Evaluating and Optimizing the Performance of Dual-Hop LoRa Network using Genetic Algorithm

Gagandeep Kaur, Sindhu Hak Gupta, Harleen Kaur
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Abstract

Aspiring to support vast IoT applications, Long Range (LoRa) developed by Semtech has been most adopted LPWAN technology as it provides low power consumption, long transmission range, massive scalability and low deployment cost. The current work focuses on enhancing the LoRa network performance by employing cooperative communication. Cooperative communication has emerged as the promising technology enabling efficient utilization of the communication resources by allowing the end devices to cooperate with each other in data transmission. The performance of dual hop LoRa network is investigated in terms of coverage probability and latency. Further to optimize the performance of the network, Genetic Algorithm (GA) has been utilized for both non-cooperative and cooperative scenarios. A mathematical model has been formulated and based on that an optimization problem has been defined in terms of estimated received power which gives the optimal transmission configuration of the LoRa node at which the received power is maximum. The optimized value of the received power is further utilized to optimize the performance of the network in terms coverage probability and latency. MATLAB simulations are carried out to highlight the goodness of the proposed model. Simulation results shows that by employing cooperative communication the performance of the LoRa network enhances by 22% and 8% improvement in coverage probability and latency respectively. Also, a significant improvement in coverage probability and latency can be observed in both non-cooperative and cooperative scenarios by employing GA.
基于遗传算法的双跳LoRa网络性能评估与优化
为了支持广泛的物联网应用,Semtech开发的远程(LoRa)技术已被广泛采用LPWAN技术,因为它具有低功耗,长距离传输,大规模可扩展性和低部署成本。目前的工作重点是通过采用协作通信来提高LoRa网络的性能。协作通信是一种很有前途的通信技术,通过允许终端设备在数据传输中相互协作,从而有效地利用通信资源。从覆盖概率和时延两个方面研究了双跳LoRa网络的性能。为了进一步优化网络的性能,在非合作和合作两种情况下都采用了遗传算法(GA)。建立了数学模型,并在此基础上定义了一个基于接收功率估计的优化问题,给出了接收功率最大时LoRa节点的最优传输配置。进一步利用接收功率的优化值,从覆盖概率和时延两方面优化网络性能。通过MATLAB仿真验证了所提模型的有效性。仿真结果表明,采用协作通信后,LoRa网络的覆盖概率和时延分别提高了22%和8%。此外,在非合作和合作场景下,采用遗传算法都可以显著改善覆盖概率和延迟。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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