Abstract

Abstract. Determining the attitude of satellite at the time of imaging then establishing the mathematical relationship between image points and ground points is essential in high-resolution remote sensing image mapping. Star tracker is insensitive to the high frequency attitude variation due to the measure noise and satellite jitter, but the low frequency attitude motion can be determined with high accuracy. Gyro, as a short-term reference to the satellite’s attitude, is sensitive to high frequency attitude change, but due to the existence of gyro drift and integral error, the attitude determination error increases with time. Based on the opposite noise frequency characteristics of two kinds of attitude sensors, this paper proposes an on-orbit attitude estimation method of star sensors and gyro based on Complementary Filter (CF) and Unscented Kalman Filter (UKF). In this study, the principle and implementation of the proposed method are described. First, gyro attitude quaternions are acquired based on the attitude kinematics equation. An attitude information fusion method is then introduced, which applies high-pass filtering and low-pass filtering to the gyro and star tracker, respectively. Second, the attitude fusion data based on CF are introduced as the observed values of UKF system in the process of measurement updating. The accuracy and effectiveness of the method are validated based on the simulated sensors attitude data. The obtained results indicate that the proposed method can suppress the gyro drift and measure noise of attitude sensors, improving the accuracy of the attitude determination significantly, comparing with the simulated on-orbit attitude and the attitude estimation results of the UKF defined by the same simulation parameters.

Highlights

  • The precise attitude estimation of high resolution remote sensing satellites is a key factor of high-precision geometric positioning and processing of high resolution satellite images

  • We proposed a novel attitude estimation method combined with star trackers and gyros based on Complementary Filter and Unscented Kalman Filter (CF&UKF)

  • A new attitude estimation method for star sensor and gyro based on Complementary Filter and Unscented Kalman Filter is proposed to solve the problem that the attitude estimation based on Kalman Filter is easy to diverge and the convergence speed is slow

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Summary

INTRODUCITON

The precise attitude estimation of high resolution remote sensing satellites is a key factor of high-precision geometric positioning and processing of high resolution satellite images. Attitude determination algorithm obtains satellite attitude information based on observation vectors of star sensor. Establishing attitude estimation model including these uncertainties and processing weighted attitude observations of attitude sensors with different accuracies are almost impossible to implement. The nonlinear state equation and the measurement equation of the EKF method may lead to biased state estimation or even filtering divergence because of local linearization approximation in the vicinity of the state prediction We proposed a novel attitude estimation method combined with star trackers and gyros based on Complementary Filter and Unscented Kalman Filter (CF&UKF). The accuracy of the postprocessed attitude was evaluated by comparing it with the simulated attitude measurements of sensors, simulated attitude true value as well as attitude estimation results of UKF, respectively

METHODOLOGY
Attitude Description
Measurement Model of Attitude Sensors
Attitude Kalman Filter In Quaternion Space
Simulation Experiment of Attitude Estimation
Analysis of Attitude Simulation Results
CONCLUSION AND FUTURE WORK
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