A massive sensor sampling data gathering optimization strategy for concurrent multi-criteria target monitoring application

X Song, C Wang, Z Xu, H Zhang - … in Neural Networks–ISNN 2013: 10th …, 2013 - Springer
X Song, C Wang, Z Xu, H Zhang
Advances in Neural Networks–ISNN 2013: 10th International Symposium on Neural …, 2013Springer
The data gathering optimization of the large-scale, collaborative and concurrent multi-task in
the sensing layer of internet of things is very important, especially in the environments where
multiple geographically overlapping wireless sensor networks are deployed. In order to
support large-scale, collaborative and concurrent multi-task monitoring, in this paper, we
propose a massive sensor sampling data gathering optimization strategy in formed virtual
sensor networks to meet various monitoring requirements from different kinds of application …
Abstract
The data gathering optimization of the large-scale, collaborative and concurrent multi-task in the sensing layer of internet of things is very important, especially in the environments where multiple geographically overlapping wireless sensor networks are deployed. In order to support large-scale, collaborative and concurrent multi-task monitoring, in this paper, we propose a massive sensor sampling data gathering optimization strategy in formed virtual sensor networks to meet various monitoring requirements from different kinds of application deployment and simplify the complexity of dealing with heterogeneous sensor nodes. Then, for the massive sensor sampling data gathering on the virtual sensor networks framework, the CH nodes set and update MinMax hierarchical thresholds to restrict the data transmission. Finally, the simulation results show that proposed strategy achieves more energy savings and increase the sensing layer lifetime of internet of things.
Springer
Showing the best result for this search. See all results