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RTNinja: A generalized machine learning framework for analyzing random telegraph noise signals in nanoelectronic devices

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cris.virtual.orcid0000-0002-4609-5573
cris.virtual.orcid0000-0002-0402-8225
cris.virtual.orcid0000-0003-3084-2543
cris.virtual.orcid0000-0002-1120-5197
cris.virtualsource.department8b84673b-878f-4c3b-959d-b7cdae2d70d9
cris.virtualsource.departmentf2e648b4-91e6-42de-bb5d-66326414095e
cris.virtualsource.department77d06c14-6a7b-4d80-9c75-962dea483414
cris.virtualsource.department5c84eae4-a73c-478e-b3aa-854fe071efa7
cris.virtualsource.orcid8b84673b-878f-4c3b-959d-b7cdae2d70d9
cris.virtualsource.orcidf2e648b4-91e6-42de-bb5d-66326414095e
cris.virtualsource.orcid77d06c14-6a7b-4d80-9c75-962dea483414
cris.virtualsource.orcid5c84eae4-a73c-478e-b3aa-854fe071efa7
dc.contributor.authorVaranasi, Anirudh
dc.contributor.authorDegraeve, Robin
dc.contributor.authorRoussel, Philippe
dc.contributor.authorMerckling, Clement
dc.contributor.orcidext0000-0002-1120-5197
dc.contributor.orcidext0000-0002-4609-5573
dc.contributor.orcidext0000-0003-3084-2543
dc.date.accessioned2026-05-06T09:03:33Z
dc.date.available2026-05-06T09:03:33Z
dc.date.createdwos2025-12-07
dc.date.issued2025
dc.description.abstractRandom telegraph noise is a prevalent variability phenomenon in nanoelectronic devices, arising from stochastic carrier exchange at defect sites and critically impacting device reliability and performance. Conventional analysis techniques often rely on restrictive assumptions or manual interventions, limiting their applicability to complex, noisy datasets. Here, we introduce RTNinja, a generalized, fully automated machine learning framework for the unsupervised analysis of random telegraph noise signals. RTNinja deconvolves complex signals to identify the number and characteristics of hidden individual sources without requiring prior knowledge of the system. The framework comprises two modular components: LevelsExtractor, which uses Bayesian inference and model selection to denoise and discretize the signal, and SourcesMapper, which infers source configurations through probabilistic clustering and optimization. To evaluate performance, we developed a Monte Carlo simulator that generates labeled datasets spanning broad signal-to-noise ratios and source complexities; across 7000 such datasets, RTNinja consistently demonstrated high-fidelity signal reconstruction and accurate extraction of source amplitudes and activity patterns. Our results demonstrate that RTNinja offers a robust, scalable, and device-agnostic tool for random telegraph noise characterization, enabling large-scale statistical benchmarking, reliability-centric technology qualification, predictive failure modeling, and device physics exploration in next-generation nanoelectronics.
dc.identifier.doi10.1063/5.0295457
dc.identifier.eissn2770-9019
dc.identifier.issn2770-9019
dc.identifier.urihttps://imec-publications.be/handle/20.500.12860/59348
dc.language.isoeng
dc.provenance.editstepusergreet.vanhoof@imec.be
dc.publisherAIP Publishing
dc.source.beginpage046109
dc.source.issue4
dc.source.journalAPL MACHINE LEARNING
dc.source.numberofpages14
dc.source.volume3
dc.subject.keywordsDEFECTS
dc.title

RTNinja: A generalized machine learning framework for analyzing random telegraph noise signals in nanoelectronic devices

dc.typeJournal article
dspace.entity.typePublication
imec.internal.crawledAt2025-12-02
imec.internal.sourcecrawler
imec.internal.wosCreatedAt2026-04-07
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