Abstract

Underwater target tracking system can be kept covert using the bearing-only or the bearing-Doppler measurements (passive measurements), which will reduce the risk of been detected. According to the characteristics of underwater target tracking, the square root unscented Kalman filter (SRUKF) algorithm, which is based on the Bayesian theory, was applied to the underwater bearing-only and bearing-Doppler non-maneuverable target tracking problem. Aiming at the shortcomings of the unscented Kalman filter (UKF), the SRUKF uses the QR decomposition and the Cholesky factor updating, in order to avoid that the process noise covariance matrix loses its positive definiteness during the target tracking period. The SRUKF uses sigma sampling to avoid the linearization of the nonlinear bearing-only and the bearing-Doppler measurements. To ensure the target state observability in underwater target tracking, the paper uses single maneuvering observer to track the single non-maneuverable target. The simulation results show that the SRUKF has better tracking performance than the extended Kalman filter (EKF) and the UKF in tracking accuracy and stability, and the computational complexity of the SRUKF algorithm is low.

Highlights

  • There are two major kinds of underwater target tracking system: a passive system [1] and an active system [2]

  • The main issue that makes the underwater bearing-only and bearing-Doppler target tracking problem difficult is that the measurement processes are a high degree of nonlinearity [6]

  • We investigate the performance of the square root unscented Kalman filter (SRUKF) algorithm for the single non-maneuvering target tracking based on bearing-only measurements and bearing-Doppler measurements for the cases of the single maneuvering observer

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Summary

Introduction

There are two major kinds of underwater target tracking system: a passive system [1] and an active system [2]. There are some challenges that need to be solved for the underwater target tracking problem, such as the high degree of nonlinearity of the measurements and the target state range observability. The main issue that makes the underwater bearing-only and bearing-Doppler target tracking problem difficult is that the measurement processes are a high degree of nonlinearity [6]. The other challenging problem for the underwater bearing-only target tracking is that the target state may not be fully observable, i.e., the passive sensors do not have accurate information about the target range [16]. We investigate the performance of the SRUKF algorithm for the single non-maneuvering target tracking based on bearing-only measurements and bearing-Doppler measurements for the cases of the single maneuvering observer.

System Model
Bearing-Only Measurement Model
Bayesian Filtering
Square Root Unscented Kalman Filter
Square
Simulations
Case of Bearing-only Measurement
Case of Bearing-only
Case of Bearing-Doppler Measurement
12. The course estimated course bearing-Doppler target
Conclusions
Full Text
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