| Literature DB >> 33443417 |
Xuewei Feng1, Sifan Li1, Swee Liang Wong2, Shiwun Tong2, Li Chen1, Panpan Zhang1, Lingfei Wang1, Xuanyao Fong1, Dongzhi Chi2, Kah-Wee Ang1,2.
Abstract
Two-terminal resistive switching devices are commonly plagued with longstanding scientific issues including interdevice variability and sneak current that lead to computational errors and high-power consumption. This necessitates the integration of a separate selector in a one-transistor-one-RRAM (1T-1R) configuration to mitigate crosstalk issue, which compromises circuit footprint. Here, we demonstrate a multi-terminal memtransistor crossbar array with increased parallelism in programming via independent gate control, which allows in situ computation at a dense cell size of 3-4.5 F2 and a minimal sneak current of 0.1 nA. Moreover, a low switching energy of 20 fJ/bit is achieved at a voltage of merely 0.42 V. The architecture is capable of performing multiply-and-accumulate operation, a core computing task for pattern classification. A high MNIST recognition accuracy of 96.87% is simulated owing to the linear synaptic plasticity. Such computing paradigm is deemed revolutionary toward enabling data-centric applications in artificial intelligence and Internet-of-things.Keywords: MoS2; in-memory computing; memtransistor; multi-terminal; self-selective
Year: 2021 PMID: 33443417 DOI: 10.1021/acsnano.0c09441
Source DB: PubMed Journal: ACS Nano ISSN: 1936-0851 Impact factor: 15.881