Ajou University repository

Publication Year
2021-10-01
Publisher
John Wiley and Sons Inc
Citation
Small Methods, Vol.5
Keyword
allodyniaconductive atomic force microscopyhyperalgesiamechano-nociceptorMott transitionthresholds
Mesh Keyword
Artificial receptorsConductive atomic force microscopyElectronic deviceFinite element simulationsHuman machine interactionMott transitionsPhysical objectsTemperature-dependent measurementsArtificial IntelligenceFinite Element AnalysisHumansMicroscopy, Atomic ForceMicroscopy, Electron, ScanningModels, BiologicalPain MeasurementSpectrometry, X-Ray EmissionTouch
All Science Classification Codes (ASJC)
Chemistry (all)Materials Science (all)
Abstract
Intelligent touch sensing is now becoming an essential part of various human-machine interactions and communication, including in touchpads, autonomous vehicles, and smart robotics. Usually, sensing of physical objects is enabled by applied force/pressure sensors; however, reported conventional tactile devices are not able to differentiate sharp and blunt objects, although sharp objects can cause unavoidable damage. Therefore, it is central issue to implement electronic devices that can classify sense of touch and simultaneously generate pain signals to avoid further potential damage from sharp objects. Here, concept of force-enabled nociceptive behavior is proposed and demonstrated using vanadium oxide-based artificial receptors. Specifically, versatile criteria of bio-nociceptor like threshold, relaxation, no adaptation, allodynia, and hyperalgesia behaviors are triggered by pointed force, but the device does not mimic any of these by the force applied by blunt objects; thus, the proposed device classifies the intent of touch. Further, supported by finite element simulation, the nanoscale dynamic is unambiguously revealed by conductive atomic force microscopy and results are attributed to the point force-triggered Mott transition, as also confirmed by temperature-dependent measurements. The reported features open a new avenue for developing mechano-nociceptors, which enable a high-level of artificial intelligence within the device to classify physical touch.
ISSN
2366-9608
Language
eng
URI
https://dspace.ajou.ac.kr/dev/handle/2018.oak/32253
DOI
https://doi.org/10.1002/smtd.202100566
Fulltext

Type
Article
Funding
This study was supported through the National Research Foundation of Korea (NRF\u20102018R1D1A1B07049871 and NRF\u20102019R1A2C2003804) of the Ministry of Science and ICT, Republic of Korea. This work was also supported by Ajou University.
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Park, Ji-Yong  Image
Park, Ji-Yong 박지용
Department of Physics
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