Lin Yu-Pu, Bennett Christopher H, Cabaret Théo, Vodenicarevic Damir, Chabi Djaafar, Querlioz Damien, Jousselme Bruno, Derycke Vincent, Klein Jacques-Olivier
LICSEN, NIMBE, CEA, CNRS, Université Paris-Saclay, CEA Saclay 91191 Gif-sur-Yvette, France.
Institut d'Electronique Fondamentale, Université Paris-Sud/Paris-Saclay, CNRS, 91405 Orsay, France.
Sci Rep. 2016 Sep 7;6:31932. doi: 10.1038/srep31932.
Multiple modern applications of electronics call for inexpensive chips that can perform complex operations on natural data with limited energy. A vision for accomplishing this is implementing hardware neural networks, which fuse computation and memory, with low cost organic electronics. A challenge, however, is the implementation of synapses (analog memories) composed of such materials. In this work, we introduce robust, fastly programmable, nonvolatile organic memristive nanodevices based on electrografted redox complexes that implement synapses thanks to a wide range of accessible intermediate conductivity states. We demonstrate experimentally an elementary neural network, capable of learning functions, which combines four pairs of organic memristors as synapses and conventional electronics as neurons. Our architecture is highly resilient to issues caused by imperfect devices. It tolerates inter-device variability and an adaptable learning rule offers immunity against asymmetries in device switching. Highly compliant with conventional fabrication processes, the system can be extended to larger computing systems capable of complex cognitive tasks, as demonstrated in complementary simulations.
电子学的多种现代应用需要能够在有限能量下对自然数据执行复杂操作的廉价芯片。实现这一目标的一个设想是将计算和存储融为一体的硬件神经网络与低成本有机电子学相结合。然而,一个挑战是由这类材料构成的突触(模拟存储器)的实现。在这项工作中,我们引入了基于电嫁接氧化还原复合物的坚固、快速可编程、非易失性有机忆阻纳米器件,由于存在广泛的可及中间导电状态,这些器件可实现突触功能。我们通过实验展示了一个能够学习函数的基本神经网络,该网络将四对有机忆阻器用作突触,将传统电子器件用作神经元。我们的架构对由不完善器件导致的问题具有高度弹性。它能容忍器件间的变化,并且一种适应性学习规则可抵御器件开关中的不对称性。该系统与传统制造工艺高度兼容,如补充模拟所示,它可扩展到能够执行复杂认知任务的更大计算系统。