首页> 外文会议>Proceedings of the Institute of Navigation 2009 international technical meeting (ITM 2009) >Algorithms for Eliminating User Position Biases Caused by Satellite Constellation Changes or Differential Signal Gain or Loss in Kalman Filter and Weighted Least Squares Solutions
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Algorithms for Eliminating User Position Biases Caused by Satellite Constellation Changes or Differential Signal Gain or Loss in Kalman Filter and Weighted Least Squares Solutions

机译:消除由卡尔曼滤波器和加权最小二乘解引起的卫星星座变化或差分信号增益或损耗引起的用户位置偏差的算法

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摘要

Loss or gain of positioning satellites and loss or gain of a differential correction signal are events that lead to undesirable GPS user position biases. These biases appear in the form of instantaneous jumps in a Weighted Least Squares WLS solution and drifts in a Kalman Filter KF solution. As a result, in both solutions, GPS positioning becomes problematic in various types of applications. For instance, on an agricultural field, when the user is trying to maintain long, parallel and straight swaths that are tightly close to one another, these position biases occur causing the vehicle to divert from its straight line path. Although, a bias might lead to a more accurate position in the absolute sense, in this work, what is sought-after is relative accuracy to a selected initial epoch comprising its satellite constellation and differential signal status which are considered the reference of truth. All gains or losses of constellation satellites or the differential signal that occur after the initial epoch are considered problematic and the biases they create must be eliminated. To deal with this task, in the case of WLS, a position bias filter PBF was implemented in the position domain. The PBF simply tracks and calculates the WLS position biases caused by every event and accumulates them in a position bias vector that is subtracted from the WLS solution's position vector. Unfortunately a PBF cannot be used with a KF solution because the KF diffuses the instantaneous position jumps, encountered in WLS, into drifts over the course of several epochs, making it difficult to assess the biases in the position domain during these epochs. However, since pseudorange measurements are part of the input to a KF, another bias filter, called PseudoRange Bias Filter PRBF, that does the position bias elimination in the pseudorange domain, is introduced. The PRBF-KF combination demonstrates the ability to reap the benefits of both: position bias filtering and Kalman filtering in the same solution. This paper presents the two algorithms for position bias filtering: the PBF for the WLS solution and the PRBF for the KF solution, under all possible scenarios of satellite constellation and differential signal changes.
机译:定位卫星的丢失或增益以及差分校正信号的丢失或增益是导致不希望的GPS用户位置偏差的事件。这些偏差在加权最小二乘WLS解决方案中以瞬时跳跃的形式出现,而在卡尔曼滤波器KF解决方案中以漂移的形式出现。结果,在两种解决方案中,GPS定位在各种类型的应用中都成为问题。例如,在农田上,当用户试图维持彼此紧密靠近的长条,平行且笔直的条带时,会发生这些位置偏差,从而导致车辆偏离其直线路径。尽管从绝对意义上说,偏差可能会导致更准确的位置,但是在这项工作中,人们追求的是相对于所选初始纪元的相对准确性,该初始纪元包括其卫星星座和差分信号状态,被认为是真理的参考。在初始时期之后发生的星座卫星或差分信号的所有增益或损耗都被认为是有问题的,必须消除它们产生的偏差。为了处理此任务,在WLS的情况下,在位置域中实现了位置偏差滤波器PBF。 PBF可以简单地跟踪和计算由每个事件引起的WLS位置偏差,并将其累积在从WLS解的位置矢量中减去的位置偏差矢量中。不幸的是,PBF无法与KF解决方案一起使用,因为KF会将WLS中遇到的瞬时位置跳变扩散到多个历时的过程中,从而很难评估这些历时在位置域中的偏差。但是,由于伪距测量是输入到KF的一部分,因此引入了另一个偏置滤波器,称为伪距偏置滤波器PRBF,它可以消除伪距域中的位置偏差。 PRBF-KF组合展示了利用同一解决方案中的位置偏置滤波和卡尔曼滤波这两项优点的能力。本文介绍了两种可能的位置偏移滤波算法:在卫星星座图和差分信号变化的所有可能情况下,WLS解决方案的PBF和KF解决方案的PRBF。

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