Ezhumalai Balaji, Song Moonbae, Park Kwangjin
Department of Information and Communication Engineering, Wonkwang University, Iksan 570-749, Korea.
Samsung Electronics, Suwon 497-001, Korea.
Sensors (Basel). 2021 May 14;21(10):3418. doi: 10.3390/s21103418.
Wi-Fi received signal strength (RSS) fingerprint-based indoor positioning has been widely used because of its low cost and universality advantages. However, the Wi-Fi RSS is greatly affected by multipath interference in indoor environments, which can cause significant errors in RSS observations. Many methods have been proposed to overcome this issue, including the average method and the error handling method, but these existing methods do not consider the ever-changing dynamics of RSS in indoor environments. In addition, traditional RSS-based clustering algorithms have been proposed in the literature, but they make clusters without considering the nonlinear similarity between reference points (RPs) and the signal distribution in ever-changing indoor environments. Therefore, to improve the positioning accuracy, this paper presents an improved RSS measurement technique (IRSSMT) to minimize the error of RSS observation by using the number of selected RSS and its median values, and the strongest access point (SAP) information-based clustering technique, which groups the RPs using their SAP similarity. The performance of this proposed method is tested by experiments conducted in two different experimental environments. The results reveal that our proposed method can greatly outperform the existing algorithms and improve the positioning accuracy by 89.06% and 67.48%, respectively.
基于Wi-Fi接收信号强度(RSS)指纹的室内定位因其低成本和通用性优势而被广泛应用。然而,Wi-Fi RSS在室内环境中受到多径干扰的影响很大,这会导致RSS观测出现显著误差。已经提出了许多方法来克服这个问题,包括平均法和误差处理法,但这些现有方法没有考虑室内环境中RSS不断变化的动态特性。此外,文献中还提出了传统的基于RSS的聚类算法,但它们在进行聚类时没有考虑参考点(RP)之间的非线性相似性以及不断变化的室内环境中的信号分布。因此,为了提高定位精度,本文提出了一种改进的RSS测量技术(IRSSMT),通过使用选定RSS的数量及其中位数来最小化RSS观测误差,以及基于最强接入点(SAP)信息的聚类技术,该技术利用RP的SAP相似性对其进行分组。通过在两个不同实验环境中进行的实验测试了该方法的性能。结果表明,我们提出的方法能够大大优于现有算法,定位精度分别提高了89.06%和67.48%。