Optimal Mass Transport over the Euler Equation
- URL: http://arxiv.org/abs/2304.00595v1
- Date: Sun, 2 Apr 2023 18:37:25 GMT
- Title: Optimal Mass Transport over the Euler Equation
- Authors: Charlie Yan, Iman Nodozi, Abhishek Halder
- Abstract summary: We consider the finite horizon optimal steering of the joint state probability distribution subject to the angular velocity dynamics governed by the Euler equation.
We clarify how this problem is an instance of the optimal mass transport (OMT) problem with bilinear prior drift.
We deduce both static and dynamic versions of the Eulerian OMT, and provide analytical and numerical results for the synthesis of the optimal controller.
- Score: 0.9281671380673306
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We consider the finite horizon optimal steering of the joint state
probability distribution subject to the angular velocity dynamics governed by
the Euler equation. The problem and its solution amounts to controlling the
spin of a rigid body via feedback, and is of practical importance, for example,
in angular stabilization of a spacecraft with stochastic initial and terminal
states. We clarify how this problem is an instance of the optimal mass
transport (OMT) problem with bilinear prior drift. We deduce both static and
dynamic versions of the Eulerian OMT, and provide analytical and numerical
results for the synthesis of the optimal controller.
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