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基于长期演进信号的地下停车场导航系统

Underground Parking Lot Navigation System Using Long-Term Evolution Signal.

作者信息

Shin Beomju, Lee Jung Ho, Yu Changsu, Kim Chulki, Lee Taikjin

机构信息

Sensor System Research Center, Korea Institute of Science and Technology, 5, Hwarang-ro 14-gil, Seongbuk-gu, Seoul 02972, Korea.

出版信息

Sensors (Basel). 2021 Mar 2;21(5):1725. doi: 10.3390/s21051725.

DOI:10.3390/s21051725
PMID:33801550
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7958965/
Abstract

Some of the shopping malls, airports, hospitals, etc. have underground parking lots where hundreds of vehicles can be parked. However, first-time visitors find it difficult to determine their current location and need to keep moving the vehicle to find an empty parking space. Moreover, they need to remember the parked location, and find a nearby staircase or elevator to move toward the destination. In such a situation, if the user location can be estimated, a new navigation system can be offered, which can assist users. This study presents an underground parking lot navigation system using long-term evolution (LTE) signals. As the proposed system utilizes LTE network signals for which the infrastructure is already installed, no additional infrastructure is required. To estimate the location of the vehicle, the signal strength of the LTE signal is accumulated, and the location of the vehicle is estimated by comparing it with the previously stored database of the LTE received signal strength (RSS). In addition, the acceleration and gyroscope sensors of a smartphone are used to improve the vehicle position estimation performance. The effectiveness of the proposed system is verified by conducting an experiment in a large shopping-mall underground parking lot where approximately 500 vehicles can be parked. From the results of the experiment, an error of less than an average of 10 m was obtained, which shows that seamless navigation is possible using the proposed system even in an environment where GNSS does not function.

摘要

一些购物中心、机场、医院等设有地下停车场,可停放数百辆车。然而,初次到访的人很难确定自己当前的位置,需要不断移动车辆以寻找空车位。此外,他们还得记住停车位置,并找到附近的楼梯或电梯前往目的地。在这种情况下,如果能够估计用户位置,就可以提供一种新的导航系统来帮助用户。本研究提出了一种利用长期演进(LTE)信号的地下停车场导航系统。由于所提出的系统利用已安装基础设施的LTE网络信号,因此无需额外的基础设施。为了估计车辆位置,累积LTE信号的信号强度,并通过将其与先前存储的LTE接收信号强度(RSS)数据库进行比较来估计车辆位置。此外,还使用智能手机的加速度和陀螺仪传感器来提高车辆位置估计性能。通过在一个可停放约500辆车的大型购物中心地下停车场进行实验,验证了所提出系统的有效性。从实验结果来看,平均误差小于10米,这表明即使在全球导航卫星系统(GNSS)无法工作的环境中,使用所提出的系统也能够实现无缝导航。

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