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Energy-aware cross-layer optimization for EEG-based wireless monitoring applications
- Source :
- LCN
- Publication Year :
- 2013
- Publisher :
- IEEE Computer Society, 2013.
-
Abstract
- Body Area Sensor Networks (BASNs) for healthcare applications have gained significant research interests recently due to the growing number of patients with chronic diseases requiring constant monitoring. Because of the limited power source and small form factors, BASNs have distinguished design and operational challenges, particularly focusing on energy optimization. In this paper, an Energy-Delay-Distortion cross-layer design that aims at minimizing the total energy consumption subject to data delay deadline and distortion threshold constraints is proposed. The optimal encoding and transmission energy are computed to minimize the total energy consumption in a delay constrained wireless body area sensor network. This cross-layer framework is proposed, across Application-MAC-Physical layers, under a constraint that all successfully received packets must have their delay smaller than their corresponding delay deadline and with maximum distortion less than the application distortion threshold. Due to the complexity of the optimal-proposed solution, sub-optimal solutions are also proposed. These solutions have close-to-optimal performance with lower complexity. In this context, there is complexity/energy-consumption trade-off, as shown in the simulation results. 2013 IEEE. Qatar National Research Fund Scopus
- Subjects :
- Energy utilization
Optimization
Sensor networks
business.industry
Computer science
Network packet
Real-time computing
Health care
Cross-layer optimization
Network layers
Wireless healthcares
Convex optimization
Total energy consumption
Key distribution in wireless sensor networks
EEG signals
Wireless
Cross layer optimization
Health care application
business
Wireless sensor network
Body area sensor networks
Wireless body area sensor network
Computer network
BASNs
Subjects
Details
- Language :
- English
- Database :
- OpenAIRE
- Journal :
- LCN
- Accession number :
- edsair.doi.dedup.....2fe6cfbb03dc5eeb397e9b6d3525210c