Better memristors for brain-like computing

Neurone-like junctions made of mixed oxide-based materials could reduce the massive energy consumption of artificial intelligence operations.

Researchers are developing computer hardware for artificial intelligence that allows for more random and simultaneous information transfer and storage, much like the human brain.

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Scientists are getting better at making neurone-like junctions for computers that mimic the human brain’s random information processing, storage and recall. Fei Zhuge of the Chinese Academy of Sciences and colleagues reviewed the latest developments in the design of these ‘memristors’ for the journal Science and Technology of Advanced Materials.

Computers apply artificial intelligence programs to recall previously learned information and make predictions. These programs are extremely energy- and time-intensive: typically, vast volumes of data must be transferred between separate memory and processing units. To solve this, researchers have been developing computer hardware that allows for more random and simultaneous information transfer and storage, much like the human brain.

Electronic circuits in these ‘neuromorphic’ computers include memristors that resemble the synaptic junctions between neurones. Energy flows through a material from one electrode to another, much like a neurone firing a signal across the synapse to the next neurone. Scientists are now finding ways to better tune this intermediate material so the information flow is more stable and reliable.

“Oxides are the most widely used materials in memristors,” says Zhuge. “But oxide memristors have unsatisfactory stability and reliability. Oxide-based hybrid structures can effectively improve this.”

Memristors are usually made of an oxide-based material sandwiched between two electrodes. Researchers are getting better results when they combine two or more layers of different oxide-based materials between the electrodes. When an electrical current flows through the network, it induces ions to drift within the layers. The ion movements ultimately change the memristor’s resistance, which is necessary to send or stop a signal through the junction.

Memristors can be further tuned by changing the compounds used for electrodes or adjusting the intermediate oxide-based materials. Zhuge and his team are currently developing optoelectronic neuromorphic computers based on optically-controlled oxide memristors. Compared to electronic memristors, photonic ones are expected to have higher operation speeds and lower energy consumption. They could be used to construct next generation artificial visual systems with high computing efficiency.

Further information

Fei Zhuge
[email protected]
Ningbo Institute of Industrial Technology
Chinese Academy of Sciences

Dr. Yoshikazu Shinohara
[email protected]
Science and Technology of Advanced Materials
National Institute for Materials Science

 

Published: 08 Mar 2022

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Reference: 

Hybrid oxide brain-inspired neuromorphic devices for hardware implementation of artificial intelligence
Jingrui Wang,Xia Zhuge &Fei Zhuge
Pages 326-344, Published online:14 May 2021
https://doi.org/10.1080/14686996.2021.1911277