Adaptive Energy Management for Self-Sustainable Wearables in Mobile Health

01/16/2022
by   Dina Hussein, et al.
0

Wearable devices that integrate multiple sensors, processors, and communication technologies have the potential to transform mobile health for remote monitoring of health parameters. However, the small form factor of the wearable devices limits the battery size and operating lifetime. As a result, the devices require frequent recharging, which has limited their widespread adoption. Energy harvesting has emerged as an effective method towards sustainable operation of wearable devices. Unfortunately, energy harvesting alone is not sufficient to fulfill the energy requirements of wearable devices. This paper studies the novel problem of adaptive energy management towards the goal of self-sustainable wearables by using harvested energy to supplement the battery energy and to reduce manual recharging by users. To solve this problem, we propose a principled algorithm referred as AdaEM. There are two key ideas behind AdaEM. First, it uses machine learning (ML) methods to learn predictive models of user activity and energy usage patterns. These models allow us to estimate the potential of energy harvesting in a day as a function of the user activities. Second, it reasons about the uncertainty in predictions and estimations from the ML models to optimize the energy management decisions using a dynamic robust optimization (DyRO) formulation. We propose a light-weight solution for DyRO to meet the practical needs of deployment. We validate the AdaEM approach on a wearable device prototype consisting of solar and motion energy harvesting using real-world data of user activities. Experiments show that AdaEM achieves solutions that are within 5 optimal with less than 0.005

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/18/2022

tinyMAN: Lightweight Energy Manager using Reinforcement Learning for Energy Harvesting Wearable IoT Devices

Advances in low-power electronics and machine learning techniques lead t...
research
03/20/2019

EHAAS: Energy Harvesters As A Sensor for Place Recognition on Wearables

A wearable based long-term lifelogging system is desirable for the purpo...
research
07/06/2018

EnTrans:Leveraging Kinetic Energy Harvesting Signal for Transportation Mode Detection

Monitoring the daily transportation modes of an individual provides usef...
research
02/01/2022

ZEL: Net-Zero-Energy Lifelogging System using Heterogeneous Energy Harvesters

We present ZEL, the first net-zero-energy lifelogging system that allows...
research
02/26/2021

ECO: Enabling Energy-Neutral IoT Devices through Runtime Allocation of Harvested Energy

Energy harvesting offers an attractive and promising mechanism to power ...
research
04/30/2023

Multimodal Earable Sensing for Human Energy Expenditure Estimation

Energy Expenditure Estimation (EEE) is vital for maintaining weight, man...
research
07/06/2022

Multimodal Hydrostatic Actuators for Wearable Robots: A Preliminary Assessment of Mass-Saving and Energy-Efficiency Opportunities

Wearable robots are limited by their actuators performances because they...

Please sign up or login with your details

Forgot password? Click here to reset