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Interface-type tunable oxygen ion dynamics for physical reservoir computing

Nature Communications, ISSN: 2041-1723, Vol: 14, Issue: 1, Page: 7176
2023
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Beijing National Laboratory of Condensed Matter Physics Reports Findings in Science (Interface-type tunable oxygen ion dynamics for physical reservoir computing)

2023 NOV 21 (NewsRx) -- By a News Reporter-Staff News Editor at Chemicals & Chemistry Daily Daily -- New research on Science is the subject

Article Description

Reservoir computing can more efficiently be used to solve time-dependent tasks than conventional feedforward network owing to various advantages, such as easy training and low hardware overhead. Physical reservoirs that contain intrinsic nonlinear dynamic processes could serve as next-generation dynamic computing systems. High-efficiency reservoir systems require nonlinear and dynamic responses to distinguish time-series input data. Herein, an interface-type dynamic transistor gated by an HfZrO (HZO) film was introduced to perform reservoir computing. The channel conductance of Mott material LaSrMnO (LSMO) can effectively be modulated by taking advantage of the unique coupled property of the polarization process and oxygen migration in hafnium-based ferroelectrics. The large positive value of the oxygen vacancy formation energy and negative value of the oxygen affinity energy resulted in the spontaneous migration of accumulated oxygen ions in the HZO films to the channel, leading to the dynamic relaxation process. The modulation of the channel conductance was found to be closely related to the current state, identified as the origin of the nonlinear response. In the time series recognition and prediction tasks, the proposed reservoir system showed an extremely low decision-making error. This work provides a promising pathway for exploiting dynamic ion systems for high-performance neural network devices.

Bibliographic Details

Liu, Zhuohui; Zhang, Qinghua; Xie, Donggang; Zhang, Mingzhen; Li, Xinyan; Zhong, Hai; Li, Ge; He, Meng; Shang, Dashan; Wang, Can; Gu, Lin; Yang, Guozhen; Jin, Kuijuan; Ge, Chen

Springer Science and Business Media LLC

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

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