Affiliation:
1. Unmanned System Research Institute, Northwestern Polytechnical University, Xi’an 710072, China
Abstract
The problem of state estimation based on bearing-only sensors is increasingly important while existing research on distributed filtering solutions is rather limited. Therefore, this paper proposed the novel distributed cubature information filtering (DCIF) method for addressing the state estimation challenge in bearing-only sensor networks. Firstly, the system model of the bearing-only sensor network was constructed, and the observability of the system was analyzed. The sensor nodes are paired to measure relative angle information. Subsequently, the coordinated consistency theory is employed to achieve a unified state estimation of the maneuvering target. The DCIF method enhances the observability of the system, addressing the issues of large accuracy errors and divergence in traditional nonlinear filtering algorithms. Building upon the theoretical proof of consistency convergence in DCIF, four simulation experiments were conducted for comparison. These experiments validate the effectiveness and superiority of the DCIF method in bearing-only sensor networks.
Funder
Natural Science Foundation of China
Reference32 articles.
1. Moving source localization in passive sensor network with location uncertainty;Mao;IEEE Signal Process. Lett.,2021
2. A Novel Range Selective Generalized Weighted Centroid Method for Source Localization in Bearing-Only Sensor Networks;Luo;IEEE Sens. J.,2023
3. A review of robust distributed estimation strategies over wireless sensor networks;Modalavalasa;Signal Process.,2021
4. Huang, Z., Chen, S., Hao, C., and Orlando, D. (2021). Bearings-Only Target Tracking with an Unbiased Pseudo-Linear Kalman Filter. Remote. Sens., 13.
5. Distributed cooperative localization based on bearing-only sensors;Yang;IEEE Sens. J.,2021