def test_initialization_4(self, recwarn):
     """test overwriting and raising warning when number_of_turbines and
     total_capacity in wind turbine fleet do not fit"""
     wt1 = WindTurbine(**self.test_turbine)
     wt2 = WindTurbine(**self.test_turbine_2)
     wind_turbine_fleet = pd.DataFrame(
         data={
             "wind_turbine": [wt1, wt2],
             "number_of_turbines": [3, 2],
             "total_capacity": [3, np.nan],
         },
         index=[0, 1],
     )
     windfarm = WindFarm(wind_turbine_fleet=wind_turbine_fleet)
     total_cap_wt1_expected = (
         wt1.nominal_power *
         wind_turbine_fleet.loc[0, "number_of_turbines"])
     assert (windfarm.wind_turbine_fleet.loc[0, "total_capacity"] ==
             total_cap_wt1_expected)
     total_cap_wt2_expected = (
         wt2.nominal_power *
         wind_turbine_fleet.loc[1, "number_of_turbines"])
     assert (windfarm.wind_turbine_fleet.loc[1, "total_capacity"] ==
             total_cap_wt2_expected)
     assert recwarn.pop(WindpowerlibUserWarning)
Beispiel #2
0
def initialise_wind_turbines():
    r"""
    Initialises two :class:`~.wind_turbine.WindTurbine` objects.

    Function shows two ways to initialise a WindTurbine object. You can either
    specify your own turbine, as done below for 'myTurbine', or fetch power
    and/or power coefficient curve data from data files provided by the
    windpowerlib, as done for the 'enerconE126'.
    Execute ``windpowerlib.wind_turbine.get_turbine_types()`` or
    ``windpowerlib.wind_turbine.get_turbine_types(
    filename='power_coefficient_curves.csv')`` to get a list of all wind
    turbines for which power and power coefficient curves respectively are
    provided.

    Returns
    -------
    Tuple (WindTurbine, WindTurbine)

    """

    # specification of own wind turbine (Note: power coefficient values and
    # nominal power have to be in Watt)
    myTurbine = {
        'turbine_name':
        'myTurbine',
        'nominal_power':
        3e6,  # in W
        'hub_height':
        105,  # in m
        'rotor_diameter':
        90,  # in m
        'power_curve':
        pd.DataFrame(
            data={
                'values':
                [p * 1000
                 for p in [0.0, 26.0, 180.0, 1500.0, 3000.0, 3000.0]],  # in W
                'wind_speed': [0.0, 3.0, 5.0, 10.0, 15.0, 25.0]
            })  # in m/s
    }
    # initialise WindTurbine object
    my_turbine = WindTurbine(**myTurbine)

    # specification of wind turbine where power curve is provided
    # if you want to use the power coefficient curve change the value of
    # 'fetch_curve' to 'power_coefficient_curve'
    enerconE126 = {
        'turbine_name': 'ENERCON E 126 7500',  # turbine name as in register
        'hub_height': 135,  # in m
        'rotor_diameter': 127,  # in m
        'fetch_curve': 'power_curve'  # fetch power curve
    }
    # initialise WindTurbine object
    e126 = WindTurbine(**enerconE126)

    return my_turbine, e126
 def test_initialization_dataframe(self):
     """test simple initialization with wind turbine fleet dataframe"""
     wind_turbine_fleet = pd.DataFrame(
         data={
             'wind_turbine': [
                 WindTurbine(**self.test_turbine),
                 WindTurbine(**self.test_turbine_2)
             ],
             'number_of_turbines': [3, 2]
         })
     windfarm = WindFarm(wind_turbine_fleet=wind_turbine_fleet)
     assert 3 * 4.2e6 + 2 * 2e6 == windfarm.nominal_power
 def test_initialization_list(self):
     """test simple initialization with wind turbine fleet list"""
     wind_turbine_fleet = [{
         'wind_turbine': WindTurbine(**self.test_turbine),
         'number_of_turbines': 3
     }, {
         'wind_turbine':
         WindTurbine(**self.test_turbine_2),
         'number_of_turbines':
         2
     }]
     windfarm = WindFarm(wind_turbine_fleet=wind_turbine_fleet)
     assert 3 * 4.2e6 + 2 * 2e6 == windfarm.nominal_power
 def test_initialization_5(self):
     """test catching error when number of turbines cannot be deduced"""
     wt = WindTurbine(**self.test_turbine)
     wt.nominal_power = None
     test_farm = {
         "wind_turbine_fleet": [{
             "wind_turbine": wt,
             "total_capacity": 3e6
         }]
     }
     msg = "Number of turbines of type"
     with pytest.raises(ValueError, match=msg):
         WindFarm(**test_farm)
 def test_initialization_7(self):
     """test catching error when total capacity cannot be deduced"""
     wt = WindTurbine(**self.test_turbine)
     wt.nominal_power = None
     test_farm = {
         'wind_turbine_fleet': [{
             'wind_turbine': wt,
             'number_of_turbines': 3
         }]
     }
     msg = 'Total capacity of turbines of type'
     with pytest.raises(ValueError, match=msg):
         WindFarm(**test_farm)
Beispiel #7
0
def initialize_wind_turbines():
    r"""
    Initializes three :class:`~.wind_turbine.WindTurbine` objects.

    This function shows three ways to initialize a WindTurbine object. You can
    either use turbine data from the OpenEnergy Database (oedb) turbine library
    that is provided along with the windpowerlib, as done for the
    'enercon_e126', or specify your own turbine by directly providing a power
    (coefficient) curve, as done below for 'my_turbine', or provide your own
    turbine data in csv files, as done for 'dummy_turbine'.

    To get a list of all wind turbines for which power and/or power coefficient
    curves are provided execute `
    `windpowerlib.wind_turbine.get_turbine_types()``.

    Returns
    -------
    Tuple (:class:`~.wind_turbine.WindTurbine`,
           :class:`~.wind_turbine.WindTurbine`,
           :class:`~.wind_turbine.WindTurbine`)

    """
    # ************************************************************************
    # **** Data is provided in the oedb turbine library **********************

    enercon_e126 = {
        "turbine_type": "E-126/4200",  # turbine type as in register
        "hub_height": 135,  # in m
    }
    e126 = WindTurbine(**enercon_e126)

    # ************************************************************************
    # **** Specification of wind turbine with your own data ******************
    # **** NOTE: power values and nominal power have to be in Watt
    my_turbine = {
        "nominal_power":
        3e6,  # in W
        "hub_height":
        105,  # in m
        "power_curve":
        pd.DataFrame(
            data={
                "value":
                [p * 1000
                 for p in [0.0, 26.0, 180.0, 1500.0, 3000.0, 3000.0]],  # in W
                "wind_speed": [0.0, 3.0, 5.0, 10.0, 15.0, 25.0],
            }),  # in m/s
    }
    my_turbine = WindTurbine(**my_turbine)

    return my_turbine, e126
 def test_initialization_3(self):
     """test catching error when wind_turbine not specified in
     wind_turbine_fleet"""
     wind_turbine_fleet = pd.DataFrame(
         data={
             'wind_turbines': [
                 WindTurbine(**self.test_turbine),
                 WindTurbine(**self.test_turbine_2)
             ],
             'number_of_turbines': [3, 2]
         })
     msg = 'Missing wind_turbine key/column in wind_turbine_fleet'
     with pytest.raises(KeyError, match=msg):
         WindFarm(wind_turbine_fleet=wind_turbine_fleet)
 def test_initialization_list_2(self):
     """test simple initialization with wind turbine fleet list where
     once number of turbines and once total capacity is provided"""
     wind_turbine_fleet = [{
         'wind_turbine': WindTurbine(**self.test_turbine),
         'number_of_turbines': 3
     }, {
         'wind_turbine':
         WindTurbine(**self.test_turbine_2),
         'total_capacity':
         2 * 2e6
     }]
     windfarm = WindFarm(wind_turbine_fleet=wind_turbine_fleet)
     assert 3 * 4.2e6 + 2 * 2e6 == windfarm.nominal_power
 def test_repr(self):
     """Test string representation of WindFarm"""
     test_fleet = [{
         'wind_turbine': WindTurbine(**self.test_turbine),
         'number_of_turbines': 2
     }]
     assert 'E-126/4200' in repr(WindFarm(wind_turbine_fleet=test_fleet))
Beispiel #11
0
    def get_wind_turbine(self):
        r"""
        fetch power and/or power coefficient curve data from the OpenEnergy 
        Database (oedb)
        Execute ``windpowerlib.wind_turbine.get_turbine_types()`` to get a table
        including all wind turbines for which power and/or power coefficient curves
        are provided.
    
        Returns
        -------
        WindTurbine
    
        """

        # specification of wind turbine where power curve is provided in the oedb
        # if you want to use the power coefficient curve change the value of
        # 'fetch_curve' to 'power_coefficient_curve'
        wind_turbine = {
            'turbine_type': self.turbine_type,  # turbine type as in register
            'hub_height': self.hub_height,  # in m
            'rotor_diameter': self.rotor_diameter,  # in m
            'fetch_curve': self.fetch_curve,  # fetch power curve
            'data_source':
            self.data_source  # data source oedb or name of csv file
        }
        # initialize WindTurbine object
        self.wind_turbine = WindTurbine(**wind_turbine)

        return self.wind_turbine
 def test_repr(self):
     """Test string representation of WindFarm"""
     test_fleet = [{
         "wind_turbine": WindTurbine(**self.test_turbine),
         "number_of_turbines": 2,
     }]
     assert "E-126/4200" in repr(WindFarm(wind_turbine_fleet=test_fleet))
 def test_aggregation_of_power_curve_with_missing_power_curve(self):
     """Test WindFarm.assign_power_curve() with missing power_curve."""
     wt1 = WindTurbine(**self.test_turbine)
     wt1.power_curve = None
     wind_turbine_fleet = [{
         'wind_turbine': wt1,
         'number_of_turbines': 3
     }, {
         'wind_turbine':
         WindTurbine(**self.test_turbine_2),
         'number_of_turbines':
         2
     }]
     windfarm = WindFarm(wind_turbine_fleet=wind_turbine_fleet)
     msg = 'For an aggregated wind farm power curve each wind'
     with pytest.raises(ValueError, match=msg):
         windfarm.assign_power_curve()
 def test_mean_hub_height(self):
     """tests mean_hub_height method"""
     test_farm = {
         "wind_turbine_fleet": [
             {
                 "wind_turbine": WindTurbine(**self.test_turbine),
                 "number_of_turbines": 2,
             },
             {
                 "wind_turbine": WindTurbine(**self.test_turbine_2),
                 "total_capacity": 3e6,
             },
         ]
     }
     windfarm = WindFarm(**test_farm)
     assert 97.265 == pytest.approx(windfarm.mean_hub_height().hub_height,
                                    1e-3)
 def test_mean_hub_height(self):
     """tests mean_hub_height method"""
     test_farm = {
         'wind_turbine_fleet': [{
             'wind_turbine':
             WindTurbine(**self.test_turbine),
             'number_of_turbines':
             2
         }, {
             'wind_turbine':
             WindTurbine(**self.test_turbine_2),
             'total_capacity':
             3e6
         }]
     }
     windfarm = WindFarm(**test_farm)
     assert 97.265 == pytest.approx(windfarm.mean_hub_height().hub_height,
                                    1e-3)
 def test_wind_farm_efficiency_with_missing_efficiency(self):
     """Test WindFarm.assign_power_curve() with missing efficiency while
     `wake_losses_model` is 'wind_farm_efficiency'."""
     wind_turbine_fleet = [{
         "wind_turbine": WindTurbine(**self.test_turbine),
         "number_of_turbines": 3,
     }]
     windfarm = WindFarm(wind_turbine_fleet=wind_turbine_fleet)
     msg = "If you use `wake_losses_model`"
     with pytest.raises(ValueError, match=msg):
         windfarm.assign_power_curve()
 def test_initialization_4(self, recwarn):
     """test overwriting and raising warning when number_of_turbines and
     total_capacity in wind turbine fleet do not fit"""
     wt1 = WindTurbine(**self.test_turbine)
     wt2 = WindTurbine(**self.test_turbine_2)
     wind_turbine_fleet = pd.DataFrame(data={
         'wind_turbine': [wt1, wt2],
         'number_of_turbines': [3, 2],
         'total_capacity': [3, np.nan]
     },
                                       index=[0, 1])
     windfarm = WindFarm(wind_turbine_fleet=wind_turbine_fleet)
     total_cap_wt1_expected = \
         wt1.nominal_power * wind_turbine_fleet.loc[0, 'number_of_turbines']
     assert windfarm.wind_turbine_fleet.loc[0, 'total_capacity'] == \
            total_cap_wt1_expected
     total_cap_wt2_expected = \
         wt2.nominal_power * wind_turbine_fleet.loc[1, 'number_of_turbines']
     assert windfarm.wind_turbine_fleet.loc[1, 'total_capacity'] == \
            total_cap_wt2_expected
     assert recwarn.pop(WindpowerlibUserWarning)
 def test_initialization_6(self):
     """test catching error when neither number_of_turbines nor
     total_capacity is provided"""
     test_farm = {
         'wind_turbine_fleet': [{
             'wind_turbine':
             WindTurbine(**self.test_turbine),
             'number_of_turbine':
             3e6
         }]
     }
     msg = 'Number of turbines of type '
     with pytest.raises(ValueError, match=msg):
         WindFarm(**test_farm)
    3e6,  # in W
    'hub_height':
    105,  # in m
    'rotor_diameter':
    90,  # in m
    'power_curve':
    pd.DataFrame(
        data={
            'value':
            [p * 1000
             for p in [0.0, 26.0, 180.0, 1500.0, 3000.0, 3000.0]],  # in W
            'wind_speed': [0.0, 3.0, 5.0, 10.0, 15.0, 25.0]
        })  # in m/s
}
# initialize WindTurbine object
my_turbine = WindTurbine(**my_turbine)

# specification of wind turbine where power curve is provided
# if you want to use the power coefficient curve change the value of
# 'fetch_curve' to 'power_coefficient_curve'
enercon_e126 = {
    'name': 'E-126/4200',  # turbine name as in register
    'hub_height': 135,  # in m
    'rotor_diameter': 127,  # in m
    'fetch_curve': 'power_curve',  # fetch power curve #
    'data_source': 'oedb'  # data source oedb or name of csv file
}
# initialize WindTurbine object
e126 = WindTurbine(**enercon_e126)

##########################################################################
Beispiel #20
0
def initialize_wind_turbines():
    r"""
    Initializes three :class:`~.wind_turbine.WindTurbine` objects.

    This function shows three ways to initialize a WindTurbine object. You can
    either use turbine data from the OpenEnergy Database (oedb) turbine library
    that is provided along with the windpowerlib, as done for the
    'enercon_e126', or specify your own turbine by directly providing a power
    (coefficient) curve, as done below for 'my_turbine', or provide your own
    turbine data in csv files, as done for 'dummy_turbine'.

    To get a list of all wind turbines for which power and/or power coefficient
    curves are provided execute `
    `windpowerlib.wind_turbine.get_turbine_types()``.

    Returns
    -------
    Tuple (:class:`~.wind_turbine.WindTurbine`,
           :class:`~.wind_turbine.WindTurbine`,
           :class:`~.wind_turbine.WindTurbine`)

    """

    # specification of wind turbine where data is provided in the oedb
    # turbine library
    enercon_e126 = {
        'turbine_type': 'E-126/4200',  # turbine type as in register
        'hub_height': 135  # in m
    }
    # initialize WindTurbine object
    e126 = WindTurbine(**enercon_e126)

    # specification of own wind turbine (Note: power values and nominal power
    # have to be in Watt)
    my_turbine = {
        'nominal_power':
        3e6,  # in W
        'hub_height':
        105,  # in m
        'power_curve':
        pd.DataFrame(
            data={
                'value':
                [p * 1000
                 for p in [0.0, 26.0, 180.0, 1500.0, 3000.0, 3000.0]],  # in W
                'wind_speed': [0.0, 3.0, 5.0, 10.0, 15.0, 25.0]
            })  # in m/s
    }
    # initialize WindTurbine object
    my_turbine = WindTurbine(**my_turbine)

    # specification of wind turbine where power coefficient curve and nominal
    # power is provided in an own csv file
    csv_path = os.path.join(os.path.dirname(__file__), 'data')
    dummy_turbine = {
        'turbine_type': "DUMMY 1",
        'hub_height': 100,  # in m
        'rotor_diameter': 70,  # in m
        'path': csv_path
    }
    # initialize WindTurbine object
    dummy_turbine = WindTurbine(**dummy_turbine)

    return my_turbine, e126, dummy_turbine
Beispiel #21
0
    def __init__(
            self,
            wind_turbines: list = [],
            pv_arrays: list = [],
            latitude: float = 57.6568,
            longitude: float = -3.5818,
            altitude: float = 10,
            roughness_length: float = 0.15,  # roughness length (bit of a guess)
            hellman_exp: float = 0.2):
        """ Set up the renewable energy generation
        """

        # This needs to be repeated in every forecast
        self.roughness_length = roughness_length

        # Initialise empty forecast dataframe, just so nothing complains
        self.wind_forecast = pd.DataFrame()

        self.pv_forecast = pd.DataFrame()

        # Wind turbine(s)
        turbines = []

        for turbine in wind_turbines:
            turbines.append({
                'wind_turbine':
                WindTurbine(turbine['name'],
                            turbine['hub_height'],
                            nominal_power=turbine['nominal_power'],
                            rotor_diameter=turbine['rotor_diameter'],
                            power_curve=turbine['power_curve']),
                'number_of_turbines':
                turbine['qty']
            })

        local_wind_farm = WindFarm('Local windfarm', turbines,
                                   [latitude, longitude])

        # TODO - check for learned local data & overwrite power_curve

        self.wind_modelchain = TurbineClusterModelChain(
            local_wind_farm,
            smoothing=False,
            hellman_exp=hellman_exp,
        )

        # Initialise PV models
        self.pv_location = Location(latitude=latitude,
                                    longitude=longitude,
                                    altitude=altitude)

        # Now set up the PV array & system.
        cec_pv_model_params = pvlib.pvsystem.retrieve_sam('CECMod')
        sandia_pv_model_params = pvlib.pvsystem.retrieve_sam('SandiaMod')
        cec_inverter_model_params = pvlib.pvsystem.retrieve_sam('CECInverter')
        adr_inverter_model_params = pvlib.pvsystem.retrieve_sam('ADRInverter')

        self.pv_modelchains = {}

        for pv_array in pv_arrays:

            # Try to find the module names in the libraries
            if pv_array['module_name'] in cec_pv_model_params:
                pv_array['module_parameters'] = cec_pv_model_params[
                    pv_array['module_name']]
            elif pv_array['module_name'] in sandia_pv_model_params:
                pv_array['module_parameters'] = sandia_pv_model_params[
                    pv_array['module_name']]
            else:
                raise RenewablesException('Could not retrieve PV module data')

            # Do the same with the inverter(s)
            if pv_array['inverter_name'] in cec_inverter_model_params:
                pv_array['inverter_parameters'] = cec_inverter_model_params[
                    pv_array['inverter_name']]
            elif pv_array['inverter_name'] in adr_inverter_model_params:
                pv_array['inverter_parameters'] = adr_inverter_model_params[
                    pv_array['inverter_name']]
            else:
                raise RenewablesException('Could not retrieve PV module data')

            self.pv_modelchains[pv_array['name']] = ModelChain(
                PVSystem(**pv_array),
                self.pv_location,
                aoi_model='physical',
                spectral_model='no_loss')
Beispiel #22
0
def initialize_wind_turbines():
    r"""
    Initializes three :class:`~.wind_turbine.WindTurbine` objects.

    This function shows three ways to initialize a WindTurbine object. You can
    either use turbine data from the OpenEnergy Database (oedb) turbine library
    that is provided along with the windpowerlib, as done for the
    'enercon_e126', or specify your own turbine by directly providing a power
    (coefficient) curve, as done below for 'my_turbine', or provide your own
    turbine data in csv files, as done for 'my_turbine2'.

    To get a list of all wind turbines for which power and/or power coefficient
    curves are provided execute `
    `windpowerlib.wind_turbine.get_turbine_types()``.

    Returns
    -------
    Tuple (:class:`~.wind_turbine.WindTurbine`,
           :class:`~.wind_turbine.WindTurbine`,
           :class:`~.wind_turbine.WindTurbine`)

    """
    # ************************************************************************
    # **** Data is provided in the oedb turbine library **********************

    enercon_e126 = {
        "turbine_type": "E-126/4200",  # turbine type as in register
        "hub_height": 135,  # in m
    }
    e126 = WindTurbine(**enercon_e126)

    # ************************************************************************
    # **** Specification of wind turbine with your own data ******************
    # **** NOTE: power values and nominal power have to be in Watt

    my_turbine = {
        "nominal_power":
        3e6,  # in W
        "hub_height":
        105,  # in m
        "power_curve":
        pd.DataFrame(
            data={
                "value":
                [p * 1000
                 for p in [0.0, 26.0, 180.0, 1500.0, 3000.0, 3000.0]],  # in W
                "wind_speed": [0.0, 3.0, 5.0, 10.0, 15.0, 25.0],
            }),  # in m/s
    }
    my_turbine = WindTurbine(**my_turbine)

    # ************************************************************************
    # **** Specification of wind turbine with data in own file ***************

    # Read your turbine data from your data file using functions like
    # pandas.read_csv().
    # >>> import pandas as pd
    # >>> my_data = pd.read_csv("path/to/my/data/file")
    # >>> my_power = my_data["my_power"]
    # >>> my_wind_speed = my_data["my_wind_speed"]

    my_power = pd.Series(
        [0.0, 39000.0, 270000.0, 2250000.0, 4500000.0, 4500000.0])
    my_wind_speed = (0.0, 3.0, 5.0, 10.0, 15.0, 25.0)

    my_turbine2 = {
        "nominal_power":
        6e6,  # in W
        "hub_height":
        115,  # in m
        "power_curve":
        create_power_curve(wind_speed=my_wind_speed, power=my_power),
    }
    my_turbine2 = WindTurbine(**my_turbine2)

    return my_turbine, e126, my_turbine2
Beispiel #23
0
def initialize_wind_turbines():
    r"""
    Initializes two :class:`~.wind_turbine.WindTurbine` objects.

    Function shows three ways to initialize a WindTurbine object. You can
    either specify your own turbine, as done below for 'my_turbine', or fetch
    power and/or power coefficient curve data from the OpenEnergy Database
    (oedb), as done for the 'enercon_e126', or provide your turbine data in csv
    files as done for 'dummy_turbine' with an example file.
    Execute ``windpowerlib.wind_turbine.get_turbine_types()`` to get a table
    including all wind turbines for which power and/or power coefficient curves
    are provided.

    Returns
    -------
    Tuple (WindTurbine, WindTurbine, WindTurbine)

    """

    # specification of own wind turbine (Note: power values and nominal power
    # have to be in Watt)
    my_turbine = {
        'name':
        'myTurbine',
        'nominal_power':
        3e6,  # in W
        'hub_height':
        105,  # in m
        'rotor_diameter':
        90,  # in m
        'power_curve':
        pd.DataFrame(
            data={
                'value':
                [p * 1000
                 for p in [0.0, 26.0, 180.0, 1500.0, 3000.0, 3000.0]],  # in W
                'wind_speed': [0.0, 3.0, 5.0, 10.0, 15.0, 25.0]
            })  # in m/s
    }
    # initialize WindTurbine object
    my_turbine = WindTurbine(**my_turbine)

    # specification of wind turbine where power curve is provided in the oedb
    # if you want to use the power coefficient curve change the value of
    # 'fetch_curve' to 'power_coefficient_curve'
    enercon_e126 = {
        'name': 'E-126/4200',  # turbine type as in register #
        'hub_height': 135,  # in m
        'rotor_diameter': 127,  # in m
        'fetch_curve': 'power_curve',  # fetch power curve #
        'data_source': 'oedb'  # data source oedb or name of csv file
    }
    # initialize WindTurbine object
    e126 = WindTurbine(**enercon_e126)

    # specification of wind turbine where power coefficient curve is provided
    # by a csv file
    csv_file = os.path.join(os.path.dirname(__file__), 'data',
                            'example_power_coefficient_curves.csv')
    dummy_turbine = {
        'name': 'DUMMY 1',  # turbine type as in file #
        'hub_height': 100,  # in m
        'rotor_diameter': 70,  # in m
        'fetch_curve': 'power_coefficient_curve',  # fetch cp curve #
        'data_source': csv_file  # data source
    }
    # initialize WindTurbine object
    dummy_turbine = WindTurbine(**dummy_turbine)

    return my_turbine, e126, dummy_turbine