论文标题

使用惯性传感器估算铁路车辆的轨迹和态度,并应用跟踪几何测量

Estimation of the trajectory and attitude of railway vehicles using inertial sensors with application to track geometry measurement

论文作者

González-Carbajal, J., Urda, Pedro, Muñoz, Sergio, Escalona, José L.

论文摘要

本文描述了一种估计轨迹曲线和沿铁路轨迹移动的刚体方向的新方法。与文献中的其他最新进展相比,提出的方法具有仅使用惯性传感器来跟踪铁路车辆的位置和方向的重要优势,不包括全球位置传感器(GNSS或Total Station),并且排除了全球方向传感器(磁力计或进入进入耐磁力计)。该算法基于相对于轨道的相对运动的运动学模型。该运动学模型用作包括状态矢量中的卡尔曼滤波器算法的系统方程,用于定义身体的位置和方向。描述了两种不同的卡尔曼滤波器方法。在第一个中,位置和方向是独立计算的。在第二个方面,位置和方向都被计算为耦合问题。对于卡尔曼过滤器结果的成功至关重要的是使用与系统过程和测量值相关的正确协方差矩阵。在本研究中应用了计算出的轨迹和方向,以解决轨道几何测量问题。具有已知设计几何形状和不规则性的比例轨道用于进行调整和评估算法输出质量的实验。结果表明,开发的算法对于此应用程序足够准确。他们还表明,使用两种提出的卡尔曼滤波方法中的任何一个,用于估计协方差矩阵的约束最大似然方法的性能与已知输出方法相似。这非常方便,因为它可以在不同的情况下直接应用观察模型。

This paper describes a novel method for the estimation of the trajectory curve and orientation of a rigid body moving along a railway track. Compared to other recent developments in the literature, the presented approach has the significant advantage of tracking the position and orientation of a railway vehicle using inertial sensors only, excluding global position sensors (GNSS or total station) and also excluding global orientation sensors (magnetometers or inclinometers). The algorithm is based on a kinematic model of the relative motion of the body with respect to the track. This kinematic model is used as the system equations of a Kalman filter algorithm that includes in the state vector the coordinates used to define the position and orientation of the body. Two different Kalman filter approaches are described. In the first one, the position and orientation are calculated independently. In the second one, both position and orientation are calculated as a coupled problem. Crucial to the success of the results of the Kalman filters is the use of the correct covariance matrices associated with the system process and the measurements. The calculated trajectory and orientation are applied in this research to the problem of track geometry measurement. A scale track with known design geometry and irregularities is used to conduct experiments for tuning and evaluating the quality of the output of the algorithm. Results show that the developed algorithm is accurate enough for this application. They also show that, using either of the two proposed Kalman filtering approaches, the constrained maximum likelihood method for the estimation of the covariance matrices performs similarly to the known-output method. This is very convenient because it allows a straightforward application of the observation model in different scenarios.

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