Using Deep Neural Networks to compute the mass of forming planets

@article{Alibert2019UsingDN,
  title={Using Deep Neural Networks to compute the mass of forming planets},
  author={Y. Alibert and J. Venturini},
  journal={arXiv: Earth and Planetary Astrophysics},
  year={2019}
}
  • Y. Alibert, J. Venturini
  • Published 2019
  • Physics
  • arXiv: Earth and Planetary Astrophysics
  • Computing the mass of planetary envelopes and the critical mass beyond which planets accrete gas in a runaway fashion is important when studying planet formation, in particular for planets up to the Neptune mass range. This computation requires in principle solving a set of differential equations, the internal structure equations, for some boundary conditions (pressure, temperature in the protoplanetary disk where a planet forms, core mass and accretion rate of solids by the planet). Solving… CONTINUE READING

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