Device Image-IV Mapping using Variational Autoencoder for Inverse Design and Forward Prediction
Thomas Lu, Albert Lu, and Hiu Yung Wong

TL;DR
This paper introduces a variational autoencoder-based framework that learns device physics by mapping structure images to electrical characteristics, enabling inverse design and forward prediction without domain expertise.
Contribution
The novel framework uses stacked VAEs for manifold learning of images and electrical curves, facilitating device modeling and design with minimal prior knowledge.
Findings
Successfully performs inverse design and forward prediction.
Robust against noisy and weak input variables.
Applicable to novel device structures with limited data.
Abstract
This paper demonstrates the learning of the underlying device physics by mapping device structure images to their corresponding Current-Voltage (IV) characteristics using a novel framework based on variational autoencoders (VAE). Since VAE is used, domain expertise is not required and the framework can be quickly deployed on any new device and measurement. This is expected to be useful in the compact modeling of novel devices when only device cross-sectional images and electrical characteristics are available (e.g. novel emerging memory). Technology Computer-Aided Design (TCAD) generated and hand-drawn Metal-Oxide-Semiconductor (MOS) device images and noisy drain-current-gate-voltage curves (IDVG) are used for the demonstration. The framework is formed by stacking two VAEs (one for image manifold learning and one for IDVG manifold learning) which communicate with each other through the…
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Taxonomy
TopicsNon-Destructive Testing Techniques · Machine Learning and ELM · Image Processing Techniques and Applications
