Medina Daniel, Li Haoqing, Vilà-Valls Jordi, Closas Pau
Institute of Communications and Navigation, German Aerospace Center (DLR), 17235 Neustrelitz, Germany;.
Electrical and Computer Engineering Department, Northeastern University, Boston, MA 02115, USA.
Sensors (Basel). 2021 Feb 10;21(4):1250. doi: 10.3390/s21041250.
Global navigation satellite systems (GNSSs) play a key role in intelligent transportation systems such as autonomous driving or unmanned systems navigation. In such applications, it is fundamental to ensure a reliable precise positioning solution able to operate in harsh propagation conditions such as urban environments and under multipath and other disturbances. Exploiting carrier phase observations allows for precise positioning solutions at the complexity cost of resolving integer phase ambiguities, a procedure that is particularly affected by non-nominal conditions. This limits the applicability of conventional filtering techniques in challenging scenarios, and new robust solutions must be accounted for. This contribution deals with real-time kinematic (RTK) positioning and the design of robust filtering solutions for the associated mixed integer- and real-valued estimation problem. Families of Kalman filter (KF) approaches based on robust statistics and variational inference are explored, such as the generalized M-based KF or the variational-based KF, aiming to mitigate the impact of outliers or non-nominal measurement behaviors. The performance assessment under harsh propagation conditions is realized using a simulated scenario and real data from a measurement campaign. The proposed robust filtering solutions are shown to offer excellent resilience against outlying observations, with the variational-based KF showcasing the overall best performance in terms of Gaussian efficiency and robustness.
全球导航卫星系统(GNSS)在自动驾驶或无人系统导航等智能交通系统中发挥着关键作用。在这类应用中,确保能在诸如城市环境、多径及其他干扰等恶劣传播条件下运行的可靠精密定位解决方案至关重要。利用载波相位观测可实现精密定位解决方案,但要以解决整周相位模糊度为代价,这一过程特别容易受到非标称条件的影响。这限制了传统滤波技术在具有挑战性场景中的适用性,因此必须考虑新的鲁棒解决方案。本文论述了实时动态(RTK)定位以及针对相关混合整数和实值估计问题的鲁棒滤波解决方案设计。探索了基于鲁棒统计和变分推理的卡尔曼滤波器(KF)方法族,如广义基于M的KF或基于变分的KF,旨在减轻异常值或非标称测量行为的影响。利用模拟场景和测量活动的真实数据对恶劣传播条件下的性能进行了评估。结果表明,所提出的鲁棒滤波解决方案对异常观测具有出色的抗干扰能力,基于变分的KF在高斯效率和鲁棒性方面总体表现最佳。