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On-sensor Printed Machine Learning Classification via Bespoke ADC and Decision Tree Co-Design

Authors :
Armeniakos, Giorgos
Duarte, Paula L.
Pal, Priyanjana
Zervakis, Georgios
Tahoori, Mehdi B.
Soudris, Dimitrios
Publication Year :
2023

Abstract

Printed electronics (PE) technology provides cost-effective hardware with unmet customization, due to their low non-recurring engineering and fabrication costs. PE exhibit features such as flexibility, stretchability, porosity, and conformality, which make them a prominent candidate for enabling ubiquitous computing. Still, the large feature sizes in PE limit the realization of complex printed circuits, such as machine learning classifiers, especially when processing sensor inputs is necessary, mainly due to the costly analog-to-digital converters (ADCs). To this end, we propose the design of fully customized ADCs and present, for the first time, a co-design framework for generating bespoke Decision Tree classifiers. Our comprehensive evaluation shows that our co-design enables self-powered operation of on-sensor printed classifiers in all benchmark cases.<br />Comment: Accepted for publication at the 27th Design, Automation and Test in Europe Conference (DATE'24), Mar 25-27 2024, Valencia, Spain

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2312.01172
Document Type :
Working Paper