计算机科学
网络数据包
利用
实时计算
偏移量(计算机科学)
解码方法
渲染(计算机图形)
空间相关性
计算机网络
电信
人工智能
计算机安全
程序设计语言
作者
Zeyu Zhang,Weiwei Chen,Junwen Wang,Shuai Wang,Tian He
标识
DOI:10.1109/icnp55882.2022.9940424
摘要
As a representative technology of low power wide area network, LoRa has been widely adopted to many applications. A fundamental question in LoRa is how to improve its reception quality in ultra-low SNR scenarios. Different from existing studies that exploit either spatial or temporal correlation for LoRa reception recovery, this paper jointly leverages the fine-grained spatial-temporal correlation among multiple gateways. We exploit the spatial and temporal correlation in LoRa packets to jointly process received signals so that the fine-grained offsets including Central Frequency Offset (CFO), Sampling Time Offset (STO) and Sampling Frequency Offset (SFO) are well compensated, and signals from multiple gateways are combined coherently. Moreover, a deep learning based soft decoding scheme is developed to integrate the energy distribution of each symbol into the decoder to further enhance the coding gain in a LoRa packet. We evaluate our work with commodity LoRa devices (i.e., Semtech SX1278) and gateways (i.e., USRP-B210) in both indoor and outdoor environments. Extensive experiment results show that our work achieves 4.6dB higher signal-to-noise ratio (SNR) and 1.5× lower bit error rate (BER) compared with existing approaches.
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