Battery Health Estimation for IoT Devices using V-Edge Dynamics
Author(s) -
Arjun Kumar,
Mohammad A. Hoque,
Petteri Nurmi,
Michael Pecht,
Sasu Tarkoma,
Junehwa Song
Publication year - 2020
Publication title -
helda (university of helsinki)
Language(s) - English
Resource type - Conference proceedings
ISBN - 978-1-4503-7116-2
DOI - 10.1145/3376897.3377858
Subject(s) - computer science , estimation , dynamics (music) , enhanced data rates for gsm evolution , battery (electricity) , internet of things , embedded system , artificial intelligence , engineering , systems engineering , power (physics) , physics , quantum mechanics , acoustics
Deployments of battery-powered IoT devices have become ubiquitous, monitoring everything from environmental conditions in smart cities to wildlife movements in remote areas. How to manage the life-cycle of sensors in such large-scale deployments is currently an open issue. Indeed, most deployments let sensors operate until they fail and fix or replace the sensors post-hoc. In this paper, we contribute by developing a new approach for facilitating the life-cycle management of large-scale sensor deployments through online estimation of battery health. Our approach relies on so-called V-edge dynamics which capture and characterize instantaneous voltage drops. Experiments carried out on a dataset of battery discharge measurements demonstrate that our approach is capable of estimating battery health with up to $80%$ accuracy, depending on the characteristics of the devices and the processing load they undergo. Our method is particularly well-suited for the sensor devices, operating dedicated tasks, that they have constant discharge during their operation.
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