Enhanced adaptive data rate strategies for energy‐efficient Internet of Things communication in LoRaWAN

Author:

Ali Lodhi Muhammad1ORCID,Wang Lei1,Mahmood Khalid2,Farhad Arshad3,Chen Jenhui4,Kumari Saru56ORCID

Affiliation:

1. School of Software Technology Dalian University of Technology Dalian China

2. Graduate School of Intelligent Data Science National Yunlin University of Science and Technology Douliu Taiwan

3. Department of Computer Science FAST‐National University of Computer and Emerging Sciences Islamabad Pakistan

4. Department of Computer Science and Information Engineering Chang Gung University Taoyuan Taiwan

5. Department of Mathematics Chaudhary Charan Singh University Meerut India

6. School of Chemical Engineering and Physical Sciences Lovely Professional University Jalandhar India

Abstract

SummaryThe long‐range wide area network (LoRaWAN) is a standard for the Internet of Things (IoT) because it has low cost, long range, not energy‐intensive, and capable of supporting massive end devices (EDs). The adaptive data rate (ADR) adjusts parameters at both EDs and the network server (NS). This includes modifying the transmission spreading factor (SF) and transmit power (TP) to minimize packet errors and optimize transmission performance at the NS. The ADR managed by NS aims to provide reliable and energy‐efficient resources (e.g., SF and TP) to EDs by monitoring the packets received from the EDs. However, since the channel condition changes rapidly in LoRaWAN due to mobility, the existing ADR algorithm is unsuitable and results in a significant amount of packet loss and retransmissions causing an increase in energy consumption. In this paper, we enhance the ADR by introducing Kalman filter‐based ADR (KF‐ADR) and moving median‐based ADR (Median‐ADR), which estimate the optimal SNR by considering the mobility later used to assign the SF and TP to EDs. The simulation results showed that the proposed techniques outperform the legacy ADRs in terms of convergence period, energy consumption, and packet success ratio.

Publisher

Wiley

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