论文标题
全面控制的备忘录
All-Optically Controlled Memristor
论文作者
论文摘要
由于其超高密度的三维整合及其超低能量消耗的可行性,备忘录已成为超越冯内曼神经形态或内存计算的关键候选者。备忘录通常是一种两端电子元件,电导量随外部电刺激而异,并且当电力关闭时可以记住。作为替代方案,可以使用光来调整成员,并赋予备忘录,并具有光子和电子优势的结合。在不同的回忆录中已经实现了光学诱导的死刑的增加和减少。但是,在同一设备中使用光的纪念能力可逆调整仍然是一个巨大的挑战,它严重限制了光电子备忘录的发展。在这里,我们描述了一个完全控制的(AOC)模拟回忆录,其纪念能力仅通过仅改变控制光的波长在连续范围内可逆地调节。我们的备忘录基于相对成熟的半导体材料Ingazno(IGZO)和光诱导的电子捕获和下降的内置通导调谐机理。我们证明,可以在我们的设备中实现依赖于峰值的依赖性可塑性(STDP)学习,这表明其在AOC Spiking神经网络(SNNS)中的潜在应用,用于高效的光电神经形态计算。
Memristors have emerged as key candidates for beyond-von-Neumann neuromorphic or in-memory computing owing to the feasibility of their ultrahigh-density three-dimensional integration and their ultralow energy consumption. A memristor is generally a two-terminal electronic element with conductance that varies nonlinearly with external electric stimuli and can be remembered when the electric power is turned off. As an alternative, light can be used to tune the memconductance and endow a memristor with a combination of the advantages of both photonics and electronics. Both increases and decreases in optically induced memconductance have been realized in different memristors; however, the reversible tuning of memconductance with light in the same device remains a considerable challenge that severely restricts the development of optoelectronic memristors. Here we describe an all-optically controlled (AOC) analog memristor with memconductance that is reversibly tunable over a continuous range by varying only the wavelength of the controlling light. Our memristor is based on the relatively mature semiconductor material InGaZnO (IGZO) and a memconductance tuning mechanism of light-induced electron trapping and detrapping. We demonstrate that spike-timing-dependent plasticity (STDP) learning can be realized in our device, indicating its potential applications in AOC spiking neural networks (SNNs) for highly efficient optoelectronic neuromorphic computing.