# from scipy.optimize import least_squares
import numpy as np
import pandas as pd
# atmospheric related utilities
def cal_des_dta(ta, pa, dta=1.0):
"""Calculate slope of es(Ta), i.e., saturation evaporation pressure `es` as function of air temperature `ta [K]`
Parameters
----------
ta : numeric
Air temperature [K]
pa : numeric
Air pressure [Pa]
dta : float, optional
change in ta for calculating that in es, by default 1.0 K
"""
from atmosp import calculate as ac
des = ac("es", p=pa, T=ta + dta / 2) - ac("es", p=pa, T=ta - dta / 2)
des_dta = des / dta
try:
# try to pack as Series
des_dta = pd.Series(des_dta, index=ta.index)
except AttributeError as ex:
print(ex, "cannot pack into pd.Series")
pass
return des_dta
def cal_rs_obs(qh, qe, ta, rh, pa):
"""Calculate surface resistance based on observations, notably turbulent fluxes.
Parameters
----------
qh : numeric
sensible heat flux [W m-2]
qe : numeric
latent heat flux [W m-2]
ta : numeric
air temperature [K]
rh : numeric
relative humidity [%]
pa : numeric
air pressure [Pa]
Returns
-------
numeric
Surface resistance based on observations [s m-1]
"""
from atmosp import calculate as ac
# surface resistance at water surface [s m-1]
rav = 50
# psychrometric constant [Pa K-1] as a function of air pressure
ser_gamma = 0.665e-3 * pa
# air density [kg m-3]
val_rho = 1.27
# heat capacity of air [J kg-1 K-1]
val_cp = 1005
# slope of es(Ta) curve at Ta
ser_des_dTa = cal_des_dta(ta, pa, dta=1.0)
#
arr_e = ac("e", p=pa, T=ta, RH=rh)
arr_es = ac("es", p=pa, T=ta)
arr_vpd = arr_es - arr_e
#
ser_rs_1 = (ser_des_dTa / ser_gamma) * (qh / qe - 1) * rav
ser_rs_2 = val_rho * val_cp * arr_vpd / (ser_gamma * qe)
ser_rs = ser_rs_1 + ser_rs_2
try:
# try to pack as Series
ser_rs = pd.Series(ser_rs, index=ta.index)
except AttributeError as ex:
print(ex, "cannot pack into pd.Series")
pass
return ser_rs
[docs]def cal_gs_obs(qh, qe, ta, rh, pa):
"""Calculate surface conductance based on observations, notably turbulent fluxes.
Parameters
----------
qh : numeric
Sensible heat flux [W m-2]
qe : numeric
Latent heat flux [W m-2]
ta : numeric
Air temperature [K]
rh : numeric
Relative humidity [%]
pa : numeric
Air pressure [Pa]
Returns
-------
numeric
Surface conductance based on observations [mm s-1]
"""
rs_obs = cal_rs_obs(qh, qe, ta, rh, pa)
gs_obs = 1e3 / rs_obs
return gs_obs
def cal_g_lai(lai, g1, lai_max):
"""Calculate LAI-related correction coefficient for surface conductance.
Parameters
----------
lai : numeric
Leaf area index [m2 m-2]
g1 : numeric
LAI-related correction parameter [-]
lai_max : numeric
Maximum LAI [m2 m-2]
Returns
-------
numeric
LAI-related correction coefficient [-]
"""
g_lai = lai / lai_max * g1
return g_lai
def cal_g_kd(kd, g2, kd_max=1200.0):
"""Calculate solar radiation-related correction coefficient for surface conductance.
Parameters
----------
kd : numeric
Incoming solar radiation [W m-2]
g2 : numeric
Solar radiation-related correction parameter [-]
kd_max : numeric, optional
Maximum incoming solar radiation [W m-2], by default 1200.
Returns
-------
numeric
Solar radiation-related correction coefficient [-]
"""
g_kd_nom = kd / (g2 + kd)
g_kd_denom = kd_max / (g2 + kd_max)
g_kd = g_kd_nom / g_kd_denom
return g_kd
def cal_g_dq(dq, g3, g4):
"""Calculate air humidity-related correction coefficient for surface conductance.
Parameters
----------
dq : numeric
Specific humidity deficit [k kg-1]
g3 : numeric
Specific humidity-related correction parameter [-]
g4 : numeric
Specific humidity-related correction parameter [-]
Returns
-------
numeric
Air humidity-related correction coefficient
"""
g_dq = g3 + (1 - g3) * g4 ** dq
return g_dq
def cal_g_ta(ta_c, g5, tl=-10.0, th=55.0):
"""Calculate air temperature-related correction coefficient for surface conductance.
Parameters
----------
ta_c : numeric
Air temperature [degC]
g5 : numeric
Air temperature-related correction parameter
tl : numeric, optional
Low temperature limit [degC], by default -10.
th : numeric, optional
High temperature limit [degC], by default 55.
Returns
-------
numeric
Air temperature-related correction coefficient
"""
tc = (th - g5) / (g5 - tl)
# set a threshold for avoiding numeric difficulty
tc = np.min([tc, 20])
# g_ta = ((ta_c-tl)*(th-ta_c)**tc)/((g5-tl)*(th-g5)**tc)
g_ta_nom = (ta_c - tl) * np.power((th - ta_c), tc)
g_ta_denom = (g5 - tl) * np.power((th - g5), tc)
g_ta = g_ta_nom / g_ta_denom
return g_ta
def cal_g_smd(smd, g6, s1=5.56):
"""Calculate soil moisture-related correction coefficient for surface conductance.
Parameters
----------
smd : numeric
Soil moisture deficit [mm].
g6 : numeric
Soil moisture-related correction parameter.
s1 : numeric, optional
Wilting point (WP=s1/g6, indicated as deficit [mm]) related parameter, by default 5.56
Returns
-------
numeric
Soil moisture-related correction coefficient
"""
# Wilting point calculated following SUEWS
wp = s1 / g6
g_smd_nom = 1 - np.exp(g6 * (smd - wp))
g_smd_denom = 1 - np.exp(g6 * (0 - wp))
g_smd = g_smd_nom / g_smd_denom
return g_smd
[docs]def cal_gs_mod(kd, ta_k, rh, pa, smd, lai, g_cst, g_max=30.0, lai_max=6.0, s1=5.56):
"""Model surface conductance/resistance using phenology and atmospheric forcing conditions.
Parameters
----------
kd : numeric
Incoming solar radiation [W m-2]
ta_k : numeric
Air temperature [K]
rh : numeric
Relative humidity [%]
pa : numeric
Air pressure
smd : numeric
Soil moisture deficit [mm]
lai : numeric
Leaf area index [m2 m-2]
g_cst : size-6 array
Parameters to determine surface conductance/resistance:
g1 (LAI related), g2 (solar radiation related),
g3 (humidity related), g4 (humidity related),
g5 (air temperature related),
g6 (soil moisture related)
g_max : numeric, optional
Maximum surface conductance [mm s-1], by default 30
lai_max : numeric, optional
Maximum LAI [m2 m-2], by default 6
s1 : numeric, optional
Wilting point (WP=s1/g6, indicated as deficit [mm]) related parameter, by default 5.56
Returns
-------
numeric
Modelled surface conductance [mm s-1]
"""
from atmosp import calculate as ac
# broadcast g1 – g6
# print('g_cst', g_cst)
g1, g2, g3, g4, g5, g6 = g_cst
# print(g1, g2, g3, g4, g5, g6)
# lai related
g_lai = cal_g_lai(lai, g1, lai_max)
# print('g_lai', g_lai)
# kdown related
g_kd = cal_g_kd(kd, g2)
# print('g_kd', g_kd)
# dq related
# ta_k = ta_c+273.15
dq = ac("qvs", T=ta_k, p=pa) - ac("qv", T=ta_k, p=pa, RH=rh)
g_dq = cal_g_dq(dq, g3, g4)
# print('g_dq', g_dq)
# ta related
ta_c = ta_k - 273.15
g_ta = cal_g_ta(ta_c, g5)
# print('g_ta', g_ta)
# smd related
g_smd = cal_g_smd(smd, g6, s1)
# print('g_smd', g_smd)
# combine all corrections
gs_c = g_lai * g_kd * g_dq * g_ta * g_smd
gs = g_max * gs_c
return gs
[docs]def calib_g(
df_fc_suews,
g_max=33.1,
lai_max=5.9,
s1=5.56,
method="cobyla",
prms_init=None,
debug=False,
):
"""Calibrate parameters for modelling surface conductance over vegetated surfaces using `LMFIT <https://lmfit.github.io/lmfit-py/model.html>`.
Parameters
----------
df_fc_suews : pandas.DataFrame
DataFrame in `SuPy forcing <https://supy.readthedocs.io/en/latest/data-structure/df_forcing.html>`_ format
g_max : numeric, optional
Maximum surface conductance [mm s-1], by default 30
lai_max : numeric, optional
Maximum LAI [m2 m-2], by default 6
s1 : numeric, optional
Wilting point (WP=s1/g6, indicated as deficit [mm]) related parameter, by default 5.56
method: str, optional
Method used in minimisation by `lmfit.minimize`: details refer to its `method<lmfit:minimize>`.
prms_init: lmfit.Parameters
Initial parameters for calibration
debug : bool, optional
Option to output final calibrated `ModelResult <lmfit:ModelResult>`, by default False
Returns
-------
dict, or `ModelResult <lmfit:ModelResult>` if `debug==True`
1. dict: {parameter_name -> best_fit_value}
2. `ModelResult`
Note:
Parameters for surface conductance:
g1 (LAI related), g2 (solar radiation related),
g3 (humidity related), g4 (humidity related),
g5 (air temperature related),
g6 (soil moisture related)
Note
----
For calibration validity, turbulent fluxes, QH and QE, in `df_fc_suews` should ONLY be observations, i.e., interpolated values should be avoided.
To do so, please place `np.nan` as missing values for QH and QE.
"""
from lmfit import Model, Parameters, Parameter
list_var_sel = ["qh", "qe", "Tair", "RH", "pres", "kdown", "xsmd", "lai"]
df_obs = df_fc_suews[list_var_sel].copy().dropna()
df_obs.pres *= 100
df_obs.Tair += 273.15
gs_obs = cal_gs_obs(df_obs.qh, df_obs.qe, df_obs.Tair, df_obs.RH, df_obs.pres)
def func_fit_g(kd, ta, rh, pa, smd, lai, g1, g2, g3, g4, g5, g6):
return cal_gs_mod(
kd, ta, rh, pa, smd, lai, [g1, g2, g3, g4, g5, g6], g_max, lai_max, s1
)
gmodel = Model(
func_fit_g,
independent_vars=["lai", "kd", "ta", "rh", "pa", "smd"],
param_names=["g1", "g2", "g3", "g4", "g5", "g6"],
)
if prms_init is None:
print("Preset parameters will be loaded!")
print("Please use with caution.")
prms = Parameters()
prm_g_0 = [3.5, 200.0, 0.13, 0.7, 30.0, 0.05]
list_g = (
Parameter(f"g{i+1}", prm_g_0[i], True, 0, None, None, None)
for i in range(6)
)
prms.add_many(*list_g)
# set specific bounds:
# g3, g4: specific humidity related
prms["g3"].set(min=0, max=1)
prms["g4"].set(min=0, max=1)
# g5: within reasonable temperature ranges
prms["g5"].set(min=-10, max=55)
# g6: within sensitive ranges of SMD
prms["g6"].set(min=0.02, max=0.1)
else:
print("User provided parameters are loaded!")
prms = prms_init
# pack into a DataFrame for filtering out nan
df_fit = pd.concat([gs_obs.rename("gs_obs"), df_obs], axis=1).dropna()
res_fit = gmodel.fit(
df_fit.gs_obs,
kd=df_fit.kdown,
ta=df_fit.Tair,
rh=df_fit.RH,
pa=df_fit.pres,
smd=df_fit.xsmd,
lai=df_fit.lai,
params=prms,
# useful ones: ['nelder', 'powell', 'cg', 'cobyla', 'bfgs', 'trust-tnc']
method=method,
# nan_policy='omit',
verbose=True,
)
# provide full fitted model if debug == True otherwise only a dict with best fit parameters
res = res_fit if debug else res_fit.best_values
return res
# calculate specific humidity using relative humidity
def cal_qa(rh_pct, theta_K, pres_hPa):
from atmosp import calculate as ac
qa = ac("qv", RH=rh_pct, p=pres_hPa * 100, theta=theta_K)
return qa
# calculate relative humidity using specific humidity
def cal_rh(qa_kgkg, theta_K, pres_hPa):
from atmosp import calculate as ac
RH = ac("RH", av=qa_kgkg, p=pres_hPa * 100, theta=theta_K)
return RH
# calculate latent heat of vaporisation
def cal_lat_vap(qa_kgkg, theta_K, pres_hPa):
from atmosp import calculate as ac
# wel-bulb temperature
tw = ac(
"Tw", qv=qa_kgkg, p=pres_hPa, theta=theta_K, remove_assumptions=("constant Lv")
)
# latent heat [J kg-1]
Lv = 2.501e6 - 2370.0 * (tw - 273.15)
return Lv
# calculate specific heat capacity of air [J kg-1 K-1]
def cal_cp(qa_kgkg, ta_K, pres_hPa):
from atmosp import calculate as ac
temp_C = ta_K - 273.15
rh_pct = ac("RH", qv=qa_kgkg, T=ta_K, p=pres_hPa * 100)
# Garratt equation a20(1992)
cpd = 1005.0 + ((temp_C + 23.16) ** 2) / 3364.0
# Beer(1990) for water vapour
cpm = (
1859
+ 0.13 * rh_pct
+ (19.3 + 0.569 * rh_pct) * (temp_C / 100.0)
+ (10.0 + 0.5 * rh_pct) * (temp_C / 100.0) ** 2
)
# air density
rho = ac("rho", qv=qa_kgkg, T=ta_K, p=pres_hPa * 100)
# water vapour mixing ratio
rv = ac("rv", qv=qa_kgkg, T=ta_K, p=pres_hPa * 100)
# dry air density
rho_d = rv / (1 + rv) * rho
# water vapour density
rho_v = rho - rho_d
# heat capacity of air
cp = cpd * (rho_d / (rho_d + rho_v)) + cpm * (rho_v / (rho_d + rho_v))
return cp
# stability correction for momentum
def cal_psi_mom(zoL):
# limit for neutral condition
lim_neutral = 1e-5
zoL = np.where(np.abs(zoL) > 5, 5 * np.sign(zoL), zoL)
# stable, zoL>0
zoL_stab = np.where(zoL > lim_neutral, zoL, 0)
psim_stab = (-6) * np.log(1 + zoL_stab)
# unstable, zoL<0
zoL_unstab = np.where(zoL < -lim_neutral, zoL, 0)
psim_unstab = 0.6 * (2) * np.log((1 + (1 - 16 * zoL_unstab) ** 0.5) / 2)
# populate values with respect to stability
psim = np.where(zoL > lim_neutral, psim_stab, psim_unstab)
psim = np.where(np.abs(zoL) <= lim_neutral, 0, psim)
return psim
# stability correction for heat
def cal_psi_heat(zoL):
# limit for neutral condition
lim_neutral = 1e-5
zoL = np.where(np.abs(zoL) > 5, 5 * np.sign(zoL), zoL)
# stable, zoL>0
zoL_stab = np.where(zoL > lim_neutral, zoL, 0)
psih_stab = -4.5 * zoL_stab
# unstable, zoL<0
zoL_unstab = np.where(zoL < -lim_neutral, zoL, 0)
psih_unstab = (2) * np.log((1 + (1 - 16 * zoL_unstab) ** 0.5) / 2)
# populate values with respect to stability
psih = np.where(zoL > lim_neutral, psih_stab, psih_unstab)
psih = np.where(np.abs(zoL) <= lim_neutral, 0, psih)
return psih