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PAPER DOI: 10.1109/IRPS48228.2024.10529340

technical paper

IRPS 2024 Main Conference

April 17, 2024

Dallas, United States

Deep Learning-Assisted Trap Extraction Method from Noise Power Spectral Density for MOSFETs

keywords:

power spectral density

trap extraction

deep learning

A novel deep learning-assisted trap extraction method is proposed to extract trap spatial and energetic distribution from the noise power spectral density (PSD). The method comprises two steps: 1) rough extraction using a Convolutional Neural Network and 2) refinement using a Backpropagation Optimization network. This automated approach achieves precise trap extraction with a mean difference as low as 1.5x.  The method is applied to a practical case and successfully extracts the trap distribution.

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