DocumentCode
1558064
Title
Energy Management Policies for Energy-Neutral Source-Channel Coding
Author
Castiglione, P. ; Simeone, O. ; Erkip, E. ; Zemen, T.
Author_Institution
Signal & Inf. Process. Dept., Forschungszentrum Telekommunikation Wien (FTW), Vienna, Austria
Volume
60
Issue
9
fYear
2012
fDate
9/1/2012 12:00:00 AM
Firstpage
2668
Lastpage
2678
Abstract
In cyber-physical systems where sensors measure the temporal evolution of a given phenomenon of interest and radio communication takes place over short distances, the energy spent for source acquisition and compression may be comparable with that used for transmission. Additionally, in order to avoid limited lifetime issues, sensors may be powered via energy harvesting and thus collect all the energy they need from the environment. This work addresses the problem of energy allocation over source acquisition/compression and transmission for energy-harvesting sensors. At first, focusing on a single-sensor, energy management policies are identified that guarantee a minimum average distortion while at the same time ensuring the stability of the queue connecting source and channel encoders. It is shown that the identified class of policies is optimal in the sense that it stabilizes the queue whenever this is feasible by any other technique that satisfies the same average distortion constraint. Moreover, this class of policies performs an independent resource optimization for the source and channel encoders. Suboptimal strategies that do not use the energy buffer (battery) or use it only for adapting either source or channel encoder energy allocation are also studied for performance comparison. The problem of optimizing the desired trade-off between average distortion and backlog size is then formulated and solved via dynamic programming tools. Finally, a system with multiple sensors is considered and time-division scheduling strategies are derived that are able to maintain the stability of all data queues and to meet the average distortion constraints at all sensors whenever it is feasible.
Keywords
channel coding; dynamic programming; energy harvesting; energy management systems; queueing theory; scheduling; sensor fusion; source coding; telecommunication network management; wireless sensor networks; cyber-physical system; dynamic programming tool; energy allocation; energy buffer; energy management policy; energy-harvesting sensor; energy-neutral source-channel coding; independent resource optimization; minimum average distortion constraint; multiple sensor; queue connecting source; radiocommunication; source acquisition-compression; temporal evolution; time ensuring stability; time-division scheduling strategy; wireless sensor network; Batteries; Resource management; Sensor phenomena and characterization; Sensor systems; Stability criteria; Wireless sensor networks; energy harvesting; power control; source/channel coding;
fLanguage
English
Journal_Title
Communications, IEEE Transactions on
Publisher
ieee
ISSN
0090-6778
Type
jour
DOI
10.1109/TCOMM.2012.071212.110167
Filename
6242360
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