"""
The ``modelchain`` module contains functions and classes that combine
many of the PV power modeling steps. These tools make it easy to
get started with pvlib and demonstrate standard ways to use the
library. With great power comes great responsibility: users should take
the time to read the source code for the module.
"""
from functools import partial
import logging
import warnings
import pandas as pd
from pvlib import (solarposition, pvsystem, clearsky, atmosphere, tools)
from pvlib.tracking import SingleAxisTracker
import pvlib.irradiance # avoid name conflict with full import
[docs]def basic_chain(times, latitude, longitude,
module_parameters, inverter_parameters,
irradiance=None, weather=None,
surface_tilt=None, surface_azimuth=None,
orientation_strategy=None,
transposition_model='haydavies',
solar_position_method='nrel_numpy',
airmass_model='kastenyoung1989',
altitude=None, pressure=None,
**kwargs):
"""
An experimental function that computes all of the modeling steps
necessary for calculating power or energy for a PV system at a given
location.
Parameters
----------
times : DatetimeIndex
Times at which to evaluate the model.
latitude : float.
Positive is north of the equator.
Use decimal degrees notation.
longitude : float.
Positive is east of the prime meridian.
Use decimal degrees notation.
module_parameters : None, dict or Series
Module parameters as defined by the SAPM.
inverter_parameters : None, dict or Series
Inverter parameters as defined by the CEC.
irradiance : None or DataFrame
If None, calculates clear sky data.
Columns must be 'dni', 'ghi', 'dhi'.
weather : None or DataFrame
If None, assumes air temperature is 20 C and
wind speed is 0 m/s.
Columns must be 'wind_speed', 'temp_air'.
surface_tilt : float or Series
Surface tilt angles in decimal degrees.
The tilt angle is defined as degrees from horizontal
(e.g. surface facing up = 0, surface facing horizon = 90)
surface_azimuth : float or Series
Surface azimuth angles in decimal degrees.
The azimuth convention is defined
as degrees east of north
(North=0, South=180, East=90, West=270).
orientation_strategy : None or str
The strategy for aligning the modules.
If not None, sets the ``surface_azimuth`` and ``surface_tilt``
properties of the ``system``. Allowed strategies include 'flat',
'south_at_latitude_tilt'. Ignored for SingleAxisTracker systems.
transposition_model : str
Passed to system.get_irradiance.
solar_position_method : str
Passed to location.get_solarposition.
airmass_model : str
Passed to location.get_airmass.
altitude : None or float
If None, computed from pressure. Assumed to be 0 m
if pressure is also None.
pressure : None or float
If None, computed from altitude. Assumed to be 101325 Pa
if altitude is also None.
**kwargs
Arbitrary keyword arguments.
See code for details.
Returns
-------
output : (dc, ac)
Tuple of DC power (with SAPM parameters) (DataFrame) and AC
power (Series).
"""
# use surface_tilt and surface_azimuth if provided,
# otherwise set them using the orientation_strategy
if surface_tilt is not None and surface_azimuth is not None:
pass
elif orientation_strategy is not None:
surface_tilt, surface_azimuth = \
get_orientation(orientation_strategy, latitude=latitude)
else:
raise ValueError('orientation_strategy or surface_tilt and ' +
'surface_azimuth must be provided')
times = times
if altitude is None and pressure is None:
altitude = 0.
pressure = 101325.
elif altitude is None:
altitude = atmosphere.pres2alt(pressure)
elif pressure is None:
pressure = atmosphere.alt2pres(altitude)
solar_position = solarposition.get_solarposition(times, latitude,
longitude,
altitude=altitude,
pressure=pressure,
**kwargs)
# possible error with using apparent zenith with some models
airmass = atmosphere.relativeairmass(solar_position['apparent_zenith'],
model=airmass_model)
airmass = atmosphere.absoluteairmass(airmass, pressure)
dni_extra = pvlib.irradiance.extraradiation(solar_position.index)
dni_extra = pd.Series(dni_extra, index=solar_position.index)
aoi = pvlib.irradiance.aoi(surface_tilt, surface_azimuth,
solar_position['apparent_zenith'],
solar_position['azimuth'])
if irradiance is None:
linke_turbidity = clearsky.lookup_linke_turbidity(
solar_position.index, latitude, longitude)
irradiance = clearsky.ineichen(
solar_position['apparent_zenith'],
airmass,
linke_turbidity,
altitude=altitude,
dni_extra=dni_extra
)
total_irrad = pvlib.irradiance.total_irrad(
surface_tilt,
surface_azimuth,
solar_position['apparent_zenith'],
solar_position['azimuth'],
irradiance['dni'],
irradiance['ghi'],
irradiance['dhi'],
model=transposition_model,
dni_extra=dni_extra)
if weather is None:
weather = {'wind_speed': 0, 'temp_air': 20}
temps = pvsystem.sapm_celltemp(total_irrad['poa_global'],
weather['wind_speed'],
weather['temp_air'])
effective_irradiance = pvsystem.sapm_effective_irradiance(
total_irrad['poa_direct'], total_irrad['poa_diffuse'], airmass, aoi,
module_parameters)
dc = pvsystem.sapm(effective_irradiance, temps['temp_cell'],
module_parameters)
ac = pvsystem.snlinverter(dc['v_mp'], dc['p_mp'], inverter_parameters)
return dc, ac
[docs]def get_orientation(strategy, **kwargs):
"""
Determine a PV system's surface tilt and surface azimuth
using a named strategy.
Parameters
----------
strategy: str
The orientation strategy.
Allowed strategies include 'flat', 'south_at_latitude_tilt'.
**kwargs:
Strategy-dependent keyword arguments. See code for details.
Returns
-------
surface_tilt, surface_azimuth
"""
if strategy == 'south_at_latitude_tilt':
surface_azimuth = 180
surface_tilt = kwargs['latitude']
elif strategy == 'flat':
surface_azimuth = 180
surface_tilt = 0
else:
raise ValueError('invalid orientation strategy. strategy must ' +
'be one of south_at_latitude, flat,')
return surface_tilt, surface_azimuth
[docs]class ModelChain(object):
"""
An experimental class that represents all of the modeling steps
necessary for calculating power or energy for a PV system at a given
location using the SAPM.
CEC module specifications and the single diode model are not yet
supported.
Parameters
----------
system : PVSystem
A :py:class:`~pvlib.pvsystem.PVSystem` object that represents
the connected set of modules, inverters, etc.
location : Location
A :py:class:`~pvlib.location.Location` object that represents
the physical location at which to evaluate the model.
orientation_strategy : None or str
The strategy for aligning the modules. If not None, sets the
``surface_azimuth`` and ``surface_tilt`` properties of the
``system``. Allowed strategies include 'flat',
'south_at_latitude_tilt'. Ignored for SingleAxisTracker systems.
clearsky_model : str
Passed to location.get_clearsky.
transposition_model : str
Passed to system.get_irradiance.
solar_position_method : str
Passed to location.get_solarposition.
airmass_model : str
Passed to location.get_airmass.
dc_model: None, str, or function
If None, the model will be inferred from the contents of
system.module_parameters. Valid strings are 'sapm',
'singlediode', 'pvwatts'. The ModelChain instance will be passed
as the first argument to a user-defined function.
ac_model: None, str, or function
If None, the model will be inferred from the contents of
system.inverter_parameters and system.module_parameters. Valid
strings are 'snlinverter', 'adrinverter' (not implemented),
'pvwatts'. The ModelChain instance will be passed as the first
argument to a user-defined function.
aoi_model: None, str, or function
If None, the model will be inferred from the contents of
system.module_parameters. Valid strings are 'physical',
'ashrae', 'sapm', 'no_loss'. The ModelChain instance will be
passed as the first argument to a user-defined function.
spectral_model: None, str, or function
If None, the model will be inferred from the contents of
system.module_parameters. Valid strings are 'sapm',
'first_solar' (not implemented), 'no_loss'. The ModelChain
instance will be passed as the first argument to a user-defined
function.
temp_model: str or function
Valid strings are 'sapm'. The ModelChain instance will be passed
as the first argument to a user-defined function.
losses_model: str or function
Valid strings are 'pvwatts', 'no_loss'. The ModelChain instance
will be passed as the first argument to a user-defined function.
**kwargs
Arbitrary keyword arguments. Included for compatibility, but not
used.
"""
def __init__(self, system, location,
orientation_strategy='south_at_latitude_tilt',
clearsky_model='ineichen',
transposition_model='haydavies',
solar_position_method='nrel_numpy',
airmass_model='kastenyoung1989',
dc_model=None, ac_model=None, aoi_model=None,
spectral_model=None, temp_model='sapm',
losses_model='no_loss',
**kwargs):
self.system = system
self.location = location
self.clearsky_model = clearsky_model
self.transposition_model = transposition_model
self.solar_position_method = solar_position_method
self.airmass_model = airmass_model
# calls setters
self.dc_model = dc_model
self.ac_model = ac_model
self.aoi_model = aoi_model
self.spectral_model = spectral_model
self.temp_model = temp_model
self.losses_model = losses_model
self.orientation_strategy = orientation_strategy
self.weather = None
self.times = None
self.solar_position = None
def __repr__(self):
return ('ModelChain for: ' + str(self.system) +
' orientation_strategy: ' + str(self.orientation_strategy) +
' clearsky_model: ' + str(self.clearsky_model) +
' transposition_model: ' + str(self.transposition_model) +
' solar_position_method: ' + str(self.solar_position_method) +
' airmass_model: ' + str(self.airmass_model))
@property
def orientation_strategy(self):
return self._orientation_strategy
@orientation_strategy.setter
def orientation_strategy(self, strategy):
if strategy == 'None':
strategy = None
if strategy is not None:
self.system.surface_tilt, self.system.surface_azimuth = \
get_orientation(strategy, latitude=self.location.latitude)
self._orientation_strategy = strategy
@property
def dc_model(self):
return self._dc_model
@dc_model.setter
def dc_model(self, model):
if model is None:
self._dc_model = self.infer_dc_model()
elif isinstance(model, str):
model = model.lower()
if model == 'sapm':
self._dc_model = self.sapm
elif model == 'singlediode':
self._dc_model = self.singlediode
elif model == 'pvwatts':
self._dc_model = self.pvwatts_dc
else:
raise ValueError(model + ' is not a valid DC power model')
else:
self._dc_model = partial(model, self)
[docs] def infer_dc_model(self):
params = set(self.system.module_parameters.keys())
if set(['A0', 'A1', 'C7']) <= params:
return self.sapm
elif set(['a_ref', 'I_L_ref', 'I_o_ref', 'R_sh_ref', 'R_s']) <= params:
return self.singlediode
elif set(['pdc0', 'gamma_pdc']) <= params:
return self.pvwatts_dc
else:
raise ValueError('could not infer DC model from ' +
'system.module_parameters')
[docs] def sapm(self):
self.dc = self.system.sapm(self.effective_irradiance/1000.,
self.temps['temp_cell'])
self.dc = self.system.scale_voltage_current_power(self.dc)
return self
[docs] def singlediode(self):
(photocurrent, saturation_current, resistance_series,
resistance_shunt, nNsVth) = (
self.system.calcparams_desoto(self.effective_irradiance,
self.temps['temp_cell']))
self.desoto = (photocurrent, saturation_current, resistance_series,
resistance_shunt, nNsVth)
self.dc = self.system.singlediode(
photocurrent, saturation_current, resistance_series,
resistance_shunt, nNsVth)
self.dc = self.system.scale_voltage_current_power(self.dc).fillna(0)
return self
[docs] def pvwatts_dc(self):
self.dc = self.system.pvwatts_dc(self.effective_irradiance,
self.temps['temp_cell'])
return self
@property
def ac_model(self):
return self._ac_model
@ac_model.setter
def ac_model(self, model):
if model is None:
self._ac_model = self.infer_ac_model()
elif isinstance(model, str):
model = model.lower()
if model == 'snlinverter':
self._ac_model = self.snlinverter
elif model == 'adrinverter':
raise NotImplementedError
elif model == 'pvwatts':
self._ac_model = self.pvwatts_inverter
else:
raise ValueError(model + ' is not a valid AC power model')
else:
self._ac_model = partial(model, self)
[docs] def infer_ac_model(self):
inverter_params = set(self.system.inverter_parameters.keys())
module_params = set(self.system.module_parameters.keys())
if set(['C0', 'C1', 'C2']) <= inverter_params:
return self.snlinverter
elif set(['pdc0']) <= module_params:
return self.pvwatts_inverter
else:
raise ValueError('could not infer AC model from ' +
'system.inverter_parameters')
[docs] def snlinverter(self):
self.ac = self.system.snlinverter(self.dc['v_mp'], self.dc['p_mp'])
return self
[docs] def adrinverter(self):
raise NotImplementedError
return self
[docs] def pvwatts_inverter(self):
self.ac = self.system.pvwatts_ac(self.dc).fillna(0)
return self
@property
def aoi_model(self):
return self._aoi_model
@aoi_model.setter
def aoi_model(self, model):
if model is None:
self._aoi_model = self.infer_aoi_model()
elif isinstance(model, str):
model = model.lower()
if model == 'ashrae':
self._aoi_model = self.ashrae_aoi_loss
elif model == 'physical':
self._aoi_model = self.physical_aoi_loss
elif model == 'sapm':
self._aoi_model = self.sapm_aoi_loss
elif model == 'no_loss':
self._aoi_model = self.no_aoi_loss
else:
raise ValueError(model + ' is not a valid aoi loss model')
else:
self._aoi_model = partial(model, self)
[docs] def infer_aoi_model(self):
params = set(self.system.module_parameters.keys())
if set(['K', 'L', 'n']) <= params:
return self.physical_aoi_loss
elif set(['B5', 'B4', 'B3', 'B2', 'B1', 'B0']) <= params:
return self.sapm_aoi_loss
elif set(['b']) <= params:
return self.ashrae_aoi_loss
else:
raise ValueError('could not infer AOI model from ' +
'system.module_parameters')
[docs] def ashrae_aoi_loss(self):
self.aoi_modifier = self.system.ashraeiam(self.aoi)
return self
[docs] def physical_aoi_loss(self):
self.aoi_modifier = self.system.physicaliam(self.aoi)
return self
[docs] def sapm_aoi_loss(self):
self.aoi_modifier = self.system.sapm_aoi_loss(self.aoi)
return self
[docs] def no_aoi_loss(self):
self.aoi_modifier = 1
return self
@property
def spectral_model(self):
return self._spectral_model
@spectral_model.setter
def spectral_model(self, model):
if model is None:
self._spectral_model = self.infer_spectral_model()
elif isinstance(model, str):
model = model.lower()
if model == 'first_solar':
raise NotImplementedError
elif model == 'sapm':
self._spectral_model = self.sapm_spectral_loss
elif model == 'no_loss':
self._spectral_model = self.no_spectral_loss
else:
raise ValueError(model + ' is not a valid spectral loss model')
else:
self._spectral_model = partial(model, self)
[docs] def infer_spectral_model(self):
params = set(self.system.module_parameters.keys())
if set(['A4', 'A3', 'A2', 'A1', 'A0']) <= params:
return self.sapm_spectral_loss
else:
raise ValueError('could not infer spectral model from ' +
'system.module_parameters')
[docs] def first_solar_spectral_loss(self):
raise NotImplementedError
[docs] def sapm_spectral_loss(self):
self.spectral_modifier = self.system.sapm_spectral_loss(
self.airmass['airmass_absolute'])
return self
[docs] def no_spectral_loss(self):
self.spectral_modifier = 1
return self
@property
def temp_model(self):
return self._temp_model
@temp_model.setter
def temp_model(self, model):
if model is None:
self._temp_model = self.infer_temp_model()
elif isinstance(model, str):
model = model.lower()
if model == 'sapm':
self._temp_model = self.sapm_temp
else:
raise ValueError(model + ' is not a valid temp model')
else:
self._temp_model = partial(model, self)
[docs] def infer_temp_model(self):
raise NotImplementedError
[docs] def sapm_temp(self):
self.temps = self.system.sapm_celltemp(self.total_irrad['poa_global'],
self.weather['wind_speed'],
self.weather['temp_air'])
return self
@property
def losses_model(self):
return self._losses_model
@losses_model.setter
def losses_model(self, model):
if model is None:
self._losses_model = self.infer_losses_model()
elif isinstance(model, str):
model = model.lower()
if model == 'pvwatts':
self._losses_model = self.pvwatts_losses
elif model == 'no_loss':
self._losses_model = self.no_extra_losses
else:
raise ValueError(model + ' is not a valid losses model')
else:
self._losses_model = partial(model, self)
[docs] def infer_losses_model(self):
raise NotImplementedError
[docs] def pvwatts_losses(self):
self.losses = (100 - self.system.pvwatts_losses()) / 100.
self.ac *= self.losses
return self
[docs] def effective_irradiance_model(self):
fd = self.system.module_parameters.get('FD', 1.)
self.effective_irradiance = self.spectral_modifier * (
self.total_irrad['poa_direct']*self.aoi_modifier +
fd*self.total_irrad['poa_diffuse'])
return self
[docs] def complete_irradiance(self, times=None, weather=None):
"""
Determine the missing irradiation columns. Only two of the following
data columns (dni, ghi, dhi) are needed to calculate the missing data.
This function is not safe at the moment. Results can be too high or
negative. Please contribute and help to improve this function on
https://github.com/pvlib/pvlib-python
Parameters
----------
times : DatetimeIndex
Times at which to evaluate the model. Can be None if attribute
`times` is already set.
weather : pandas.DataFrame
Table with at least two columns containing one of the following data
sets: dni, dhi, ghi. Can be None if attribute `weather` is already
set.
Returns
-------
self
Assigns attributes: times, weather
Examples
--------
This example does not work until the parameters `my_system`,
`my_location`, `my_datetime` and `my_weather` are not defined properly
but shows the basic idea how this method can be used.
>>> from pvlib.modelchain import ModelChain
>>> # my_weather containing 'dhi' and 'ghi'.
>>> mc = ModelChain(my_system, my_location) # doctest: +SKIP
>>> mc.complete_irradiance(my_datetime, my_weather) # doctest: +SKIP
>>> mc.run_model() # doctest: +SKIP
>>> # my_weather containing 'dhi', 'ghi' and 'dni'.
>>> mc = ModelChain(my_system, my_location) # doctest: +SKIP
>>> mc.run_model(my_datetime, my_weather) # doctest: +SKIP
"""
if weather is not None:
self.weather = weather
if times is not None:
self.times = times
self.solar_position = self.location.get_solarposition(self.times)
icolumns = set(self.weather.columns)
wrn_txt = ("This function is not safe at the moment.\n" +
"Results can be too high or negative.\n" +
"Help to improve this function on github:\n" +
"https://github.com/pvlib/pvlib-python \n")
warnings.warn(wrn_txt, UserWarning)
if {'ghi', 'dhi'} <= icolumns and 'dni' not in icolumns:
logging.debug('Estimate dni from ghi and dhi')
self.weather.loc[:, 'dni'] = (
(self.weather.loc[:, 'ghi'] - self.weather.loc[:, 'dhi']) /
tools.cosd(self.solar_position.loc[:, 'zenith']))
elif {'dni', 'dhi'} <= icolumns and 'ghi' not in icolumns:
logging.debug('Estimate ghi from dni and dhi')
self.weather.loc[:, 'ghi'] = (
self.weather.dni * tools.cosd(self.solar_position.zenith) +
self.weather.dhi)
elif {'dni', 'ghi'} <= icolumns and 'dhi' not in icolumns:
logging.debug('Estimate dhi from dni and ghi')
self.weather.loc[:, 'dhi'] = (
self.weather.ghi - self.weather.dni *
tools.cosd(self.solar_position.zenith))
return self
[docs] def run_model(self, times=None, irradiance=None, weather=None):
"""
Run the model.
Parameters
----------
times : DatetimeIndex
Times at which to evaluate the model. Can be None if attribute
`times` is already set.
irradiance : None or DataFrame
This parameter is deprecated. Please use `weather` instead.
weather : None or DataFrame
If None, assumes air temperature is 20 C, wind speed is 0 m/s and
irradiation calculated from clear sky data.
Column names must be 'wind_speed', 'temp_air', 'dni', 'ghi', 'dhi'.
Do not pass incomplete irradiation data.
Use method
:py:meth:`~pvlib.modelchain.ModelChain.complete_irradiance`
instead.
Returns
-------
self
Assigns attributes: times, solar_position, airmass, irradiance,
total_irrad, effective_irradiance, weather, temps, aoi,
aoi_modifier, spectral_modifier, dc, ac, losses.
"""
self.prepare_inputs(times, irradiance, weather)
self.aoi_model()
self.spectral_model()
self.effective_irradiance_model()
self.temp_model()
self.dc_model()
self.ac_model()
self.losses_model()
return self