How Agile is the Adaptive Data Rate Mechanism of LoRaWAN?
August 28, 2018 Β· Declared Dead Β· π Global Communications Conference
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Authors
Shengyang Li, Usman Raza, Aftab Khan
arXiv ID
1808.09286
Category
cs.NI: Networking & Internet
Citations
101
Venue
Global Communications Conference
Last Checked
4 months ago
Abstract
The LoRaWAN based Low Power Wide Area networks aim to provide long-range connectivity to a large number of devices by exploiting limited radio resources. The Adaptive Data Rate (ADR) mechanism controls the assignment of these resources to individual end-devices by a runtime adaptation of their communication parameters when the quality of links inevitably changes over time. This paper provides a detailed performance analysis of the ADR technique presented in the recently released LoRaWAN Specifications (v1.1). We show that the ADR technique lacks the agility to adapt to the changing link conditions, requiring a number of hours to days to converge to a reliable and energy-efficient communication state. As a vital step towards improving this situation, we then change different control knobs or parameters in the ADR technique to observe their effects on the convergence time.
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