Home > Press > Physicists build 'electronic synapses' for neural networks
Neuron connections in biological neural networks. CREDIT: MIPT press office |
Abstract:
A team of scientists from the Moscow Institute of Physics and Technology (MIPT) have created prototypes of "electronic synapses" based on ultra-thin films of hafnium oxide (HfO2). These prototypes could potentially be used in fundamentally new computing systems. The paper has been published in the journal Nanoscale Research Letters.
The group of researchers from MIPT have made HfO2-based memristors measuring just 40x40 nm2. The nanostructures they built exhibit properties similar to biological synapses. Using newly developed technology, the memristors were integrated in matrices: in the future this technology may be used to design computers that function similar to biological neural networks.
Memristors (resistors with memory) are devices that are able to change their state (conductivity) depending on the charge passing through them, and they therefore have a memory of their "history". In this study, the scientists used devices based on thin-film hafnium oxide, a material that is already used in the production of modern processors. This means that this new lab technology could, if required, easily be used in industrial processes.
"In a simpler version, memristors are promising binary non-volatile memory cells, in which information is written by switching the electric resistance - from high to low and back again. What we are trying to demonstrate are much more complex functions of memristors - that they behave similar to biological synapses," said Yury Matveyev, the corresponding author of the paper, and senior researcher of MIPT's Laboratory of Functional Materials and Devices for Nanoelectronics, commenting on the study.
Synapses - the key to learning and memory
A synapse is point of connection between neurons, the main function of which is to transmit a signal (a spike - a particular type of signal, see fig. 2) from one neuron to another. Each neuron may have thousands of synapses, i.e. connect with a large number of other neurons. This means that information can be processed in parallel, rather than sequentially (as in modern computers). This is the reason why "living" neural networks are so immensely effective both in terms of speed and energy consumption in solving large range of tasks, such as image / voice recognition, etc.
Over time, synapses may change their "weight", i.e. their ability to transmit a signal. This property is believed to be the key to understanding the learning and memory functions of thebrain.
From the physical point of view, synaptic "memory" and "learning" in the brain can be interpreted as follows: the neural connection possesses a certain "conductivity", which is determined by the previous "history" of signals that have passed through the connection. If a synapse transmits a signal from one neuron to another, we can say that it has high "conductivity", and if it does not, we say it has low "conductivity". However, synapses do not simply function in on/off mode; they can have any intermediate "weight" (intermediate conductivity value). Accordingly, if we want to simulate them using certain devices, these devices will also have to have analogous characteristics.
The memristor as an analogue of the synapse
As in a biological synapse, the value of the electrical conductivity of a memristor is the result of its previous "life" - from the moment it was made.
There is a number of physical effects that can be exploited to design memristors. In this study, the authors used devices based on ultrathin-film hafnium oxide, which exhibit the effect of soft (reversible) electrical breakdown under an applied external electric field. Most often, these devices use only two different states encoding logic zero and one. However, in order to simulate biological synapses, a continuous spectrum of conductivities had to be used in the devices.
"The detailed physical mechanism behind the function of the memristors in question is still debated. However, the qualitative model is as follows: in the metal-ultrathin oxide-metal structure, charged point defects, such as vacancies of oxygen atoms, are formed and move around in the oxide layer when exposed to an electric field. It is these defects that are responsible for the reversible change in the conductivity of the oxide layer," says the co-author of the paper and researcher of MIPT's Laboratory of Functional Materials and Devices for Nanoelectronics, Sergey Zakharchenko.
The authors used the newly developed "analogue" memristors to model various learning mechanisms ("plasticity") of biological synapses. In particular, this involved functions such as long-term potentiation (LTP) or long-term depression (LTD) of a connection between two neurons. It is generally accepted that these functions are the underlying mechanisms of memory in the brain.
The authors also succeeded in demonstrating a more complex mechanism - spike-timing-dependent plasticity, i.e. the dependence of the value of the connection between neurons on the relative time taken for them to be "triggered". It had previously been shown that this mechanism is responsible for associative learning - the ability of the brain to find connections between different events.
To demonstrate this function in their memristor devices, the authors purposefully used an electric signal which reproduced, as far as possible, the signals in living neurons, and they obtained a dependency very similar to those observed in living synapses (see fig. 3).
These results allowed the authors to confirm that the elements that they had developed could be considered a prototype of the "electronic synapse", which could be used as a basis for the hardware implementation of artificial neural networks.
"We have created a baseline matrix of nanoscale memristors demonstrating the properties of biological synapses. Thanks to this research, we are now one step closer to building an artificial neural network. It may only be the very simplest of networks, but it is nevertheless a hardware prototype," said the head of MIPT's Laboratory of Functional Materials and Devices for Nanoelectronics, Andrey Zenkevich.
####
For more information, please click here
Contacts:
Valerii Roizen
929-992-2721
Copyright © Moscow Institute of Physics and Technology
If you have a comment, please Contact us.Issuers of news releases, not 7th Wave, Inc. or Nanotechnology Now, are solely responsible for the accuracy of the content.
Related News Press |
News and information
Beyond wires: Bubble technology powers next-generation electronics:New laser-based bubble printing technique creates ultra-flexible liquid metal circuits November 8th, 2024
Nanoparticle bursts over the Amazon rainforest: Rainfall induces bursts of natural nanoparticles that can form clouds and further precipitation over the Amazon rainforest November 8th, 2024
Nanotechnology: Flexible biosensors with modular design November 8th, 2024
Exosomes: A potential biomarker and therapeutic target in diabetic cardiomyopathy November 8th, 2024
Hardware
The present and future of computing get a boost from new research July 21st, 2023
Brain-Computer Interfaces
Taking salt out of the water equation October 7th, 2022
New brain-like computing device simulates human learning: Researchers conditioned device to learn by association, like Pavlov's dog April 30th, 2021
Possible Futures
Nanotechnology: Flexible biosensors with modular design November 8th, 2024
Exosomes: A potential biomarker and therapeutic target in diabetic cardiomyopathy November 8th, 2024
Turning up the signal November 8th, 2024
Nanofibrous metal oxide semiconductor for sensory face November 8th, 2024
Chip Technology
Nanofibrous metal oxide semiconductor for sensory face November 8th, 2024
New discovery aims to improve the design of microelectronic devices September 13th, 2024
Groundbreaking precision in single-molecule optoelectronics August 16th, 2024
Nanoelectronics
Interdisciplinary: Rice team tackles the future of semiconductors Multiferroics could be the key to ultralow-energy computing October 6th, 2023
Key element for a scalable quantum computer: Physicists from Forschungszentrum Jülich and RWTH Aachen University demonstrate electron transport on a quantum chip September 23rd, 2022
Reduced power consumption in semiconductor devices September 23rd, 2022
Atomic level deposition to extend Moore’s law and beyond July 15th, 2022
Discoveries
Breaking carbon–hydrogen bonds to make complex molecules November 8th, 2024
Exosomes: A potential biomarker and therapeutic target in diabetic cardiomyopathy November 8th, 2024
Turning up the signal November 8th, 2024
Nanofibrous metal oxide semiconductor for sensory face November 8th, 2024
Announcements
Nanotechnology: Flexible biosensors with modular design November 8th, 2024
Exosomes: A potential biomarker and therapeutic target in diabetic cardiomyopathy November 8th, 2024
Turning up the signal November 8th, 2024
Nanofibrous metal oxide semiconductor for sensory face November 8th, 2024
Interviews/Book Reviews/Essays/Reports/Podcasts/Journals/White papers/Posters
Beyond wires: Bubble technology powers next-generation electronics:New laser-based bubble printing technique creates ultra-flexible liquid metal circuits November 8th, 2024
Nanoparticle bursts over the Amazon rainforest: Rainfall induces bursts of natural nanoparticles that can form clouds and further precipitation over the Amazon rainforest November 8th, 2024
Nanotechnology: Flexible biosensors with modular design November 8th, 2024
Exosomes: A potential biomarker and therapeutic target in diabetic cardiomyopathy November 8th, 2024
Artificial Intelligence
New quantum encoding methods slash circuit complexity in machine learning November 8th, 2024
Rice research could make weird AI images a thing of the past: New diffusion model approach solves the aspect ratio problem September 13th, 2024
Simulating magnetization in a Heisenberg quantum spin chain April 5th, 2024
Researchers’ approach may protect quantum computers from attacks March 8th, 2024
The latest news from around the world, FREE | ||
Premium Products | ||
Only the news you want to read!
Learn More |
||
Full-service, expert consulting
Learn More |
||