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Adaptive generalized ZEM-ZEV feedback guidance for planetary landing via a deep reinforcement learning approach

Roberto Furfaro, Andrea Scorsoglio, Richard Linares, Mauro Massari

Year
2020
Citations
104
Access
Open access

Keywords

Reinforcement learningContext (archaeology)Computer scienceSpacecraftConstraint (computer-aided design)Field (mathematics)ArchitectureControl engineeringArtificial intelligenceSimulation

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