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High-Stability Ionic Conductive Filtering Transistors for Bio-Inspired Signal Processing

  • Wanrong Liu
  • , Jingwen Wang
  • , Pengshan Xie
  • , Xiangxiang Feng
  • , Yunchao Xu
  • , Chenxing Jin
  • , Xiaofang Shi
  • , Ruihan Li
  • , Johnny C. Ho*
  • , Junliang Yang*
  • , Jia Sun*
  • *Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

Applying low-pass filters in satellite communications effectively eliminates unwanted high-frequency signals and noise during image capture, mirroring the human brain's selective filtering of sensory stimuli. To enhance the efficiency of signal processing for remote sensing images, a neuromorphic information processing array based on oxide field-effect transistors are developed with HfO2-lithium aluminium germanium phosphate (LAGP)-HfO2 stacked dielectric (HLH FETs). The Li-ion solid-state electrolytes are stabilized in complex environments (extreme temperature and magnetic field) due to the protective sandwich structure. Meanwhile, the excellent insulating properties and Li-ion isolation effect of the high-k dielectric layer ensure a long-term reliable neuromorphic response for low-pass filtering (over one year in air). Hardware modules derived from HLH FETs are not only applicable to image processing but also show promising potential in edge computing and artificial intelligence, facilitating pattern recognition and noise reduction through biomimetic low-pass filtering functions. This innovative approach offers a new solution for modern satellite remote sensing technology and signal processing.

Original languageEnglish
Article number2502874
JournalSmall
Volume21
Issue number31
DOIs
StatePublished - 7 Aug 2025
Externally publishedYes

Keywords

  • low-pass filtering
  • neuromorphic computing
  • signal processing
  • stacked dielectric

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