Print Email Facebook Twitter Distributed FDI using Recurrent Neural Networks for Thruster Faults in Formation Flying Satellites Title Distributed FDI using Recurrent Neural Networks for Thruster Faults in Formation Flying Satellites Author Henkel, Martin (TU Delft Aerospace Engineering) Contributor Guo, J. (mentor) Degree granting institution Delft University of Technology Programme Aerospace Engineering Date 2020-12-17 Abstract Certain Formation Flying missions rely on their orbital control thrusters to maintain the formation, making a Fault Detection and Isolation (FDI) system that is capable of detecting thruster faults very valuable. In addition, communication between satellites in a formation can be expensive. In this thesis, a distributed FDI approach was developed making use of Recurrent Neural Networks (RNNs), utilizing the already available relative position and velocity data as input. To test the approach, a numerical simulation of a Virtual-Rigid-Body formation in low Earth orbit was developed in MATLAB. The RNNs were trained on noisy data from the simulation, utilizing the tensorflow library. The resulting system was analyzed and compared against a centralized Kalman-filter based approach, in detection capability, isolation capability and robustness. The developed approach showed overall worse performance, but offers reduced communication needs compared to the comparison method. Subject FDINeural NetworkRNNKalman FilterFormation FlyingDistributedLSTM To reference this document use: http://resolver.tudelft.nl/uuid:28e674a1-506c-44af-872a-b15024587f2e Part of collection Student theses Document type master thesis Rights © 2020 Martin Henkel Files PDF MartinHenkel_MScThesis_Final.pdf 11.36 MB Close viewer /islandora/object/uuid:28e674a1-506c-44af-872a-b15024587f2e/datastream/OBJ/view