AbstractsEngineering

Extended Kalman Filter for Robust UAV Attitude Estimation; Extended Kalmanfilter för robust estimering av UAV-attityd

by Martin Pettersson




Institution: Linköping University
Department:
Year: 2015
Keywords: Kalman; autonomous; UAV; EKF; attitude; INS; IMU; Engineering and Technology; Electrical Engineering, Electronic Engineering, Information Engineering; Control Engineering; Teknik och teknologier; Elektroteknik och elektronik; Reglerteknik; Examensarbete i Reglerteknik; Automatic Control
Record ID: 1373666
Full text PDF: http://urn.kb.se/resolve?urn=urn:nbn:se:liu:diva-119097


Abstract

Attitude estimation of unmanned aerial vehicles is of great importance as it enables propercontrol of the vehicles. Attitude estimation is typically done by an attitude-heading refer-ence system (ahrs) which utilises different kind of sensors. In this thesis these include agyroscope providing angular rates measurements which can be integrated to describe the at-titude as well as an accelerometer and a magnetometer, both of which can be compared withknown reference vectors to determine the attitude. The sensor measurements are fused usinga gps augmented 7-state Extended Kalman filter (ekf) with a quaternion and gyroscope bi-ases as state variables. It uses differentiated gps velocity measurements to estimate externalaccelerations as reference vector to the accelerometer, which significantly raises robustnessof the solution. The filter is implemented in MatlabTM and in c on an ARM microprocessor.It is compared with an explicit complementary filter solution and is evaluated with flightsusing a fixed-wing uav with satisfactory results.