Lobachevsky
University scientists under the supervision of Alexey Mikhailov, head of the
UNN PTRI Laboratory of Thin Film Physics and Technology, are working to develop
an adaptive neural interface that combines a living culture and a neural
network based on memristors. This project is one if the first attempts to
combine a living biological culture with a bio-like neural network based on
memristors. A multi-electrode system will record and stimulate the
bioelectrical activity of a neuron culture that performs the function of
analyzing and classifying the network dynamics of living cells.
"Due to the locality of the memristive effect (such phenomena occur at the nanoscale) and the use of modern standard microelectronic technologies, it will be possible to obtain a large number of neurons and synapses on a single chip. These are our prospects for the future. We can potentially grow a human brain on a chip. At present, we are doing something on a simpler scale: We are trying to create hybrid electronic circuits where some functions are implemented on the basis of traditional electronics (transistors), and some new functions that are difficult to implement in hardware are realized with memristors," said Alexey Mikhailov.
"Due to the locality of the memristive effect (such phenomena occur at the nanoscale) and the use of modern standard microelectronic technologies, it will be possible to obtain a large number of neurons and synapses on a single chip. These are our prospects for the future. We can potentially grow a human brain on a chip. At present, we are doing something on a simpler scale: We are trying to create hybrid electronic circuits where some functions are implemented on the basis of traditional electronics (transistors), and some new functions that are difficult to implement in hardware are realized with memristors," said Alexey Mikhailov.
Currently,
researchers are exploring the possibility of constructing a feedback whereby
the output signal from the memristor network will
be used to stimulate the biological network. It means that for the first time,
the process of learning will be realized for a living cell culture. The living
culture used by the scientists is an artificially grown neuronal culture of
brain cells. In principle, however, researchers can also use a slice of living
tissue.
His
aim of the project is to create compact electronic devices based on memristors
that reproduce the property of synaptic plasticity and function as part of
bio-like neural networks
in conjunction with living biological cultures.
The
use of hybrid neural networks based on memristors opens up amazing prospects.
First, with the help of memristors, it will be possible to implement the
computing power of modern supercomputers on a single chip. It will also be
possible to create robots that manage an artificially grown neuronal culture.
Such "brain-like" electronic systems can be used to replace parts of
the living nervous system in the event of their damage or disease.
The
project's tasks of creating electronic models of artificial neural networks
(ANN), as well as the integration of memristive architectures into the systems
for recording and processing the activity of living biological neural network
structures are fully in line with the current world trends and priorities in
the development of neuromorphic systems.
The
balance in the combination of approaches is the key to successful development
and sustainability of the project. The first (and the main) of these approaches
is to demonstrate the potential of the "traditional" ANN in the form
of a two-layer perceptron based on programmable memristive elements. The key
advantages of the artificial neural network include its multilayer structure,
and hence the ability to solve nonlinear classification problems (based on the
shape of the input signal), which is very important when dealing with complex
bioelectric activity. The hardware implements all artificial network elements
on one board, including the memristive synaptic chip, control electronics and
neuron circuits. In the future, this arrangement will allow researchers to implement the adaptive neural interface in
the form of a compact autonomous device.
The
second approach that the researchers are pursuing in parallel is to find some
alternative solutions for creating non-traditional neural network architectures
where the stochastic nature and the live dynamics of memristive devices play a
key role. These features of memristors make it possible to use them for direct
processing and analysis of nerve cell activity, as well as for developing
plausible physical models of spiking neural networks with self-organization of
memristive connections between neurons. These results make an important
contribution to the achievement of the project goal and lay a groundwork for
the transition to a qualitatively new level in the field of bio-like memrisive
systems.
Provided by: Lobachevsky UniversitySource: Smyleworld Info-Tech
Thanks for the comment and support

