Litcius/Paper detail

Spreading Factor assisted LoRa Localization with Deep Reinforcement Learning

Yaya Etiabi, Mohammed Jouhari, Andreas Burg, El Mehdi Amhoud

202317 citationsDOIOpen Access PDF

Abstract

Most of the developed localization solutions rely on RSSI fingerprinting. However, in the LoRa networks, due to the spreading factor (SF) in the network setting, traditional fingerprinting may lack representativeness of the radio map, leading to inaccurate position estimates. As such, in this work, we propose a novel LoRa RSSI fingerprinting approach that takes into account the SF. The performance evaluation shows the prominence of our proposed approach since we achieved an improvement in localization accuracy by up to 6.67% compared to the state-of-the-art methods. The evaluation has been done using a fully connected deep neural network (DNN) set as the baseline. To further improve the localization accuracy, we propose a deep reinforcement learning model that captures the ever-growing complexity of LoRa networks and copes with their scalability. The obtained results show an improvement of 48.10% in the localization accuracy compared to the baseline DNN model.

Topics & Concepts

Computer scienceReinforcement learningRepresentativeness heuristicScalabilityBaseline (sea)Artificial intelligenceArtificial neural networkDeep learningSet (abstract data type)Deep neural networksMachine learningPosition (finance)BackpropagationPattern recognition (psychology)StatisticsGeologyEconomicsProgramming languageMathematicsOceanographyDatabaseFinanceIndoor and Outdoor Localization TechnologiesIoT Networks and ProtocolsUnderwater Vehicles and Communication Systems