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Probabilistic multi-dimensional debris cloud propagation subject to non-linear dynamics

Lorenzo Giudici, Mirko Trisolini, Camilla Colombo

2023Advances in Space Research15 citationsDOIOpen Access PDF

Abstract

The permanent power loss and the deviation of the trajectory of satellites impacted by centimetre and sub-centimetre sized debris have highlighted the need of taking into account such small fragments in the evolutionary models of the debris population and in the assessment of the in-orbit collision risk. When scaling down to the centimetre-millimetre range, deterministic models for propagating the fragments’ orbit suffer from the massive computational cost required. The continuum approach for modelling the debris clouds is a well-established alternative to the piece-by-piece propagation. A density function is formulated to describe the distribution of fragments over a suitable phase space. Accurate and efficient continuum formulations have been developed to propagate clouds of fragments under atmospheric drag and J2 perturbations, but a general model able to work under any dynamical regime has still to be found. This paper proposes a continuum approach that combines the method of characteristics with the discretisation of the domain in Keplerian elements and area-to-mass ratio into bins. The problem of using a binning approach with such a multi-dimensional phase space is addressed bounding and partitioning the domain, through probabilistic models on the way the fragments distribute over the phase space, as consequence of a fragmentation event. The proposed approach is applied to the modelling and propagation of a space debris cloud under the full set of orbital perturbations, and compared against a Monte Carlo simulation in terms of objects’ number and distribution. The method proves to be accurate on the medium scale, in both space and time, and guarantees statistical validity with a reduced computational effort, leveraging its probabilistic nature.

Topics & Concepts

Space debrisProbabilistic logicComputer scienceDiscretizationDebrisMonte Carlo methodOrbit (dynamics)Phase spacePopulationStatistical physicsPhysicsAlgorithmMathematicsMeteorologyAerospace engineeringMathematical analysisStatisticsDemographyThermodynamicsArtificial intelligenceEngineeringSociologyAstro and Planetary ScienceSpace Satellite Systems and ControlPlanetary Science and Exploration
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