Printed Stochastic Computing Neural Networks
- Printed electronics (PE) offers flexible, extremely low-cost, and on-demand hardware due to its additive manufacturing process, enabling emerging ultra-low-cost applications, including machine learning applications. However, large feature sizes in PE limit the complexity of a machine learning classifier (e.g., a neural network (NN)) in PE. Stochastic computing Neural Networks (SC-NNs) can reducePrinted electronics (PE) offers flexible, extremely low-cost, and on-demand hardware due to its additive manufacturing process, enabling emerging ultra-low-cost applications, including machine learning applications. However, large feature sizes in PE limit the complexity of a machine learning classifier (e.g., a neural network (NN)) in PE. Stochastic computing Neural Networks (SC-NNs) can reduce area in silicon technologies, but still require complex designs due to unique implementation tradeoffs in PE. In this paper, we propose a printed mixed-signal system, which substitutes complex and power-hungry conventional stochastic computing (SC) components by printed analog designs. The printed mixed-signal SC consumes only 35% of power consumption and requires only 25% of area compared to a conventional 4-bit NN implementation. We also show that the proposed mixed-signal SC-NN provides good accuracy for popular neural network classification problems. We consider this work as an important step towards the realization of printed SC-NN hardware for near-sensor-processing.…
Document Type: | Conference Proceeding |
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Conference Type: | Konferenzartikel |
Zitierlink: | https://opus.hs-offenburg.de/5424 | Bibliografische Angaben |
Title (English): | Printed Stochastic Computing Neural Networks |
Conference: | Design, Automation and Test in Europe Conference and Exhibition (DATE), 1-5 Feb. 2021, Grenoble, France (Virtual Conference) |
Author: | Dennis D. Weller, Nathaniel Bleier, Michael Hefenbrock, Jasmin Aghassi-Hagmann![]() |
Year of Publication: | 2021 |
Publisher: | IEEE |
First Page: | 914 |
Last Page: | 919 |
Parent Title (English): | Proceedings of the 2021 Design, Automation & Test in Europe (DATE 2021) |
ISBN: | 978-3-9819263-5-4 (Online) |
ISBN: | 978-1-7281-6336-9 (Print on Demand) |
ISSN: | 1558-1101 (Online) |
ISSN: | 530-1591 (Print on Demand) |
DOI: | https://doi.org/10.23919/DATE51398.2021.9474254 |
Language: | English | Inhaltliche Informationen |
Institutes: | Fakultät Elektrotechnik, Medizintechnik und Informatik (EMI) (ab 04/2019) |
Collections of the Offenburg University: | Bibliografie |
Tag: | electrolyte-gated transistors; neural networks; printed electronics; stochastic computing | Formale Angaben |
Open Access: | Closed Access |
Licence (German): | ![]() |