Prism: High-throughput LoRa Backscatter with Non-linear Chirps.

INFOCOM(2023)

引用 0|浏览6
暂无评分
摘要
LoRa backscatter enables long-distance communication with ultra-low energy consumption. Enabling concurrent transmissions among many LoRa backscatter tags is desirable for large-scale backscatter networks. However, LoRa backscatter signals sitting on linear chirps easily interfere with each other degrading the throughput of concurrent transmissions. In this paper, we propose Prism that utilizes different types of non-linear chirps to modulate backscatter data allowing multiple backscatter tags to transmit concurrently in the same channel. By taking linear chirps from commercial-off-the-shelf (COTS) LoRa nodes as excitation sources, how to convert the linear chirps to their non-linear counterparts is not trivial on resource-limited backscatter tags. To solve this challenge, we design a lightweight and low-power method, including a frequency-shift function and hardware framework, to shift the frequency of the linear chirps to the non-linear chirps accurately. Moreover, we develop effective methods to calibrate various offsets and concentrate chirp energy to achieve reliable decoding. We implement Prism with customized low-cost hardware, process backscatter signals with USRP, and evaluate its performance in both indoor and outdoor environments. The results show that seven tags can transmit concurrently with less than 1% bit error rate by using seven different types of non-linear chirps in the same channel, resulting in a 6× higher transmission concurrency than state-of-the-art.
更多
查看译文
关键词
backscatter data,chirp energy,commercial-off-the-shelf LoRa nodes,concurrent transmissions,COTS LoRa nodes,excitation sources,frequency-shift function,hardware framework,high-throughput LoRa backscatter,indoor environments,large-scale backscatter networks,linear chirps,long-distance communication,LoRa backscatter signals,LoRa backscatter tags,low-cost hardware,low-power method,multiple backscatter tags,nonlinear chirps,outdoor environments,Prism,process backscatter signals,reliable decoding,resource-limited backscatter tags,transmission concurrency,ultra-low energy consumption,USRP
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要