Abstract

This paper presents a novel approach to autonomous navigation for small UAVs, in which the vehicle dynamic model (VDM) serves as the main process model within the navigation filter. The proposed method significantly increases the accuracy and reliability of autonomous navigation, especially for small UAVs with low-cost IMUs on-board. This is achieved with no extra sensor added to the conventional INS/GNSS setup. This improvement is of special interest in case of GNSS outages, where inertial coasting drifts very quickly. In the proposed architecture, the solution to VDM equations provides the estimate of position, velocity, and attitude, which is updated within the navigation filter based on available observations, such as IMU data or GNSS measurements. The VDM is also fed with the control input to the UAV, which is available within the control/autopilot system. The filter is capable of estimating wind velocity and dynamic model parameters, in addition to navigation states and IMU sensor errors. Monte Carlo simulations reveal major improvements in navigation accuracy compared to conventional INS/GNSS navigation system during the autonomous phase, when satellite signals are not available due to physical obstruction or electromagnetic interference for example. In case of GNSS outages of a few minutes, position and attitude accuracy experiences improvements of orders of magnitude compared to inertial coasting. It means that during such scenario, the position-velocity-attitude (PVA) determination is sufficiently accurate to navigate the UAV to a home position without any signal that depends on vehicle environment.

Highlights

  • 1.2 Available solutionsThis paper is a shortened version of (Khaghani and Skaloud, 2016)

  • A key feature in the proposed solution is vehicle dynamic model (VDM) acting as the main process model within the navigation filter, where its output is updated with raw IMU observations and if available, GNSS measurements

  • While the RMS of position error is 11.7km for classical INS coasting after 5 minutes of autonomous navigation during GNSS outage, this is reduced to less than 110m with the proposed VDM/INS/GNSS integration under exactly the same situations, which means an improvement of two orders of magnitude in position accuracy

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Summary

Available solutions

This paper is a shortened version of (Khaghani and Skaloud, 2016). For more details and complementary results and discussions, readers are encouraged to refer to (Khaghani and Skaloud, 2016) here and on several occasions throughout the text.

Motivation
Proposed approach
DEFINITIONS
VEHICLE DYNAMIC MODEL
Scheme
State space augmentation
Errors and uncertainties
MONTE CARLO SIMULATIONS
Navigation States
Auxiliary States
Findings
CONCLUSION
Full Text
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