TL;DR
Dimmer is a self-adaptive network protocol using reinforcement learning to optimize flooding in low-power wireless networks, effectively handling interference and environmental changes without prior expert tuning.
Contribution
This paper introduces Dimmer, a novel self-adaptive flooding protocol that leverages reinforcement learning to automatically tune parameters in dynamic wireless environments.
Findings
Achieves 95.8% reliability under WiFi interference
Outperforms non-adaptive protocols with 27% reliability
Close to handcrafted solutions like Crystal with 99% reliability
Abstract
The last decade saw an emergence of Synchronous Transmissions (ST) as an effective communication paradigm in low-power wireless networks. Numerous ST protocols provide high reliability and energy efficiency in normal wireless conditions, for a large variety of traffic requirements. Recently, with the EWSN dependability competitions, the community pushed ST to harsher and highly-interfered environments, improving upon classical ST protocols through the use of custom rules, hand-tailored parameters, and additional retransmissions. The results are sophisticated protocols, that require prior expert knowledge and extensive testing, often tuned for a specific deployment and envisioned scenario. In this paper, we explore how ST protocols can benefit from self-adaptivity; a self-adaptive ST protocol selects itself its best parameters to (1) tackle external environment dynamics and (2) adapt to…
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