基于快照残差和卡尔曼滤波的鲁棒铁路导航故障检测与排除方案

A. Grosch, Omar García Crespillo, I. Martini, C. Günther
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引用次数: 29

摘要

将卫星导航集成到铁路标准中可以实现可靠和经济高效的铁路导航。这使得铁路非常有吸引力。因此,它的整合得到了欧洲铁路发展计划的大力支持。然而,铁路环境表现出许多挑战。局部威胁是鲁棒GNSS铁路导航面临的主要问题。它们不能通过任何增强方法观察到,并可能造成危险的误导性信息。因此,它们构成了完整性风险,需要由机载系统检测和减轻。我们分析了适用于铁路的三种不同方法:两种快照方法利用GNSS位置确定期间或之后的轨道约束,以及一种使用扩展卡尔曼滤波器的顺序方法。我们推导了三种定位方法的全局故障检测和排除(FDE)方案。我们从沿轨位置精度和位置不确定性两个方面来衡量它们的性能。此外,我们详细研究了每种方案的FDE质量,并清楚地表明,基于扩展卡尔曼滤波器的创新FDE在沿轨位置,故障检测能力和排除增益方面具有最佳性能。所有的调查都是通过蒙特卡洛模拟完成的。所考虑的情景是从在德国不伦瑞克的一次测量活动中收集的数据中提取出来的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Snapshot residual and Kalman Filter based fault detection and exclusion schemes for robust railway navigation
Integrating satellite based navigation into the railway standard can enable reliable and cost-efficient railway navigation everywhere. This makes is very attractive for railway. Thus its integration is strongly supported within the European railway evolution program. However, railway environments exhibit many challenges. Local threats are major issues for robust GNSS based railway navigation. They cannot be observed by any augmentation methods and can cause hazardous misleading information. Hence, they form an integrity risk, which needs to be detected and mitigated by the onboard system. We analyze three different approaches suitable for railway: two snapshot approaches exploiting track constraints during or after the GNSS position determination, and a sequential approach using an Extended Kalman Filter. We derive global fault detection and exclusion (FDE) schemes for all three positioning methods. We measure their performance in terms of along track position accuracy and position uncertainty. Additionally, we investigate each scheme's FDE quality in detail and clearly show that the innovation based FDE of the extended Kalman filter has the best performance in terms of along track position, fault detection capability and exclusion gain. All investigations are done via Monte-Carlo simulations. The considered scenario was extracted from data collected during a measurement campaign in Brunswick, Germany.
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