Tuta Jure, Juric Matjaz B
Faculty of Computer and Information Science, University of Ljubljana, Vecna pot 113, SI-1000 Ljubljana, Slovenia.
Sensors (Basel). 2018 Mar 24;18(4):963. doi: 10.3390/s18040963.
This paper presents MFAM (Multiple Frequency Adaptive Model-based localization method), a novel model-based indoor localization method that is capable of using multiple wireless signal frequencies simultaneously. It utilizes indoor architectural model and physical properties of wireless signal propagation through objects and space. The motivation for developing multiple frequency localization method lies in the future Wi-Fi standards (e.g., 802.11ah) and the growing number of various wireless signals present in the buildings (e.g., Wi-Fi, Bluetooth, ZigBee, etc.). Current indoor localization methods mostly rely on a single wireless signal type and often require many devices to achieve the necessary accuracy. MFAM utilizes multiple wireless signal types and improves the localization accuracy over the usage of a single frequency. It continuously monitors signal propagation through space and adapts the model according to the changes indoors. Using multiple signal sources lowers the required number of access points for a specific signal type while utilizing signals, already present in the indoors. Due to the unavailability of the 802.11ah hardware, we have evaluated proposed method with similar signals; we have used 2.4 GHz Wi-Fi and 868 MHz HomeMatic home automation signals. We have performed the evaluation in a modern two-bedroom apartment and measured mean localization error 2.0 to 2.3 m and median error of 2.0 to 2.2 m. Based on our evaluation results, using two different signals improves the localization accuracy by 18% in comparison to 2.4 GHz Wi-Fi-only approach. Additional signals would improve the accuracy even further. We have shown that MFAM provides better accuracy than competing methods, while having several advantages for real-world usage.
本文介绍了MFAM(基于多频率自适应模型的定位方法),这是一种新颖的基于模型的室内定位方法,能够同时使用多个无线信号频率。它利用室内建筑模型以及无线信号在物体和空间中传播的物理特性。开发多频率定位方法的动机源于未来的Wi-Fi标准(如802.11ah)以及建筑物中出现的各种无线信号数量的不断增加(如Wi-Fi、蓝牙、ZigBee等)。当前的室内定位方法大多依赖单一无线信号类型,并且通常需要许多设备才能达到所需的精度。MFAM利用多种无线信号类型,与使用单一频率相比提高了定位精度。它持续监测信号在空间中的传播,并根据室内变化调整模型。使用多个信号源在利用室内已有的信号时,降低了特定信号类型所需的接入点数量。由于802.11ah硬件不可用,我们使用类似信号对所提出的方法进行了评估;我们使用了2.4GHz Wi-Fi和868MHz HomeMatic家庭自动化信号。我们在一套现代化的两居室公寓中进行了评估,测得平均定位误差为2.0至2.3米,中位数误差为2.0至2.2米。根据我们的评估结果,与仅使用2.4GHz Wi-Fi的方法相比,使用两种不同信号可将定位精度提高18%。额外的信号将进一步提高精度。我们已经表明,MFAM比竞争方法具有更高的精度,同时在实际应用中有几个优点。