"""
This module contains the Location class.
"""
# Will Holmgren, University of Arizona, 2014-2016.
import os
import datetime
import pandas as pd
import pytz
import h5py
from pvlib import solarposition, clearsky, atmosphere, irradiance
from pvlib.tools import _degrees_to_index
[docs]class Location:
"""
Location objects are convenient containers for latitude, longitude,
timezone, and altitude data associated with a particular
geographic location. You can also assign a name to a location object.
Location objects have two timezone attributes:
* ``tz`` is a IANA timezone string.
* ``pytz`` is a pytz timezone object.
Location objects support the print method.
Parameters
----------
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.
tz : str, int, float, or pytz.timezone, default 'UTC'.
See
http://en.wikipedia.org/wiki/List_of_tz_database_time_zones
for a list of valid time zones.
pytz.timezone objects will be converted to strings.
ints and floats must be in hours from UTC.
altitude : float, default 0.
Altitude from sea level in meters.
name : string, optional
Sets the name attribute of the Location object.
See also
--------
pvlib.pvsystem.PVSystem
"""
[docs] def __init__(self, latitude, longitude, tz='UTC', altitude=0, name=None):
self.latitude = latitude
self.longitude = longitude
if isinstance(tz, str):
self.tz = tz
self.pytz = pytz.timezone(tz)
elif isinstance(tz, datetime.timezone):
self.tz = 'UTC'
self.pytz = pytz.UTC
elif isinstance(tz, datetime.tzinfo):
self.tz = tz.zone
self.pytz = tz
elif isinstance(tz, (int, float)):
self.tz = tz
self.pytz = pytz.FixedOffset(tz*60)
else:
raise TypeError('Invalid tz specification')
self.altitude = altitude
self.name = name
def __repr__(self):
attrs = ['name', 'latitude', 'longitude', 'altitude', 'tz']
return ('Location: \n ' + '\n '.join(
f'{attr}: {getattr(self, attr)}' for attr in attrs))
[docs] @classmethod
def from_tmy(cls, tmy_metadata, tmy_data=None, **kwargs):
"""
Create an object based on a metadata
dictionary from tmy2 or tmy3 data readers.
Parameters
----------
tmy_metadata : dict
Returned from tmy.readtmy2 or tmy.readtmy3
tmy_data : DataFrame, optional
Optionally attach the TMY data to this object.
Returns
-------
Location
"""
# not complete, but hopefully you get the idea.
# might need code to handle the difference between tmy2 and tmy3
# determine if we're dealing with TMY2 or TMY3 data
tmy2 = tmy_metadata.get('City', False)
latitude = tmy_metadata['latitude']
longitude = tmy_metadata['longitude']
if tmy2:
name = tmy_metadata['City']
else:
name = tmy_metadata['Name']
tz = tmy_metadata['TZ']
altitude = tmy_metadata['altitude']
new_object = cls(latitude, longitude, tz=tz, altitude=altitude,
name=name, **kwargs)
# not sure if this should be assigned regardless of input.
if tmy_data is not None:
new_object.tmy_data = tmy_data
new_object.weather = tmy_data
return new_object
[docs] @classmethod
def from_epw(cls, metadata, data=None, **kwargs):
"""
Create a Location object based on a metadata
dictionary from epw data readers.
Parameters
----------
metadata : dict
Returned from epw.read_epw
data : DataFrame, optional
Optionally attach the epw data to this object.
Returns
-------
Location object (or the child class of Location that you
called this method from).
"""
latitude = metadata['latitude']
longitude = metadata['longitude']
name = metadata['city']
tz = metadata['TZ']
altitude = metadata['altitude']
new_object = cls(latitude, longitude, tz=tz, altitude=altitude,
name=name, **kwargs)
if data is not None:
new_object.weather = data
return new_object
[docs] def get_solarposition(self, times, pressure=None, temperature=12,
**kwargs):
"""
Uses the :py:func:`pvlib.solarposition.get_solarposition` function
to calculate the solar zenith, azimuth, etc. at this location.
Parameters
----------
times : pandas.DatetimeIndex
Must be localized or UTC will be assumed.
pressure : float, or array-like, optional
If not specified, ``pressure`` is calculated using
:py:func:`pvlib.atmosphere.alt2pres` and ``self.altitude``.
temperature : float or array-like, default 12
kwargs
passed to :py:func:`pvlib.solarposition.get_solarposition`
Returns
-------
solar_position : DataFrame
Columns depend on the ``method`` kwarg, but always include
``zenith`` and ``azimuth``. The angles are in degrees.
"""
if pressure is None:
pressure = atmosphere.alt2pres(self.altitude)
return solarposition.get_solarposition(times, latitude=self.latitude,
longitude=self.longitude,
altitude=self.altitude,
pressure=pressure,
temperature=temperature,
**kwargs)
[docs] def get_clearsky(self, times, model='ineichen', solar_position=None,
dni_extra=None, **kwargs):
"""
Calculate the clear sky estimates of GHI, DNI, and/or DHI
at this location.
Parameters
----------
times: DatetimeIndex
model: str, default 'ineichen'
The clear sky model to use. Must be one of
'ineichen', 'haurwitz', 'simplified_solis'.
solar_position : DataFrame, optional
DataFrame with columns 'apparent_zenith', 'zenith',
'apparent_elevation'.
dni_extra : numeric, optional
If not specified, will be calculated from times.
kwargs
Extra parameters passed to the relevant functions. Climatological
values are assumed in many cases. See source code for details!
Returns
-------
clearsky : DataFrame
Column names are: ``ghi, dni, dhi``.
"""
if dni_extra is None:
dni_extra = irradiance.get_extra_radiation(times)
try:
pressure = kwargs.pop('pressure')
except KeyError:
pressure = atmosphere.alt2pres(self.altitude)
if solar_position is None:
solar_position = self.get_solarposition(times, pressure=pressure)
apparent_zenith = solar_position['apparent_zenith']
apparent_elevation = solar_position['apparent_elevation']
if model == 'ineichen':
try:
linke_turbidity = kwargs.pop('linke_turbidity')
except KeyError:
interp_turbidity = kwargs.pop('interp_turbidity', True)
linke_turbidity = clearsky.lookup_linke_turbidity(
times, self.latitude, self.longitude,
interp_turbidity=interp_turbidity)
try:
airmass_absolute = kwargs.pop('airmass_absolute')
except KeyError:
airmass_absolute = self.get_airmass(
times, solar_position=solar_position)['airmass_absolute']
cs = clearsky.ineichen(apparent_zenith, airmass_absolute,
linke_turbidity, altitude=self.altitude,
dni_extra=dni_extra, **kwargs)
elif model == 'haurwitz':
cs = clearsky.haurwitz(apparent_zenith)
elif model == 'simplified_solis':
cs = clearsky.simplified_solis(
apparent_elevation, pressure=pressure, dni_extra=dni_extra,
**kwargs)
else:
raise ValueError('{} is not a valid clear sky model. Must be '
'one of ineichen, simplified_solis, haurwitz'
.format(model))
return cs
[docs] def get_airmass(self, times=None, solar_position=None,
model='kastenyoung1989'):
"""
Calculate the relative and absolute airmass.
Automatically chooses zenith or apparant zenith
depending on the selected model.
Parameters
----------
times : DatetimeIndex, optional
Only used if solar_position is not provided.
solar_position : DataFrame, optional
DataFrame with columns 'apparent_zenith', 'zenith'.
model : str, default 'kastenyoung1989'
Relative airmass model. See
:py:func:`pvlib.atmosphere.get_relative_airmass`
for a list of available models.
Returns
-------
airmass : DataFrame
Columns are 'airmass_relative', 'airmass_absolute'
See also
--------
pvlib.atmosphere.get_relative_airmass
"""
if solar_position is None:
solar_position = self.get_solarposition(times)
if model in atmosphere.APPARENT_ZENITH_MODELS:
zenith = solar_position['apparent_zenith']
elif model in atmosphere.TRUE_ZENITH_MODELS:
zenith = solar_position['zenith']
else:
raise ValueError(f'{model} is not a valid airmass model')
airmass_relative = atmosphere.get_relative_airmass(zenith, model)
pressure = atmosphere.alt2pres(self.altitude)
airmass_absolute = atmosphere.get_absolute_airmass(airmass_relative,
pressure)
airmass = pd.DataFrame(index=solar_position.index)
airmass['airmass_relative'] = airmass_relative
airmass['airmass_absolute'] = airmass_absolute
return airmass
[docs] def get_sun_rise_set_transit(self, times, method='pyephem', **kwargs):
"""
Calculate sunrise, sunset and transit times.
Parameters
----------
times : DatetimeIndex
Must be localized to the Location
method : str, default 'pyephem'
'pyephem', 'spa', or 'geometric'
kwargs :
Passed to the relevant functions. See
solarposition.sun_rise_set_transit_<method> for details.
Returns
-------
result : DataFrame
Column names are: ``sunrise, sunset, transit``.
"""
if method == 'pyephem':
result = solarposition.sun_rise_set_transit_ephem(
times, self.latitude, self.longitude, **kwargs)
elif method == 'spa':
result = solarposition.sun_rise_set_transit_spa(
times, self.latitude, self.longitude, **kwargs)
elif method == 'geometric':
sr, ss, tr = solarposition.sun_rise_set_transit_geometric(
times, self.latitude, self.longitude, **kwargs)
result = pd.DataFrame(index=times,
data={'sunrise': sr,
'sunset': ss,
'transit': tr})
else:
raise ValueError('{} is not a valid method. Must be '
'one of pyephem, spa, geometric'
.format(method))
return result
[docs]def lookup_altitude(latitude, longitude):
"""
Look up location altitude from low-resolution altitude map
supplied with pvlib. The data for this map comes from multiple open data
sources with varying resolutions aggregated by Mapzen.
More details can be found here
https://github.com/tilezen/joerd/blob/master/docs/data-sources.md
Altitudes from this map are a coarse approximation and can have
significant errors (100+ meters) introduced by downsampling and
source data resolution.
Parameters
----------
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.
Returns
-------
altitude : float
The altitude of the location in meters.
Notes
-----------
Attributions:
* ArcticDEM terrain data DEM(s) were created from DigitalGlobe, Inc.,
imagery and funded under National Science Foundation awards 1043681,
1559691, and 1542736;
* Australia terrain data © Commonwealth of Australia
(Geoscience Australia) 2017;
* Austria terrain data © offene Daten Österreichs - Digitales
Geländemodell (DGM) Österreich;
* Canada terrain data contains information licensed under the Open
Government Licence - Canada;
* Europe terrain data produced using Copernicus data and information
funded by the European Union - EU-DEM layers;
* Global ETOPO1 terrain data U.S. National Oceanic and Atmospheric
Administration
* Mexico terrain data source: INEGI, Continental relief, 2016;
* New Zealand terrain data Copyright 2011 Crown copyright (c) Land
Information New Zealand and the New Zealand Government
(All rights reserved);
* Norway terrain data © Kartverket;
* United Kingdom terrain data © Environment Agency copyright and/or
database right 2015. All rights reserved;
* United States 3DEP (formerly NED) and global GMTED2010 and SRTM
terrain data courtesy of the U.S. Geological Survey.
References
----------
.. [1] `Mapzen, Linux foundation project for open data maps
<https://www.mapzen.com/>`_
.. [2] `Joerd, tool for downloading and processing DEMs, Used by Mapzen
<https://github.com/tilezen/joerd/>`_
.. [3] `AWS, Open Data Registry Terrain Tiles
<https://registry.opendata.aws/terrain-tiles/>`_
"""
pvlib_path = os.path.dirname(os.path.abspath(__file__))
filepath = os.path.join(pvlib_path, 'data', 'Altitude.h5')
latitude_index = _degrees_to_index(latitude, coordinate='latitude')
longitude_index = _degrees_to_index(longitude, coordinate='longitude')
with h5py.File(filepath, 'r') as alt_h5_file:
alt = alt_h5_file['Altitude'][latitude_index, longitude_index]
# 255 is a special value that means nodata. Fallback to 0 if nodata.
if alt == 255:
return 0
# Altitude is encoded in 28 meter steps from -450 meters to 6561 meters
# There are 0-254 possible altitudes, with 255 reserved for nodata.
alt *= 28
alt -= 450
return float(alt)