Пример #1
0
def prj(request):
    if request.param == "arctic":
        connstr = "mongodb://localhost:27017/"
        name = "test_project"
        arc = arctic.Arctic(connstr)
        if name in [lib.split(".")[0] for lib in arc.list_libraries()]:
            connector = pst.ArcticConnector(name, connstr)
            prj = pst.PastaStore(name, connector)
        else:
            connector = pst.ArcticConnector(name, connstr)
            prj = initialize_project(connector)
    elif request.param == "pystore":
        name = "test_project"
        path = "./tests/data/pystore"
        pystore.set_path(path)
        if name in pystore.list_stores():
            connector = pst.PystoreConnector(name, path)
            prj = pst.PastaStore(name, connector)
        else:
            connector = pst.PystoreConnector(name, path)
            prj = initialize_project(connector)
    elif request.param == "dict":
        name = "test_project"
        connector = pst.DictConnector(name)
        prj = initialize_project(connector)
    prj.type = request.param  # added here for defining test dependencies
    yield prj
Пример #2
0
def initialize_project(conn):

    prj = pst.PastaStore("test_project", conn)

    # oseries 1
    o = pd.read_csv("./tests/data/obs.csv", index_col=0, parse_dates=True)
    o.index.name = "oseries1"
    prj.conn.add_oseries(o, "oseries1", metadata={"x": 100000, "y": 400000})
    # oseries 2
    o = pd.read_csv("./tests/data/head_nb1.csv", index_col=0, parse_dates=True)
    o.index.name = "oseries2"
    prj.conn.add_oseries(o, "oseries2", metadata={"x": 100300, "y": 400400})

    # prec 1
    s = pd.read_csv("./tests/data/rain.csv", index_col=0, parse_dates=True)
    prj.conn.add_stress(s,
                        "prec1",
                        kind="prec",
                        metadata={
                            "x": 100000,
                            "y": 400000
                        })

    # prec 2
    s = pd.read_csv("./tests/data/rain_nb1.csv", index_col=0, parse_dates=True)
    prj.conn.add_stress(s,
                        "prec2",
                        kind="prec",
                        metadata={
                            "x": 100300,
                            "y": 400400
                        })

    # evap 1
    s = pd.read_csv("./tests/data/evap.csv", index_col=0, parse_dates=True)
    prj.conn.add_stress(s,
                        "evap1",
                        kind="evap",
                        metadata={
                            "x": 100000,
                            "y": 400000
                        })

    # evap 2
    s = pd.read_csv("./tests/data/evap_nb1.csv", index_col=0, parse_dates=True)
    prj.conn.add_stress(s,
                        "evap2",
                        kind="evap",
                        metadata={
                            "x": 100300,
                            "y": 400400
                        })
    return prj
Пример #3
0
def create_pastastore(oc,
                      pstore,
                      pstore_name='',
                      conn=pst.DictConnector("my_conn"),
                      add_metadata=True,
                      obs_column='stand_m_tov_nap',
                      kind='oseries',
                      verbose=False):
    """add observations to a new or existing pastastore

    Parameters
    ----------
    oc : observation.ObsCollection
        collection of observations
    pstore : pastastore.PastasProject, optional
        Existing pastastore, if None a new project is created
    pstore_name : str, optional
        Name of the pastastore only used if pstore is None
    conn : pastastore.connectors
        connector for database
    obs_column : str, optional
        Name of the column in the Obs dataframe to be used
    kind : str, optional
        The kind of series that is added to the pastas project
    add_metadata : boolean, optional
        If True metadata from the observations added to the project.
    verbose : boolean, optional
        Print additional information to the screen (default is False).

    Returns
    -------
    pstore : pastastore.PastasProject
        the pastas project with the series from the ObsCollection
    """
    if pstore is None:
        pstore = pst.PastaStore(pstore_name, connector=conn)

    for o in oc.obs.values:
        if verbose:
            print('add to pastastore -> {}'.format(o.name))

        if add_metadata:
            meta = _get_metadata_from_obs(o, verbose=verbose)
        else:
            meta = dict()

        if kind == 'oseries':
            pstore.conn.add_oseries(o[obs_column], o.name, metadata=meta)
        else:
            pstore.conn.add_stress(o[obs_column], o.name, kind, metadata=meta)

    return pstore
Пример #4
0
def build_model(conn):

    store = pst.PastaStore("test", conn)

    # oseries nb1
    if "oseries_nb1" not in store.oseries.index:
        o = pd.read_csv("./tests/data/head_nb1.csv",
                        index_col=0,
                        parse_dates=True)
        store.add_oseries(o,
                          "oseries_nb1",
                          metadata={
                              "x": 100300,
                              "y": 400400
                          })

    # prec nb1
    if "prec_nb1" not in store.stresses.index:
        s = pd.read_csv("./tests/data/rain_nb1.csv",
                        index_col=0,
                        parse_dates=True)
        store.add_stress(s,
                         "prec_nb1",
                         kind="prec",
                         metadata={
                             "x": 100300,
                             "y": 400400
                         })

    # evap nb1
    if "evap_nb1" not in store.stresses.index:
        s = pd.read_csv("./tests/data/evap_nb1.csv",
                        index_col=0,
                        parse_dates=True)
        store.add_stress(s,
                         "evap_nb1",
                         kind="evap",
                         metadata={
                             "x": 100300,
                             "y": 400400
                         })

    ml = store.create_model("oseries_nb1", add_recharge=True)

    return ml
Пример #5
0
def example_pastastore(conn="DictConnector"):
    """Example dataset loaded into PastaStore.

    Parameters
    ----------
    conn : str or Connector, optional
        name of Connector type, by default "DictConnector", which
        initializes a default Connector. If an Connector instance is passed,
        use that Connector.

    Returns
    -------
    pstore : pastastore.PastaStore
        PastaStore containing example dataset
    """

    # check it test dataset is available
    datadir = os.path.join(os.path.dirname(__file__), "../tests/data")
    if not os.path.exists(datadir):
        raise FileNotFoundError("Test datasets not available! "
                                "Clone repository from GitHub.")

    # initialize default connector if conn is str
    if not isinstance(conn, BaseConnector):
        conn = _default_connector(conn)

    # initialize PastaStore
    pstore = pst.PastaStore("example", conn)

    # add data

    # oseries 1
    o = pd.read_csv(os.path.join(datadir, "obs.csv"),
                    index_col=0,
                    parse_dates=True)
    pstore.add_oseries(o, "oseries1", metadata={"x": 165000, "y": 424000})
    # oseries 2
    o = pd.read_csv(os.path.join(datadir, "head_nb1.csv"),
                    index_col=0,
                    parse_dates=True)
    pstore.add_oseries(o, "oseries2", metadata={"x": 164000, "y": 423000})

    # oseries 3
    o = pd.read_csv(os.path.join(datadir, "gw_obs.csv"),
                    index_col=0,
                    parse_dates=True)
    pstore.add_oseries(o, "oseries3", metadata={"x": 165554, "y": 422685})

    # prec 1
    s = pd.read_csv(os.path.join(datadir, "rain.csv"),
                    index_col=0,
                    parse_dates=True)
    pstore.add_stress(s,
                      "prec1",
                      kind="prec",
                      metadata={
                          "x": 165050,
                          "y": 424050
                      })

    # prec 2
    s = pd.read_csv(os.path.join(datadir, "rain_nb1.csv"),
                    index_col=0,
                    parse_dates=True)
    pstore.add_stress(s,
                      "prec2",
                      kind="prec",
                      metadata={
                          "x": 164010,
                          "y": 423000
                      })

    # evap 1
    s = pd.read_csv(os.path.join(datadir, "evap.csv"),
                    index_col=0,
                    parse_dates=True)
    pstore.add_stress(s,
                      "evap1",
                      kind="evap",
                      metadata={
                          "x": 164500,
                          "y": 424000
                      })

    # evap 2
    s = pd.read_csv(os.path.join(datadir, "evap_nb1.csv"),
                    index_col=0,
                    parse_dates=True)
    pstore.add_stress(s,
                      "evap2",
                      kind="evap",
                      metadata={
                          "x": 164000,
                          "y": 423030
                      })

    # well 1
    s = pd.read_csv(os.path.join(datadir, "well.csv"),
                    index_col=0,
                    parse_dates=True)
    pstore.add_stress(s,
                      "well1",
                      kind="well",
                      metadata={
                          "x": 164691,
                          "y": 423579
                      })

    # river notebook data (nb5)
    oseries = pd.read_csv(os.path.join(datadir, "nb5_head.csv"),
                          parse_dates=True,
                          index_col=0).squeeze("columns")
    pstore.add_oseries(oseries,
                       "head_nb5",
                       metadata={
                           "x": 200_000,
                           "y": 450_000.
                       })

    rain = pd.read_csv(os.path.join(datadir, "nb5_prec.csv"),
                       parse_dates=True,
                       index_col=0).squeeze("columns")
    pstore.add_stress(rain,
                      "prec_nb5",
                      kind="prec",
                      metadata={
                          "x": 200_000,
                          "y": 450_000.
                      })
    evap = pd.read_csv(os.path.join(datadir, "nb5_evap.csv"),
                       parse_dates=True,
                       index_col=0).squeeze("columns")
    pstore.add_stress(evap,
                      "evap_nb5",
                      kind="evap",
                      metadata={
                          "x": 200_000,
                          "y": 450_000.
                      })
    waterlevel = pd.read_csv(os.path.join(datadir, "nb5_riv.csv"),
                             parse_dates=True,
                             index_col=0).squeeze("columns")
    pstore.add_stress(waterlevel,
                      "riv_nb5",
                      kind="riv",
                      metadata={
                          "x": 200_000,
                          "y": 450_000.
                      })

    # multiwell notebook data
    fname = os.path.join(datadir, 'MenyanthesTest.men')
    meny = ps.read.MenyData(fname)

    oseries = meny.H['Obsevation well']['values'].dropna()
    ometa = {
        "x": meny.H["Obsevation well"]['xcoord'],
        "y": meny.H["Obsevation well"]['ycoord']
    }
    pstore.add_oseries(oseries, "head_mw", metadata=ometa)

    prec = meny.IN['Precipitation']['values']
    prec.index = prec.index.round("D")
    prec.name = "prec"
    pmeta = {
        "x": meny.IN['Precipitation']['xcoord'],
        "y": meny.IN['Precipitation']['ycoord']
    }
    pstore.add_stress(prec, "prec_mw", kind="prec", metadata=pmeta)
    evap = meny.IN['Evaporation']['values']
    evap.index = evap.index.round("D")
    evap.name = "evap"
    emeta = {
        "x": meny.IN['Evaporation']['xcoord'],
        "y": meny.IN['Evaporation']['ycoord']
    }
    pstore.add_stress(evap, "evap_mw", kind="evap", metadata=emeta)

    extraction_names = ['Extraction 2', 'Extraction 3']
    for extr in extraction_names:
        wmeta = {"x": meny.IN[extr]["xcoord"], "y": meny.IN[extr]["ycoord"]}
        # replace spaces in names for Pastas
        name = extr.replace(" ", "_").lower()
        ts = meny.IN[extr]["values"]
        pstore.add_stress(ts, name, kind="well", metadata=wmeta)

    return pstore
Пример #6
0
def initialize_project(conn):

    pstore = pst.PastaStore("test_project", conn)

    # oseries 1
    o = pd.read_csv("./tests/data/obs.csv", index_col=0, parse_dates=True)
    pstore.add_oseries(o, "oseries1", metadata={"x": 165000, "y": 424000})
    # oseries 2
    o = pd.read_csv("./tests/data/head_nb1.csv", index_col=0, parse_dates=True)
    pstore.add_oseries(o, "oseries2", metadata={"x": 164000, "y": 423000})

    # oseries 3
    o = pd.read_csv("./tests/data/gw_obs.csv", index_col=0, parse_dates=True)
    pstore.add_oseries(o, "oseries3", metadata={"x": 165554, "y": 422685})

    # prec 1
    s = pd.read_csv("./tests/data/rain.csv", index_col=0, parse_dates=True)
    pstore.add_stress(s,
                      "prec1",
                      kind="prec",
                      metadata={
                          "x": 165050,
                          "y": 424050
                      })

    # prec 2
    s = pd.read_csv("./tests/data/rain_nb1.csv", index_col=0, parse_dates=True)
    pstore.add_stress(s,
                      "prec2",
                      kind="prec",
                      metadata={
                          "x": 164010,
                          "y": 423000
                      })

    # evap 1
    s = pd.read_csv("./tests/data/evap.csv", index_col=0, parse_dates=True)
    pstore.add_stress(s,
                      "evap1",
                      kind="evap",
                      metadata={
                          "x": 164500,
                          "y": 424000
                      })

    # evap 2
    s = pd.read_csv("./tests/data/evap_nb1.csv", index_col=0, parse_dates=True)
    pstore.add_stress(s,
                      "evap2",
                      kind="evap",
                      metadata={
                          "x": 164000,
                          "y": 423030
                      })

    # well 1
    s = pd.read_csv("./tests/data/well.csv", index_col=0, parse_dates=True)
    pstore.add_stress(s,
                      "well1",
                      kind="well",
                      metadata={
                          "x": 164691,
                          "y": 423579
                      })

    return pstore