Large-scale wireless sensor networks (WSNs) andInternet-of-Things (IoT) applications involve diverse sensingdevices collecting and transmitting massive amounts of heterogeneousdata. In this paper, we propose a novel compressivedata aggregation and recovery mechanism that reduces the globalcommunication cost without introducing computational overheadat the network nodes. Following the principles of compressivedemixing, each node of the network collects measurement readingsfrom multiple sources and mixes them with readings fromother nodes into a single low-dimensional measurement vector,which is then relayed to other nodes; the constituent signalsare recovered at the sink using convex optimization. Our designachieves significant reduction in the overall network data ratescompared to prior schemes based on (distributed) compressedsensing or compressed sensing with (multiple) side information.Experiments using real large-scale air-quality data demonstratethe superior performance of the proposed framework againststate-of-the-art solutions, with and without the presence ofmeasurement and transmission noise.
Zimos, E, Mota, J, Tsiligianni, E, Rodrigues, M & Deligiannis, N 2018, Data aggregation and recovery for the internet of things: A compressive demixing approach. in 2018 IEEE Wireless Communications and Networking Conference, WCNC 2018: WCNC. vol. 2018-April, pp. 1-6. https://doi.org/10.1109/WCNC.2018.8377196
Zimos, E., Mota, J., Tsiligianni, E., Rodrigues, M., & Deligiannis, N. (2018). Data aggregation and recovery for the internet of things: A compressive demixing approach. In 2018 IEEE Wireless Communications and Networking Conference, WCNC 2018: WCNC (Vol. 2018-April, pp. 1-6) https://doi.org/10.1109/WCNC.2018.8377196
@inproceedings{0a67a1eeee6841888c2fa96999e18c2c,
title = "Data aggregation and recovery for the internet of things: A compressive demixing approach",
abstract = "Large-scale wireless sensor networks (WSNs) andInternet-of-Things (IoT) applications involve diverse sensingdevices collecting and transmitting massive amounts of heterogeneousdata. In this paper, we propose a novel compressivedata aggregation and recovery mechanism that reduces the globalcommunication cost without introducing computational overheadat the network nodes. Following the principles of compressivedemixing, each node of the network collects measurement readingsfrom multiple sources and mixes them with readings fromother nodes into a single low-dimensional measurement vector,which is then relayed to other nodes; the constituent signalsare recovered at the sink using convex optimization. Our designachieves significant reduction in the overall network data ratescompared to prior schemes based on (distributed) compressedsensing or compressed sensing with (multiple) side information.Experiments using real large-scale air-quality data demonstratethe superior performance of the proposed framework againststate-of-the-art solutions, with and without the presence ofmeasurement and transmission noise.",
keywords = "Air-pollution monitoring, Compressive demixing, Internet of things, Smart cities, Wireless sensor networks",
author = "Evangelos Zimos and Jo{\~a}o Mota and Evangelia Tsiligianni and Miguel Rodrigues and Nikolaos Deligiannis",
year = "2018",
month = jun,
day = "8",
doi = "10.1109/WCNC.2018.8377196",
language = "English",
volume = "2018-April",
pages = "1--6",
booktitle = "2018 IEEE Wireless Communications and Networking Conference, WCNC 2018",
}