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An Analytical Performance Evaluation Framework for NB-IoT

机译:NB-IoT的分析性能评估框架

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摘要

Narrowband Internet of Things (NB-IoT) technology emerged in Release 13 as one of the solutions to provide cellular IoT connectivity. NB-IoT is designed to achieve better indoor coverage, support of a massive number of low-throughput devices, with relaxed delay requirements, and lower energy consumption. Particularly, the extensive coverage of NB-IoT poses a great challenge. The goal is to cover devices in areas previously inaccessible by cellular networks due to penetration losses or remote locations. To solve this, NB-IoT utilizes bandwidth reduction and repetitions. However, for the targeted low range of signal to noise ratio (SNR), the coverage gain due to repetitions can be significantly limited by the performance of the channel estimator. In this paper, we provide an analytical evaluation framework to study the performance of NB-IoT. Our analysis includes the limitations due to realistic channel estimation (CE) and delves into the estimation of the SNR. Additionally, the conducted evaluation shows the impact of the coverage extension in the final performance of the NB-IoT user equipment (UE) in terms of uplink packet transmission latency and battery lifetime. Specifically, regarding UE's battery lifetime, for a maximum coupling loss (MCL) of 164 dB, realistic CE evaluations obtain a battery lifetime reduction of approximately 90% compared to ideal CE.
机译:窄带物联网(NB-IoT)技术出现在版本13中,是提供蜂窝IoT连接的解决方案之一。 NB-IoT旨在实现更好的室内覆盖范围,对大量低吞吐量设备的支持,轻松的延迟要求以及更低的能耗。特别是,NB-IoT的广泛覆盖带来了巨大的挑战。目标是覆盖由于渗透损耗或偏远地区而无法通过蜂窝网络访问的区域中的设备。为了解决这个问题,NB-IoT利用带宽减少和重复。但是,对于目标低信噪比(SNR)范围,由于重复造成的覆盖增益可能会受到信道估计器性能的明显限制。在本文中,我们提供了一个分析评估框架来研究NB-IoT的性能。我们的分析包括实际信道估计(CE)带来的限制,并深入研究SNR的估计。此外,进行的评估还显示了覆盖范围扩展对NB-IoT用户设备(UE)的最终性能的上行链路分组传输延迟和电池寿命的影响。具体而言,关于UE的电池寿命,对于最大耦合损耗(MCL)为164 dB,与理想的CE相比,实际的CE评估可获得大约90%的电池寿命降低。

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