Title :
Querying Uncertain Minimum in Wireless Sensor Networks
Author :
Ye, Mao ; Lee, Ken C K ; Lee, Wang-Chien ; Liu, Xingjie ; Chen, Meng-Chang
Author_Institution :
Dept. of Comput. Sci. & Eng., Pennsylvania State Univ., University Park, PA, USA
Abstract :
In this paper, we introduce two types of probabilistic aggregation queries, namely, Probabilistic Minimum Value Queries (PMVQ)s and Probabilistic Minimum Node Queries (PMNQ)s. A PMVQ determines possible minimum values among all imprecise sensed data, while a PMNQ identifies sensor nodes that possibly provide minimum values. However, centralized approaches incur a lot of energy from battery-powered sensor nodes and well-studied in-network aggregation techniques that presume precise sensed data are not practical to inherently imprecise sensed data. Thus, to answer PMVQs and PMNQs energy-efficiently, we devised suites of in-network algorithms. For PMVQs, our in-network minimum value screening algorithm (MVS) filters candidate minimum values; and our in-network minimum value aggregation algorithm (MVA) conducts in-network probability calculation. PMNQs requires possible minimum values to be determined a prior, inevitably consuming more energy to evaluate than PMVQs. Accordingly, our one-phase and two-phase in-network algorithms are devised. We also extend the algorithms to answer PMNQ variants. We evaluate all our proposed approaches through cost analysis and simulations.
Keywords :
costing; probability; wireless sensor networks; MVA; MVS filters; PMNQ; PMVQ; battery-powered sensor nodes; cost analysis; cost simulations; in-network aggregation techniques; in-network probability calculation; minimum value aggregation algorithm; probabilistic aggregation queries; probabilistic minimum value queries; querying uncertain minimum; two-phase in-network algorithms; wireless sensor networks; Algorithm design and analysis; Base stations; Optimization; Probabilistic logic; Query processing; Routing; Wireless sensor network; algorithms and performance; data aggregation; minimum queries; uncertain data;
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
DOI :
10.1109/TKDE.2011.166