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1 change: 1 addition & 0 deletions docs/sphinx/source/reference/pv_modeling/iam.rst
Original file line number Diff line number Diff line change
Expand Up @@ -14,6 +14,7 @@ Incident angle modifiers
iam.sapm
iam.interp
iam.marion_diffuse
iam.marion_diffuse_tracking
iam.marion_integrate
iam.schlick
iam.schlick_diffuse
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95 changes: 95 additions & 0 deletions pvlib/iam.py
Original file line number Diff line number Diff line change
Expand Up @@ -12,6 +12,7 @@
import pandas as pd
import functools
from scipy.optimize import minimize
from scipy.interpolate import PchipInterpolator
from pvlib.tools import cosd, sind, acosd

# a dict of required parameter names for each IAM model
Expand Down Expand Up @@ -644,6 +645,100 @@ def marion_diffuse(model, surface_tilt, **kwargs):
return iam


def marion_diffuse_tracking(model, surface_tilt, **kwargs):
"""
Determine diffuse irradiance incidence angle modifiers using Marion's
method of integrating over solid angle. This function is designed for
trackers, where ``surface_tilt`` is a vector, to avoid the computational
burden of calling ``marion_integrate`` for each tilt angle.
Instead, the IAM function is integrated once for a range of tilt angles,
and then interpolated to the requested tilt angles. For fixed-tilt systems,
use :py:func:`marion_diffuse`.

Parameters
----------
model : str
The IAM function to evaluate across solid angle. Must be one of
`'ashrae', 'physical', 'martin_ruiz', 'sapm', 'schlick'`.

surface_tilt : numeric
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).

**kwargs
Extra parameters passed to the IAM function.

Returns
-------
iam : dict
IAM values for each type of diffuse irradiance:

* 'sky': radiation from the sky dome (zenith <= 90)
* 'horizon': radiation from the region of the sky near the horizon
(89.5 <= zenith <= 90)
* 'ground': radiation reflected from the ground (zenith >= 90)

See [1]_ for a detailed description of each class.

See Also
--------
pvlib.iam.marion_diffuse
pvlib.iam.marion_integrate

References
----------
.. [1] B. Marion "Numerical method for angle-of-incidence correction
factors for diffuse radiation incident photovoltaic modules",
Solar Energy, Volume 147, Pages 344-348. 2017.
:doi:`10.1016/j.solener.2017.03.027`
"""

models = {
'physical': physical,
'ashrae': ashrae,
'sapm': sapm,
'martin_ruiz': martin_ruiz,
'schlick': schlick,
}

try:
iam_model = models[model]
except KeyError:
raise ValueError('model must be one of: ' + str(list(models.keys())))

full_range = (np.asarray(surface_tilt) > 90).any()

iam_function = functools.partial(iam_model, **kwargs)
iam = {}
for region in ['sky', 'horizon', 'ground']:
interpolator = _get_marion_interpolator(iam_function,
region, full_range)
iam_values = interpolator(surface_tilt)
if isinstance(surface_tilt, pd.Series):
iam_values = pd.Series(iam_values, index=surface_tilt.index)
elif isinstance(surface_tilt, list):
iam_values = iam_values.tolist()
iam[region] = iam_values

return iam


@functools.cache
def _get_marion_interpolator(iam_function, region, full_range=False):
"""
Cached interpolator for the Marion integration of an IAM function over
solid angle. Helper function for :py:func:`marion_efficient` function
to avoid repeated calculations leading to excessive memory use.
"""
if full_range:
tilt = np.arange(0, 180.5, 0.5)
else:
tilt = np.arange(0, 90.5, 0.5)
iam = marion_integrate(iam_function, tilt, region)
return PchipInterpolator(tilt, iam)


def marion_integrate(function, surface_tilt, region, num=None):
"""
Integrate an incidence angle modifier (IAM) function over solid angle
Expand Down
54 changes: 54 additions & 0 deletions tests/test_iam.py
Original file line number Diff line number Diff line change
Expand Up @@ -289,6 +289,60 @@ def test_marion_diffuse_invalid():
_iam.marion_diffuse('not_a_model', 20)


def test_marion_diffuse_tracking_list():
# tilt angles under 90
expected = {
'sky': [0.9523612, 0.95960858, 0.96198112],
'horizon': [0.0, 0.83290704, 0.89872877],
'ground': [0.0, 0.71982356, 0.81863602]
}
tilt = [0, 20, 30]
actual = _iam.marion_diffuse_tracking('ashrae', tilt)
for key, value in expected.items():
assert_allclose(actual[key], value)
# tilt angles above 90
expected = {
'sky': [0.9523612, 0.95960858, 0.94530815],
'horizon': [0.0, 0.83290704, 0.97141949],
'ground': [0.0, 0.71982356, 0.95735835]
}
tilt = [0, 20, 100]
actual = _iam.marion_diffuse_tracking('ashrae', tilt)
for key, values in expected.items():
assert_allclose(actual[key], values)


def test_marion_diffuse_tracking_array():
expected = {
'sky': np.array([0.9523612, 0.95960858, 0.96198112]),
'horizon': np.array([0.0, 0.83290704, 0.89872877]),
'ground': np.array([0.0, 0.71982356, 0.81863602])
}
tilt = np.array([0, 20, 30])
actual = _iam.marion_diffuse_tracking('ashrae', tilt)
for key, value in expected.items():
assert_allclose(actual[key], value)


def test_marion_diffuse_tracking_series():
expected = {
'sky': [0.9523612, 0.95960858, 0.96198112],
'horizon': [0.0, 0.83290704, 0.89872877],
'ground': [0.0, 0.71982356, 0.81863602]
}
idx = pd.date_range('2019-01-01', periods=3, freq='h')
tilt = pd.Series([0, 20, 30], index=idx)
actual = _iam.marion_diffuse_tracking('ashrae', tilt)
for key, values in expected.items():
expected_series = pd.Series(values, index=idx)
assert_series_equal(actual[key], expected_series)


def test_marion_diffuse_tracking_invalid():
with pytest.raises(ValueError):
_iam.marion_diffuse_tracking('not_a_model', 20)


@pytest.mark.parametrize('region,N,expected', [
('sky', 180, 0.9596085829811408),
('horizon', 1800, 0.8329070417832541),
Expand Down
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