面向密集物联网部署的lora网络自适应配置

Mariusz Słabicki, Gopika Premsankar, M. D. Francesco
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引用次数: 206

摘要

大规模物联网(IoT)部署需要远程无线通信,特别是在城市和大都市地区。由于其简单性和灵活性,LoRa是这方面最有前途的技术之一。事实上,在密集的物联网场景中部署LoRa网络必须实现两个主要目标:大量设备之间的高效通信以及由于苛刻的环境设置(例如,存在许多建筑物)而对动态信道条件的弹性。本工作研究了在密集物联网场景下配置LoRa网络通信参数的自适应机制。为此,我们开发了FLoRa,这是一个在omnet++中进行端到端LoRa模拟的开源框架。然后,我们实现和评估内置于LoRa中的自适应数据速率(ADR)机制,以动态管理链路参数,以实现可扩展和高效的网络运营。大量的仿真表明,在稳定信道条件下,ADR可以有效地提高网络投递率,同时保持较低的能耗。我们的研究结果还表明,高度变化的无线信道严重影响ADR的性能。因此,我们提出了原始ADR机制的改进版本,以应对可变的通道条件。我们提出的解决方案大大提高了在噪声信道上通信的可靠性和能效,几乎与网络大小无关。最后,我们证明了通过使用网络感知方法可以进一步提高非常密集网络的传输率,其中链路参数是基于网络的全局知识配置的。
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Adaptive configuration of lora networks for dense IoT deployments
Large-scale Internet of Things (IoT) deployments demand long-range wireless communications, especially in urban and metropolitan areas. LoRa is one of the most promising technologies in this context due to its simplicity and flexibility. Indeed, deploying LoRa networks in dense IoT scenarios must achieve two main goals: efficient communications among a large number of devices and resilience against dynamic channel conditions due to demanding environmental settings (e.g., the presence of many buildings). This work investigates adaptive mechanisms to configure the communication parameters of LoRa networks in dense IoT scenarios. To this end, we develop FLoRa, an open-source framework for end-to-end LoRa simulations in OMNeT++. We then implement and evaluate the Adaptive Data Rate (ADR) mechanism built into LoRa to dynamically manage link parameters for scalable and efficient network operations. Extensive simulations show that ADR is effective in increasing the network delivery ratio under stable channel conditions, while keeping the energy consumption low. Our results also show that the performance of ADR is severely affected by a highly-varying wireless channel. We thereby propose an improved version of the original ADR mechanism to cope with variable channel conditions. Our proposed solution significantly increases both the reliability and the energy efficiency of communications over a noisy channel, almost irrespective of the network size. Finally, we show that the delivery ratio of very dense networks can be further improved by using a network-aware approach, wherein the link parameters are configured based on the global knowledge of the network.
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