2021
DOI: 10.48550/arxiv.2109.00183
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Deep $\mathcal{L}^1$ Stochastic Optimal Control Policies for Planetary Soft-landing

Abstract: In this paper, we introduce a novel deep learning based solution to the Powered-Descent Guidance problem, grounded in principles of nonlinear Stochastic Optimal Control and Feynman-Kac theory. Our algorithm solves the PDG problem by framing it as an L 1 SOC problem for minimum fuel consumption. Additionally, it can handle practically useful control constraints, nonlinear dynamics and enforces state constraints as soft-constraints. This is achieved by building off of recent work on deep Forward-Backward Stochas… Show more

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