This paper presents the first complete design to apply com-pressive sampling theory to sensor data gathering for large-scale wireless sensor networks. The successful scheme de-veloped in this research is expected to offer fresh frame of mind for research in both compressive sampling appli-cations and large-scale wireless sensor networks. We con-sider the scenario in which a large number of sensor nodes are densely deployed and sensor readings are spatially cor-related. The proposed compressive data gathering is able to reduce global scale communication cost without introducing intensive computation or complicated transmission control. The load balancing characteristic is capable of extending the lifetime of the entire sensor network as well as individual sensors. Furthermore, the proposed scheme can cope with abnormal sensor readings gracefully. We also carry out the analysis of the network capacity of the proposed compres-sive data gathering and validate the analysis through ns-2 simulations. More importantly, this novel compressive data gathering has been tested on real sensor data and the results show the efficiency and robustness of the proposed scheme
Is data on this page outdated, violates copyrights or anything else? Report the problem now and we will take corresponding actions after reviewing your request.