DEAMON: Energy-efficient Sensor Monitoring

SECON(2009)

引用 26|浏览29
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摘要
In people-centric opportunistic sensing, people offer their mobile nodes (such as smart phones) as platforms for collecting sensor data. A sensing application distributes sensing 'tasks', which specify what sensor data to collect and under what conditions to report the data back to the application. To perform a task, mobile nodes may use on-board sensors, a body-area network of personal sensors, or sensors from neighboring nodes that volunteer to contribute their sensing resources. In all three cases, continuous sensor monitoring can drain a node's battery. We propose DEAMON (Distributed Energy-Aware MONitoring), an energy-efficient distributed algorithm for long-term sensor monitoring. Our approach assumes only that mobile nodes are tasked to report sensor data under conditions specified by a Boolean expression, and that a network of nearby sensor nodes contribute to monitoring subsets of the task's sensors. Our algorithm to select sensor nodes and to monitor the sensing condition conserves energy of all nodes by limiting sensing and communication operations. We evaluate DEAMON with a stochastic analysis and with simulation results, and show that it should significantly reduce energy consumption.
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关键词
energy efficient distributed algorithm,mobile communication,mobile node,continuous sensor monitoring,condition couserves energy,sensor data,mobile nodes,people centric opportunistic sensing,long-term sensor monitoring,energy-efficient sensor monitoring,personal sensor,energy efficient sensor monitoring,wireless sensor networks,sensor node,nearby sensor node,long term sensor monitoring,body-area network,on-board sensor,distributed energy-aware monitoring,sensor fusion,algorithm design and analysis,distributed algorithm,intelligent sensors,energy efficient,stochastic analysis,body area network,distributed algorithms,energy efficiency
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