Liu Fuchao, Zhao Hailin, Chen Wenjue
School of Automation, Beijing Information Science & Technology University, Beijing 100192, China.
Beijing Key Laboratory of High Dynamic Navigation Technology, Beijing Information Science & Technology University, Beijing 100192, China.
Sensors (Basel). 2024 Aug 29;24(17):5605. doi: 10.3390/s24175605.
In urban road environments, global navigation satellite system (GNSS) signals may be interrupted due to occlusion by buildings and obstacles, resulting in reduced accuracy and discontinuity of combined GNSS/inertial navigation system (INS) positioning. Improving the accuracy and robustness of combined GNSS/INS positioning systems for land vehicles in the presence of GNSS interruptions is a challenging task. The main objective of this paper is to develop a method for predicting GNSS information during GNSS outages based on a long short-term memory (LSTM) neural network to assist in factor graph-based combined GNSS/INS localization, which can provide a reliable combined localization solution during GNSS signal outages. In an environment with good GNSS signals, a factor graph fusion algorithm is used for data fusion of the combined positioning system, and an LSTM neural network prediction model is trained, and model parameters are determined using the INS velocity, inertial measurement unit (IMU) output, and GNSS position incremental data. In an environment with interrupted GNSS signals, the LSTM model is used to predict the GNSS positional increments and generate the pseudo-GNSS information and the solved results of INS for combined localization. In order to verify the performance and effectiveness of the proposed method, we conducted real-world road test experiments on land vehicles installed with GNSS receivers and inertial sensors. The experimental results show that, compared with the traditional combined GNSS/INS factor graph localization method, the proposed method can provide more accurate and robust localization results even in environments with frequent GNSS signal loss.
在城市道路环境中,全球导航卫星系统(GNSS)信号可能会因建筑物和障碍物的遮挡而中断,导致GNSS/惯性导航系统(INS)组合定位的精度降低和连续性变差。在存在GNSS中断的情况下提高陆地车辆GNSS/INS组合定位系统的精度和鲁棒性是一项具有挑战性的任务。本文的主要目标是开发一种基于长短期记忆(LSTM)神经网络的方法,用于在GNSS中断期间预测GNSS信息,以辅助基于因子图的GNSS/INS组合定位,从而在GNSS信号中断期间提供可靠的组合定位解决方案。在GNSS信号良好的环境中,使用因子图融合算法对组合定位系统进行数据融合,并训练LSTM神经网络预测模型,利用INS速度、惯性测量单元(IMU)输出和GNSS位置增量数据确定模型参数。在GNSS信号中断的环境中,使用LSTM模型预测GNSS位置增量,生成伪GNSS信息和INS的求解结果用于组合定位。为了验证所提方法的性能和有效性,我们对安装了GNSS接收机和惯性传感器的陆地车辆进行了实际道路测试实验。实验结果表明,与传统的GNSS/INS因子图定位方法相比,所提方法即使在GNSS信号频繁丢失的环境中也能提供更准确、更鲁棒的定位结果。