Non-Line-of-Sight Positioning Method for Ultra-Wideband/Miniature Inertial Measurement Unit Integrated System Based on Extended Kalman Particle Filter
Author:
Hou Chengzhi12ORCID, Liu Wanqing3, Tang Hongliang4, Cheng Jiayi12, Zhu Xu12, Chen Mailun12, Gao Chunfeng12, Wei Guo12
Affiliation:
1. College of Advanced Interdisciplinary Studies, National University of Defense Technology, Changsha 410073, China 2. Nanhu Laser Laboratory, National University of Defense Technology, Changsha 410073, China 3. Unit 65739, Dandong 118000, China 4. Unit 92199, Qingdao 266000, China
Abstract
In the field of unmanned aerial vehicle (UAV) control, high-precision navigation algorithms are a research hotspot. To address the problem of poor localization caused by non-line-of-sight (NLOS) errors in ultra-wideband (UWB) systems, an UWB/MIMU integrated navigation method was developed, and a particle filter (PF) algorithm for data fusion was improved upon. The extended Kalman filter (EKF) was used to improve the method of constructing the importance density function (IDF) in the traditional PF, so that the particle sampling process fully considers the real-time measurement information, increases the sampling efficiency, weakens the particle degradation phenomenon, and reduces the UAV positioning error. We compared the positioning accuracy of the proposed extended Kalman particle filter (EKPF) algorithm with that of the EKF and unscented Kalman filter (UKF) algorithm used in traditional UWB/MIMU data fusion through simulation, and the results proved the effectiveness of the proposed algorithm through outdoor experiments. We found that, in NLOS environments, compared with pure UWB positioning, the accuracy of the EKPF algorithm in the X- and Y-directions was increased by 35% and 39%, respectively, and the positioning error in the Z-direction was considerably reduced, which proved the practicability of the proposed algorithm.
Funder
National Natural Science Foundation of China Military high-level Scientific and Technological Innovation Talent Project
Reference36 articles.
1. Jing, Y., Qi, F., Yang, F., Cao, Y., Zhu, M., Li, Z., Lei, T., Xia, J., Wang, J., and Lu, G. (2022). Respiration detection of ground injured human target using UWB radar mounted on a hovering UAV. Drones, 6. 2. Osmani, K., and Schulz, D. (2024). Comprehensive Investigation of Unmanned Aerial Vehicles (UAVs): An In-Depth Analysis of Avionics Systems. Sensors, 24. 3. Alsumayt, A., El-Haggar, N., Amouri, L., Alfawaer, Z., and Aljameel, S. (2023). Smart flood detection with AI and blockchain integration in Saudi Arabia using drones. Sensors, 23. 4. Zhao, R., and Zhang, H. (2021). UWB Positioning Technology and Intelligent Manufacturing Applications, Machinery Industry Press. 5. Steup, C., Beckhaus, J., and Mostaghim, S. (2021). A single-copter uwb-ranging-based localization system extendable to a swarm of drones. Drones, 5.
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