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A residual based adaptive unscented Kalman filter for fault recovery in attitude determination system of microsatellites
Authors:Huy Xuan Le  Saburo Matunaga
Institution:1. Department of Mechanical and Aerospace Engineering, Tokyo Institute of Technology, Tokyo, Japan;2. Department of Space Flight Systems, Institute of Space and Astronautical Science (ISAS), Japan Aerospace Exploration Agency (JAXA), Kanagawa, Japan;3. Vietnam National Satellite Center (VNSC), Vietnam Academy of Science and Technology (VAST), Hanoi, Vietnam
Abstract:This paper presents an adaptive unscented Kalman filter (AUKF) to recover the satellite attitude in a fault detection and diagnosis (FDD) subsystem of microsatellites. The FDD subsystem includes a filter and an estimator with residual generators, hypothesis tests for fault detections and a reference logic table for fault isolations and fault recovery. The recovery process is based on the monitoring of mean and variance values of each attitude sensor behaviors from residual vectors. In the case of normal work, the residual vectors should be in the form of Gaussian white noise with zero mean and fixed variance. When the hypothesis tests for the residual vectors detect something unusual by comparing the mean and variance values with dynamic thresholds, the AUKF with real-time updated measurement noise covariance matrix will be used to recover the sensor faults. The scheme developed in this paper resolves the problem of the heavy and complex calculations during residual generations and therefore the delay in the isolation process is reduced. The numerical simulations for TSUBAME, a demonstration microsatellite of Tokyo Institute of Technology, are conducted and analyzed to demonstrate the working of the AUKF and FDD subsystem.
Keywords:Adaptive estimation  Faults detection  Attitude determination  Kalman filter  Microsatellite
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