Qureshi Umair Mujtaba, Umair Zuneera, Hancke Gerhard Petrus
Department of Computer Science, City University of Hong Kong, Hong Kong, China.
Sensors (Basel). 2019 Jul 25;19(15):3282. doi: 10.3390/s19153282.
Bluetooth Low Energy (BLE) based Wireless Indoor Localization System (WILS) with high localization accuracy and high localization precision is a key requirement in enabling the Internet of Things (IoT) in today's applications. In this paper, we investigated the effect of BLE signal variations on indoor localization caused by the change in BLE transmission power levels. This issue is not often discussed as most of the works on localization algorithms use the highest power levels but has important practical implications for energy efficiency, e.g., if a designer would like to trade-off localization performance and node lifetime. To analyze the impact, we used the established trilateration based localization model with two methods i.e., Centroid Approximation (CA) and Minimum Mean Square Error (MMSE). We observed that trilateration based localization with MMSE method outperforms the CA method. We further investigated the use of two filters i.e., Low Pass Filter (LPF) and Kalman Filter (KF) and evaluated their effects in terms of mitigating the random variations from BLE signal. In comparison to non-filter based approach, we observed a great improvement in localization accuracy and localization precision with a filter-based approach. Furthermore, in comparison to LPF based trilateration localization with CA, the performance of a KF based trilateration localization with MMSE is far better. An average of 1 m improvement in localization accuracy and approximately 50% improvement in localization precision is observed by using KF in trilateration based localization model with the MMSE method. In conclusion, with KF in trilateration based localization model with MMSE method effectively eliminates random variations in BLE RSS with multiple transmission power levels and thus results in a BLE based WILS with high accuracy and high precision.
具有高定位精度和高定位精准度的基于蓝牙低功耗(BLE)的无线室内定位系统(WILS)是当今应用中实现物联网(IoT)的关键要求。在本文中,我们研究了BLE传输功率电平变化引起的BLE信号变化对室内定位的影响。由于大多数关于定位算法的工作都使用最高功率电平,这个问题并不常被讨论,但它对能源效率具有重要的实际意义,例如,如果设计师想要在定位性能和节点寿命之间进行权衡。为了分析这种影响,我们使用了基于三边测量的既定定位模型,采用了两种方法,即质心近似(CA)和最小均方误差(MMSE)。我们观察到,基于MMSE方法的三边测量定位优于CA方法。我们进一步研究了两种滤波器的使用,即低通滤波器(LPF)和卡尔曼滤波器(KF),并评估了它们在减轻BLE信号随机变化方面的效果。与基于非滤波器的方法相比,我们观察到基于滤波器的方法在定位精度和定位精准度方面有了很大的提高。此外,与基于CA的LPF三边测量定位相比,基于MMSE的KF三边测量定位的性能要好得多。在基于MMSE方法的三边测量定位模型中使用KF,观察到定位精度平均提高了1米,定位精准度提高了约50%。总之,在基于MMSE方法的三边测量定位模型中使用KF有效地消除了多个传输功率电平下BLE RSS中的随机变化,从而得到了一个高精度和高精准度的基于BLE的WILS。