Carrier Phase Ranging for Indoor Positioning with 5G NR Signals
Liang Chen, Xin Zhou, Feifei Chen, Lie-Liang Yang, and Ruizhi Chen

TL;DR
This paper presents a novel indoor positioning method using 5G NR signals and carrier phase ranging, achieving sub-meter accuracy through a developed SDR system and field testing in real office environments.
Contribution
It introduces a new SDR-based indoor positioning system utilizing 5G NR signals with carrier phase estimation for improved accuracy.
Findings
ToA accuracy of about 0.5 meters in static tests
95% probability of within 0.8 meters in mobile scenarios
Effective multipath and delay tracking in indoor environments
Abstract
Indoor positioning is one of the core technologies of Internet of Things (IoT) and artificial intelligence (AI), and is expected to play a significant role in the upcoming era of AI. However, affected by the complexity of indoor environments, it is still highly challenging to achieve continuous and reliable indoor positioning. Currently, 5G cellular networks are being deployed worldwide, the new technologies of which have brought the approaches for improving the performance of wireless indoor positioning. In this paper, we investigate the indoor positioning under the 5G new radio (NR), which has been standardized and being commercially operated in massive markets. Specifically, a solution is proposed and a software defined receiver (SDR) is developed for indoor positioning. With our SDR indoor positioning system, the 5G NR signals are firstly sampled by universal software radio…
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Taxonomy
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