Dynamic Link adaptation Based on Coexistence-Fingerprint Detection for WSN
Charbel Nicolas, Michel Marot

TL;DR
This paper introduces a real-time fingerprint detection method for coexistence-aware link adaptation in wireless sensor networks operating in interference-prone ISM bands, significantly improving throughput.
Contribution
It presents FIM, a novel mechanism for on-the-fly interference source identification, enabling adaptive responses to improve WSN performance in noisy environments.
Findings
Throughput increased by up to 100% with FIM
FIM accurately identifies interference sources in real-time
Experimental validation on real testbed with Tmote Sky motes
Abstract
Operating in the ISM band, the wireless sensor network (WSN) risks being interfered by other concurrent networks. Our concerns are the technologies that do not perform listening before transmission such as Bluetooth, and the ones that do not detect other technologies due to their channel sensing techniques like WIFI. To overcome this issue a WSN node should be able to identify the presence of such technologies. This will allow deducing the characteristics of the generated traffic of these technologies, and thus the behavior of the channel can be predicted. These predictions would help to trigger adequate reactions as to avoid or synchronize with the concurrent net- works. Many works exist on link adaptation, but they concern blind adaptations which are unintelligent and solve momentarily the problem that may reappear over time. In this paper, we perform several experiments on a real…
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