A Study on Graph Optimization Method for GNSS/IMU Integrated Navigation System Based on Virtual Constraints
Author:
Qiu Haiyang1, Zhao Yun2, Wang Hui1ORCID, Wang Lei3ORCID
Affiliation:
1. School of Naval Architecture and Ocean Engineering, Guangzhou Maritime University, Guangzhou 510725, China 2. School of Automation, Jiangsu University of Science and Technology, Zhenjiang 212003, China 3. State Key Laboratory of Information Engineering in Surveying, Mapping and Remote Sensing, Wuhan University, Wuhan 430072, China
Abstract
In GNSS/IMU integrated navigation systems, factors like satellite occlusion and non-line-of-sight can degrade satellite positioning accuracy, thereby impacting overall navigation system results. To tackle this challenge and leverage historical pseudorange information effectively, this paper proposes a graph optimization-based GNSS/IMU model with virtual constraints. These virtual constraints in the graph model are derived from the satellite’s position from the previous time step, the rate of change of pseudoranges, and ephemeris data. This virtual constraint serves as an alternative solution for individual satellites in cases of signal anomalies, thereby ensuring the integrity and continuity of the graph optimization model. Additionally, this paper conducts an analysis of the graph optimization model based on these virtual constraints, comparing it with traditional graph models of GNSS/IMU and SLAM. The marginalization of the graph model involving virtual constraints is analyzed next. The experiment was conducted on a set of real-world data, and the results of the proposed method were compared with tightly coupled Kalman filtering and the original graph optimization method. In instantaneous performance testing, the method maintains an RMSE error within 5% compared with real pseudorange measurement, while in a continuous performance testing scenario with no available GNSS signal, the method shows approximately a 30% improvement in horizontal RMSE accuracy over the traditional graph optimization method during a 10-second period. This demonstrates the method’s potential for practical applications.
Funder
National Natural Science Foundation of China Guangdong Provincial Natural Science Foundation Jiangsu Provincial Key Research and Development Program
Reference21 articles.
1. Ai, Q., Zhang, B., Yuan, Y., Xu, T., Chen, Y., and Tan, B. (2022). Evaluation and mitigation of the influence of pseudorange biases on GNSS satellite clock offset estimation. Measurement, 193. 2. Wen, W., and Hsu, L.T. (June, January 30). Towards robust GNSS positioning and real-time kinematic using factor graph optimization. Proceedings of the 2021 IEEE International Conference on Robotics and Automation (ICRA), Xi’an China. 3. Factor Graph Optimization Method of GNSS positioning in complex urban Scenarios and its resistance Analysis;Zhang;Geomat. Inf. Sci. Wuhan Univ.,2023 4. Tian, Y., Liu, F., Liu, H., Liu, Y., Suwoyo, H., Tao, J., Long, L., and Wang, J. (2023). A Real-Time and Fast LiDAR–IMU–GNSS SLAM System with Point Cloud Semantic Graph Descriptor Loop-Closure Detection. Adv. Intell. Syst., 5. 5. Navisa, C.S., Cahyadi, M.N., and Asfihani, T. (2023). Analysis of GNSS and IMU Sensor Data Fusion Using the Unscented Kalman Filter Method on Medical Drones in Open Air. IOP Conf. Ser. Earth Environ. Sci., 1250.
|
|