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SCLoRa: Leveraging Multi-Dimensionality in Decoding Collided LoRa Transmissions

机译:SCLoRa:在解码冲突的LoRa传输中利用多维

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LoRa as a representative of Low-Power Wide Area Networks (LPWAN) technologies has emerged as an attractive communication platform for the Internet of Things. Since its dense deployment, signal collisions at base stations caused by concurrent transmissions degrade network performance. Existing approaches utilize the signal feature, e.g., frequency, to separate packets from collisions. They do not work well in burst traffic networks because the feature is not stable or fine-grained enough and the information for directed signal separation is not sufficient. In this paper, we leverage multidimensional information and propose a novel PHY layer approach called SCLoRa to decode collided LoRa transmissions. SCLoRa utilizes cumulative spectral coefficient, which integrates both frequency and power information, to separate symbols in the overlapped signal. The practical factors of channel fading, similar symbol boundary, and spectrum leakage are taken into account. The SCLoRa design requires neither hardware nor firmware changes in commodity devices – a feature allowing fast deployment on LoRa base stations. We implement and evaluate SCLoRa on USRP B210 base stations and commodity LoRa devices (i.e., SX1278). The experiment results in different scenarios with different radio parameters show that the throughput of SCLoRa is 3× than the state-of-the-art.
机译:LoRa作为低功耗广域网(LPWAN)技术的代表,已经成为物联网的有吸引力的通信平台。由于密集部署,由并发传输导致的基站信号冲突会降低网络性能。现有方法利用信号特征(例如频率)来将分组与冲突分开。它们在突发流量网络中不能很好地工作,因为该功能不稳定或粒度不够,并且定向信号分离的信息也不充分。在本文中,我们利用了多维信息,并提出了一种称为SCLoRa的新颖PHY层方法来解码冲突的LoRa传输。 SCLoRa利用累积频谱系数(该频谱系数整合了频率和功率信息)来分离重叠信号中的符号。考虑了信道衰落,类似符号边界和频谱泄漏的实际因素。 SCLoRa设计不需要更改商用设备中的硬件或固件即可使用此功能,从而可以在LoRa基站上进行快速部署。我们在USRP B210基站和商用LoRa设备(即SX1278)上实施和评估SCLoRa。在具有不同无线电参数的不同情况下的实验结果表明,SCLoRa的吞吐量是最新技术的3倍。

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