DocumentCode
11391
Title
SmartDC: Mobility Prediction-Based Adaptive Duty Cycling for Everyday Location Monitoring
Author
Yohan Chon ; Talipov, Elmurod ; Hyojeong Shin ; Hojung Cha
Author_Institution
Dept. of Comput. Sci., Yonsei Univ., Seoul, South Korea
Volume
13
Issue
3
fYear
2014
fDate
Mar-14
Firstpage
512
Lastpage
525
Abstract
Monitoring a user´s mobility during daily life is an essential requirement in providing advanced mobile services. While extensive attempts have been made to monitor user mobility, previous work has rarely addressed issues with predictions of temporal behavior in real deployment. In this paper, we introduce SmartDC, a mobility prediction-based adaptive duty cycling scheme to provide contextual information about a user´s mobility: time-resolved places and paths. Unlike previous approaches that focused on minimizing energy consumption for tracking raw coordinates, we propose efficient techniques to maximize the accuracy of monitoring meaningful places with a given energy constraint. SmartDC comprises unsupervised mobility learner, mobility predictor, and Markov decision process-based adaptive duty cycling. SmartDC estimates the regularity of individual mobility and predicts residence time at places to determine efficient sensing schedules. Our experiment results show that SmartDC consumes 81 percent less energy than the periodic sensing schemes, and 87 percent less energy than a scheme employing context-aware sensing, yet it still correctly monitors 90 percent of a user´s location changes within a 160-second delay.
Keywords
Markov processes; mobile computing; unsupervised learning; Markov decision process-based adaptive duty cycling; SmartDC; advanced mobile services; context-aware sensing; contextual information; energy consumption; everyday location monitoring; mobility prediction-based adaptive duty cycling scheme; mobility predictor; unsupervised mobility learner; Accuracy; Energy consumption; Global Positioning System; Humans; IEEE 802.11 Standards; Monitoring; Sensors; Location; adaptive sensing; energy efficient; mobility learning; mobility prediction;
fLanguage
English
Journal_Title
Mobile Computing, IEEE Transactions on
Publisher
ieee
ISSN
1536-1233
Type
jour
DOI
10.1109/TMC.2013.14
Filename
6412671
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