Hosseinzadeh Salaheddin, Ashawa Moses, Owoh Nsikak, Larijani Hadi, Curtis Krystyna
Department of Cybersecurity and Networks, Glasgow Caledonian University, Glasgow G4 0BA, UK.
Sensors (Basel). 2024 Jan 29;24(3):860. doi: 10.3390/s24030860.
This article explores the convergence of artificial intelligence and its challenges for precise planning of LoRa networks. It examines machine learning algorithms in conjunction with empirically collected data to develop an effective propagation model for LoRaWAN. We propose decoupling feature extraction and regression analysis, which facilitates training data requirements. In our comparative analysis, decision-tree-based gradient boosting achieved the lowest root-mean-squared error of 5.53 dBm. Another advantage of this model is its interpretability, which is exploited to qualitatively observe the governing propagation mechanisms. This approach provides a unique opportunity to practically understand the dependence of signal strength on other variables. The analysis revealed a 1.5 dBm sensitivity improvement as the LoR's spreading factor changed from 7 to 12. The impact of clutter was revealed to be highly non-linear, with high attenuations as clutter increased until a certain point, after which it became ineffective. The outcome of this work leads to a more accurate estimation and a better understanding of the LoRa's propagation. Consequently, mitigating the challenges associated with large-scale and dense LoRaWAN deployments, enabling improved link budget analysis, interference management, quality of service, scalability, and energy efficiency of Internet of Things networks.
本文探讨了人工智能的融合及其在LoRa网络精确规划方面的挑战。它结合经验收集的数据研究机器学习算法,以开发一种有效的LoRaWAN传播模型。我们提出解耦特征提取和回归分析,这有助于满足训练数据要求。在我们的比较分析中,基于决策树的梯度提升实现了最低的均方根误差5.53 dBm。该模型的另一个优点是其可解释性,可用于定性观察主要传播机制。这种方法提供了一个独特的机会,以便从实际角度理解信号强度对其他变量的依赖性。分析表明,随着LoR的扩频因子从7变为12,灵敏度提高了1.5 dBm。结果表明,杂波的影响具有高度非线性,随着杂波增加,衰减会一直增大,直到达到某一点,之后杂波就不再产生影响。这项工作的成果有助于更准确地估计和更好地理解LoRa的传播。因此,减轻了与大规模密集LoRaWAN部署相关的挑战,实现了改进的链路预算分析、干扰管理、服务质量、可扩展性以及物联网网络的能源效率。