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633 | #!/usr/bin/env python
# -*- coding: utf-8 -*-
"""
Estimate electron temperature and ion concentration based on their the spectral lines intensity.
Ions intensity is descrimed by a very simple model with minimal number of parameters:
Expectations:
1) that line intesity is proportional to impurity density and fnction of the temperature
2) ratio of lines of the different ionization states of the impuritie as
function of the temperature is polynome of order k (k = 1 now)
3) shape of f(T_e) of the first ionozation stage is gaussian with width a and center T0
(for k = 1 => all other are also gaussians)
4) this model can not exactly estimate the temperature, only something which is
monotonous function of the T_E => caibration from the spitzer resistivity was necassary.
5) it is expected that during the shot is impurity density as constant as possible.
Advantages:
simple model => robust
most of the spectra are explained very well even by this simple model
Disadvantages:
OI and NI can be observed in low temperatures a deviation from model, f(T) if this
ions don't have a gaussian shape, it radiates strongyl alte low temperatures and the the radiation
is alomost constant over large range of temperatures.
In helium shots is probably a different physic or a week he lines mess estimate of the NI density.
NI radiation is significantly underestimated.
Autor :Tomas Odstrcil
Date 12.12.2012
"""
import matplotlib
matplotlib.rcParams['backend'] = 'Agg'
from numpy import *
import matplotlib.pyplot as plt
from numpy.linalg import norm
from scipy.linalg import inv,pinv,cholesky,solve_triangular
from scipy.stats.stats import pearsonr,hmean
from scipy.sparse import block_diag
from numpy.matlib import repmat
from time import time
from pygolem_lite.modules import save_adv,load_adv
from pygolem_lite import saveconst
import numexpr as ne
from scipy.optimize import fmin_bfgs
ion_names = ['HI','OI','OII', 'OIII', 'HeI', 'CII', 'CIII', 'NI','NII', 'NIII','M1', 'MIV' ]
element_names = ['H','O','He','C','N','M1','MIV']
n_ions = len(ion_names)
n_elemets = len(element_names)
k = 2 #polynome order
ions_index = [[0], [1,2,3], [4], [5,6], [7,8,9], [10],[11]]
single_ion = [0,2,5,6]
multi_ion = [1,3,4]
M1 = matrix([1,]) #H 0
M2 = matrix([[1,-1,0],[0,1,-1],[1,0,-1],[1,0,0]]) #O 1
M3 = matrix([1,]) #He 2
M4 = matrix([[1,-1],[-1,1],[1,0]]) #C 3
M5 = matrix([[1,-1,0],[0,1,-1],[1,0,-1],[0,1,0]]) #N 4
M6 = matrix([1,]) #M1 5
M7 = matrix([1,]) #MIV 6
M = block_diag((M1,M2,M3,M4,M5,M6,M7))
M = M.todense()
bound_inter_i = [1,2,3,5,6,7,8,9]
bound_inter_j = [1,2,3,6,7,9,10,11]
bound_inter = zeros(15, dtype = 'bool')
bound_inter[bound_inter_j] = True
M_limited = (M[:,bound_inter_i])[bound_inter_j,:]
iM = array(linalg.pinv(M))
def CalibrateTemperature(T,Terr): #basend on coeffitients from CompareSpitzerResistivity.py
nl_coeff = loadtxt('model_constants/nonlin_tranform_coeff.txt')
a = nl_coeff[0]
b = nl_coeff[1]
c = nl_coeff[2]
d = nl_coeff[3]
def T2T_eV(T):
T = copy(T)
ind = where(T <=c*0.95)
T[ind] = c*0.95+c*0.05*(1-exp((T[ind]-c*0.05)))
ind = where(T>2.9)
T_ = (tan((-T-c)/d)-b)/a
T_[ind] = exp(-T[ind]+2.9)*(tan((-2.9-c)/d)-b)/a
return T_
T_ = T2T_eV(T)
Terr_u = T2T_eV(T-Terr)-T_
Terr_d = -T2T_eV(T+Terr)+T_
return T_,Terr_u,Terr_d
def EstimateT(p,pE,coeff):
pE = pE#+0.1 #because than can be too low values, nonstatistical errors
n = size(p,0)
m = size(p,1)
I = ones(n)
cutM = array(M[bound_inter_j,:])
R = dot(cutM,log(p+1e-4).T)
m = size(R,1)
Re = sqrt(dot(cutM**2,((pE/(p+1e-5))**2).T))
R-= outer(coeff[:,0], I)
B = coeff[:,1]
B = tile(B,(m,1)).T
T = average(R/B, axis = 0, weights=(B/Re)**2)
T = sum(B*R/Re**2, axis = 0)/sum((B/Re)**2,axis = 0)
B *= T[newaxis,:]
chi2 = norm((R-B)/Re)**2/(size(R)-size(T))
print 'chi2 temp:',chi2
return T
def plotTprofiles(T0, a, density,N, T,B, coeff,p,pE,i):
density_model = ones((100,n_elemets))
T_model = linspace(-3,3,100)
N_model = vstack((ones(100),T_model)).T
c2 = CalcIntensity(T_model,density_model,N_model,T0,a,B,coeff,ions_index[i])/e
I = CalcIntensity(T,density,N,T0,a,B,coeff,ions_index[i])
Resid = (p[:,ions_index[i]]-I)/pE[:,ions_index[i]]
ax = plt.subplot(1,1,1)
r_tot,_ = pearsonr(ravel(p[:,ions_index[i]]), ravel(I))
#max_Resid je aby se zabránilo pÅeteÄenÃ
chi2 = norm(Resid)**2/(size(Resid))
max_Resid = double(amax(abs(Resid)))
Resid/= max_Resid
Resid **= 2
chi2_robust = max_Resid*sum(Resid/sqrt((1/max_Resid)**2 + Resid))/(size(Resid))
colour = ['b', 'r','k', 'y']
for k in range(len(ions_index[i])):
x = -T
y = squeeze(p[:,(ions_index[i])[k]]/exp(density[:,i]))
y_err = squeeze(pE[:,(ions_index[i])[k]]/exp(density[:,i]))
noisy = y_err > y*2
errorbar(x[~noisy],y[~noisy],y_err[~noisy], fmt=colour[k]+'.',capsize = 0,linewidth = 0.1,markersize = 0.5)
plt.plot(-T_model, c2[:,k], colour[k],label = ion_names[(ions_index[i])[k]])
plt.xlabel('f(T) [-]')
plt.ylabel('intensity [a.u.]')
leg = plt.legend(loc='upper left', fancybox=True)
leg.get_frame().set_alpha(0.7)
plt.title(element_names[i])
ax.text(-1.9,1,'$\\chi^2$ = %2.1f \n$\\chi^2$ robust = %2.1f \n$r$ = %1.2f'
% (chi2,chi2_robust,r_tot),horizontalalignment='left',verticalalignment='bottom')
plt.ylim(0,1.5)
plt.xlim(-2,1)
#plt.show()
plt.savefig('grafy_advance/_'+element_names[i]+' '+name+'.png')
fig.clf()
from scipy.spatial.distance import cdist
iM = copy(iM.T)
def CalcIntensity(T,density,N,T0,a,B,coeff,index):
density[density>100] = 100
n = size(density,0)
F = empty((n,15), dtype= 'double')
F[:,bound_inter] = dot(N,coeff.T)
T = repmat(T, n_elemets,1).T
T -= T0
T *= T
T *= a
T -= B
T += density
F[:,~bound_inter] = T
I = exp(dot(F,iM[:,index])-1)
return I
def EstimateDensity(p,pE,T,T0,a,B,coeff):
n = size(p,0)
#pE = pE+0.1 #because than can be too low values, nonstatistical errors
N = vstack([T**j for j in range(k)]).T
density = zeros((n,n_elemets))
I = CalcIntensity(T,density,N,T0,a,B,coeff,slice(0,12))
I[I<1e-3] = 1e-3
r = log(p/I+1e-3)
re = pE/(p+1e-3)
for i,ind in enumerate(ions_index):
density[:,i] = average(r[:,ind], axis = 1, weights=1/re[:,ind])
I = CalcIntensity(T,density,N,T0,a,B,coeff,slice(0,12))
chi2 = norm((p-I)/pE)**2/(size(p)-size(density))
#for i in range(n_ions):
#plotTprofiles(T0, a, density,N, T, B,coeff,p,pE,i)
#import IPython
#IPython.embed()
print 'chi2 dens:',chi2
return density
def CalcDensTemp():
C = loadtxt('model_constants/C.txt') #temperature polynome coeffitients
A = loadtxt('model_constants/A.txt') #temperature profile gaussian widths
T0= loadtxt('model_constants/T0.txt')#temperature profile gaussian center
B = loadtxt('model_constants/B.txt') #temperature profile gaussian height
#try:
tvec,proj_dict = load_adv('./data/projection')
p = proj_dict
pE = proj_dict.data_err
#p = load('./data/projection.npy')
#pE = load('./data/projectionError.npy')
#tvec= load('./data/tvec.npy')
#except:
#print 'Projection was not found'
#return
#print p.shape, type(p), p.ndim
#exit()
s = sum(p[:,bound_inter_i],axis = 1) > 0.01 #remove dark and very weak spectra
shots_part = linspace(0,1,size(p,0), endpoint = False)
p = p[s,:]
pE = pE[s,:]
tvec = tvec[s]
shots_part = shots_part[s]
n = size(p,0)
if n == 0:
return
dp = zeros((n+1,n_ions))
dp[1:-1,:] = abs(diff(p, axis = 0))
dp_ = zeros_like(pE)
for i in range(n_ions):
x = arange(n)+0.5
xp = arange(n+1)
dp_[:,i] = interp(x,xp, dp[:,i])
pE += 0.1*dp_ #error due to fast changes during integration
pE[pE <= 1e-3] = 1e-3 #due to non-physically small errors
n_infty = sum(pE == infty)
def f_optim(x):
#t = time()
T = x[:n]# temperature
density = reshape(x[-n*n_elemets:],(n,n_elemets)) #logarithm dems
N = vstack([T**j for j in range(k)]).T
#t = time()
I = CalcIntensity(T,density,N,T0,A,B,C,slice(0,12))
#print time()-t
size(pE)
doF = (size(p)-size(x)-n_infty)
Resid = ne.evaluate('((p-I)/(pE+1e-5))**2')
chi2 = ne.evaluate('sum(Resid/sqrt(1 + Resid))')/doF
b = norm(T[T > 4])
b += norm(T[T < -3])
d = diff(density,1, axis = 0) #BUG je to OK?
d[0,:]/=2 #allow a bigger changes at the start and end of the discharge where is the model not valid
d[-1,:]/=2
d = norm(d)/len(d)#+norm(exp(density[:,0]))+norm(exp(density[:,-1]))
Td = diff(T,2)
Td[Td > 0] = 0
Td = norm(Td)
spars = norm(ravel(exp(density))) #suppress extremly high densities
#print time()-t
#print chi2 +spars*.1+lam*d*.6+Td/10+b
return chi2 +spars*.1+lam*d*.6+Td/10+b
#make a LSQ based estimates
temp0 = EstimateT(p,pE,C)
dens0 = EstimateDensity(p,pE,temp0,T0,A,B,C)
#print dens0[:,element_names=='O'], temp0
#dens0[:,array(element_names)=='O']
x0 = hstack((temp0, ravel(dens0)))
#import IPython
#IPython.embed()
lam = 10
print 'fmin_bfgs'
y= fmin_bfgs(f_optim, x0, gtol=1e-1,maxiter=1e6,disp=False)
#print y
#exit()
#print 'fmin_bfgs finish'
T = y[:n]# temperature
#print T
N = vstack([T**j for j in range(k)]).T
density = reshape(y[-n*n_elemets:],(n,n_elemets)) #logarithm density
I = CalcIntensity(T,density,N,T0,A,B,C,range(12))
#estimate statistical errors:
def RetrofitFunction(x):
Temp = x[:n]# temperature
Dens = reshape(x[n:],(n,n_elemets))#logarithm density
I = CalcIntensity(Temp,Dens,N,T0,A,B,C,range(12))
return ravel(I)
def CalcJacobi(x0,fun):
n2 = size(p)
dx = 1e-6
J = zeros((len(x0),n2), dtype = 'float32')
for i in range(len(x0)):
xl,xr = copy(x0),copy(x0)
xl[i]-= dx
xr[i]+= dx
J[i,:] = (fun(xl)-fun(xr))/(2*dx)
return J
J = CalcJacobi(y,RetrofitFunction)
chi2 = array([1,3,3,3,1,3,3,13,13,13,10,1]) #BUG must by set by hand
correctedPE = copy(pE)
correctedPE *= sqrt(chi2)
err = ravel(correctedPE)
J/= err
JJ= dot(J,J.T)
JJ.flat[::size(J,0)+1]+= 1e-3 #regularization of the sometimes singular matrix
L = cholesky(JJ, lower=False,overwrite_a=True) #vytvoÅà to asi dolnà trojúhelnÃkovu matici rozkladu
#invert L
I = identity(L.shape[0])
iL= solve_triangular(L,I , trans=0, lower=True, overwrite_b=True)
iL = absolute(iL, out = iL)
iL **= 2
err = sqrt(sum(iL, 0))
energy_constants=load('./data/energy_constants.npy')
p_calib = p*energy_constants
P_total = sum(p_calib,1)
temp_err = err[:n]
dens_err = reshape(err[n:],(n,n_elemets))
T_calib,T_calib_err_u,T_calib_err_d = CalibrateTemperature(T,temp_err)
ind = argsort(P_total)[-2:]
max_dens = average(density[ind,:],axis=0, weights=dens_err[ind,:])
max_dens = exp(max_dens)
for d,name in zip(max_dens, element_names):
print 'ion %2s concentration = %1.2f'%(name,d)
saveconst('./HistoricalAnalysis/'+name,d)
flt_temp = average(T_calib[ind],weights=1/T_calib_err_d[ind]**2)
print 'flattop temperatute %1.1f'%flt_temp
saveconst('./HistoricalAnalysis/temperature',flt_temp)
chi2 = zeros(n_elemets)
for i in range(n_elemets):
I = CalcIntensity(T,density,N,T0,A,B,C,ions_index[i])
Resid = (p[:,ions_index[i]]-I)/pE[:,ions_index[i]]
max_Resid = double(amax(abs(Resid)))
Resid/= max_Resid
Resid **= 2
chi2[i] = max_Resid*sum(Resid/sqrt((1/max_Resid)**2 + Resid))/(size(Resid)-n+1)
save_adv('./data/density', tvec,density,data_err=dens_err, tvec_err=1e-3)
save_adv('./data/temperature', tvec,T_calib, data_err=[T_calib_err_d,T_calib_err_u], tvec_err=1e-3)
save_adv('./data/TempDensChi2', arange(n_elemets),chi2)
#Plot basic plot
try:
shots = load('shots.npy')
shot_index = where(abs(floor(shots)- shot_number) < 0.5)[0]
except:
pass
fig = plt.figure(num=None, figsize=(8, 7), dpi=80, facecolor='w', edgecolor='k')
ax = fig.add_subplot(311)
I = CalcIntensity(T,density,N,T0,A,B,C,range(12))
plt.errorbar(arange(size(p)), ravel(p.T), yerr=ravel(pE.T))
plt.plot(ravel(I.T))
chi2doF = norm((p-I)/pE)**2/size(p-size(y))
ax.set_title('Spectral data retrofit')
T_est = EstimateT(p,pE,C)
d_est = EstimateDensity(p,pE,T_est,T0,A,B,C)
I = CalcIntensity(T_est ,d_est,N,T0,A,B,C,range(12))
plt.plot(ravel(I.T), 'r:')
ax.axis('tight')
ax.set_ylabel('intensity')
ax.set_ylim(0,amax(p)*1.2)
ax.text(2/2,amax(p)*0.5,'$\chi^2$/doF = %.2f'%chi2doF,horizontalalignment='left',verticalalignment='bottom')
for i,name in enumerate(ion_names):
ax.text(i*n+1,amax(p)*1.05,name,horizontalalignment='left',verticalalignment='bottom')
ax = fig.add_subplot(312)
plt.errorbar(tvec*1e3, -T, temp_err,markersize = 0.5)
plt.plot(tvec*1e3, -(T_est[:n]),':')
try:
temperature_full = load('temperature.npy')
plt.plot(shots[shot_index]-shot_number, -temperature_full[shot_index], '--')
except:
pass
ax.set_ylim(-4,3)
ax.set_ylabel('pseudo temperature')
ax = fig.add_subplot(313)
plt.semilogy( tvec*1e3,exp(density))
try:
density_full = load('density.npy')
density_full+= B[:,newaxis]
plt.semilogy(shots[shot_index]-shot_number,exp(density_full[:,shot_index].T), '--')
except:
pass
#ax.axis('tight')
ax.set_ylim(1e-3,10)
ax.set_ylabel('Density')
ax.set_xlabel('t [ms]')
fig.savefig('./graphs/proj_retrofit.png')
fig.clf()
return
def plotDensTemp():
tvec,density = load_adv('./data/density')
dens_err = density.data_err
tvec,T = load_adv('./data/temperature')
temp_err = T.data_err
temp_err = [temp_err[:,0] ,temp_err[:,1]]
_,chi2doF = load_adv('./data/TempDensChi2')
class MyFormatter(plt.ScalarFormatter):
def __call__(self, x, pos=None):
if pos==0:
return ''
else: return plt.ScalarFormatter.__call__(self, x, pos)
fig = plt.figure(num=None, figsize=(10, 10), dpi=80, facecolor='w', edgecolor='k')
plt.subplots_adjust(hspace=0, wspace = 0)
for i in range(0,n_elemets):
ax = fig.add_subplot(n_elemets,1,i+1)
if i == 0:
ax.set_title('Relative ions concentration')
ax.xaxis.set_major_formatter( plt.NullFormatter() )
ax.yaxis.set_major_formatter( MyFormatter() )
y = exp(density[:,i])
y_err_up = expm1( dens_err[:,i])*y
y_err_down = -expm1(-dens_err[:,i])*y
y_med = average(y, weights=abs(y_err_up))
y_err_med = (hmean(abs(y-y_med)+1e-3)+hmean(abs(y_err_up)))/2
plt.errorbar(tvec*1e3,y,yerr=[y_err_down,y_err_up],markersize = 0.5, label = element_names[i])
ax.yaxis.grid(True)
ax.text(.05,.2,'$\\chi^2/doF = %2.1f$ \n $n = %1.2f\pm%1.1g$'% (chi2doF[i],y_med,y_err_med),horizontalalignment='left',verticalalignment='bottom',transform=ax.transAxes)
ax.set_ylim(0,max(0.1,amax(y))*1.5)
leg = plt.legend(loc='upper left', fancybox=True)
leg.get_frame().set_alpha(0.5)
ax.xaxis.set_major_formatter( plt.ScalarFormatter() )
ax.set_xlabel('t [ms]')
fig.savefig('./graphs/density.png',bbox_inches='tight')
fig.clf()
fig = plt.figure(num=None, figsize=(10, 3), dpi=80, facecolor='w', edgecolor='k')
ax = fig.add_subplot(111)
ax.set_title('Estimated temperature')
plt.errorbar(tvec*1e3, T, yerr=temp_err,markersize = 0.5)
ax.set_ylabel('$T_e$ [eV]')
ax.set_xlabel('t [ms]')
ax.set_ylim(0,80)
ax.yaxis.grid(True)
fig.savefig('./graphs/temperature.png',bbox_inches='tight')
plt.close()
try:
fig = plt.figure(num=None, figsize=(10, 3), dpi=80, facecolor='w', edgecolor='k')
ax = fig.add_subplot(111)
data = load('./electronTemperatures/'+str(shot_number)+'/electron_temperature.npz')
temp = data['data']*data['scale']
tvec_spitz= linspace(data['t_start'], data['t_end'], len(temp))
try:
plasma_start = loadtxt('./electronTemperatures/'+str(shot_number)+'/PlasmaStart')
plasma_end = loadtxt('./electronTemperatures/'+str(shot_number)+'/PlasmaEnd')
except:
pass
#plasma_start = amin(tvec[isfinite(temp)])
#plasma_end = amax(tvec[isfinite(temp)])
if shot_number > 9300:
temp*= 2
else:
tvec_spitz/= 1e3
plasma_start-= 0.5
plasma_start/= 1000
plasma_end/=1000
ax.set_title('Spitzer temperature')
plt.plot(tvec_spitz*1e3, temp)
ax.set_ylabel('$T_e$ [eV]')
ax.set_xlabel('t [ms]')
ax.set_ylim(0,80)
ax.set_xlim(plasma_start*1000,plasma_end*1000)
fig.savefig('./graphs/temperature'+str(shot_number)+'_spitz.png',bbox_inches='tight')
plt.close()
print 'Te plotted'
except:
print 'no electron temperature'
pass
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