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Presence of liquid water during the evolution of exomoons orbiting ejected free-floating planets

Published online by Cambridge University Press:  20 March 2023

Giulia Roccetti*
Affiliation:
European Southern Observatory, Karl-Schwarzschild-Str. 2, D-85748 Garching bei München, Germany Fakultät für Physik, Universitäts-Sternwarte, Ludwig-Maximilians-Universität München, Scheinerstr. 1, D-81679 München, Germany
Tommaso Grassi
Affiliation:
Max-Planck-Institut für extraterrestrische Physik, Giessenbachstr. 1, D-85748 Garching, Germany
Barbara Ercolano
Affiliation:
Fakultät für Physik, Universitäts-Sternwarte, Ludwig-Maximilians-Universität München, Scheinerstr. 1, D-81679 München, Germany Exzellenzcluster Origins, Boltzmannstr. 2, D-85748 Garching, Germany
Karan Molaverdikhani
Affiliation:
Fakultät für Physik, Universitäts-Sternwarte, Ludwig-Maximilians-Universität München, Scheinerstr. 1, D-81679 München, Germany Exzellenzcluster Origins, Boltzmannstr. 2, D-85748 Garching, Germany
Aurélien Crida
Affiliation:
Université Côte d'Azur, Observatoire de la Côte d'Azur, CNRS, Laboratoire Lagrange, Nice, France
Dieter Braun
Affiliation:
Department of Physics, Center for Nanoscience Ludwig-Maximilians-University of Munich, Geschwister-Scholl Platz 1, 80539 Munich, Germany
Andrea Chiavassa
Affiliation:
Université Côte d'Azur, Observatoire de la Côte d'Azur, CNRS, Laboratoire Lagrange, Nice, France Max Planck Institute for Astrophysics, Karl-Schwarzschild-Str. 1, 85748 Garching, Germany
*
Author for correspondence: Giulia Roccetti, E-mail: giulia.roccetti@eso.org
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Abstract

Free-floating planets (FFPs) can result from dynamical scattering processes happening in the first few million years of a planetary system's life. Several models predict the possibility, for these isolated planetary-mass objects, to retain exomoons after their ejection. The tidal heating mechanism and the presence of an atmosphere with a relatively high optical thickness may support the formation and maintenance of oceans of liquid water on the surface of these satellites. In order to study the timescales over which liquid water can be maintained, we perform dynamical simulations of the ejection process and infer the resulting statistics of the population of surviving exomoons around FFPs. The subsequent tidal evolution of the moons’ orbital parameters is a pivotal step to determine when the orbits will circularize, with a consequential decay of the tidal heating. We find that close-in ($a \lesssim 25$ RJ) Earth-mass moons with carbon dioxide-dominated atmospheres could retain liquid water on their surfaces for long timescales, depending on the mass of the atmospheric envelope and the surface pressure assumed. Massive atmospheres are needed to trap the heat produced by tidal friction that makes these moons habitable. For Earth-like pressure conditions (p0 = 1 bar), satellites could sustain liquid water on their surfaces up to 52 Myr. For higher surface pressures (10 and 100 bar), moons could be habitable up to 276 Myr and 1.6 Gyr, respectively. Close-in satellites experience habitable conditions for long timescales, and during the ejection of the FFP remain bound with the escaping planet, being less affected by the close encounter.

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Type
Research Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
Copyright © The Author(s), 2023. Published by Cambridge University Press
Figure 0

Table 1. Outcomes of the dynamical simulations

Figure 1

Fig. 1. Minimum close encounter distance among all the dynamical scattering events for all the 1402 simulations with the ejection of planet #1 as the outcome. The simulations are performed between three Jupiter-mass planets and a Sun-like star. For impact parameters smaller than 5 RJ, we consider that the two planets collided with each other, representing a different outcome of the simulations. The plot is cut at 100 RJ, while there is still a very long tail of simulations with larger impact parameters. In red and blue, we show the impact parameters of the last close encounter of Sim1 and Sim2, which will be analysed in more detail during this work. We note that b1 = 15.36 RJ for Sim1 is below the median of the distribution (bmed = 21.02 RJ), while b2 = 88.61 RJ is well above the median. Note that while we show the impact parameters of the closest dynamical scattering event for all the 1402 simulations, for Sim1 and Sim2 we show the impact parameter of only the last close encounter, when the moons are placed around the planet.

Figure 2

Fig. 2. Dynamical evolution and survivability of the moons in Sim1 (impact parameter b1 = 15.36 RJ). We compare the distributions of semi-major axes (left panel) and eccentricities (right panel) between the initial statistics of the total 26 293 moons from Cilibrasi et al. (2021) (in blue), the initial distributions of the surviving moons (in green) and the final distributions of the surviving moons after the close encounter event (in red). Note that the green distribution is a subset of the total initial distribution in blue. In Sim1, 7570 moons remained bound with the planet after the close encounter, corresponding to a 28.79% of survivability rate. The final distribution of the semi-major axis of the surviving moons is much more spread out, while the final eccentricities substantially increase due to the dynamical scattering event. Grey-dashed lines represent the Galilean moons orbital parameters, while the solid black line is placed at the last close encounter impact parameter.

Figure 3

Fig. 3. Dynamical evolution and survivability of the moons in Sim2 (impact parameter b2 = 88.61 RJ). We compare the distributions of semi-major axes (left panel) and eccentricities (right panel) between the initial statistics of the total 26 293 moons from Cilibrasi et al. (2021) (in blue), the initial distributions of the surviving moons (in green) and the final distributions of the surviving moons after the close encounter event (in red). Note that the green distribution is a subset of the total initial distribution in blue. In Sim2, 19 945 moons remained bound with the planet after the close encounter, corresponding to a 75.87% of survivability rate. Having a larger impact parameter, moons in close-in orbits (i.e. with semi-major axes compared to the Galilean system ones) are less affected by the dynamical scattering event and less perturbed. Outer moons experience again an increase in eccentricity and semi-major axis. Grey-dashed lines represent the Galilean moons orbital parameters, while the solid black line is placed at the last close encounter impact parameter.

Figure 4

Fig. 4. KDE of the correlation between the semi-major axes and eccentricities of the surviving moons. In panel (a), we note a flat distribution of the initial shape of the KDE. In panel (b) the correlation after the ejection process happened in Sim1 between the semi-major axis and eccentricity appears, and the entire population of surviving moons is shifted at higher eccentricities, as already observed in Fig. 2. In panel (c), the final correlation after 10 Gyr of tidal evolution for the Earth-mass surviving moons becomes much more dispersed than the previous distribution (panel b). The red contour lines show the 5th, 50th and 95th percentiles of the distributions. The normalization in each panel is constrained as $\int \int {\rm KDE}( u,\; \, v) \, {\rm d} u\, {\rm d} v = 1$, where u = log(a) and v = log(e).

Figure 5

Fig. 5. Earth-mass moon's atmosphere temperature profile, indicating the boundary between the radiative and convective regimes (red line). Above the boundary, the atmosphere is in the radiative regime, while below the boundary, the heat transport is dominated by the convective motion of the air. Habitable conditions (Tsurf = 305 K) are reached for this particular moon: as initial conditions we consider the p0 = 1 bar pressure case, Teff = 183.9 K and surface gravity g = 981 cm s−2 which lead to an atmosphere scale height of 2.96 km and air density at the top of the atmosphere of 10−8 g cm−3.

Figure 6

Fig. 6. PDF, calculated as the KDE, to find a moon at a certain surface temperature as a function of time. Different panels show increasing surface pressures. The hatched area represents the HZ, and the contour lines show the 5th, 50th and 95th percentiles of the distributions. We note that the presence of more massive and substantial atmospheres increases the surface temperature of the moons and the number of moons inside the HZ. Increasing p0 also increases the timescale spent in the HZ. Above the HZ areas, we report the probability for a moon orbiting an FFP to lie in the HZ during its lifetime. The normalization of the KDE is analogous to Fig. 4.

Figure 7

Fig. 7. Time spent in the HZ for the moons which survived the close-encounter event of Sim1. Note that moons with a more substantial atmosphere (p0 = 100 bar) can retain liquid water on their surface up to 1.6 Gyr. For p0 = 0.1 bar, moons could be habitable up to 7.3 Myr, while for an Earth-like surface pressure (p0 = 1 bar) liquid water could be retained up to 52 Myr on the surface, and for p0 = 10 bar liquid water could be retained up to 276 Myr.

Figure 8

Fig. 8. Eccentricity and semi-major axis of Earth-mass moons which survived Sim1, do not enter the Roche radius of the FFP, and can retain an atmosphere. The temporal evolution of the moons’ parameters is shown in the vertical direction, while different surface pressure conditions are represented in the different columns. The moons are divided as follows: sub-HZ moons are the ones with a surface temperature colder than the freezing point of water, super-HZ are the warmer ones (above the boiling point), while HZ moons are capable of retaining liquid water on their surfaces. The sub-HZ moons are represented with the KDE and the grey contour lines, which show the 5th, 50th and 95th percentiles. With the same percentiles, also HZ and super-HZ moons are represented with a KDE in blue and orange respectively. We note that the number of moons in the HZ increases for higher surface pressures, and satellites with larger p0 can remain habitable for longer times. In Appendix C the surface temperatures of the HZ moons are explicitly shown. The normalization of the KDE is analogous to Fig. 4.

Figure 9

Fig. 9. Mass and semi-major axis of moons with Cilibrasi et al. (2021)'s masses which survived Sim1, do not enter the Roche radius of the FFP, and can retain an atmosphere. The temporal evolution of the moons’ parameters is shown in the vertical direction, while different surface pressure conditions are represented in the different columns. The moons are divided as follows: sub-HZ moons are the ones with a surface temperature colder than the freezing point of water, super-HZ are the warmer ones (above the boiling point), while HZ moons are capable of retaining liquid water on their surfaces. The sub-HZ moons are represented with the KDE and the grey contour lines, which show the 5th, 50th and 95th percentiles. With the same percentiles, also HZ and super-HZ moons are represented with a KDE in blue and orange respectively. We note that the number of moons in the HZ increases for higher surface pressures, and satellites with larger p0 can remain habitable for longer times. Less massive satellites could become habitable with more substantial atmospheres. The triangles show the mass of the Earth (in blue), Mars (in red) and Europa (in green) for comparison. The normalization of the KDE is analogous to Fig. 4.

Figure 10

Fig. 10. Same as Fig. 8, but for moons whose masses are taken from the Cilibrasi et al. (2021) catalogue.

Figure 11

Fig. 11. Temporal evolution of the planetary radius following the assumption for an FFP with a Jupiter-mass from Leconte (2011).

Figure 12

Fig. 12. Same as Fig. 8, with a focus on the HZ cluster. The grey contour lines represent all the moons in the investigated population, while the colour dots indicate the surface temperature of the HZ satellites. With the red and blue solid lines, we fit the HZ cluster boundaries, and the fit parameters are reported in each panel with habitable moons. The colour bar indicates the surface temperature between freezing and boiling points, and it changes increasing the surface pressure of the atmosphere.