Robust Differential Dynamic Programming

arxiv(2022)

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摘要
Differential Dynamic Programming is an optimal control technique often used for trajectory generation. Many variations of this algorithm have been developed in the literature, including algorithms for stochastic dynamics or state and input constraints. In this contribution, we develop a robust version of Differential Dynamic Programming that uses generalized plants and multiplier relaxations for uncertainties. To this end, we study a version of the Bellman principle and use convex relaxations to account for uncertainties in the dynamic program. The resulting algorithm can be seen as a robust trajectory generation tool for nonlinear systems.
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关键词
Bellman principle,convex relaxations,dynamic program,input constraints,nonlinear systems,optimal control technique,robust differential dynamic programming,robust trajectory generation tool,robust version,stochastic dynamics
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