Litcius/Paper detail

Model-Aided State Estimation of HALE UAV With Synthetic AOA/SSA for Analytical Redundancy

Wonkeun Youn, Hyoung Sik Choi, Hyeok Ryu, Sungyug Kim, Matthew B. Rhudy

2020IEEE Sensors Journal36 citationsDOIOpen Access PDF

Abstract

This paper proposes a novel dynamic model-aided navigation filter to estimate the safety-critical states of a high-altitude long-endurance (HALE) UAV without measurement of angle of attack (AOA) and sideslip angle (SSA). The major contribution of the proposed algorithm is that the synthetic AOA and SSA measurements are newly formulated for analytical redundancy. In the proposed filter, aerodynamic coefficients and control signals are utilized along with inertial measurement unit (IMU), Global Positioning System (GPS), and pitot tube measurements to estimate the navigation states as well as the steady and turbulent effects of 3D wind using random walk (RW) and Dryden wind models, respectively. Flight test results of a HALE UAV demonstrated that the proposed algorithm yields accurate estimated airspeed, AOA, SSA, attitude, angular rates, and 3D wind states, demonstrating its effectiveness for analytical redundancy.

Topics & Concepts

AirspeedRedundancy (engineering)Pitot tubeControl theory (sociology)Inertial measurement unitGlobal Positioning SystemAerodynamicsKalman filterFlight testAngle of attackInertial navigation systemComputer scienceAngle of arrivalWind speedExtended Kalman filterEngineeringAerospace engineeringSimulationInertial frame of referenceCompensation (psychology)PhysicsArtificial intelligencePsychologyTelecommunicationsQuantum mechanicsMeteorologyOperating systemAntenna (radio)Control (management)PsychoanalysisAerospace and Aviation TechnologyTarget Tracking and Data Fusion in Sensor NetworksAir Traffic Management and Optimization