Conference proceeding
Practical modeling and prediction of radio coverage of indoor sensor networks
Proceedings of the 9th ACM/IEEE International Conference on information processing in sensor networks, pp.339-349
IPSN '10
04/12/2010
DOI: 10.1145/1791212.1791252
Abstract
The robust operation of many sensor network applications depends on deploying relays to ensure wireless coverage. Radio mapping aims to predict network coverage based on a small number of link measurements. This problem is particularly challenging in complex indoor environments where walls significantly affect radio signal propagation. Nevertheless, we show that it is feasible to accurately predict coverage through a two-step process: a propagation model is used to predict signal strength at a recipient node, which is then mapped to a coverage prediction. Through an in-depth empirical study, we show that complex models do not necessarily produce accurate estimates of signal strength: there is an important tradeoff between model accuracy and the number of parameters that must be estimated from limited training data. We find that the best performance is achieved by a family of models which classify walls based on their attenuation into a small number of classes and develop an algorithm to perform this classification automatically. Based on these insights, we build a novel Radio Mapping Tool (RMT) for predicting radio converge in indoor environments. Experimental results demonstrate RMT's effectiveness in two buildings: RMT reduces the number of locations where coverage is erroneously predicted to exist by as much as 39% and 54% compared to the classic log-normal radio propagation model.
Details
- Title: Subtitle
- Practical modeling and prediction of radio coverage of indoor sensor networks
- Creators
- Octav Chipara - Washington University in St. LouisGregory Hackmann - Washington University in St. LouisChenyang Lu - Washington University in St. LouisWilliam Smart - Washington University in St. LouisGruia-Catalin Roman - Washington University in St. Louis
- Resource Type
- Conference proceeding
- Publication Details
- Proceedings of the 9th ACM/IEEE International Conference on information processing in sensor networks, pp.339-349
- Series
- IPSN '10
- DOI
- 10.1145/1791212.1791252
- Publisher
- ACM
- Grant note
- DOI: 10.13039/100000097, name: National Center for Research Resources, award: UL1RR024992; DOI: 10.13039/100000144, name: Division of Computer and Network Systems, award: CNS-0627126, CNS-0708460
- Language
- English
- Date published
- 04/12/2010
- Academic Unit
- Computer Science
- Record Identifier
- 9984259472002771
Metrics
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