Fault Detection and Correction Using Observation Domain Optimization for GNSS Applications

Fahimul Haque, V. Dehghanian, A. Fapojuwo
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Abstract

Global Navigation Satellite System (GNSS) is ubiquitously used and integrated into a variety of applications that require accurate and reliable positioning, navigation, and timing (PNT). The rapid growth in research and development into autonomous and semi-autonomous land and aerial vehicle platforms in recent years has redefined industry standards for accurate and reliable PNT. To ensure the integrity of a PNT solution, effective fault detection and exclusion/correction (FDE/C) is needed. Least-squares residuals (LSR) and solution separation (SS) are two well-known receiver autonomous integrity monitoring (RAIM) methods. LSR is computationally efficient but is not applicable, nor is theoretically correct, in scenarios where multiple faulty observations are present. While SS is effective for detecting and isolating multiple faulty observations at a time, it has high computational complexity, hence not suitable for most real-time applications. Other existing fault classifier methods lack the industry required performance due to either data generalization and/or high computational complexity. A novel scalable multi-fault detection and correction method is presented here. As demonstrated by our analysis and test results based on both simulated and real data, the proposed method outperforms LSR providing a more accurate PNT solution and is 80% more computationally efficient than SS under nominal multi-constellation scenarios with 30 or more satellites used in the position estimation.
基于观测域优化的GNSS故障检测与校正
全球导航卫星系统(GNSS)被广泛应用于各种需要精确可靠定位、导航和授时(PNT)的应用中。近年来,自主和半自主陆地和飞行器平台的研发迅速增长,重新定义了准确可靠的PNT的行业标准。为了确保PNT解决方案的完整性,需要有效的故障检测和排除/纠正(FDE/C)。最小二乘残差(LSR)和解分离(SS)是两种众所周知的接收机自主完整性监测(RAIM)方法。LSR在计算上是有效的,但在存在多个错误观测的情况下不适用,在理论上也不正确。虽然SS在一次检测和隔离多个错误观测值方面是有效的,但它的计算复杂度很高,因此不适合大多数实时应用。其他现有的故障分类器方法由于数据泛化和/或高计算复杂度而缺乏行业所需的性能。提出了一种新的可扩展多故障检测与校正方法。基于模拟和真实数据的分析和测试结果表明,在30颗或更多卫星用于位置估计的标称多星座场景下,所提出的方法优于LSR,提供了更精确的PNT解决方案,计算效率比SS高80%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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