A multi-timescale synaptic weight based on ferroelectric hafnium zirconium oxide.
Mattia HalterLaura Bégon-LoursMarilyne SousaYouri PopoffUte DrechslerValeria BragagliaBert Jan OffreinPublished in: Communications materials (2023)
Brain-inspired computing emerged as a forefront technology to harness the growing amount of data generated in an increasingly connected society. The complex dynamics involving short- and long-term memory are key to the undisputed performance of biological neural networks. Here, we report on sub-µm-sized artificial synaptic weights exploiting a combination of a ferroelectric space charge effect and oxidation state modulation in the oxide channel of a ferroelectric field effect transistor. They lead to a quasi-continuous resistance tuning of the synapse by a factor of 60 and a fine-grained weight update of more than 200 resistance values. We leverage a fast, saturating ferroelectric effect and a slow, ionic drift and diffusion process to engineer a multi-timescale artificial synapse. Our device demonstrates an endurance of more than 10 10 cycles, a ferroelectric retention of more than 10 years, and various types of volatility behavior on distinct timescales, making it well suited for neuromorphic and cognitive computing.
Keyphrases
- neural network
- body mass index
- weight loss
- physical activity
- weight gain
- air pollution
- working memory
- electronic health record
- molecular dynamics
- multiple sclerosis
- high intensity
- ionic liquid
- nitric oxide
- white matter
- solid state
- prefrontal cortex
- body composition
- resting state
- blood brain barrier
- big data
- functional connectivity