Statistical Linearization for Robust Motion Planning
The goal of robust motion planning consists of designing open-loop controls which optimally steer a system to a specific target region while mitigating uncertainties and disturbances which affect the dynamics. Recently, stochastic optimal control has enabled particularly accurate formulations of the...
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Zusammenfassung: | The goal of robust motion planning consists of designing open-loop controls
which optimally steer a system to a specific target region while mitigating
uncertainties and disturbances which affect the dynamics. Recently, stochastic
optimal control has enabled particularly accurate formulations of the problem.
Nevertheless, despite interesting progresses, these problem formulations still
require expensive numerical computations. In this paper, we start bridging this
gap by leveraging statistical linearization. Specifically, through statistical
linearization we reformulate the robust motion planning problem as a simpler
deterministic optimal control problem subject to additional constraints. We
rigorously justify our method by providing estimates of the approximation
error, as well as some controllability results for the new constrained
deterministic formulation. Finally, we apply our method to the powered descent
of a space vehicle, showcasing the consistency and efficiency of our approach
through numerical experiments. |
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DOI: | 10.48550/arxiv.2303.01288 |