Litcius/Paper detail

Wind Estimation using an H∞ Filter with Fixed-Wing Aircraft Flight Test Results

Kenneth C. Gahan, Jeremy W. Hopwood, Craig A. Woolsey

2023AIAA SCITECH 2023 Forum14 citationsDOI

Abstract

View Video Presentation: https://doi.org/10.2514/6.2023-2252.vid Indirect wind estimation onboard unmanned aerial systems (UASs) can be accomplished using existing air vehicle sensors along with a dynamic model of the UAS augmented with additional wind-related states. It is often desired to extract a mean component of the wind the from frequency fluctuations (i.e. turbulence). Commonly, a variation of the Kalman filter is used, with explicit or implicit assumptions about the nature of the random wind velocity. This paper presents an H-infinity (H∞) filtering approach to wind estimation which requires no assumptions about the statistics of the process or measurement noise. To specify the wind frequency content of interest a low-pass filter is incorporated. We develop the augmented UAS model in continuous-time, derive the H∞ filter, and introduce a Kalman filter for comparison. The filters are applied to data gathered during UAS flight tests and validated using a vaned air data unit onboard the aircraft. The H∞ filter provides quantitatively better estimates of the wind than the Kalman filter, with approximately 50% less root-mean-square (RMS) error in the majority of cases.

Topics & Concepts

Kalman filterControl theory (sociology)Wind speedFilter (signal processing)Flight testExtended Kalman filterNoise (video)Computer scienceEnsemble Kalman filterSimulationMeteorologyPhysicsArtificial intelligenceComputer visionImage (mathematics)Control (management)Aerospace and Aviation TechnologyTarget Tracking and Data Fusion in Sensor NetworksAir Traffic Management and Optimization