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Reliable Indoor Pseudolite Positioning Based on a Robust Estimation and Partial Ambiguity Resolution Method

机译:基于鲁棒估计和部分歧义解析方法的可靠室内伪卫星定位

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摘要

The unscented Kalman filter (UKF) can effectively reduce the linearized model error and the dependence on initial coordinate values for indoor pseudolite (PL) positioning unlike the extended Kalman filter (EKF). However, PL observations are prone to various abnormalities because the indoor environment is usually complex. Standard UKF (SUKF) lacks resistance to frequent abnormal observations. This inadequacy brings difficulty in guaranteeing the accuracy and reliability of indoor PL positioning, especially for phase-based high-precision positioning. In this type of positioning, the ambiguity resolution (AR) will be difficult to achieve in the presence of abnormal observations. In this study, a robust UKF (RUKF) and partial AR (PAR) algorithm are introduced and applied in indoor PL positioning. First, the UKF is used for parameter estimation. Then, the anomaly recognition statistics and optimal ambiguity subset of PAR are constructed on the basis of the posterior residuals. The IGGIII scheme is adopted to weaken the influence of abnormal observation, and the PAR strategy is conducted in case of failure of the conventional PL-AR. The superiority of our proposed algorithm is validated using the measured indoor PL data for code-based differential PL (DPL) and phase-based real-time kinematic (RTK) positioning modes. Numerical results indicate that the positioning accuracy of RUKF-based indoor DPL is higher with a decimeter-level improvement compared that of the SUKF, especially in the presence of large gross errors. In terms of high-precision RTK positioning, RUKF can correctly identify centimeter-level anomalous observations and obtain a corresponding positioning accuracy improvement compared with the SUKF. When relatively large gross errors exist, the conventional method cannot easily realize PL-AR. By contrast, the combination of RUKF and the PAR algorithm can achieve PL-AR for the selected ambiguity subset successfully and can improve the positioning accuracy and reliability significantly. In summary, our proposed algorithm has certain resistance ability for abnormal observations. The indoor PL positioning of this algorithm outperforms that of the conventional method. Thus, the algorithm has some practical application value, especially for kinematic positioning.
机译:与扩展卡尔曼滤波器(EKF)不同,无味卡尔曼滤波器(UKF)可以有效减少线性模型误差以及室内伪卫星(PL)定位对初始坐标值的依赖性。但是,由于室内环境通常很复杂,因此PL观测容易出现各种异常情况。标准UKF(SUKF)缺乏对频繁异常观察的抵抗力。这种不足导致难以保证室内PL定位的准确性和可靠性,特别是对于基于相位的高精度定位。在这种类型的定位中,在存在异常观察的情况下将难以实现歧义分辨率(AR)。在这项研究中,引入了鲁棒的UKF(RUKF)和部分AR(PAR)算法,并将其应用于室内PL定位。首先,使用UKF进行参数估计。然后,基于后验残差,构造了PAR的异常识别统计量和最优模糊度子集。采用IGGIII方案以减弱异常观察的影响,并在常规PL-AR失败的情况下执行PAR策略。对于基于代码的差分PL(DPL)和基于相位的实时运动(RTK)定位模式,使用测得的室内PL数据验证了我们提出的算法的优越性。数值结果表明,与SUKF相比,基于RUKF的室内DPL的定位精度要高出十亿分之一米,特别是在存在较大的总体误差的情况下。在高精度RTK定位方面,RUKF可以正确识别厘米级的异常观测值,并且与SUKF相比,可以相应地提高定位精度。当存在较大的总体误差时,传统方法不能轻易实现PL-AR。相比之下,RUKF和PAR算法的结合可以为选定的歧义子集成功实现PL-AR,并可以显着提高定位精度和可靠性。综上,我们提出的算法对异常观测具有一定的抵抗能力。该算法的室内PL定位优于常规方法。因此,该算法具有一定的实际应用价值,特别是对于运动学定位。

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