基于多天线信号衰减模型的距离估计算法

Jingjing Wang, Jishen Peng, Xianqing Wang, J. Hwang, J. Park
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引用次数: 0

摘要

基于接收信号强度指标(RSSI)的室内定位技术广泛应用于Wi-Fi室内定位领域。但是,RSSI的传播仍然受到室内多径的影响,在一些角落区域无法获得信号。分析了接收机各天线RSSI与发射机之间的距离关系,提出了一种基于多天线RSSI测量的测距算法。该算法采用基于信号衰减模型的最小二乘法(LSM)对原始数据进行优化,消除了原始数据的噪声和冗余,减小了定位误差。实验结果表明,基于单高斯模型的室内多天线RSSI测距具有较高的拟合精度和适用性。与基于单天线rssi的测距方法相比,该方法显著提高了定位精度。同时,该算法改善了复杂室内环境中多路径对定位的影响,可以获得更精确的测距结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distance Estimation Algorithm Based on Multi-Antenna Signal Attenuation Model
Received Signal Strength Indicators (RSSI)-based indoor positioning technology is widely used in the field of Wi-Fi indoor positioning. However, the propagation of RSSI is still affected by indoor multipath, and we cannot obtain signals in some corner areas. This paper analyzes the distance relationship between the RSSI on each antenna of the receiver and the distance between transmitter and proposes a novel ranging algorithm based on multi-antenna RSSI measurements. This novel algorithm uses a Least Squares Method (LSM) on the basis of a signal attenuation model to optimize, eliminate the noise and redundancy of the original data and reduce the positioning error. Experimental results show that the indoor multi-antenna RSSI ranging based on the single Gaussian model has high fitting accuracy and applicability. The proposed approach achieves significant localization accuracy improvement over using the single antenna RSSI-based ranging method. Meanwhile, the algorithm improves the influence of multiple paths in a complex indoor environment on location, and the method can obtain more accurate ranging results.
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