor

Neuromorphic computing is a next‐generation computing technology featured by parallel data processing and adaptive learning. Two significant factors that improve learning accuracy are the ‘dynamic range’ and ‘linearity’ of the weight update. In a ferroelectric synaptic transistor, the weight update can be modulated by adjusting the applied voltage. The voltage pulse train should be carefully optimized to improve the learning accuracy and reduce programming energy consumption. In this study, we investigated the learning accuracy of neuromorphic computing based on the characteristics of synaptic devices and the program energy consumption according to pulse programs. We demonstrated changes in the analog conductance characteristics of ferroelectric thin‐film transistors by varying the pulse program for synaptic plasticity, discussed the characteristics for improving learning accuracy, and compared the programming energy consumption according to the pulse programs. We proposed a logarithmic‐incremental‐step pulse program that reduces programming energy consumption and improves learning accuracy.

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来源期刊
Current Applied Physics
Current Applied Physics 物理-材料科学:综合
CiteScore
4.80
自引率
0.00%
发文量
213
审稿时长
33 days
期刊介绍: Current Applied Physics (Curr. Appl. Phys.) is a monthly published international journal covering all the fields of applied science investigating the physics of the advanced materials for future applications. Other areas covered: Experimental and theoretical aspects of advanced materials and devices dealing with synthesis or structural chemistry, physical and electronic properties, photonics, engineering applications, and uniquely pertinent measurement or analytical techniques. Current Applied Physics, published since 2001, covers physics, chemistry and materials science, including bio-materials, with their engineering aspects. It is a truly interdisciplinary journal opening a forum for scientists of all related fields, a unique point of the journal discriminating it from other worldwide and/or Pacific Rim applied physics journals. Regular research papers, letters and review articles with contents meeting the scope of the journal will be considered for publication after peer review. The Journal is owned by the Korean Physical Society.
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