Title :
TerrLab - a generic simulation and post-processing tool for terrain referenced navigation
Author_Institution :
Norwegian Defence Res. Establ., Kjeller
Abstract :
One of the challenges in underwater navigation for autonomous vehicles is to get position updates for the navigation system. For deep water applications or operations requiring a high degree of covertness, surfacing for GPS is not a solution. The conventional submerged position update techniques, like DGPS-USBL or LBL, requires external physical infrastructure in the operation area of the vehicle. Terrain referenced navigation is a promising technique for submerged position updates. It requires only a bathymetric map of the operation area and the use of a bathymetric sensor during the operation. Different algorithms for terrain referenced navigation have already successfully been tested for underwater applications. These algorithms include variants of the original TERCOM, different Kalman filter based techniques and non-linear Bayesian estimators like the point mass filter and particle filters. To asses the performance of the different algorithms and their robustness on both real and simulated data, FFI has developed a tool called TerrLab. The tool was originally used to qualify algorithms for the real-time terrain navigation system for the HUGIN AUVs. It is now also used to test different sensor and DTM error models for the algorithms.
Keywords :
Global Positioning System; Kalman filters; bathymetry; belief networks; particle filtering (numerical methods); remotely operated vehicles; underwater vehicles; DGPS-USBL; DTM error models; FFI; GPS surfacing; HUGIN AUV; Kalman filter based techniques; LBL; TERCOM; TerrLab; autonomous vehicles; bathymetric map; bathymetric sensor; deep water applications; external physical infrastructure; generic simulation; non-linear Bayesian estimators; particle filters; point mass filter; post-processing; real data; simulated data; submerged position updates; terrain referenced navigation; underwater applications; underwater navigation; vehicle operation area; Bayesian methods; Global Positioning System; Mobile robots; Navigation; Particle filters; Real time systems; Remotely operated vehicles; Robustness; Testing; Underwater vehicles;
Conference_Titel :
OCEANS 2006
Conference_Location :
Boston, MA
Print_ISBN :
1-4244-0114-3
Electronic_ISBN :
1-4244-0115-1
DOI :
10.1109/OCEANS.2006.306834