Please use this identifier to cite or link to this item: https://doi.org/10.1088/1361-6528/abd655
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dc.titleDeep learning-enabled prediction of 2D material breakdown
dc.contributor.authorHuan, Yan Qi
dc.contributor.authorLiu, Yincheng
dc.contributor.authorGoh, Kuan Eng Johnson
dc.contributor.authorWong, Swee Liang
dc.contributor.authorLau, Chit Siong
dc.date.accessioned2021-10-08T00:35:23Z
dc.date.available2021-10-08T00:35:23Z
dc.date.issued2021-06-25
dc.identifier.citationHuan, Yan Qi, Liu, Yincheng, Goh, Kuan Eng Johnson, Wong, Swee Liang, Lau, Chit Siong (2021-06-25). Deep learning-enabled prediction of 2D material breakdown. NANOTECHNOLOGY 32 (26). ScholarBank@NUS Repository. https://doi.org/10.1088/1361-6528/abd655
dc.identifier.issn09574484
dc.identifier.issn13616528
dc.identifier.urihttps://scholarbank.nus.edu.sg/handle/10635/202309
dc.description.abstractCharacterizing electrical breakdown limits of materials is a crucial step in device development. However, methods for repeatable measurements are scarce in two-dimensional materials, where breakdown studies have been limited to destructive methods. This restricts our ability to fully account for variability in local electronic properties induced by surface contaminants and the fabrication process. To tackle this, we implement a two-step deep-learning model to predict the breakdown mechanism and breakdown voltage of monolayer MoS2 devices with varying channel lengths and resistances using current measured in the low-voltage regime as inputs. A deep neural network (DNN) first classifies between Joule and avalanche breakdown mechanisms using partial current traces from 0 to 20 V. Following this, a convolutional long short-term memory network (CLSTM) predicts breakdown voltages of these classified devices based on partial current traces. We test our model with electrical measurements collected using feedback-control of the applied voltage to prevent device destruction, and show that the DNN classifier achieves an accuracy of 79% while the CLSTM model has a 12% error when requiring only 80% of the current trace as inputs. Our results indicate that information encoded in the current behavior far from the breakdown point can be used for breakdown predictions, which will enable non-destructive and rapid material characterization for 2D material device development.
dc.language.isoen
dc.publisherIOP PUBLISHING LTD
dc.sourceElements
dc.subjectScience & Technology
dc.subjectTechnology
dc.subjectPhysical Sciences
dc.subjectNanoscience & Nanotechnology
dc.subjectMaterials Science, Multidisciplinary
dc.subjectPhysics, Applied
dc.subjectScience & Technology - Other Topics
dc.subjectMaterials Science
dc.subjectPhysics
dc.subjectmachine learning
dc.subjectconvolutional neural network
dc.subjectlong short-term memory
dc.subjectelectric breakdown
dc.subjecttransition metal dichalcogenides
dc.subjectmolybdenum disulfide
dc.subjectfield-effect transistor
dc.subjectFIELD-EFFECT TRANSISTORS
dc.subjectMONOLAYER MOS2
dc.subjectELECTRICAL BREAKDOWN
dc.subjectINTEGRATED-CIRCUITS
dc.subjectGRAPHENE
dc.typeArticle
dc.date.updated2021-10-07T15:46:14Z
dc.contributor.departmentPHYSICS
dc.description.doi10.1088/1361-6528/abd655
dc.description.sourcetitleNANOTECHNOLOGY
dc.description.volume32
dc.description.issue26
dc.published.statePublished
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