Wu Chaoxing, Kim Tae Whan, Choi Hwan Young, Strukov Dmitri B, Yang J Joshua
Department of Electronic and Computer Engineering, Hanyang University, Seoul, 133-791, Korea.
Department of Electrical and Computer Engineering, University of California at Santa Barbara, Santa Barbara, CA, 93106, USA.
Nat Commun. 2017 Sep 29;8(1):752. doi: 10.1038/s41467-017-00803-1.
If a three-dimensional physical electronic system emulating synapse networks could be built, that would be a significant step toward neuromorphic computing. However, the fabrication complexity of complementary metal-oxide-semiconductor architectures impedes the achievement of three-dimensional interconnectivity, high-device density, or flexibility. Here we report flexible three-dimensional artificial chemical synapse networks, in which two-terminal memristive devices, namely, electronic synapses (e-synapses), are connected by vertically stacking crossbar electrodes. The e-synapses resemble the key features of biological synapses: unilateral connection, long-term potentiation/depression, a spike-timing-dependent plasticity learning rule, paired-pulse facilitation, and ultralow-power consumption. The three-dimensional artificial synapse networks enable a direct emulation of correlated learning and trainable memory capability with strong tolerances to input faults and variations, which shows the feasibility of using them in futuristic electronic devices and can provide a physical platform for the realization of smart memories and machine learning and for operation of the complex algorithms involving hierarchical neural networks.High-density information storage calls for the development of modern electronics with multiple stacking architectures that increase the complexity of three-dimensional interconnectivity. Here, Wu et al. build a stacked yet flexible artificial synapse network using layer-by-layer solution processing.
如果能够构建一个模拟突触网络的三维物理电子系统,那将是迈向神经形态计算的重要一步。然而,互补金属氧化物半导体架构的制造复杂性阻碍了三维互连性、高器件密度或灵活性的实现。在此,我们报道了柔性三维人工化学突触网络,其中通过垂直堆叠交叉电极连接两终端忆阻器件,即电子突触(e-突触)。这些e-突触类似于生物突触的关键特征:单向连接、长时程增强/抑制、依赖于脉冲时间的可塑性学习规则、双脉冲易化以及超低功耗。三维人工突触网络能够直接模拟相关学习和具有对输入故障及变化强耐受性的可训练记忆能力,这表明了在未来电子设备中使用它们的可行性,并可为实现智能记忆和机器学习以及运行涉及分层神经网络的复杂算法提供一个物理平台。高密度信息存储需要开发具有多种堆叠架构的现代电子学,这增加了三维互连性的复杂性。在此,吴等人利用逐层溶液处理构建了一个堆叠且柔性的人工突触网络。