Flexible In-Ga-Zn-N-O synaptic transistors for ultralow-power neuromorphic computing and EEG-based brain-computer interfaces.
Shuangqing FanEnxiu WuMinghui CaoTing XuTong LiuLijun YangJie SuJing LiuPublished in: Materials horizons (2023)
Designing low-power and flexible artificial neural devices with artificial neural networks is a promising avenue for creating brain-computer interfaces (BCIs). Herein, we report the development of flexible In-Ga-Zn-N-O synaptic transistors (FISTs) that can simulate essential and advanced biological neural functions. These FISTs are optimized to achieve ultra-low power consumption under a super-low or even zero channel bias, making them suitable for wearable BCI applications. The effective tunability of synaptic behaviors promotes the realization of associative and non-associative learning, facilitating Covid-19 chest CT edge detection. Importantly, FISTs exhibit high tolerance to long-term exposure under an ambient environment and bending deformation, indicating their suitability for wearable BCI systems. We demonstrate that an array of FISTs can classify vision-evoked EEG signals with up to ∼87.9% and 94.8% recognition accuracy for EMNIST-Digits and MindBigdata, respectively. Thus, FISTs have enormous potential to significantly impact the development of various BCI techniques.
Keyphrases
- resting state
- functional connectivity
- pet ct
- neural network
- white matter
- coronavirus disease
- prefrontal cortex
- heavy metals
- sars cov
- deep learning
- high resolution
- working memory
- computed tomography
- air pollution
- heart rate
- magnetic resonance imaging
- high throughput
- magnetic resonance
- risk assessment
- positron emission tomography
- human health
- machine learning
- high density
- mass spectrometry
- blood pressure
- label free
- climate change
- cerebral ischemia
- solid state
- blood brain barrier
- loop mediated isothermal amplification
- sensitive detection