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""" | |
Calculate potential evapotranspiration using the Thornthwaite (1948 method) | |
:copyright: (c) 2015 by Mark Richards. | |
:license: BSD 3-Clause, see LICENSE.txt for more details. | |
References | |
---------- | |
Thornthwaite CW (1948) An approach toward a rational classification of | |
climate. Geographical Review, 38, 55-94. | |
""" | |
import calendar | |
from . import fao | |
from ._check import check_latitude_rad as _check_latitude_rad | |
_MONTHDAYS = (31, 28, 31, 30, 31, 30, 31, 31, 30, 31, 30, 31) | |
_LEAP_MONTHDAYS = (31, 29, 31, 30, 31, 30, 31, 31, 30, 31, 30, 31) | |
def thornthwaite(monthly_t, monthly_mean_dlh, year=None): | |
""" | |
Estimate monthly potential evapotranspiration (PET) using the | |
Thornthwaite (1948) method. | |
Thornthwaite equation: | |
*PET* = 1.6 (*L*/12) (*N*/30) (10*Ta* / *I*)***a* | |
where: | |
* *Ta* is the mean daily air temperature [deg C, if negative use 0] of the | |
month being calculated | |
* *N* is the number of days in the month being calculated | |
* *L* is the mean day length [hours] of the month being calculated | |
* *a* = (6.75 x 10-7)*I***3 - (7.71 x 10-5)*I***2 + (1.792 x 10-2)*I* + 0.49239 | |
* *I* is a heat index which depends on the 12 monthly mean temperatures and | |
is calculated as the sum of (*Tai* / 5)**1.514 for each month, where | |
Tai is the air temperature for each month in the year | |
:param monthly_t: Iterable containing mean daily air temperature for each | |
month of the year [deg C]. | |
:param monthly_mean_dlh: Iterable containing mean daily daylight | |
hours for each month of the year (hours]. These can be calculated | |
using ``monthly_mean_daylight_hours()``. | |
:param year: Year for which PET is required. The only effect of year is | |
to change the number of days in February to 29 if it is a leap year. | |
If it is left as the default (None), then the year is assumed not to | |
be a leap year. | |
:return: Estimated monthly potential evaporation of each month of the year | |
[mm/month] | |
:rtype: List of floats | |
""" | |
if len(monthly_t) != 12: | |
raise ValueError( | |
'monthly_t should be length 12 but is length {0}.' | |
.format(len(monthly_t))) | |
if len(monthly_mean_dlh) != 12: | |
raise ValueError( | |
'monthly_mean_dlh should be length 12 but is length {0}.' | |
.format(len(monthly_mean_dlh))) | |
if year is None or not calendar.isleap(year): | |
month_days = _MONTHDAYS | |
else: | |
month_days = _LEAP_MONTHDAYS | |
# Negative temperatures should be set to zero | |
adj_monthly_t = [t * (t >= 0) for t in monthly_t] | |
# Calculate the heat index (I) | |
I = 0.0 | |
for Tai in adj_monthly_t: | |
if Tai / 5.0 > 0.0: | |
I += (Tai / 5.0) ** 1.514 | |
a = (6.75e-07 * I ** 3) - (7.71e-05 * I ** 2) + (1.792e-02 * I) + 0.49239 | |
pet = [] | |
for Ta, L, N in zip(adj_monthly_t, monthly_mean_dlh, month_days): | |
# Multiply by 10 to convert cm/month --> mm/month | |
pet.append( | |
1.6 * (L / 12.0) * (N / 30.0) * ((10.0 * Ta / I) ** a) * 10.0) | |
return pet | |
def monthly_mean_daylight_hours(latitude, year=None): | |
""" | |
Calculate mean daylight hours for each month of the year for a given | |
latitude. | |
:param latitude: Latitude [radians] | |
:param year: Year for the daylight hours are required. The only effect of | |
*year* is to change the number of days in Feb to 29 if it is a leap | |
year. If left as the default, None, then a normal (non-leap) year is | |
assumed. | |
:return: Mean daily daylight hours of each month of a year [hours] | |
:rtype: List of floats. | |
""" | |
_check_latitude_rad(latitude) | |
if year is None or not calendar.isleap(year): | |
month_days = _MONTHDAYS | |
else: | |
month_days = _LEAP_MONTHDAYS | |
monthly_mean_dlh = [] | |
doy = 1 # Day of the year | |
for mdays in month_days: | |
dlh = 0.0 # Cumulative daylight hours for the month | |
for daynum in range(1, mdays + 1): | |
sd = fao.sol_dec(doy) | |
sha = fao.sunset_hour_angle(latitude, sd) | |
dlh += fao.daylight_hours(sha) | |
doy += 1 | |
# Calc mean daylight hours of the month | |
monthly_mean_dlh.append(dlh / mdays) | |
return monthly_mean_dlh | |