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磺化聚苯胺网络中的原位储层计算

In-Materio Reservoir Computing in a Sulfonated Polyaniline Network.

作者信息

Usami Yuki, van de Ven Bram, Mathew Dilu G, Chen Tao, Kotooka Takumi, Kawashima Yuya, Tanaka Yuichiro, Otsuka Yoichi, Ohoyama Hiroshi, Tamukoh Hakaru, Tanaka Hirofumi, van der Wiel Wilfred G, Matsumoto Takuya

机构信息

Department of Chemistry, Graduate School of Science, Osaka University, 1-1 Machikaneyama, Toyonaka, Osaka, 5600043, Japan.

Department of Human Intelligence Systems, Graduate School of Life Science and Systems Engineering, Kyushu Institute of Technology (Kyutech), 2-4 Hibikino, Wakamatsu, Kitakyushu, 8080196, Japan.

出版信息

Adv Mater. 2021 Dec;33(48):e2102688. doi: 10.1002/adma.202102688. Epub 2021 Sep 17.

Abstract

A sulfonated polyaniline (SPAN) organic electrochemical network device (OEND) is fabricated using a simple drop-casting method on multiple Au electrodes for use in reservoir computing (RC). The SPAN network has humidity-dependent electrical properties. Under high humidity, the SPAN OEND exhibits mainly ionic conduction, including charging of an electric double layer and ionic diffusion. The nonlinearity and hysteresis of the current-voltage characteristics progressively increase with increasing humidity. The rich dynamic output behavior indicates wide variations for each electrode, which improves the RC performance because of the disordered network. For RC, waveform generation and short-term memory tasks are realized by a linear combination of outputs. The waveform task accuracy and memory capacity calculated from a short-term memory task reach 90% and 33.9, respectively. Improved spoken-digit classification is realized with 60% accuracy by only 12 outputs, demonstrating that the SPAN OEND can manage time series dynamic data operation in RC owing to a combination of rich dynamic and nonlinear electronic properties. The results suggest that SPAN-based electrochemical systems can be applied for material-based computing, by exploiting their intrinsic physicochemical behavior.

摘要

采用简单的滴铸法在多个金电极上制备了一种磺化聚苯胺(SPAN)有机电化学网络器件(OEND),用于储层计算(RC)。SPAN网络具有湿度依赖的电学性质。在高湿度下,SPAN OEND主要表现出离子传导,包括双电层充电和离子扩散。电流-电压特性的非线性和滞后现象随着湿度的增加而逐渐增强。丰富的动态输出行为表明每个电极存在广泛的变化,由于网络无序,这提高了RC性能。对于RC,波形生成和短期记忆任务通过输出的线性组合来实现。从短期记忆任务计算得到的波形任务准确率和记忆容量分别达到90%和33.9。仅通过12个输出就实现了60%准确率的改进语音数字分类,这表明SPAN OEND由于丰富的动态和非线性电子特性的结合,能够在RC中管理时间序列动态数据操作。结果表明,基于SPAN的电化学系统可以通过利用其内在的物理化学行为应用于基于材料的计算。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/504b/11469268/b9fb6f1a266e/ADMA-33-2102688-g001.jpg

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