Physics-Informed Neural Networks for Device and Circuit Modeling: A Case Study of NeuroSPICE

By: Chien-Ting Tung, Chenming Hu

Published: 2025-12-30

View on arXiv →
#cs.AI

Abstract

This paper presents the application of Physics-Informed Neural Networks (PINNs) for modeling semiconductor devices and electronic circuits, using NeuroSPICE as a case study. This approach integrates physical laws directly into neural network training, leading to more accurate and physically consistent models, which is crucial for advanced engineering design and optimization.

FEEDBACK

Projects

No projects yet