Thursday, May 26, 2022
SCIENMAG: Latest Science and Health News
No Result
View All Result
  • Login
  • HOME PAGE
  • BIOLOGY
  • CHEMISTRY AND PHYSICS
  • MEDICINE
    • Cancer
    • Infectious Emerging Diseases
  • SPACE
  • TECHNOLOGY
  • CONTACT US
  • HOME PAGE
  • BIOLOGY
  • CHEMISTRY AND PHYSICS
  • MEDICINE
    • Cancer
    • Infectious Emerging Diseases
  • SPACE
  • TECHNOLOGY
  • CONTACT US
No Result
View All Result
Scienmag - Latest science news from science magazine
No Result
View All Result
Home SCIENCE NEWS Technology and Engineering

Development of low-power and high-efficiency artificial sensory neurons

April 8, 2022
in Technology and Engineering
0
Share on FacebookShare on Twitter

Currently, AI services spread rapidly in daily life and in all industries. These services are enabled by connecting AI centers and terminals such as mobile devices, PCs, etc. This method, however, increases the burden on the environment by consuming a lot of power not only to drive the AI ​​system but also to transmit data. In times of war or disasters, it may become useless due to the power collapse and network failures, the consequences of which may be even more serious if it is an AI service in the life and safety field. As a next-generation artificial intelligence technology that can overcome these weaknesses, low-power and high-efficiency ‘in-sensor computing’ technology that mimics the information processing mechanism of the human nervous system is drawing attention

In-sensor computing technology

Credit: Korea Institute of Science and Technology

Currently, AI services spread rapidly in daily life and in all industries. These services are enabled by connecting AI centers and terminals such as mobile devices, PCs, etc. This method, however, increases the burden on the environment by consuming a lot of power not only to drive the AI ​​system but also to transmit data. In times of war or disasters, it may become useless due to the power collapse and network failures, the consequences of which may be even more serious if it is an AI service in the life and safety field. As a next-generation artificial intelligence technology that can overcome these weaknesses, low-power and high-efficiency ‘in-sensor computing’ technology that mimics the information processing mechanism of the human nervous system is drawing attention

The Korea Institute of Science and Technology (KIST, President Seok-Jin Yoon) announced that its team led by Dr. Suyoun Lee (Center for Neuromorphic Engineering) has succeeded in developing ‘artificial sensory neurons’ that will be the key to the practical use of in-sensor computing. Neurons refine vast external stimuli (received by sensory organs such as eyes, nose, mouth, ears, and skin) into information in the form of spikes; and therefore, play an important role in enabling the brain to quickly integrate and perform complex tasks such as cognition, learning, reasoning, prediction, and judgment with little energy.

The Ovonic threshold switch (OTS) is a two-terminal switching device that maintains a high resistance state (10-100 MΩ) below the switching voltage, and exhibits a sharp decrease in resistance above the switching voltage. In a precedent study, the team developed an artificial neuron device that mimics the action of neurons (integrate-and-fire) that generates a spike signal when the input signal exceeds a specific intensity.

This study, furthermore, introduces a 3-terminal Ovonic Threshold Switch (3T-OTS) device that can control the switching voltage in order to simulate the behavior of neurons and quickly find and abstract patterns among vast amounts of data input to sensory organs. By connecting a sensor to the third electrode of the 3T-OTS device, which converts external stimuli into voltage, it was possible to realize a sensory neuron device that changes the spike patterns according to the external stimuli.

The research team succeeded in realizing an artificial visual neuron device that mimics the information processing method of human sensory organs, by combining a 3T-OTS and a photodiode. In addition, by connecting an artificial visual neuron device with an artificial neural network that mimics the visual center of the brain, the team could distinguish COVID-19 infections from viral pneumonia with an accuracy of about 86.5% through image learning of chest X-rays.

Dr Suyoun Lee, Director of the KIST Center for Neuromorphic Engineering, said, “This artificial sensory neuron device is a platform technology that can implement various sensory neuron devices such as sight and touch, by connecting with existing sensors. It is a crucial building block for in-sensor computing technology.” He also explained the significance of the research that “will make a great contribution to solving various social problems related to life and safety, such as, developing a medical imaging diagnostic system that can diagnose simultaneously with examinations, predicting acute heart disease through time-series pattern analysis of pulse and blood pressure, and realizing extrasensory ability to detect vibrations outside the audible frequency to prevent building collapse accidents, earthquakes, tsunamis, etc.”.

###

KIST was established in 1966 as the first government-funded research institute to establish a national development strategy based on science and technology and disseminate various industrial technologies to develop major industries. KIST is now raising Korean science and technology status through world-leading innovative research and development. For more information, please visit our website at https://eng.kist.re.kr/kist_eng_renew/

This work was supported by the KIST Institutional Program, as well as by the Future Semiconductor New Device Source Technology Development Program and the Next Generation Intelligence Semiconductor Technology Development Program funded by the Ministry of Science and ICT(Minister: Lim, Hyesook). The research results were published in the latest issue of the ‘Nano Letters’ (IF: 11.189, top 9.062% of the JCR field), an authoritative journal in the fields of nanoscience and nanotechnology.



Journal

Nano Letters

DOI

10.1021/acs.nanolett.1c04125

Article Title

Three-Terminal Ovonic Threshold Switch (3T-OTS) with Tunable Threshold Voltage for Versatile Artificial Sensory Neurons

Article Publication Date

13-Jan-2022

Tags: ArtificialdevelopmenthighefficiencylowpowerNeuronssensory
Share26Tweet16Share4ShareSendShare
  • Bronze Age Shoes

    Climate change reveals unique artefacts in melting ice patches

    69 shares
    Share 28 Tweet 17
  • Danish astrophysics student discovers link between global warming and locally unstable weather

    67 shares
    Share 27 Tweet 17
  • The Cinderella Project: The right to see yourself in the mirror and like what you see

    66 shares
    Share 26 Tweet 17
  • Simple, inexpensive diagnostic technology to combat global threat of African Swine Fever

    66 shares
    Share 26 Tweet 17
  • University of Kentucky receives renewed $11.4 million grant to further cancer research

    66 shares
    Share 26 Tweet 17
  • Tiny robotic crab is smallest-ever remote-controlled walking robot

    65 shares
    Share 26 Tweet 16
ADVERTISEMENT

About us

We bring you the latest science news from best research centers and universities around the world. Check our website.

Latest NEWS

Data contradict fears of COVID-19 vaccine effects on pregnancy and fertility

Charging a green future: Latest advancement in lithium-ion batteries could make them ubiquitous

Long-duration energy storage beats the challenge of week-long wind-power lulls

Subscribe to Blog via Email

Enter your email address to subscribe to this blog and receive notifications of new posts by email.

Join 188 other subscribers

© 2022 Scienmag- Science Magazine: Latest Science News.

No Result
View All Result
  • HOME PAGE
  • BIOLOGY
  • CHEMISTRY AND PHYSICS
  • MEDICINE
    • Cancer
    • Infectious Emerging Diseases
  • SPACE
  • TECHNOLOGY
  • CONTACT US

© 2022 Scienmag- Science Magazine: Latest Science News.

Welcome Back!

Login to your account below

Forgotten Password?

Retrieve your password

Please enter your username or email address to reset your password.

Log In
Posting....