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SteParKin code determine Galactic-space velocity components (U, V, W), evaluate their membership to young kinematic moving groups and associations and assign their stellar populations.

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SteParKin

Short definition

Steparkin is a code that uses the Galactic-space velocity components (U, V, W) of the stars to evaluate their membership to young (< 1 Gyr) kinematic moving groups and associations (5 by default) and to assign their stellar populations as proposed by Bensby et al. 2003, 2005. The code takes as input a file that contains the equatorial coordinates (in J2000 and epoch 2000), proper motions, parallax/distance, and radial velocity (along with their corresponding errors) of a star and retrieves a CSV file and a series of plots (UV and UW planes and the Toomre diagram) as outputs. The CSV file contains the Galactic-space velocity components (U, V, W), their corresponding errors (computed following the approach described in Johnson & Soderblom (1987)), the associations and/or groups to which the star is candidate, and its most probable stellar population along with the name, the value, and error in radial velocity of the star from the input file.

Scheme

The code is constituted by 3 main functions:

  • spk_groups: This function associates stars to a young moving groups or associations if its Galactic-space velocity components are within the 3D ellipsoid that defines each moving group or association. The ellipsoids are defined in the UVW space and their parameters are recorded in the association_parameters.csv file. This function also determines to which stellar population (thin disk (D), thick disk (TD), in between them (TD-D), or halo (H)) the star belongs following the probabilistic approach described in Bensby et al. 2003, 2005. The values of the parameters that define each population (the observed fraction in the solar neighborhood (X_ns), the characteristic velocity dispersions (sig_u, sig_v, sig_w), and the asymmetric drift (v_asym)) are stored in the param_prob_populations.csv file. Note that CSV files must be in the same directory as the function (spk_groups.py) for this to work. The optional parameter file_name takes a string to be included in the names of the output files. The default value is empty.

    The input file (spk_wrapper, see below) or input DataFrame (spk_groups) must have the following columns:

  • Column Description
    NAME name of the star (numbers are allowed)
    RA right ascension in degrees
    DEC declination in degrees
    PMRA proper motion in right ascension (μαcos(δ)) in mas yr-1
    EPMRA error of proper motion in right ascension in mas yr-1
    PMDEC proper motion in declination in mas yr-1
    EPMDEC error of proper motion in declination in mas yr-1
    RV radial velocity in km s-1
    ERV error of radial velocity in km s-1
    PLX (optional*) parallax in mas
    EPLX (optional*) error of parallax in mas
    d (optional*) distance in pc
    ed (optional*) error of distance in pc
    * The user use spk_wrapper can choose between giving the parallax or the distance (and the corresponding error) of the stars (always one of them for each set analyzed at a time). If only distances and their error are given, the parallaxes and their errors are calculated from them. If both are provided, distance is ignored. However, if spk_groups is used independently, only PLX and EPLX are allowed.

    The standard output file structure is as follows:

    Column Description
    NAME That provided in the input
    RV The value provided in the input
    ERV The value provided in the input
    U U Galactic-space velocity component in km s-1 (positive towards the Galactic center)
    eU error in the U Galactic-space velocity component in km s-1
    V V Galactic-space velocity component in km s-1 (positive towards the North Galactic Pole)
    eV error in the V Galactic-space velocity component in km s-1
    W W Galactic-space velocity component in km s-1
    eW error in the W Galactic-space velocity component in km s-1
    lab_YD indicates if the stars belongs (YD) or not (NYD) to the young disk region defined by Eggen
    lab_skg kinematic moving group, association or range of them to which the star is candidate. Default values are Local Association (LA), Hyades Supercluster (HS), IC 2391 (IC), Ursa Major (UMA) and Castor (CAS), their overlaps (LA/IC, LA/CAS, LA/IC/CAS, and IC/CAS) or neither moving group nor association (NNN).
    lab_kin stellar population: thin disk (D), thick disk (TD), in between them (D-TD), or halo (H).
  • spk_graphs: This function plots Boettlinger diagrams (the UV and UW planes), with and without zoom in on the Eggen's young disk, and the Toomre diagram. This function also makes use of the parameter file association_parameters.csv. The parameters of the function are:
  • """
        Parameters
        ----------
    
        df_out :  DataFrame
            The DataFrame resulting from spk_groups or, at least, one containing
            the following columns: U, V, and W.
        file_name : str, optional
            A string to be included in the names of the output figures. The default
            value is empty.
        dict_colors_groups : dict or dict-like str, optional
        dict_colors_intergroup_stars : dict or dict-like str, optional
            dict_colors_groups and dict_colors_intergroup_stars are python
            dictionaries or dictionary-like strings containing the name (key) and
            color (value) given by the user to the stars that fall in one
            association/group or between several associations/groups apart from
            those provided by default. To "remove" a default
            association/group/intergroup from the graphics, the corresponding
            dictionary must contain "default name": None (for example, to avoid
            showing LA stars in red, dict_colors_groups must contain "LA": None).
        autocomplete_colors : boolean, optional
            In case the input DataFrame contains stars belonging to any new
            association, group, or intergroup and it has not been defined in the
            corresponding dictionary, the "autocomplete_colors" parameter sets
            whether showing these stars in a randomly generated color (True) or
            displaying them according to their stellar population if given (False).
            Caution: autocomplete_colors only avoid repetition if the colors are
            given by their hexadecimal name.
        independent : boolean, optional
            Different figures for each UV and WV plane? Default is False.
        gf_uw2 : str, optional
            The gf_uw2 parameter sets the aspect ratio of the Toomre diagram. The
            values, circumferences (default) or ellipses, indicate how lines of
            constant total velocity look in the resulting diagram.
    """
  • spk_wrapper: This function serves as a wrapper for the other two. It takes as input the name of a .csv or .txt file (str) and return a .csv file and the plots (saved as pdf files). 
  • spk_groups and spk_graphics can be used independently of each other and spk_wrapper in the Python interpretator, allowing the users a more flexible use of the individual functions. Thus, the users can skip the restriction about the input file extension, do only the assignments without doing the plots, or vice versa.

    Running SteParKin

    Using the command line:

    $ python spk_wrapper.py [-h] -i I [-e E] [-fn FN] [-dcg DCG] [-dci DCI][-ac AC] [-ind IND] [-g G]
    
    optional arguments:
      -h, --help  show this help message and exit
      -i I        the input file containing the data (.txt or .csv)
      -e E        set how the code deals with zeros in the errors: drop (default)
                  or zeros
      -fn FN      set a string that all the output files must contain
      -dcg DCG    set colors for new groups or change those given by default (str-
                  like python dictionary)
      -dci DCI    set colors for new intergroup stars or change those given by
                  default (str-like python dictionary)
      -ac AC      should the stars candidates to any association, group, or
                  intergroup not defined in the dictionaries be shown in a random
                  color? Default is False
      -ind IND    Independent graphs for each plane? Default is False
      -g G        set the aspect ratio of the Toomre diagram: circumferences
                  (default) or ellipses
    

    Using the Python interpreter:

    • Using the wrapper:
    >>> import spk_wrapper as spkw
    >>> spkw.spk_wrapper(input_file, errors="drop", file_name="", dict_colors_groups=None,
    				     dict_colors_intergroup_stars=None, autocomplete_colors=False,
    				     independent=False, gf_uw2="circumferences")
    • Running spk_groups and spk_graphs independently (note that the input is now a DataFrame in both cases):
    >>> import spk_groups as spkg
    >>> spkg.spk_groups(df, file_name="")
    >>> import spk_graphs as spkgra
    >>> spkgra.spk_groups(input_file, file_name="", dict_colors_groups=None,
    				      dict_colors_intergroup_stars=None, autocomplete_colors=False,
    				      independent=False, gf_uw2="circumferences")

    Caveats

    SteParKin is rather optimistic about the size in the UVW space of the stellar associations and moving groups considered as compared to other codes available in the literature (see References). We prefer this approach because allows to examine their actual limits, which are far from clear, and find members with peculiar kinematics. The cost, however, is to have a greater number of contaminators. We strongly recommend a full study of the properties of the candidates giving by the code to confirm or reject its membership in a particular group or association (see, for example, Cortes-Contreras et al. 2020). In any case, we note that the user can modify the definition of any group or association given by default or introduce a new one.

    It is also worth mentioning that SteParKin does not resolve the overlapping between associations or/and moving groups. When a star falls inside two or more groups and/or associations, the star is labeled as "intergroup star", that is, lab_skg = Group1/Group2/... As for confirm a candidate to a single group/association and among others, the user can use the distance of the star (in the UVW space) to the centroids of the groups or associations, its Galactic-space position, and spectral characteristics to try to resolve the controversy. Using the default associations and moving groups, there are four overlaps: LA/IC, LA/CAS, LA/IC/CAS, IC/CAS.

    The user should bear in mind that any new overlap (produced by either introducing a new association or moving group or modifying the parameters of a default one) must be defined in the dict_colors_intergroup_stars or the parameter autocomplete_colors must be True to these stars are plotted correctly. Otherwise, the stars in the new overlap will be represented according to their stellar population if given.

    Detailed requirements

    SteParKin is written in Python 3.7.0 and uses the following open-source packages (recommended version):

    • Python Standard Library : os, io, math
    • pandas (0.23.4)
    • numpy (1.15.4)
    • matplotlib (3.0.2)
    • pycparser (2.19)
    • urllib3 (1.24.1)
    • json-c (0.13.1)

    Known bugs

    Using matplotlib 2.2.3 some plot features are badly drawn.

    Tests

    • Test 1: This example shows how introduce a new group. The data are M-type stars from Cortés-Contreras et al. 2020.

    • Test 2: This example illustrates how even small variations in RV can result in different outcomes about the possibility of a star to be a candidate of one moving group or association. We took the different values of RV and ERV from the literature for a well-known young star (EK DRA). The rest of the data are from Simbad.

    References

    Feedback

    Bug reports, feedback, and comments are very welcome, and they can be sent to [email protected]

    Authors and versions

    SteParKin was originally written in Fortran and later in IDL by D. Montes and H.M. Tabernero and was described in Montes et al. 2001. Since then, the code has been enhanced and rewritten in Python by D. Montes and A.J. Domínguez-Fernández.

    Citation

    If the user wants to use SteParKin as part of a scientific work, please, cite Montes et al. 2001 and Cortés-Contreras et al. 2020.

    Acknowledgements

    The authors wish to thank to M. Cortés-Contreras, J.A. Caballero, and C. Cifuentes their comments, which have improved significantly the quality of the code.