Self-selective van der Waals heterostructures for large scale memory array

Linfeng Sun(Sungkyunkwan University), Yishu Zhang(Singapore University of Technology and Design), Gyeongtak Han(Sungkyunkwan University), Geunwoo Hwang(Sungkyunkwan University), Jinbao Jiang(Institute for Basic Science), Bomin Joo(Sungkyunkwan University), Kenji Watanabe(National Institute for Materials Science), Takashi Taniguchi(National Institute for Materials Science), Young‐Min Kim(Institute for Basic Science), Woo Jong Yu(Sungkyunkwan University), Bai‐Sun Kong(Sungkyunkwan University), Rong Zhao(Singapore University of Technology and Design), Heejun Yang(Sungkyunkwan University)
Nature Communications
July 18, 2019
Cited by 245Open Access
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Abstract

Abstract The large-scale crossbar array is a promising architecture for hardware-amenable energy efficient three-dimensional memory and neuromorphic computing systems. While accessing a memory cell with negligible sneak currents remains a fundamental issue in the crossbar array architecture, up-to-date memory cells for large-scale crossbar arrays suffer from process and device integration (one selector one resistor) or destructive read operation (complementary resistive switching). Here, we introduce a self-selective memory cell based on hexagonal boron nitride and graphene in a vertical heterostructure. Combining non-volatile and volatile memory operations in the two hexagonal boron nitride layers, we demonstrate a self-selectivity of 10 10 with an on/off resistance ratio larger than 10 3 . The graphene layer efficiently blocks the diffusion of volatile silver filaments to integrate the volatile and non-volatile kinetics in a novel way. Our self-selective memory minimizes sneak currents on large-scale memory operation, thereby achieving a practical readout margin for terabit-scale and energy-efficient memory integration.


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