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Chance-Constrained Covariance Steering in a Gaussian Random Field via Successive Convex Programming

Jack Ridderhof, Panagiotis Tsiotras

2022Journal of Guidance Control and Dynamics23 citationsDOI

Abstract

The problem of optimizing affine feedback laws that explicitly steer the mean and covariance of an uncertain system state in the presence of a Gaussian random field is considered. Spatially dependent disturbances are successively approximated with respect to a nominal trajectory by a sequence of jointly Gaussian random vectors. Sequential updates to the nominal control inputs are computed via convex optimization that includes the effect of affine state feedback, the perturbing effects of spatial disturbances, and chance constraints on the closed-loop state and control. The developed method is applied to solve for an affine feedback law to minimize the 99th percentile of required to complete an aerocapture mission around a planet with a randomly disturbed atmosphere.

Topics & Concepts

CovarianceControl theory (sociology)TrajectoryGaussianAffine transformationMathematicsTrajectory optimizationMathematical optimizationCovariance functionField (mathematics)Kalman filterRegular polygonOptimal controlComputer scienceControl (management)PhysicsArtificial intelligenceStatisticsAstronomyGeometryQuantum mechanicsPure mathematicsSpacecraft Dynamics and ControlWater resources management and optimizationAdvanced Multi-Objective Optimization Algorithms
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