Litcius/Paper detail

Deep Learning Based Joint Collision Detection and Spreading Factor Allocation in LoRaWAN

Seham Ibrahem Abd Elkarim, M. M. Elsherbini, Ola Mohammed, Wali Ullah Khan, Omer Waqar, Basem M. ElHalawany

202213 citationsDOI

Abstract

Long-range wide area network (LoRaWAN) is a promising low-power network standard that allows for long-distance wireless communication with great power saving. L oRa is based on pure ALOHA protocol for channel access, which causes collisions for the transmitted packets. The collisions may occur in two scenarios, namely the intra-spreading factor (intra-SF) and the inter-spreading factor (inter-SF) interference. Consequently, the SFs assignment is a very critical task for the network performance. This paper investigates a smart SFs assignment technique to reduce collisions probability and improve the network performance. In this work, we exploit different architectures of artificial neural networks for detecting collisions and selecting the optimal SF. The results show that the investigated technique achieves a higher prediction accuracy than traditional machine learning algorithms and enhances the energy consumption of the network.

Topics & Concepts

Joint (building)Computer scienceCollisionFactor (programming language)Artificial intelligenceDeep learningComputer securityEngineeringArchitectural engineeringProgramming languageIoT Networks and ProtocolsBluetooth and Wireless Communication TechnologiesIoT-based Smart Home Systems