Wang Yan, Ren Wenjia, Cheng Long, Zou Jijun
Department of Computer and Communication Engineering, Northeastern University, Qinhuangdao 066004, China.
Sensors (Basel). 2020 Jul 15;20(14):3941. doi: 10.3390/s20143941.
As the progress of electronics and information processing technology continues, indoor localization has become a research hotspot in wireless sensor networks (WSN). The adverse non-line of sight (NLOS) propagation usually causes large measurement errors in complex indoor environments. It could decrease the localization accuracy seriously. A traditional grey model considers the motion characteristics but does not take the NLOS propagation into account. A robust interacting multiple model (R-IMM) could effectively mitigate NLOS errors but the clipping point is hard to choose. In order to easily cope with NLOS errors, we present a novel filter framework: mixture Gaussian fitting-based grey Kalman filter structure (MGF-GKFS). Firstly, grey Kalman filter (GKF) is proposed to pre-process the measured distance, which can mitigate the process noise and alleviate NLOS errors. Secondly, we calculate the residual which is the difference between the filtered distance of GKF and the measured distance. Thirdly, a soft decision method based on mixture Gaussian fitting (MGF) is proposed to identify the propagation condition through residual value and give the degree of membership. Fourthly, weak NLOS noise is further processed by unscented Kalman filter (UKF). The filtered results of GKF and UKF are weighted using the degree of membership. Finally, a maximum likelihood (ML) algorithm is applied to get the coordinate of the target. MGF-GKFS is not supported by any of the priori knowledge. Full-scale simulations and an experiment are conducted to compare the localization accuracy and robustness with the state-of-the-art algorithms, including robust interacting multiple model (R-IMM), unscented Kalman filter (UKF) and interacting multiple model (IMM). The results show that MGF-GKFS could achieve significant improvement compared to R-IMM, UKF and IMM algorithms.
随着电子和信息处理技术的不断进步,室内定位已成为无线传感器网络(WSN)中的一个研究热点。不利的非视距(NLOS)传播通常会在复杂的室内环境中导致较大的测量误差,严重降低定位精度。传统的灰色模型考虑了运动特性,但未考虑NLOS传播。鲁棒交互多模型(R-IMM)可以有效减轻NLOS误差,但裁剪点难以选择。为了轻松应对NLOS误差,我们提出了一种新颖的滤波器框架:基于混合高斯拟合的灰色卡尔曼滤波器结构(MGF-GKFS)。首先,提出灰色卡尔曼滤波器(GKF)对测量距离进行预处理,以减轻过程噪声并缓解NLOS误差。其次,计算残差,即GKF滤波后的距离与测量距离之间的差值。第三,提出一种基于混合高斯拟合(MGF)的软判决方法,通过残差值识别传播条件并给出隶属度。第四,采用无迹卡尔曼滤波器(UKF)对弱NLOS噪声进行进一步处理。利用隶属度对GKF和UKF的滤波结果进行加权。最后,应用最大似然(ML)算法得到目标的坐标。MGF-GKFS不需要任何先验知识。进行了全面的仿真和实验,以将定位精度和鲁棒性与包括鲁棒交互多模型(R-IMM)、无迹卡尔曼滤波器(UKF)和交互多模型(IMM)在内的现有算法进行比较。结果表明,与R-IMM、UKF和IMM算法相比,MGF-GKFS可以实现显著的改进。