Title |
Gertler-Hagen Hydrodynamic Model Based Velocity Estimation Filter for Long-term Underwater Navigation Without External Position Fix |
Authors |
이윤하(Lee, Yunha) ; 나원상(Ra, Won-Sang) ; 김광훈(Kim, Kwanghoon) ; 안명환(Ahn, Myonghwan) ; 이범직(Lee, Bum-Jik) |
DOI |
https://doi.org/10.5370/KIEE.2016.65.11.1868 |
Keywords |
AUV ; long-term navigation ; Velocity estimation ; Hydrodynamics ; DVL ; SDINS |
Abstract |
This paper proposes a novel velocity estimator for long-term underwater navigation of autonomous underwater vehicles(AUVs). Provided that an external position fix is not given, a viable goal in designing a underwater navigation algorithm is to reduce the divergence rate of position error only using the sporadic velocity information obtained from Doppler velocity log(DVL). For such case, the performance of underwater navigation eventually depends on accuracy and reliability of external velocity information. This motivates us to devise a velocity estimator which can drastically enhance the navigation performance even when the DVL measurement is unavailable. Incorporating the Gertler-Hagen hydrodynamics model of an AUV with the measurement models of velocity and depth sensors, the velocity estimator design problem is resolved using the extended Kalman filter. Different from the existing methods in which an AUV simulator is regarded as a virtual sensor, our approach is less sensitive to the model uncertainty often encountered in practice. This is because our velocity filter estimates the simulator errors with sensor aids and furthermore compensates these errors based on the indirect feedforward manner. Through the simulations for typical AUV navigation scenarios, the effectiveness of the proposed scheme is demonstrated. |