This paper investigates a new model to improve the scalability of low-power long-range (LoRa) networks by allowing multiple end devices (EDs) to simultaneously communicate with multiple multi-antenna gateways on the same frequency band and using the same spreading factor. The maximum likelihood (ML) decision rule is first derived for non-coherent detection of information bits transmitted by multiple devices. To overcome the high complexity of the ML detection, we propose a sub-optimal two-stage detection algorithm to balance the computational complexity and error performance. In the first stage, we identify transmit chirps (without knowing which EDs transmit them). In the second stage, we determine the EDs that transmit the specific chirps identified from the first stage. To improve the detection performance in the second stage, we also optimize the transmit powers of EDs to minimize the similarity, measured by the Jaccard coefficient, between the received powers of any pair of EDs. As the power control optimization problem is non-convex, we use concepts from successive convex approximation to transform it to an approximate convex optimization problem that can be solved iteratively and guaranteed to reach a sub-optimal solution. Simulation results demonstrate and justify the tradeoff between transmit power penalties and network scalability of the proposed LoRa network model. In particular, by allowing concurrent transmission of 2 or 3 EDs, the uplink capacity of the proposed network can be doubled or tripled over that of a conventional LoRa network, albeit at the expense of additional 3.0 or 4.7 dB transmit power.
翻译:本文调查了一种新模型,以提高低功率长程(LoRa)网络的可扩缩性,其方法是允许多端装置(EDs)在同一频率波段上与多个多antenna网关同时通信,并使用相同的传播因子。 最大可能性(ML)决定规则首先用于对多设备传输的信息位进行不连贯的检测。 为了克服ML检测的高度复杂性, 我们提议了一个亚最佳的两阶段检测算法, 以平衡计算复杂性和错误性能。 在第一阶段, 我们发现恰普(不知道EDs是哪个传输的)。 在第二阶段, 我们确定传输从同一频率波段上与多个多端天线网连接的多个多端网关连接。 为了提高第二个阶段的检测性能, 我们还优化了ED的传输能力, 以Jaccar 系数衡量任何对子的接收能力。 由于电源控制优化是非convevex问题, 我们使用从连续的调调调概念, 将它转换成一个大约的Convex优化网络, 3 或亚性平级网络的递增压, 显示可保证传输的网络的系统传输结果。