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Tube Stochastic Optimal Control for Nonlinear Constrained Trajectory Optimization Problems

Naoya Ozaki, Stefano Campagnola, Ryu Funase

2020Journal of Guidance Control and Dynamics60 citationsDOIOpen Access PDF

Abstract

Recent low-thrust space missions have highlighted the importance of designing trajectories that are robust against uncertainties. In its complete form, this process is formulated as a nonlinear constrained stochastic optimal control problem. This problem is among the most complex in control theory, and no practically applicable method to low-thrust trajectory optimization problems has been proposed to date. This paper presents a new algorithm to solve stochastic optimal control problems with nonlinear systems and constraints. The proposed algorithm uses the unscented transform to convert a stochastic optimal control problem into a deterministic problem, which is then solved by trajectory optimization methods such as differential dynamic programming. Two numerical examples, one of which applies the proposed method to low-thrust trajectory design, illustrate that it automatically introduces margins that improve robustness. Finally, Monte Carlo simulations are used to evaluate the robustness and optimality of the solution.

Topics & Concepts

Robustness (evolution)Mathematical optimizationTrajectory optimizationOptimal controlStochastic programmingNonlinear systemTrajectoryComputer scienceThrustNonlinear programmingControl theory (sociology)Monte Carlo methodOptimization problemStochastic controlStochastic optimizationDynamic programmingMathematicsControl (management)EngineeringPhysicsAstronomyQuantum mechanicsArtificial intelligenceChemistryStatisticsAerospace engineeringBiochemistryGeneSpacecraft Dynamics and ControlAdvanced Control Systems OptimizationRocket and propulsion systems research
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