Momentum-Based Learning of Nash Equilibria for LISA Pointing Acquisition

IFAC PAPERSONLINE(2023)

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摘要
This paper addresses the pointing acquisition phase of the Laser Interferometer Space Antenna (LISA) mission as a guidance problem. It is formulated in a cooperative game setup, which solution is a sequence of corrections that can be used as a tracking reference to align all the spacecraft' laser beams simultaneously within the tolerances required for gravitational wave detection. We propose a model-free learning algorithm based on residual-feedback and momentum, for accelerated convergence to stable solutions, i.e. Nash Equilibria. Each spacecraft has 4 degrees of freedom, and the only measured output considered are laser misalignments with the local interferometer sensors. Simulation results demonstrate that the proposed strategy manages to achieve absolute misalignment errors < 1 mu rad in a timely manner.
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关键词
Space exploration,Decision making and autonomy,High accuracy pointing,Extremum seeking and model free adaptive control,Game theory,LISA,Satellite constellation
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