Ultra-Fast Power Module Inductance Estimation using Convolutional Neural Networks
Author:
Affiliation:
1. Aalborg University,AAU Energy,Aalborg,Denmark
Publisher
IEEE
Link
http://xplorestaging.ieee.org/ielx7/10361838/10361943/10361953.pdf?arnumber=10361953
Reference12 articles.
1. Response surface modeling for parasitic extraction for multi-objective optimization of multi-chip power modules (MCPMs)
2. Fast and Accurate Inductance Extraction for Power Module Layout Optimization Using Loop-Based Method
3. Application of FFT-PEEC Method for Nonlinear Inductance Extraction
4. VoxHenry: FFT-Accelerated Inductance Extraction for Voxelized Geometries
5. Current-Bunch: A Fast and Accurate Tool to Extract and Optimize Parasitics of Power Packaging
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