source: trunk/src/python_script/read_amsua_ch2_n.py @ 6

Last change on this file since 6 was 6, checked in by gaclod, 12 years ago

add GC python scripts

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1#!/usr/bin/env python
2# -*- coding: utf-8 -*-
3import string
4import numpy as np
5import matplotlib.pyplot as plt
6from pylab import *
7from mpl_toolkits.basemap import Basemap
8from mpl_toolkits.basemap import shiftgrid, cm
9import netCDF4
10
11
12fichier=open('/net/dedale/usr/dedale/surf/lelod/ANTARC/AMSUA_CH2_ANTARC_JUNE2010.DAT','r')
13numlines = 0
14for line in fichier: numlines += 1
15
16fichier.close
17
18
19fichier=open('/net/dedale/usr/dedale/surf/lelod/ANTARC/AMSUA_CH2_ANTARC_JUNE2010.DAT','r')
20nbtotal=numlines
21
22iligne=0
23lat=np.zeros([nbtotal],float)
24lon=np.zeros([nbtotal],float)
25jjr=np.zeros([nbtotal],float)
26zen=np.zeros([nbtotal],float)
27fov=np.zeros([nbtotal],float)
28ts=np.zeros([nbtotal],float)
29emis=np.zeros([nbtotal],float)
30tb=np.zeros([nbtotal],float)
31tup=np.zeros([nbtotal],float)
32tdn=np.zeros([nbtotal],float)
33trans=np.zeros([nbtotal],float)
34orog=np.zeros([nbtotal],float)
35pos=np.zeros([nbtotal],float)
36
37while (iligne <= nbtotal-1) :
38         line=fichier.readline()
39         # exemple : line = "0.22 2.3 5.0 6"
40         liste = line.split()
41         # exemple : listeCoord ['0.22', '2.3', '5.0', '6'] (liste de chaine de caract?es)
42         lat[iligne] = float(liste[1])
43         lon[iligne] = float(liste[0])
44         jjr[iligne] = float(liste[4])
45         ts[iligne] = float(liste[10])
46         tb[iligne] = float(liste[15])
47         emis[iligne] = float(liste[16])
48         orog[iligne] = float(liste[13])
49         pos[iligne] = float(liste[7])
50         iligne=iligne+1
51         
52
53fichier.close
54
55
56x=lon
57y=lat
58z=tb
59nscan = 3
60
61zgrid, zzpgrid, ngrid, nngrid, sigma_grid, xvec, yvec = newgridns.newgridns(x, y, z, vnx, nscan, pos)
62
63zgrid_3n=zgrid
64zzpgrid_3n=zzpgrid
65ngrid_3n=ngrid
66nngrid_3n=nngrid
67sigma_grid_3n=sigma_grid
68dif_zzpgrid=sigma_grid_t-sigma_grid_2n
69
70del zgrid, zzpgrid, ngrid, nngrid, sigma_grid, xvec, yvec
71
72
73dx=0.1
74dy=1.0
75x0, x1 = -180, 180
76y0, y1 = -90, 90
77
78monthly_outz=np.zeros([40,3600],float)
79monthly_lon=np.zeros([3600])
80monthly_lat=np.zeros([40])
81xx = lon
82yy = lat
83zz = tb
84zz0 = 100
85zz1= 300
86outz, outx, outy, Nil = ffgrid3.ffgrid(xx, yy, zz, dx, dy, x0,x1,y0,y1,zz0, zz1)
87x=outx
88y=outy
89z = np.transpose(outz)
90z[Nil]=600
91z=np.transpose(z)
92
93del outz, outx, outy, zz, xx, yy
94
95
96# ici je fais des cartes moyennes en melangeant les polars
97
98xx = lon_ssmis
99yy = lat_ssmis
100zz = 0.5*(emis_ssmis[1,:]+emis_ssmis[2,:])
101outz, outx, outy = ffgrid2.ffgrid(xx, yy, zz, dx, dy, x0,x1,y0,y1,0.1, 1)
102monthly_outz_ssmis_polar[0,:,:]=outz   
103del outz, outx, outy, zz
104
105zz = 0.5*(emis_ssmis[4,:]+emis_ssmis[5,:])
106outz, outx, outy = ffgrid2.ffgrid(xx, yy, zz, dx, dy, x0,x1,y0,y1,0.1, 1)
107monthly_outz_ssmis_polar[1,:,:]=outz   
108del outz, outx, outy, zz
109
110zz = 0.5*(emis_ssmis[6,:]+emis_ssmis[7,:])
111outz, outx, outy = ffgrid2.ffgrid(xx, yy, zz, dx, dy, x0,x1,y0,y1,0.1, 1)
112monthly_outz_ssmis_polar[2,:,:]=outz   
113del outz, outx, outy, zz, xx, yy
114
115# ici je fais des cartes moyennes des differences des polars
116xx = lon_ssmis
117yy = lat_ssmis
118zz = emis_ssmis[1,:]-emis_ssmis[2,:]
119outz, outx, outy = ffgrid2.ffgrid(xx, yy, zz, dx, dy, x0,x1,y0,y1,-0.05, 0.2)
120monthly_outz_ssmis_diff[0,:,:]=outz   
121del outz, outx, outy, zz
122
123zz = emis_ssmis[4,:]-emis_ssmis[5,:]
124outz, outx, outy = ffgrid2.ffgrid(xx, yy, zz, dx, dy, x0,x1,y0,y1,-0.05, 0.2)
125monthly_outz_ssmis_diff[1,:,:]=outz   
126del outz, outx, outy, zz
127
128zz = emis_ssmis[6,:]-emis_ssmis[7,:]
129outz, outx, outy = ffgrid2.ffgrid(xx, yy, zz, dx, dy, x0,x1,y0,y1,-0.05, 0.2)
130monthly_outz_ssmis_diff[2,:,:]=outz   
131del outz, outx, outy, zz, xx, yy
132
133draw_map.draw(monthly_outz_ssmis_polar[0,:], monthly_lon_ssmis, monthly_lat_ssmis, '..\FIG\mean_ssmis_19GHzmpolar_HN_'+le_mois+'.png', '',0.6,1.01,0.002,cm.s3pcpn_l_r)
134draw_map.draw(monthly_outz_ssmis_polar[1,:], monthly_lon_ssmis, monthly_lat_ssmis, '..\FIG\mean_ssmis_37GHzmpolar_HN_'+le_mois+'.png', '',0.6,1.01,0.002,cm.s3pcpn_l_r)
135draw_map.draw(monthly_outz_ssmis_polar[2,:], monthly_lon_ssmis, monthly_lat_ssmis, '..\FIG\mean_ssmis_85GHzmpolar_HN_'+le_mois+'.png', '',0.6,1.01,0.002,cm.s3pcpn_l_r)
136
137draw_map.draw(monthly_outz_ssmis_diff[0,:], monthly_lon_ssmis, monthly_lat_ssmis, '..\FIG\mean_ssmis_19V-H_HN_'+le_mois+'.png', '',0,0.2,0.002,cm.s3pcpn_l_r)
138draw_map.draw(monthly_outz_ssmis_diff[1,:], monthly_lon_ssmis, monthly_lat_ssmis, '..\FIG\mean_ssmis_37V-H_HN_'+le_mois+'.png', '',0,0.2,0.002,cm.s3pcpn_l_r)
139draw_map.draw(monthly_outz_ssmis_diff[2,:], monthly_lon_ssmis, monthly_lat_ssmis, '..\FIG\mean_ssmis_85V-H_HN_'+le_mois+'.png', '',0,0.2,0.002,cm.s3pcpn_l_r)
140
141draw_map.draw(monthly_outz_ssmis[0,:], monthly_lon_ssmis, monthly_lat_ssmis, '..\FIG\mean_ssmis_50V_HN_'+le_mois+'.png', '',0.6,1.01,0.002,cm.s3pcpn_l_r)
142draw_map.draw(monthly_outz_ssmis[1,:], monthly_lon_ssmis, monthly_lat_ssmis, '..\FIG\mean_ssmis_19V_HN_'+le_mois+'.png', '',0.6,1.01,0.002,cm.s3pcpn_l_r)
143draw_map.draw(monthly_outz_ssmis[2,:], monthly_lon_ssmis, monthly_lat_ssmis, '..\FIG\mean_ssmis_19H_HN_'+le_mois+'.png', '',0.6,1.01,0.002,cm.s3pcpn_l_r)
144draw_map.draw(monthly_outz_ssmis[3,:], monthly_lon_ssmis, monthly_lat_ssmis, '..\FIG\mean_ssmis_22V_HN_'+le_mois+'.png', '',0.6,1.01,0.002,cm.s3pcpn_l_r)
145draw_map.draw(monthly_outz_ssmis[4,:], monthly_lon_ssmis, monthly_lat_ssmis, '..\FIG\mean_ssmis_37V_HN_'+le_mois+'.png', '',0.6,1.01,0.002,cm.s3pcpn_l_r)
146draw_map.draw(monthly_outz_ssmis[5,:], monthly_lon_ssmis, monthly_lat_ssmis, '..\FIG\mean_ssmis_37H_HN_'+le_mois+'.png', '',0.6,1.01,0.002,cm.s3pcpn_l_r)
147draw_map.draw(monthly_outz_ssmis[6,:], monthly_lon_ssmis, monthly_lat_ssmis, '..\FIG\mean_ssmis_85V_HN_'+le_mois+'.png', '',0.6,1.01,0.002,cm.s3pcpn_l_r)
148draw_map.draw(monthly_outz_ssmis[7,:], monthly_lon_ssmis, monthly_lat_ssmis, '..\FIG\mean_ssmis_85H_HN_'+le_mois+'.png', '',0.6,1.01,0.002,cm.s3pcpn_l_r)
149
150
151bins=arange(0.3,1,0.001)
152bb=(lat_ssmis >= 0) 
153 
154plt.hist(emis_ssmis[0,nonzero(bb)[0]], bins=bins,histtype='step', label='e50V',normed='True',color='#4BB5C1')
155plt.hist(emis_ssmis[1,nonzero(bb)[0]], bins=bins,histtype='step', label='e19V',normed='True',color='black')
156plt.hist(emis_ssmis[3,nonzero(bb)[0]], bins=bins,histtype='step', label='e22V',normed='True',color='#B9121B')
157plt.hist(emis_ssmis[4,nonzero(bb)[0]], bins=bins,histtype='step', label='e37V',normed='True',color='#9748D4')
158plt.hist(emis_ssmis[6,nonzero(bb)[0]], bins=bins,histtype='step', label='e91V',normed='True',color='#060DE5')
159plt.legend(loc='upper left')
160plt.show()
161plt.savefig('..\FIG\hist_ssmis_V_NH_'+le_mois+'.png')
162close()
163
164bins=arange(0.3,1,0.001)
165plt.hist(emis_ssmis[2,nonzero(bb)[0]], bins=bins,histtype='step', label='e19H',normed='True',color='black')
166plt.hist(emis_ssmis[5,nonzero(bb)[0]], bins=bins,histtype='step', label='e37H',normed='True',color='#9748D4')
167plt.hist(emis_ssmis[7,nonzero(bb)[0]], bins=bins,histtype='step', label='e91H',normed='True',color='#060DE5')
168plt.legend(loc='upper left')
169plt.show()
170plt.savefig('..\FIG\hist_ssmis_H_NH_'+le_mois+'.png')
171close()
172
173bins=arange(0.3,1,0.001)
174plt.hist(0.5*(emis_ssmis[1,nonzero(bb)[0]]+emis_ssmis[2,nonzero(bb)[0]]), bins=bins,histtype='step', label='e19',normed='True',color='black')
175plt.hist(0.5*(emis_ssmis[4,nonzero(bb)[0]]+emis_ssmis[5,nonzero(bb)[0]]), bins=bins,histtype='step', label='e37',normed='True',color='#9748D4')
176plt.hist(0.5*(emis_ssmis[6,nonzero(bb)[0]]+emis_ssmis[7,nonzero(bb)[0]]), bins=bins,histtype='step', label='e91',normed='True',color='#060DE5')
177plt.legend(loc='upper left')
178plt.show()
179plt.savefig('..\FIG\hist_ssmis_mpolar_NH_'+le_mois+'.png')
180close()
181
182
183# stats quotidienne autour de la station Thulé
184lat_stations=[76.32, 74.43, 78.13, 58.45, 68.6, 64.58]
185lon_stations=[-68.3, -94.59, 15.35, -78.08, 33.1, 40.5]
186nom_stations=['Thule', 'Resolute', 'Longyearbyen', 'Iqaluit', 'Murmansk', 'Arkhangelsk']
187
188
189for sta in range(0,6):
190    lat0=lat_stations[sta]
191    lon0=lon_stations[sta]
192    stat_jour=np.zeros([8,7,31],float)
193    clear bb
194    for canal in range(0,8):
195        for jjr in range(0,31):
196            jour_obs=jjr+1
197            bb=(jjr_ssmis == jour_obs) & (abs(lat_ssmis-lat0) < 2.) & (abs(lon_ssmis-lon0) < 2.)
198            stat_jour[canal,0,jjr]=mean(emis_ssmis[canal,nonzero(bb)[0]])
199            stat_jour[canal,1,jjr]=std(emis_ssmis[canal,nonzero(bb)[0]])            stat_jour[canal,2,jjr]=size(nonzero(bb))
200            stat_jour[canal,3,jjr]=mean(ts_ssmis[nonzero(bb)[0]])
201            stat_jour[canal,4,jjr]=std(ts_ssmis[nonzero(bb)[0]])
202            stat_jour[canal,5,jjr]=mean(tb_ssmis[canal,nonzero(bb)[0]])
203            stat_jour[canal,6,jjr]=std(tb_ssmis[canal,nonzero(bb)[0]])
204            del bb
205    np.save('STAT_SSMIS_'+nom_stations[sta]+'_'+le_mois+'.dat', stat_jour)
206    del stat_jour
207
208mpolar_ssmis=np.zeros([3,nbtotal],float)
209mpolar_ssmis[0,:]=0.5*(emis_ssmis[1,:]+emis_ssmis[2,:])
210mpolar_ssmis[1,:]=0.5*(emis_ssmis[4,:]+emis_ssmis[5,:])
211mpolar_ssmis[2,:]=0.5*(emis_ssmis[6,:]+emis_ssmis[7,:])
212
213mpolarTB_ssmis=np.zeros([3,nbtotal],float)
214mpolarTB_ssmis[0,:]=0.5*(tb_ssmis[1,:]+tb_ssmis[2,:])
215mpolarTB_ssmis[1,:]=0.5*(tb_ssmis[4,:]+tb_ssmis[5,:])
216mpolarTN_ssmis[2,:]=0.5*(tb_ssmis[6,:]+tb_ssmis[7,:])
217
218for sta in range(0,6):
219    lat0=lat_stations[sta]
220    lon0=lon_stations[sta]
221    stat2_jour=np.zeros([3,7,31],float)
222    clear bb
223    for canal in range(0,3):
224        for jjr in range(0,31):
225            jour_obs=jjr+1
226            bb=(jjr_ssmis == jour_obs) & (abs(lat_ssmis-lat0) < 2.) & (abs(lon_ssmis-lon0) < 2.)
227            stat2_jour[canal,0,jjr]=mean(mpolar_ssmis[canal,nonzero(bb)[0]])
228            stat2_jour[canal,1,jjr]=std(mpolar_ssmis[canal,nonzero(bb)[0]])
229            stat2_jour[canal,2,jjr]=size(nonzero(bb))
230            stat2_jour[canal,3,jjr]=mean(ts_ssmis[nonzero(bb)[0]])
231            stat2_jour[canal,4,jjr]=std(ts_ssmis[nonzero(bb)[0]])
232            stat2_jour[canal,5,jjr]=mean(tb_ssmis[canal,nonzero(bb)[0]])            stat2_jour[canal,6,jjr]=std(tb_ssmis[canal,nonzero(bb)[0]])
233            del bb
234    np.save('STAT_SSMIS-MPOLAR_'+nom_stations[sta]+'_'+le_mois+'.dat', stat_jour)
235    del stat_jour
236
237# ecriture sous format nc
238from netCDF4 import Dataset
239rootgrp = Dataset('..\EMIS\EMIS_SSMIS_'+le_mois+'.nc', 'w', format='NETCDF4')
240 
241rootgrp.createDimension('longitude', len(monthly_lon_ssmis))
242rootgrp.createDimension('latitude', len(monthly_lat_ssmis))
243rootgrp.createDimension('channels', 8)
244rootgrp.createDimension('bchannels', 3)
245
246# createVariable (nom de la variable, type, dimensions)
247# Si 1 dimension, ne pas oublier la virgule
248nclon = rootgrp.createVariable('longitude', 'f8', ('longitude',))
249nclat = rootgrp.createVariable('latitude', 'f8', ('latitude',))
250ncchan=rootgrp.createVariable('channels', 'f', ('channels',))
251ncchan2=rootgrp.createVariable('bchannels', 'f', ('bchannels',))
252nctemp = rootgrp.createVariable('emissivity', 'f8', ('channels','latitude', 'longitude'))
253nctemp2 = rootgrp.createVariable('emissivity melange polar', 'f8', ('bchannels','latitude', 'longitude'))
254
255nclon[:] = monthly_lon_ssmis
256nclat[:] = monthly_lat_ssmis
257ncchan[:]=[50,19.1,19.2,22,37.1,37.2,91.1,91.2]
258ncchan2[:]=[19,37,91]
259nctemp[:] = monthly_outz_ssmis
260nctemp2[:] = monthly_outz_ssmis_polar
261
262rootgrp.close()
263
264
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