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LoRa Performance Analysis with Superposed Signal Decoding

Jean Michel de Souza Sant'Ana, Arliones Hoeller, Richard Demo Souza, Hirley Alves, Samuel Montejo-Sanchez

2020IEEE Wireless Communications Letters28 citationsDOIOpen Access PDF

Abstract

This letter considers the use of successive interference cancellation (SIC) to decode superposed signals in Long Range (LoRa) networks. We build over a known stochastic geometry model for LoRa networks and include the effect of recovering colliding packets through SIC. We derive closed-form expressions for the successful decoding of packets using SIC taking path loss, fading, noise, and interference into account, while we validate the model by means of Monte Carlo simulations. Results show that SIC-enabled LoRa networks improve worst-case reliability by up to 34%. We show that, for at least one test scenario, SIC increases by 159% the number of served users with the same worst-case reliability level.

Topics & Concepts

Decoding methodsComputer scienceNetwork packetSingle antenna interference cancellationReliability (semiconductor)Interference (communication)Monte Carlo methodAlgorithmRange (aeronautics)Path (computing)SIGNAL (programming language)Electronic engineeringShadow mappingSpread spectrumStochastic geometryReal-time computingEncoding (memory)Detection theorySignal processingSignal-to-noise ratio (imaging)Stochastic processPacket switchingPath lossBit error rateReliability theoryComputer networkFrequency-hopping spread spectrumIoT Networks and ProtocolsAdvanced MIMO Systems OptimizationAge of Information Optimization
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