News & Analysis
/
Article

Brain-like computing systems show neural functions in a single chip

FEB 10, 2023
Artificial intelligence takes a step forward in reconfigurable, 2D ferroelectric devices.
Brain-like computing systems show neural functions in a single chip internal name

Brain-like computing systems show neural functions in a single chip lead image

Inspired by the human brain, neuromorphic computing has been researched extensively to meet the requirements of a data-explosive era. Dense neural networks within the brain enable parallel operations of information processing, memorizing, and learning. While significant breakthroughs in artificial intelligence over recent years have resulted in man-made synaptic and neuronal devices, latency and low power efficiency are still issues.

The development of a neural network in hardware with constrained power and chip area is necessary to obtain comparable capabilities of a human brain. Zhai et al. designed a ferroelectric semiconductor field-effect transistor device which includes neuronal and synaptic functions. Based on room temperature out-of-plane and in-plane dual polarization effects, using 2D In2Se3 materials for the channels, the device mimics neural behavior.

“This reconfigurable device can switch from continuously modulated conductance with nonvolatility for emulating synapses to spiking behavior with volatility for mimicking neurons,” said Su-Ting Han.

It can be used not only in static neural networks, but also in self-adaptive dynamic neural networks.

During the static neural network simulation, the researchers obtained accuracy rates of nearly 72% for expression classification and over 95% for face recognition. The dynamic recognition rate for digital images was nearly 85%, exhibiting a more powerful learning ability and efficiency than the static neural network.

“Our work proves the effectiveness of the reconfiguration method,” said Han. “Furthermore, the ability to design the building blocks on demand opens up new directions for brain-like computers.”

Source: “Reconfigurable 2D-ferroelectric platform for neuromorphic computing,” by Yongbiao Zhai, Peng Xie, Jiahui Hu, Xue Chen, Zihao Feng, Ziyu Lv, Guanglong Ding, Kui Zhou, Ye Zhou, and Su-Ting Han, Applied Physics Reviews (2023). The article can be accessed at https://doi.org/10.1063/5.0131838 .

Related Topics
More Science
/
Article
By uncovering the mechanics of spatially confined metal selenide energy storage, researchers can create better batteries.
/
Article
ToF-SIMS generates mountains of data, and developing analysis tools to sort through it can give researchers faster and more precise results.
/
Article
A new electron spin resonance-atomic force microscopy setup enables single-spin quantum control on nonconductive samples.
/
Article
Orientational order is important for both liquid crystals and cell assemblies, and experimental and computational techniques can replicate in vivo structure in an in vitro setting.