4.6 Article

3D Underwater Uncooperative Target Tracking for a Time-Varying Non-Gaussian Environment by Distributed Passive Underwater Buoys

期刊

ENTROPY
卷 23, 期 7, 页码 -

出版社

MDPI
DOI: 10.3390/e23070902

关键词

underwater target tracking; adaptive tracking; particle filter; passive tracking

资金

  1. foundation of the State Key laboratory of AFDL [6142210200103]
  2. foundation of the State Key laboratory of Acoustics [SKLA202003]
  3. National Natural Science Foundation of China [11904290, 11904274]

向作者/读者索取更多资源

This paper presents a solution for the 3D passive underwater uncooperative target tracking problem in a time-varying non-Gaussian environment, using a distributed passive underwater buoys observing system and an adaptive particle filter to overcome the low observability drawback and achieve good results.
Accurate 3D passive tracking of an underwater uncooperative target is of great significance to make use of the sea resources as well as to ensure the safety of our maritime areas. In this paper, a 3D passive underwater uncooperative target tracking problem for a time-varying non-Gaussian environment is studied. Aiming to overcome the low observability drawback inherent in the passive target tracking problem, a distributed passive underwater buoys observing system is considered and the optimal topology of the distributed measurement system is designed based on the nonlinear system observability analysis theory and the Cramer-Rao lower bound (CRLB) analysis method. Then, considering the unknown underwater environment will lead to time-varying non-Gaussian disturbances for both the target's dynamics and the measurements, the robust optimal nonlinear estimator, namely the adaptive particle filter (APF), is proposed. Based on the Bayesian posterior probability and Monte Carlo techniques, the proposed algorithm utilizes the real-time optimal estimation technique to calculate the complex noise online and tackle the underwater uncooperative target tracking problem. Finally, the proposed algorithm is tested by simulated data and comprehensive comparisons along with detailed discussions that are made to demonstrate the effectiveness of the proposed APF.

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