90% yield production of polymer nano-memristor for in-memory computing

Author:

Zhang BinORCID,Chen Weilin,Zeng Jianmin,Fan Fei,Gu Junwei,Chen Xinhui,Yan Lin,Xie Guangjun,Liu Shuzhi,Yan Qing,Baik Seung Jae,Zhang Zhi-GuoORCID,Chen Weihua,Hou JieORCID,El-Khouly Mohamed E.ORCID,Zhang ZhangORCID,Liu GangORCID,Chen YuORCID

Abstract

AbstractPolymer memristors with light weight and mechanical flexibility are preeminent candidates for low-power edge computing paradigms. However, the structural inhomogeneity of most polymers usually leads to random resistive switching characteristics, which lowers the production yield and reliability of nanoscale devices. In this contribution, we report that by adopting the two-dimensional conjugation strategy, a record high 90% production yield of polymer memristors has been achieved with miniaturization and low power potentials. By constructing coplanar macromolecules with 2D conjugated thiophene derivatives to enhance the ππ stacking and crystallinity of the thin film, homogeneous switching takes place across the entire polymer layer, with fast responses in 32 ns, D2D variation down to 3.16% ~ 8.29%, production yield approaching 90%, and scalability into 100 nm scale with tiny power consumption of ~ 10−15 J/bit. The polymer memristor array is capable of acting as both the arithmetic-logic element and multiply-accumulate accelerator for neuromorphic computing tasks.

Publisher

Springer Science and Business Media LLC

Subject

General Physics and Astronomy,General Biochemistry, Genetics and Molecular Biology,General Chemistry

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