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Three-terminal ferroelectric synapse device with concurrent learning function for artificial neural networks

机译:具有并发学习功能的三端铁电突触装置,用于人工神经网络

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摘要

Spike-timing-dependent synaptic plasticity (STDP) is demonstrated in a synapse device based on a ferroelectric-gate field-effect transistor (FeFET). STDP is a key of the learning functions observed in human brains, where the synaptic weight changes only depending on the spike timing of the pre- and post-neurons. The FeFET is composed of the stacked oxide materials with ZnO/Pr(Zr,Ti)O_3 (PZT)/SrRuO_3. In the FeFET, the channel conductance can be altered depending on the density of electrons induced by the polarization of PZT film, which can be controlled by applying the gate voltage in a non-volatile manner. Applying a pulse gate voltage enables the multi-valued modulation of the conductance, which is expected to be caused by a change in PZT polarization. This variation depends on the height and the duration of the pulse gate voltage. Utilizing these characteristics, symmetric and asymmetric STDP learning functions are successfully implemented in the FeFET-based synapse device by applying the non-linear pulse gate voltage generated from a set of two pulses in a sampling circuit, in which the two pulses correspond to the spikes from the pre- and post-neurons. The three-terminal structure of the synapse device enables the concurrent learning, in which the weight update can be performed without canceling signal transmission among neurons, while the neural networks using the previously reported two-terminal synapse devices need to stop signal transmission for learning.
机译:在基于铁电栅场效应晶体管(FeFET)的突触设备中证明了与突增时间相关的突触可塑性(STDP)。 STDP是在人脑中观察到的学习功能的关键,其中,突触权重仅根据神经元前后的加标时间而变化。 FeFET由具有ZnO / Pr(Zr,Ti)O_3(PZT)/ SrRuO_3的堆叠氧化物材料组成。在FeFET中,可以根据由PZT膜的极化感应的电子密度来改变沟道电导,可以通过以非易失性方式施加栅极电压来控制其密度。施加脉冲栅极电压可以实现电导的多值调制,这有望由PZT极化的变化引起。这种变化取决于脉冲栅极电压的高度和持续时间。利用这些特性,通过在采样电路中施加由一组两个脉冲产生的非线性脉冲门电压,在基于FeFET的突触设备中成功实现了对称和非对称STDP学习功能,其中两个脉冲对应于尖峰来自前神经元和后神经元。突触设备的三端结构实现了并发学习,其中可以在不取消神经元之间信号传输的情况下执行权重更新,而使用先前报告的两端突触设备的神经网络需要停止信号传输以进行学习。

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  • 来源
    《Journal of Applied Physics》 |2012年第12期|p.124108.1-124108.6|共6页
  • 作者单位

    Advanced Technology Research Laboratories, Panasonic Corporation, Seika, Kyoto 619-0237, Japan;

    Advanced Technology Research Laboratories, Panasonic Corporation, Seika, Kyoto 619-0237, Japan;

    Advanced Technology Research Laboratories, Panasonic Corporation, Seika, Kyoto 619-0237, Japan;

    School of Life Science and Systems Engineering, Kyushu Institute of Technology, Wakamatsu-ku,Kitakyushu 808-0196,Japan;

    Advanced Technology Research Laboratories, Panasonic Corporation, Seika, Kyoto 619-0237, Japan;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);
  • 原文格式 PDF
  • 正文语种 eng
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