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Multiple machine learning approach to characterize two-dimensional nanoelectronic devices via featurization of charge fluctuation

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Abstract
Two-dimensional (2D) layered materials such as graphene, molybdenum disulfide (MoS2), tungsten disulfide (WSe2), and black phosphorus (BP) provide unique opportunities to identify the origin of current fluctuation, mainly arising from their large surface areas compared with those of their bulk counterparts. Among numerous material characterization techniques, nondestructive low-frequency (LF) noise measurement has received significant attention as an ideal tool to identify a dominant scattering origin such as imperfect crystallinity, phonon vibration, interlayer resistance, the Schottky barrier inhomogeneity, and traps and/or defects inside the materials and dielectrics. Despite the benefits of LF noise analysis, however, the large amount of time-resolved current data and the subsequent data fitting process required generally cause difficulty in interpreting LF noise data, thereby limiting its availability and feasibility, particularly for 2D layered van der Waals hetero-structures. Here, we present several model algorithms, which enables the classification of important device information such as the type of channel materials, gate dielectrics, contact metals, and the presence of chemical and electron beam doping using more than 100 LF noise data sets under 32 conditions. Furthermore, we provide insights about the device performance by quantifying the interface trap density and Coulomb scattering parameters. Consequently, the pre-processed 2D array of Mel-frequency cepstral coefficients, converted from the LF noise data of devices undergoing the test, leads to superior efficiency and accuracy compared with that of previous approaches.
Author(s)
이국진남상진지현진최준희진준언김연수나준홍류민열조영훈이혜빈이재우주민규김규태
Issued Date
2021
Type
Article
Keyword
AlgorithmsCrystal defectsDielectricsElectron beamsElectronic devicesGrapheneInhomogeneityInterlayersLayered materialsLF noiseMachine learningMolybdenum disulfideNanoelectronicsNanotechnology devicesNoise measurementNondestructive testingScatteringTungsten disulfideTwo dimensional models
DOI
10.1038/s41699-020-00186-w
URI
https://oak.ulsan.ac.kr/handle/2021.oak/9519
https://ulsan-primo.hosted.exlibrisgroup.com/primo-explore/fulldisplay?docid=TN_cdi_doaj_primary_oai_doaj_org_article_3e001124cfbe40af8b42a1050b945580&context=PC&vid=ULSAN&lang=ko_KR&search_scope=default_scope&adaptor=primo_central_multiple_fe&tab=default_tab&query=any,contains,Multiple%20machine%20learning%20approach%20to%20characterize%20two-dimensional%20nanoelectronic%20devices%20via%20featurization%20of%20charge%20fluctuation&offset=0&pcAvailability=true
Publisher
NPJ 2D MATERIALS AND APPLICATIONS
Location
독일
Language
영어
ISSN
2397-7132
Citation Volume
5
Citation Number
1
Citation Start Page
4
Citation End Page
4
Appears in Collections:
Natural Science > Physics
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