Towards battery-free machine learning and inference in underwater environments
File(s)2202.08174v1.pdf (1.83 MB)
Accepted version
Author(s)
Type
Conference Paper
Abstract
This paper is motivated by a simple question: Can we design and build battery-free devices capable of machine learning and inference in underwater environments? An affirmative answer to this question would have significant implications for a new generation of underwater sensing and monitoring applications for environmental monitoring, scientific exploration, and climate/weather prediction.
To answer this question, we explore the feasibility of bridging advances from the past decade in two fields: battery-free networking and low-power machine learning. Our exploration demonstrates that it is indeed possible to enable battery-free inference in underwater environments. We designed a device that can harvest energy from underwater sound, power up an ultra-low-power microcontroller and on-board sensor, perform local inference on sensed measurements using a lightweight Deep Neural Network, and communicate the inference result via backscatter to a receiver. We tested our prototype in an emulated marine bioacoustics application, demonstrating the potential to recognize underwater animal sounds without batteries. Through this exploration, we highlight the challenges and opportunities for making underwater battery-free inference and machine learning ubiquitous.
To answer this question, we explore the feasibility of bridging advances from the past decade in two fields: battery-free networking and low-power machine learning. Our exploration demonstrates that it is indeed possible to enable battery-free inference in underwater environments. We designed a device that can harvest energy from underwater sound, power up an ultra-low-power microcontroller and on-board sensor, perform local inference on sensed measurements using a lightweight Deep Neural Network, and communicate the inference result via backscatter to a receiver. We tested our prototype in an emulated marine bioacoustics application, demonstrating the potential to recognize underwater animal sounds without batteries. Through this exploration, we highlight the challenges and opportunities for making underwater battery-free inference and machine learning ubiquitous.
Date Issued
2022-03-09
Date Acceptance
2022-03-01
Citation
Proceedings of the 23rd Annual International Workshop on Mobile Computing Systems and Applications, 2022, pp.29-34
Publisher
ACM
Start Page
29
End Page
34
Journal / Book Title
Proceedings of the 23rd Annual International Workshop on Mobile Computing Systems and Applications
Copyright Statement
© 2022 Copyright held by the owner/author(s).
Sponsor
Engineering & Physical Science Research Council (E
Identifier
https://dl.acm.org/doi/10.1145/3508396.3512877
Grant Number
EP/W005271/1
Source
HotMobile '22: The 23rd International Workshop on Mobile Computing Systems and Applications
Subjects
cs.LG
cs.LG
eess.SP
Publication Status
Published
Start Date
2022-03-09
Finish Date
2022-03-10
Coverage Spatial
Tempe, Arizona, USA
Date Publish Online
2022-03-09