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An integrity monitoring algorithm for WiFi/PDR/smartphone-integrated indoor positioning system based on unscented Kalman filter

机译:基于Unscented Kalman滤波器的WiFi / PDR /智能手机集成室内定位系统的完整性监控算法

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Indoor positioning navigation technologies have developed rapidly, but little effort has been expended on integrity monitoring in Pedestrian Dead Reckoning (PDR) and WiFi indoor positioning navigation systems. PDR accuracy will drift over time. Meanwhile, WiFi positioning accuracy decreases in complex indoor environments due to severe multipath propagation and interference with signals when people move about. In our research, we aimed to improve positioning quality with an integrity monitoring algorithm for a WiFi/PDR-integrated indoor positioning system based on the unscented Kalman filter (UKF). The integrity monitoring is divided into three phases. A test statistic based on the innovation of UKF determines whether the positioning system is abnormal. Once a positioning system abnormality is detected, a robust UKF (RUKF) is triggered to achieve higher positioning accuracy. Again, the innovation of RUKF is used to judge the outliers in observations and identify positioning system faults. In the last integrity monitoring phase, users will be alerted in time to reduce the risk from positioning fault. We conducted a simulation to analyze the computational complexity of integrity monitoring. The results showed that it did not substantially increase the overall computational complexity when the number of dimensions in the state vector and observation vector in the system is small (?20). In practice, the number of dimensions of state vector and observation vector in an indoor positioning system rarely exceeds 20. The proposed integrity monitoring algorithm was tested in two field experiments, showing that the proposed algorithm is quite robust, yielding higher positioning accuracy than the traditional method, using only UKF.
机译:室内定位导航技术已经迅速发展,但在行人死亡推记(PDR)和WiFi室内定位导航系统中的完整性监测,少努力。 PDR精度会随着时间的推移而漂移。同时,由于严重的多径传播和随机移动时,WiFi定位精度降低了复杂的室内环境。在我们的研究中,我们旨在通过基于Unscented Kalman滤波器(UKF)的WiFi / PDR集成室内定位系统的完整性监测算法来提高定位质量。完整性监测分为三个阶段。基于UKF的创新的测试统计决定了定位系统是否异常。一旦检测到定位系统异常,触发稳健的UKF(RUKF)以实现更高的定位精度。同样,Rukf的创新用于判断观察中的异常值并确定定位系统故障。在最后一个完整的监控阶段,用户将及时提醒用户以降低定位故障的风险。我们进行了一种仿真,以分析完整性监测的计算复杂性。结果表明,当系统中的状态矢量和观察载体的尺寸小(<20)时,它没有显着增加整体计算复杂性。在实践中,室内定位系统中的状态向量和观察向量的尺寸很少超过20.在两个现场实验中测试了所提出的完整性监测算法,表明所提出的算法非常坚固,从传统的定位精度产生更高的定位精度方法,仅使用UKF。

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