Scalability Analysis of a LoRa Network under Imperfect Orthogonality
Aamir Mahmood, Emiliano Sisinni, Lakshmikanth Guntupalli, Ra\'ul, Rond\'on, Syed Ali Hassan, Mikael Gidlund

TL;DR
This paper develops an analytical model for LoRa networks that considers interference from imperfect orthogonality of spreading factors, revealing significant impacts on network performance and device density limits.
Contribution
It introduces the first comprehensive model accounting for both co-SF and inter-SF interference in LoRa networks, improving accuracy of scalability predictions.
Findings
Inter-SF interference reduces success probability by ~10%.
Coverage probability drops by ~15% with inter-SF interference.
Model helps determine maximum device density for target reliability.
Abstract
Low-power wide-area network (LPWAN) technologies are gaining momentum for internet-of-things (IoT) applications since they promise wide coverage to a massive number of battery-operated devices using grant-free medium access. LoRaWAN, with its physical (PHY) layer design and regulatory efforts, has emerged as the widely adopted LPWAN solution. By using chirp spread spectrum modulation with qausi-orthogonal spreading factors (SFs), LoRa PHY offers coverage to wide-area applications while supporting high-density of devices. However, thus far its scalability performance has been inadequately modeled and the effect of interference resulting from the imperfect orthogonality of the SFs has not been considered. In this paper, we present an analytical model of a single-cell LoRa system that accounts for the impact of interference among transmissions over the same SF (co-SF) as well as different…
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Taxonomy
TopicsIoT Networks and Protocols · Wireless Body Area Networks · Energy Harvesting in Wireless Networks
