Using neural networks for the derivation of Runge-Kutta-Nyström pairs for integration of orbits |
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Authors: | Ch. Tsitouras I.Th. Famelis |
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Affiliation: | a TEI of Chalkis, Dept. of Applied Sciences, GR34400 Psahna, Greece b TEI of Athens, Dept. of Mathematics, GR12210 Egaleo, Greece |
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Abstract: | In this paper we present Runge-Kutta-Nyström (RKN) pairs of orders 4(3) and 6(4). We choose a test orbit from the Kepler problem to integrate for a specific tolerance. Then we train the free parameters of the above RKN4(3) and RKN6(4) families to perform optimally. For that we form a neural network approach and minimize its objective function using a differential evolution optimization technique. Finally we observe that the produced pairs outperform standard pairs from the literature for Pleiades orbits and Kepler problem over a wide range of eccentricities and tolerances. |
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Keywords: | Neural networks Runge-Kutta Kepler problem Differential evolution |
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