Understanding the building blocks for an electronic brain

Understanding the building blocks for an electronic brain
Left: A simplified representation of a small part of the brain: neurons receive, process and transmit signals through synapses. Right: a crossbar array, which is a possible architecture of how this could be realized with devices. The memristors, like synapses in the brain, can change their conductivity so that connections can be weakened and strengthened. Credit: Spintronics of Functional Materials group, University of Groningen

Computer bits are binary, with a value of zero or one. By contrast, neurons in the brain can have many internal states, depending on the input that they receive. This allows the brain to process information in a more energy-efficient manner than a computer. University of Groningen (UG) physicists are working on memristors made from niobium-doped strontium titanate, which mimic the function of neurons. Their results were published in the Journal of Applied Physics on 21 October.

UG researcher Anouk Goossens, the first author of the paper, tested memristors made from niobium-doped strontium titanate. The conductivity of the memristors is controlled by an electric field in an analog fashion: "We use the system's ability to switch resistance. By applying voltage pulses, we can control the resistance, and using a low voltage we read out the current in different states. The strength of the pulse determines the resistance in the . We have shown a resistance ratio of at least 1000 to be realizable. We then measured what happened over time." Goossens was especially interested in the time dynamics of the resistance states.

She observed that the duration of the with which the resistance was set determined how long the memory lasted. This could be between one to four hours for pulses lasting between a second and two minutes. Furthermore, she found that after 100 switching cycles, the material showed no signs of fatigue.

"There are different things you could do with this," says Goossens. "By 'teaching' the device in different ways, using different pulses, we can change its behavior."

The fact that the changes over time can also be useful. "These systems can forget, just like the brain. It allows me to use time as a variable parameter." In addition, the devices that Goossens made combine both memory and processing in one device, which is more efficient than traditional computer architecture in which storage (on magnetic hard discs) and processing (in the CPU) are separated.

Goossens conducted the experiments described in the paper during a research project as part of the Master in Nanoscience degree programme at the University of Groningen. Goossens' research project took place within the group of students supervised by Dr. Tamalika Banerjee of Spintronics of Functional Materials. She is now a Ph.D. student in the same group.

Before building brain-like circuits with her device, Goossens plans to conduct experiments to understand what happens within the material. "If we don't know exactly how it works, we can't solve any problems that might occur in these circuits. So we have to understand the physical properties of the material—what does it do, and why?"

Questions that Goossens wants to answer include what parameters influence the states that are achieved. "And if we manufacture 100 of these devices, do they all work the same? If they don't, and there is device-to-device variation, that doesn't have to be a problem. After all, not all elements in the brain are the same."

More information: A. S. Goossens et al, Electric field driven memristive behavior at the Schottky interface of Nb-doped SrTiO3, Journal of Applied Physics (2018). DOI: 10.1063/1.5037965

Journal information: Journal of Applied Physics

Citation: Understanding the building blocks for an electronic brain (2018, October 22) retrieved 28 March 2024 from https://phys.org/news/2018-10-blocks-electronic-brain.html
This document is subject to copyright. Apart from any fair dealing for the purpose of private study or research, no part may be reproduced without the written permission. The content is provided for information purposes only.

Explore further

New metal-semiconductor interface for brain-inspired computing

248 shares

Feedback to editors