Shi Jianqiang, Zhang Youpeng, Chen Guangwu, Si Yongbo
School of Automation and Electrical Engineering, Lanzhou Jiaotong University, Lanzhou 730070, China.
Sensors (Basel). 2024 Aug 28;24(17):5556. doi: 10.3390/s24175556.
China's rail transit system is developing rapidly, but achieving seamless high-precision localization of trains throughout the entire route in closed environments such as tunnels and culverts still faces significant challenges. Traditional localization technologies cannot meet current demands, and the present paper proposes an autonomous localization method for trains based on pulse observation in a tunnel environment. First, the Letts criterion is used to eliminate abnormal gyro data, the CEEMDAN method is employed for signal decomposition, and the decomposed signals are classified using the continuous mean square error and norm method. Noise reduction is performed using forward linear filtering and dynamic threshold filtering, respectively, maximizing the retention of its effective signal components. A SINS/OD integrated localization model is established, and an observation equation is constructed based on velocity matching, resulting in an 18-dimensional complex state space model. Finally, the EM algorithm is used to address Non-Line-Of-Sight and multipath effect errors. The optimized model is then applied in the Kalman filter to better adapt to the system's observation conditions. By dynamically adjusting the noise covariance, the localization system can continue to maintain continuous high-precision position information output in a tunnel environment.
中国的轨道交通系统发展迅速,但在隧道和涵洞等封闭环境中实现列车在整条线路上的无缝高精度定位仍面临重大挑战。传统定位技术无法满足当前需求,本文提出了一种基于隧道环境中脉冲观测的列车自主定位方法。首先,使用莱茨准则消除异常陀螺数据,采用CEEMDAN方法进行信号分解,并使用连续均方误差和范数方法对分解后的信号进行分类。分别采用前向线性滤波和动态阈值滤波进行降噪,最大限度地保留其有效信号分量。建立了SINS/OD组合定位模型,并基于速度匹配构建了观测方程,得到了一个18维的复杂状态空间模型。最后,使用EM算法处理非视距和多径效应误差。然后将优化后的模型应用于卡尔曼滤波器,以更好地适应系统的观测条件。通过动态调整噪声协方差,定位系统能够在隧道环境中持续保持连续的高精度位置信息输出。