CMAS Lab

Indian Institute of Technology Roorkee

Fast Extraction of Per-Unit-Length Parameters of Hybrid Copper-Graphene Interconnects via Generalized Knowledge Based Machine Learning


Journal article


Suyash Kushwaha, Amir Attar, R. Trinchero, F. Canavero, Rohit Sharma, Sourajeet Roy
2021 IEEE 30th Conference on Electrical Performance of Electronic Packaging and Systems (EPEPS), 2021

Semantic Scholar DOI
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APA   Click to copy
Kushwaha, S., Attar, A., Trinchero, R., Canavero, F., Sharma, R., & Roy, S. (2021). Fast Extraction of Per-Unit-Length Parameters of Hybrid Copper-Graphene Interconnects via Generalized Knowledge Based Machine Learning. 2021 IEEE 30th Conference on Electrical Performance of Electronic Packaging and Systems (EPEPS).


Chicago/Turabian   Click to copy
Kushwaha, Suyash, Amir Attar, R. Trinchero, F. Canavero, Rohit Sharma, and Sourajeet Roy. “Fast Extraction of Per-Unit-Length Parameters of Hybrid Copper-Graphene Interconnects via Generalized Knowledge Based Machine Learning.” 2021 IEEE 30th Conference on Electrical Performance of Electronic Packaging and Systems (EPEPS) (2021).


MLA   Click to copy
Kushwaha, Suyash, et al. “Fast Extraction of Per-Unit-Length Parameters of Hybrid Copper-Graphene Interconnects via Generalized Knowledge Based Machine Learning.” 2021 IEEE 30th Conference on Electrical Performance of Electronic Packaging and Systems (EPEPS), 2021.


BibTeX   Click to copy

@article{suyash2021a,
  title = {Fast Extraction of Per-Unit-Length Parameters of Hybrid Copper-Graphene Interconnects via Generalized Knowledge Based Machine Learning},
  year = {2021},
  journal = {2021 IEEE 30th Conference on Electrical Performance of Electronic Packaging and Systems (EPEPS)},
  author = {Kushwaha, Suyash and Attar, Amir and Trinchero, R. and Canavero, F. and Sharma, Rohit and Roy, Sourajeet}
}

Abstract

In this paper, a knowledge-based machine learning technique has been presented for estimating the per-unit-length parameters of hybrid copper-graphene interconnect networks. The salient feature of the proposed technique is its ability to be trained using significantly smaller amounts of full-wave electromagnetic (EM) solver data compared to conventional machine learning regression techniques, such as artificial neural networks (ANNs) and support vector machines (SVMs).