When LoRa meets distributed machine learning to optimize the network connectivity for green and intelligent transportation system

Malak Abid Ali Khan , Hongbin Ma , Arshad Farhad , Asad Mujeeb , Imran Khan Mirani , Muhammad Hamza
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Abstract

LoRa technology contributes to green energy by enabling efficient, long-range communication for the Internet of Things (IoT). This paper addresses the challenges related to coverage range in outdoor monitoring systems utilizing LoRa, where the network performance is affected by the density of gateways (GWs) and end devices (EDs), as well as environmental conditions. To mitigate interference, data throughput losses, and high-power consumption, the proposed spreading factor (SF) and hybrid (data rate|SF) models dynamically adjust the transmission parameters. The orchestration of concurrent data modifications within the network server (NS) is crucial for uninterrupted communication between GWs and EDs, especially in monitoring electric vehicle (EV) stations to reduce traffic congestion and pollution. Employing K-means and density-based spatial clustering of applications with noise (DBSCAN) algorithms optimizes ED allocation, averts data congestion, and improves the signal-to-interference noise ratio (SINR). These methods ensure seamless information reception by meticulously allocated EDs across various GW combinations. To estimate the free-space losses (FSL), a log-distance path loss model (log-PL) is used. Exploring various bandwidths (BWs), bidirectional communications, and duty cycles (DCs) helps to prevent saturation, thus prolonging the operational lifespan of EDs. Empirical findings reveal a notable packet rejection rate (PRR) of 0% for the DBSCAN (hybrid model). In contrast, the K-means exhibits a PRR ranging from 5% (hybrid model) to 35.29% (SF model) for the ten GWs combination. Notably, the network saturation is reduced to 10.185% and 9.503%, respectively, highlighting an improvement in the average efficiency of slotted ALOHA (91.1%) and pure ALOHA (90.7%). These enhancements increase the lifespan of EDs to 15,465.27 days.

Abstract Image

当 LoRa 与分布式机器学习相结合,优化绿色智能交通系统的网络连接
LoRa 技术通过为物联网 (IoT) 提供高效、远距离通信,为绿色能源做出了贡献。本文探讨了利用 LoRa 技术的室外监控系统在覆盖范围方面面临的挑战,在这种情况下,网络性能会受到网关(GW)和终端设备(ED)密度以及环境条件的影响。为减少干扰、数据吞吐量损失和高功率消耗,提出的扩展因子(SF)和混合(数据率|SF)模型可动态调整传输参数。网络服务器(NS)内并发数据修改的协调对于 GW 和 ED 之间的不间断通信至关重要,尤其是在监控电动汽车(EV)站点以减少交通拥堵和污染方面。采用 K-means 和基于密度的带噪声应用空间聚类(DBSCAN)算法可优化 ED 分配、避免数据拥塞并提高信噪比(SINR)。这些方法通过在不同的 GW 组合中精心分配 ED,确保无缝接收信息。为了估算自由空间损耗(FSL),使用了对数距离路径损耗模型(log-PL)。探索各种带宽 (BW)、双向通信和占空比 (DC) 有助于防止饱和,从而延长 ED 的运行寿命。实证研究结果表明,DBSCAN(混合模型)的数据包拒绝率(PRR)为 0%。相比之下,对于 10 个 GW 组合,K-means 的拒包率从 5%(混合模型)到 35.29%(SF 模型)不等。值得注意的是,网络饱和度分别降低到 10.185% 和 9.503%,凸显了带槽 ALOHA(91.1%)和纯 ALOHA(90.7%)平均效率的提高。这些改进将 ED 的寿命延长至 15465.27 天。
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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CiteScore
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