Organic and perovskite memristors for neuromorphic computing

Hea Lim Park, Tae Woo Lee

Research output: Contribution to journalReview articlepeer-review

74 Scopus citations

Abstract

Organic and perovskite memristors have superior characteristics both in material and structural perspectives, and therefore have been evaluated for possible integration as bio-realistic components of artificial intelligent hardware systems. This application will require the brain-inspired integrated systems that can process and memorize large amounts of complex information; requirements include highly uniform and reliable memristors that can be operated at low energy and integrated at high density. Here, we review the progress in development of organic and perovskite memristors to obtain various synaptic behaviors, with focus on material and underlying mechanism aspects. Then we address various approaches to meet the needs for constructing applications of neuromorphic computing, including low energy consumption, high uniformity and reliability of the memristors, and high-density integration. Lastly, we suggest future research directions toward realizing neuromorphic computing.

Original languageEnglish
Article number106301
JournalOrganic Electronics
Volume98
DOIs
StatePublished - Nov 2021

Keywords

  • Artificial synapse
  • High-density integration
  • Intelligent hardware systems
  • Neuromorphic electronics

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