A reinforcement learning-based link quality estimation strategy for RPL and its impact on topology management
Emilio Ancillotti, Carlo Vallati, Raffaele Bruno, Enzo Mingozzi

TL;DR
This paper introduces RLProbe, a reinforcement learning-based link quality estimation strategy for RPL in low-power wireless networks, which improves routing reliability and reduces energy consumption through adaptive monitoring.
Contribution
The paper presents RLProbe, a novel RL-driven link quality estimation method that minimizes overhead and enhances responsiveness to topology changes in RPL networks.
Findings
RLProbe reduces packet loss rates effectively.
It enables prompt reaction to link quality variations.
The approach is validated through simulations and real experiments.
Abstract
Over the last few years, standardisation efforts are consolidating the role of the Routing Protocol for LowPower and Lossy Networks (RPL) as the standard routing protocol for IPv6 based Wireless Sensor Networks (WSNs). Although many core functionalities are well defined, others are left implementation dependent. Among them, the definition of an efficient link quality estimation (LQE) strategy is of paramount importance, as it influences significantly both the quality of the selected network routes and nodes' energy consumption. In this paper, we present RLProbe, a novel strategy for link quality monitoring in RPL, which accurately measures link quality with minimal overhead and energy waste. To achieve this goal, RLProbe leverages both synchronous and asynchronous monitoring schemes to maintain up-to-date information on link quality and to promptly react to sudden topology changes, e.g.…
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