论文标题
通过并发传输来提高洛拉网络的弯曲
CurvingLoRa to Boost LoRa Network Capacity via Concurrent Transmission
论文作者
论文摘要
洛万(Lorawan)已成为连接IoT设备的吸引力技术,但它在发射机之间无明确协调的功能,这可能会导致许多数据包碰撞作为网络量表。最先进的工作提出了各种处理这些碰撞的方法,但是大多数功能仅在高信噪比(SIR)条件下的大多数功能,因此并未扩展到许多场景中,这些情况很容易被附近发射器的更强接收而轻松地掩埋。在本文中,我们仔细研究了洛拉的物理层,表明其潜在的线性CHIRP调制从根本上限制了Confurrentlora传播的能力和可扩展性。我们表明,通过用非线性对应物代替线性鸣叫,我们可以提高并发的洛拉传输的能力,并在存在强碰撞信号的情况下成功接收洛拉接收器能够成功接收弱传输。这样的非线性CHIRP设计进一步使接收器可以解码完全对齐的碰撞符号 - 这种情况都无法处理。我们基于USRP N210软件定义的无线电平台,在整体Lorawan堆栈中实现这些想法。我们与两个最先进的研究系统和标准Lorawan基线的正面比较表明,Curvinglora将网络吞吐量提高了1.6-7.6倍,同时既没有牺牲功率效率也不牺牲噪声弹性。在发布之前将提供一个开源数据集和代码。
LoRaWAN has emerged as an appealing technology to connect IoT devices but it functions without explicit coordination among transmitters, which can lead to many packet collisions as the network scales. State-of-the-art work proposes various approaches to deal with these collisions, but most functions only in high signal-to-interference ratio (SIR) conditions and thus does not scale to many scenarios where weak receptions are easily buried by stronger receptions from nearby transmitters. In this paper, we take a fresh look at LoRa's physical layer, revealing that its underlying linear chirp modulation fundamentally limits the capacity and scalability of concurrentLoRa transmissions. We show that by replacing linear chirps with their non-linear counterparts, we can boost the capacity of concurrent LoRa transmissions and empower the LoRa receiver to successfully receive weak transmissions in the presence of strong colliding signals. Such a non-linear chirp design further enables the receiver to demodulate fully aligned collision symbols - a case where none of the existing approaches can deal with. We implement these ideas in a holistic LoRaWAN stack based on the USRP N210 software-defined radio platform. Our head-to-head comparison with two state-of-the-art research systems and a standard LoRaWAN baseline demonstrates that CurvingLoRa improves the network throughput by 1.6-7.6x while simultaneously sacrificing neither power efficiency nor noise resilience. An open-source dataset and code will be made available before publication.