Esempio n. 1
0
pert = ['LU']
npert = np.size(pert)
ens = ['_A1','_A2','_A3','_A4','_A5']
nens = np.size(ens)
diag = 'var2d'

var = ['t_ref']
#var = ['salt_col','dust_col']
"""
var = ['swdn_sfc','swup_sfc','swdn_toa','swup_toa',\
       'swdn_sfc_clr','swup_sfc_clr','swdn_toa_clr','swup_toa_clr',\
       'lwdn_sfc','lwdn_sfc_clr','lwup_sfc','lwup_sfc_clr','olr','olr_clr',\
       'evap','shflx','netrad_toa','netrad_toa_clr']
"""
nvar = np.size(var)
time = '1870-2015'
for vi in range(nvar):
    for i in range(npert):
        filename = indir+indir_sub+diag+'.'+time+'.'+pert[i]+ens[0]+'.npz'
        npz = np.load(filename)
        tmp = npz[var[vi]]
        av = np.zeros(tmp.shape+(nens,))
        for j in range(nens):
            filename = indir+indir_sub+diag+'.'+time+'.'+pert[i]+ens[j]+'.npz'
            npz = np.load(filename)
            av[...,j] = npz[var[vi]]
        av = np.mean(av,-1)
        
        outfile = outdir+outdir_sub+diag+'.'+time+'.'+pert[i]+'_mean'+'.npz'
        fio.save(outfile,**{var[vi]:av})
    print var[vi]
Esempio n. 2
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for i in range(ts_ann.shape[0]):
    nan_ind = np.where(np.isnan(ts_ann[i,:,:]))
    land_mask[0,nan_ind[0],nan_ind[1]] = 0
ts_ann[np.where(np.isnan(ts_ann))]=0

ts_gm = np.sum(np.nansum(ts_ann*area*land_mask,-1),-1)/np.nansum(area*land_mask)
land_mask.shape = (nlat,nlon)
area.shape = (nlat,nlon)
weight = area/np.sum(area)
"""
if zm:
    ts = np.mean(ts,-1)
#%%
if init:
    outfile = outdir+'dim.'+obs+'.npz'
    fio.save(outfile,lat=lat,lon=lon,land_mask=land_mask)
if init3d:
    tmp = nc.netcdf_file(files[-1],'r',mmap=True)
    pfull = tmp.variables['pfull'][:].astype(np.float64)
    outfile = outdir+'dim.'+obs+'.npz'
    fio.save(outfile,pfull=pfull)
ts_flag = ts.copy()
for flagi in range(nflag):
    if (flag[flagi] != ''):
        ts_flag = pp.month_to_year(ts,yr_ts,flag[flagi])
    outdir_sub='ts/'+sub_dict[flag[flagi]]+'/'
    outfile = outdir+outdir_sub+diago+'.'+timeo+'.'+obs+'.npz'
    fio.save(outfile,**{varo:ts_flag})

Esempio n. 3
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    var = fs[-1].variables[var_name][500:,:,:,:].astype(np.float64) #t,p,lat,lon
    ps = fs[-1].variables['ps'][500:,:,:].astype(np.float64)
    fs[-1].close()
    var_tr = var-np.mean(var,-1)[...,np.newaxis]
    power = np.abs(fft.fft(var_tr,axis=-1))**2
    phalf = grid.calcSigmaPres(ps,pk,bk)
    dp = (phalf[:,1:,:,:]-phalf[:,:-1,:,:])
    dp_m = np.mean(dp,-1)[...,np.newaxis]
    power_col = np.sum(power*dp,1)/np.sum(dp,1)
    power_m = np.mean(power_col,0)[:,:nlon/2]
    k = np.arange(0,nlon/2)
    k_m = np.sum(power_m*k,-1)/np.sum(power_m,-1)
    L[si,:] = 2*np.pi*RADIUS*np.cos(lat*np.pi/180.)/k_m
    if init:
        outfile = outdir+'dim.'+perto[si]+'.npz'
        fio.save(outfile,lat=lat,lon=lon,phalf=phalf)  
    if init3d:
        pfull = fs[-1].variables['pfull'][:].astype(np.float64)
        outfile = outdir+'dim.'+perto[si]+'.npz'
        fio.save(outfile,pfull=pfull)
    #outfile = outdir+'av/'+diago+'.'+perto[si]+'.npz'
    #fio.save(outfile,**{varo_name:tr_zm})
    
#%%
"""
Tot1 = (MMC+St+Tr)
xsc = 2*np.pi*Rad*np.cos(lat/90*np.pi/2)
xsc.shape = [1,nlat]
clev = np.arange(-7,8,1)*1e15

plt.figure(figsize=[4*6/3,4])
Esempio n. 4
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    ind = np.where(np.isinf(ratio1))
    ratio1[ind] = 0
    ratio.shape = (nt,1,nlat,1)
    ratio1.shape = (nt,1,nlat,1)
    vAdj = vPos*np.sqrt(ratio1)+vNeg*np.sqrt(ratio)
    """
    vMSE_ed1 = np.sum(vcomp_ed * MSE_m * dp_ed, 1) / GRAV
    vMSEcol_Ed1 = np.mean(np.mean(vMSE_ed1, -1), 0)
    vMSE_ed2 = np.sum(vcomp_m * MSE_ed * dp_ed, 1) / GRAV
    vMSEcol_Ed2 = np.mean(np.mean(vMSE_ed2, -1), 0)
    vMSE_ed3 = np.sum(vcomp_ed * MSE_ed * dp_ed, 1) / GRAV
    vMSEcol_Ed3 = np.mean(np.mean(vMSE_ed3, -1), 0)

    if init:
        outfile = outdir + 'dim.' + perto[si] + '.npz'
        fio.save(outfile, lat=lat, lon=lon)
    if init3d:
        pfull = fs[-1].variables['pfull'][:].astype(np.float64)
        outfile = outdir + 'dim.' + perto[si] + '.npz'
        fio.save(outfile, pfull=pfull)
    outfile = outdir + 'av/' + diago + '.' + perto[si] + '.npz'
    fio.save(outfile,\
             vMSETot_col_zm=vMSEcol_Tot,vMSEMMC_col_zm=vMSEcol_MMC,vMSEEd_col_zm=vMSEcol_Ed)
#%%
"""
plt.figure()
plt.contourf(lat,pfull,np.mean(np.mean(vcomp_m,-1),0),cmap=plt.cm.RdYlBu_r)
plt.gca().invert_yaxis()
plt.colorbar()
"""
#%%
Esempio n. 5
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    nlat = np.size(lat)
    nlon = np.size(lon)
    nlev = np.size(phalf)
    #%%
    filename = atmdir+'00000.atmos_daily.nc'
    fs.append(nc.netcdf_file(filename,'r',mmap=True))
    var1 = fs[-1].variables[var1_name][500:,:,:,:].astype(np.float64) #t,p,lat,lon
    var2 = fs[-1].variables[var2_name][500:,:,:,:].astype(np.float64) #t,p,lat,lon
    var1_tr = var1-np.mean(var1,-1)[...,np.newaxis]    
    var2_tr = var2-np.mean(var2,-1)[...,np.newaxis]
    tr = var1_tr*var2_tr
    tr_zm = np.mean(tr,-1)
    tr_zm = np.mean(tr_zm,0)
    if init:
        outfile = outdir+'dim.'+perto[si]+'.npz'
        fio.save(outfile,lat=lat,lon=lon,phalf=phalf)  
    if init3d:
        pfull = fs[-1].variables['pfull'][:].astype(np.float64)
        outfile = outdir+'dim.'+perto[si]+'.npz'
        fio.save(outfile,pfull=pfull)
    outfile = outdir+'av/'+diago+'.'+perto[si]+'.npz'
    fio.save(outfile,**{varo_name:tr_zm})
    
#%%
"""
Tot1 = (MMC+St+Tr)
xsc = 2*np.pi*Rad*np.cos(lat/90*np.pi/2)
xsc.shape = [1,nlat]
clev = np.arange(-7,8,1)*1e15

plt.figure(figsize=[4*6/3,4])
Esempio n. 6
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    lat = fs[-1].variables['lat'][:].astype(np.float64)
    lon = fs[-1].variables['lon'][:].astype(np.float64)
    phalf = fs[-1].variables['phalf'][:].astype(np.float64)
    zsurf = fs[-1].variables['zsurf'][:].astype(np.float64)
    fs[-1].close()
    nlat = np.size(lat)
    nlon = np.size(lon)
    nphalf = np.size(phalf)
    #%%
    filedir = atmdir + 'ts/daily/1yr/'
    yr = np.arange(1, 10, 1)
    nyr = np.size(yr)
    data = np.zeros([nyr, nphalf - 1, nlat])
    #tmpZon = np.zeros([nmon,nlev-1,nlat])
    #phalfZon = np.zeros([nmon,nlev,nlat])
    for yri in range(nyr):
        yrC = '000' + str(yr[yri]) + '0101-' + '000' + str(yr[yri]) + '1231.'
        filename = filedir + diag + '.' + yrC + var + '.nc'
        fs.append(nc.netcdf_file(filename, 'r', mmap=True))
        #pfull = fs[-1].variables['pfull'][:].astype(np.float64)
        tmp = fs[-1].variables[var][:].astype(np.float64)  #t,p,lat,lon
        #tmp[np.where(tmp<-999)] = np.nan
        tmp = np.mean(tmp, 3)
        data[yri, :, :] = np.mean(tmp, 0)
        fs[-1].close()
    #%%
    #outfile = outdir+'dim.'+perto[i]+'_sigma.npz'
    #fio.save(outfile,lat=lat,lon=lon,phalf=phalf,pfull=pfull)
    outfile = outdir + diago + '.' + perto[i] + '_sigma.npz'
    fio.save(outfile, **{varo: data})
Esempio n. 7
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 nlat = np.size(lat)
 nlon = np.size(lon)
 nphalf = np.size(phalf)
 #%%
 filedir = atmdir+indir_sub
 files = []
 for fi in range(nfile):
     filename = filedir+diag+'.'+yrstr[fi]+'ann.nc'
     files.append(filename)
 ts = pp.ts_multi_files(files,var[vi],0)
 if zm:
     ts = np.nanmean(ts,-1)
 #%%
 if init and vi==0:
     outfile = outdir+'dim.'+simo[i]+'.npz'
     fio.save(outfile,lat=lat,lon=lon,phalf=phalf,land_mask=land_mask,year=yr)
 if init3d:
     tmp = nc.netcdf_file(files[-1],'r',mmap=True)
     pfull = tmp.variables['pfull'][:].astype(np.float64)
     outfile = outdir+'dim.'+simo[i]+'.npz'
     fio.save(outfile,pfull=pfull)
 if init3dp:
     tmp = nc.netcdf_file(files[-1],'r',mmap=True)
     level = tmp.variables['level'][:].astype(np.float64)
     outfile = outdir+'dim.'+simo[i]+'.npz'
     fio.save(outfile,level=level)
 for flagi in range(nflag):
     ts_flag = ts
     outdir_sub='ts/'+sub_dict[flag[flagi]]+'/'
     if (flag[flagi] != ''):
         ts_flag = pp.month_to_year(ts,flag[flagi])
Esempio n. 8
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time1 = '1870-2015'
time2 = '1870-2014'
for si in range(nsim):
    grid_inf = indir+'dim.'+sim[0]+'.npz'
    npz = np.load(grid_inf)
    lat_in = npz['lat']
    lon_in = npz['lon']
    filename = indir+indir_sub+diag+'.'+time1+'.'+sim[si]+'.npz'
    npz = np.load(filename)
    tmp_in = npz[var]
    ntime = np.shape(tmp_in)[0]
    grid_outf = outdir+'dim.'+sim[0]+'.npz'
    npz = np.load(grid_outf)
    lat_out = npz['lat']
    nlat = np.size(lat_out)
    lon_out = npz['lon']
    nlon = np.size(lon_out)
    (lonm_out,latm_out) = np.meshgrid(lon_out,lat_out)
    tmp_out = np.zeros((ntime-1,nlat,nlon))
    for ti in range(ntime-1):
        (lonm_in,latm_in) = np.meshgrid(lon_in,lat_in)
        """
        tmp_rbf = interp.Rbf(latm_in,lonm_in,tmpt[ti,:,:],function='linear',smooth=0)
        tmp_out[ti,:,:] = tmp_rbf(latm_out,lonm_out)
        """
        tmp_out[ti,:,:] = \
        interp.griddata(np.array([latm_in.ravel(),lonm_in.ravel()]).T,\
        tmp_in[ti,:,:].ravel(),(latm_out,lonm_out),method='nearest')
    outfile = outdir+outdir_sub+diag+'.'+time2+'.'+sim[si]+'.npz'
    fio.save(outfile,**{var:tmp_out})
    print sim[si]
Esempio n. 9
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    pfull = fs[-1].variables['pfull'][:].astype(np.float64)
    #zsurf = fs[-1].variables['zsurf'][:].astype(np.float64)
    fs[-1].close()
    #%%
    filename = atmdir+'00000.atmos_daily.nc'
    fs.append(nc.netcdf_file(filename,'r',mmap=True))
    
    temp = fs[-1].variables['temp'][500:,:,:,:].astype(np.float64) #t,p,lat,lon
    q = fs[-1].variables['mix_rat'][500:,:,:,:].astype(np.float64)
    pfull.shape = (1,20,1,1)
    theta = temp*(p0/pfull)**(Rair/Cp)
    thetae = theta*np.exp(sc[i]*Le*q/(Cp*temp))
    temp_zm = np.mean(np.mean(temp,3),0)
    theta_zm = np.mean(np.mean(theta,3),0)
    thetae_zm = np.mean(np.mean(thetae,3),0)
    pfull.shape = (20)
    
    tmp = fs[-1].variables[var][500:,:,:,:].astype(np.float64)
    tmp_zm = np.mean(np.mean(tmp,3),0)
    if init:
        outfile = outdir+'dim.'+perto[i]+'.npz'
        fio.save(outfile,lat=lat,lon=lon)  
    if init3d:
        pfull = fs[-1].variables['pfull'][:].astype(np.float64)
        outfile = outdir+'dim.'+perto[i]+'.npz'
        fio.save(outfile,pfull=pfull,phalf=phalf)
    outfile = outdir+'av/'+diago+'.'+perto[i]+'.npz'
    fio.save(outfile,**{varo:tmp_zm})
    fio.save(outfile,temp_zm=temp_zm,theta_zm=theta_zm,thetae_zm=thetae_zm)
    
Esempio n. 10
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    nlev = np.size(phalf)
    #%%
    filename = atmdir + '00000.atmos_daily.nc'
    fs.append(nc.netcdf_file(filename, 'r', mmap=True))
    var1 = fs[-1].variables[var1_name][500:, :, :, :].astype(
        np.float64)  #t,p,lat,lon
    var2 = fs[-1].variables[var2_name][500:, :, :, :].astype(
        np.float64)  #t,p,lat,lon
    var1_tr = var1 - np.mean(var1, -1)[..., np.newaxis]
    var2_tr = var2 - np.mean(var2, -1)[..., np.newaxis]
    tr = var1_tr * var2_tr
    tr_zm = np.mean(tr, -1)
    tr_zm = np.mean(tr_zm, 0)
    if init:
        outfile = outdir + 'dim.' + perto[si] + '.npz'
        fio.save(outfile, lat=lat, lon=lon, phalf=phalf)
    if init3d:
        pfull = fs[-1].variables['pfull'][:].astype(np.float64)
        outfile = outdir + 'dim.' + perto[si] + '.npz'
        fio.save(outfile, pfull=pfull)
    outfile = outdir + 'av/' + diago + '.' + perto[si] + '.npz'
    fio.save(outfile, **{varo_name: tr_zm})

#%%
"""
Tot1 = (MMC+St+Tr)
xsc = 2*np.pi*Rad*np.cos(lat/90*np.pi/2)
xsc.shape = [1,nlat]
clev = np.arange(-7,8,1)*1e15

plt.figure(figsize=[4*6/3,4])
Esempio n. 11
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    bk = fs[-1].variables['bk'][:].astype(np.float64)
    pk = fs[-1].variables['pk'][:].astype(np.float64)
    lat = fs[-1].variables['lat'][:].astype(np.float64)
    lon = fs[-1].variables['lon'][:].astype(np.float64)
    phalf = fs[-1].variables['phalf'][:].astype(np.float64)
    zsurf = fs[-1].variables['zsurf'][:].astype(np.float64)
    fs[-1].close()
    nlat = np.size(lat)
    nlon = np.size(lon)
    nphalf = np.size(phalf)
    #%%
    filedir = atmdir+indir_sub
    files = []
    for fi in range(nfile):
        filename = filedir+diag+'.'+yrstr[fi]+'.nc'
        files.append(filename)
    av = pp.av_multi_files(files,var,0)
    av = np.mean(av,-1)
    #%%
    if init:
        outfile = outdir+'dim.'+perto[i]+'.npz'
        fio.save(outfile,lat=lat,lon=lon,phalf=phalf)  
    if init3d:
        tmp = nc.netcdf_file(files[-1],'r',mmap=True)
        pfull = tmp.variables['pfull'][:].astype(np.float64)
        outfile = outdir+'dim.'+perto[i]+'.npz'
        fio.save(outfile,pfull=pfull)       
    outfile = outdir+outdir_sub+diago+'.'+perto[i]+'.npz'
    fio.save(outfile,**{varo:av})
    
Esempio n. 12
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time1 = '1870-2015'
time2 = '1870-2014'
for si in range(nsim):
    grid_inf = indir + 'dim.' + sim[0] + '.npz'
    npz = np.load(grid_inf)
    lat_in = npz['lat']
    lon_in = npz['lon']
    filename = indir + indir_sub + diag + '.' + time1 + '.' + sim[si] + '.npz'
    npz = np.load(filename)
    tmp_in = npz[var]
    ntime = np.shape(tmp_in)[0]
    grid_outf = outdir + 'dim.' + sim[0] + '.npz'
    npz = np.load(grid_outf)
    lat_out = npz['lat']
    nlat = np.size(lat_out)
    lon_out = npz['lon']
    nlon = np.size(lon_out)
    (lonm_out, latm_out) = np.meshgrid(lon_out, lat_out)
    tmp_out = np.zeros((ntime - 1, nlat, nlon))
    for ti in range(ntime - 1):
        (lonm_in, latm_in) = np.meshgrid(lon_in, lat_in)
        """
        tmp_rbf = interp.Rbf(latm_in,lonm_in,tmpt[ti,:,:],function='linear',smooth=0)
        tmp_out[ti,:,:] = tmp_rbf(latm_out,lonm_out)
        """
        tmp_out[ti,:,:] = \
        interp.griddata(np.array([latm_in.ravel(),lonm_in.ravel()]).T,\
        tmp_in[ti,:,:].ravel(),(latm_out,lonm_out),method='nearest')
    outfile = outdir + outdir_sub + diag + '.' + time2 + '.' + sim[si] + '.npz'
    fio.save(outfile, **{var: tmp_out})
    print sim[si]
Esempio n. 13
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nens = np.size(ens)
diag = 'var2d'

var = ['precip', 'low_cld_amt']
#var = ['salt_col','dust_col']
"""
var = ['swdn_sfc','swup_sfc','swdn_toa','swup_toa',\
       'swdn_sfc_clr','swup_sfc_clr','swdn_toa_clr','swup_toa_clr',\
       'lwdn_sfc','lwdn_sfc_clr','lwup_sfc','lwup_sfc_clr','olr','olr_clr',\
       'evap','shflx','netrad_toa','netrad_toa_clr']
"""
nvar = np.size(var)
time = '1870-2015'
for vi in range(nvar):
    for i in range(npert):
        filename = indir + indir_sub + diag + '.' + time + '.' + pert[i] + ens[
            0] + '.npz'
        npz = np.load(filename)
        tmp = npz[var[vi]]
        av = np.zeros(tmp.shape + (nens, ))
        for j in range(nens):
            filename = indir + indir_sub + diag + '.' + time + '.' + pert[
                i] + ens[j] + '.npz'
            npz = np.load(filename)
            av[..., j] = npz[var[vi]]
        av = np.mean(av, -1)

        outfile = outdir + outdir_sub + diag + '.' + time + '.' + pert[
            i] + '_mean' + '.npz'
        fio.save(outfile, **{var[vi]: av})
    print var[vi]
Esempio n. 14
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 nphalf = np.size(phalf)
 #%%
 filedir = atmdir + indir_sub
 files = []
 for fi in range(nfile):
     filename = filedir + diag + '.' + yrstr[fi] + 'ann.nc'
     files.append(filename)
 ts = pp.ts_multi_files(files, var[vi], 0)
 if zm:
     ts = np.nanmean(ts, -1)
 #%%
 if init and vi == 0:
     outfile = outdir + 'dim.' + simo[i] + '.npz'
     fio.save(outfile,
              lat=lat,
              lon=lon,
              phalf=phalf,
              land_mask=land_mask,
              year=yr)
 if init3d:
     tmp = nc.netcdf_file(files[-1], 'r', mmap=True)
     pfull = tmp.variables['pfull'][:].astype(np.float64)
     outfile = outdir + 'dim.' + simo[i] + '.npz'
     fio.save(outfile, pfull=pfull)
 if init3dp:
     tmp = nc.netcdf_file(files[-1], 'r', mmap=True)
     level = tmp.variables['level'][:].astype(np.float64)
     outfile = outdir + 'dim.' + simo[i] + '.npz'
     fio.save(outfile, level=level)
 for flagi in range(nflag):
     ts_flag = ts
     outdir_sub = 'ts/' + sub_dict[flag[flagi]] + '/'
Esempio n. 15
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ens = ['A1','A2','A3','A4','A5']
npert = np.size(pert)
nens = np.size(ens)
sim = []
for i in range(npert):
    for j in range(nens):
        sim.append(pert[i]+ens[j])
nsim = np.size(sim)
#npert = 4
diag = 'rad2d.'
time = '1870-2015.'
#tmp = np.zeros([12,24,90])
var = ['swup_toa','swdn_toa','olr']
#varo = ['z500','pv500']
nvar = np.size(var)
for si in range(nsim):       
    filename = basedir+diag+time+sim[si]+'.npz'    
    npz = np.load(filename)
    netrad_toa= npz['swdn_toa']-npz['swup_toa']-npz['olr']
    fio.save(filename,netrad_toa=netrad_toa)
    
    for vi in range(nvar):
        filename = basedir+diag+time+sim[si]+'.npz'
        npz = np.load(filename)
        #tmp = npz[var[vi]]
        #fio.save(outfile,**{var[vi]:tmp})
        if var[vi] in npz.keys():
            fio.delete(filename,var[vi])

    #fio.delete(filename,'pv500')
    print sim[si]
Esempio n. 16
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    lon = fs[-1].variables['lon'][:].astype(np.float64)
    phalf = fs[-1].variables['phalf'][:].astype(np.float64)
    zsurf = fs[-1].variables['zsurf'][:].astype(np.float64)
    fs[-1].close()
    nlat = np.size(lat)
    nlon = np.size(lon)
    nphalf = np.size(phalf)
    #%%
    filedir = atmdir+'ts/daily/1yr/'
    yr = np.arange(1,10,1)
    nyr = np.size(yr)
    data = np.zeros([nyr,nphalf-1,nlat])
    #tmpZon = np.zeros([nmon,nlev-1,nlat])
    #phalfZon = np.zeros([nmon,nlev,nlat])
    for yri in range(nyr):
        yrC = '000'+str(yr[yri])+'0101-'+'000'+str(yr[yri])+'1231.'
        filename = filedir+diag+'.'+yrC+var+'.nc'
        fs.append(nc.netcdf_file(filename,'r',mmap=True))
        #pfull = fs[-1].variables['pfull'][:].astype(np.float64)
        tmp = fs[-1].variables[var][:].astype(np.float64) #t,p,lat,lon
        #tmp[np.where(tmp<-999)] = np.nan
        tmp = np.mean(tmp,3)
        data[yri,:,:] = np.mean(tmp,0)
        fs[-1].close()
    #%%
    #outfile = outdir+'dim.'+perto[i]+'_sigma.npz'
    #fio.save(outfile,lat=lat,lon=lon,phalf=phalf,pfull=pfull)
    outfile = outdir+diago+'.'+perto[i]+'_sigma.npz'
    fio.save(outfile,**{varo:data})
    
Esempio n. 17
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    land_mask = np.array(land_mask)
fs[-1].close()
#%%
files = []
nfile = 1
for fi in range(nfile):
    files.append(filename)
ts = pp.ts_multi_files(files,var,0)
#%%
ts = ts[1200:-5,:,:]
#ts = ts[:-6,:,:]
#ts[np.where(abs(ts)>999)] = np.nan
if zm:
    ts = np.mean(ts,-1)
#%%
if init:
    outfile = outdir+'dim.'+obs+'.npz'
    fio.save(outfile,lat=lat,lon=lon,land_mask=land_mask)
if init3d:
    tmp = nc.netcdf_file(files[-1],'r',mmap=True)
    pfull = tmp.variables['pfull'][:].astype(np.float64)
    outfile = outdir+'dim.'+obs+'.npz'
    fio.save(outfile,pfull=pfull)
for flagi in range(nflag):
    if (flag[flagi] != ''):
        ts_flag = pp.month_to_year(ts,yr_ts,flag[flagi])
        outdir_sub='ts/'+sub_dict[flag[flagi]]+'/'
    outfile = outdir+outdir_sub+diago+'.'+timeo+'.'+obs+'.npz'
    fio.save(outfile,**{varo:ts_flag})

Esempio n. 18
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        np.float64)  #t,p,lat,lon
    ps = fs[-1].variables['ps'][500:, :, :].astype(np.float64)
    fs[-1].close()
    var_tr = var - np.mean(var, -1)[..., np.newaxis]
    power = np.abs(fft.fft(var_tr, axis=-1))**2
    phalf = grid.calcSigmaPres(ps, pk, bk)
    dp = (phalf[:, 1:, :, :] - phalf[:, :-1, :, :])
    dp_m = np.mean(dp, -1)[..., np.newaxis]
    power_col = np.sum(power * dp, 1) / np.sum(dp, 1)
    power_m = np.mean(power_col, 0)[:, :nlon / 2]
    k = np.arange(0, nlon / 2)
    k_m = np.sum(power_m * k, -1) / np.sum(power_m, -1)
    L[si, :] = 2 * np.pi * RADIUS * np.cos(lat * np.pi / 180.) / k_m
    if init:
        outfile = outdir + 'dim.' + perto[si] + '.npz'
        fio.save(outfile, lat=lat, lon=lon, phalf=phalf)
    if init3d:
        pfull = fs[-1].variables['pfull'][:].astype(np.float64)
        outfile = outdir + 'dim.' + perto[si] + '.npz'
        fio.save(outfile, pfull=pfull)
    #outfile = outdir+'av/'+diago+'.'+perto[si]+'.npz'
    #fio.save(outfile,**{varo_name:tr_zm})

#%%
color = ['k', 'b', 'r', 'b', 'r']
ls = ['-', '-', '-', '--', '--']
plt.figure()
for si in range(npert):
    plt.plot(lat, L[si, :] / 1.e6, color=color[si], ls=ls[si])
plt.xlim(-90, 90)
plt.xticks(np.arange(-60, 61, 30))
Esempio n. 19
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    fs.append(nc.netcdf_file(stafile,'r',mmap=True))
    """
    bk = fs[-1].variables['bk'][:].astype(np.float64)
    pk = fs[-1].variables['pk'][:].astype(np.float64)
    lat = fs[-1].variables['lat'][:].astype(np.float64)
    lon = fs[-1].variables['lon'][:].astype(np.float64)
    phalf = fs[-1].variables['phalf'][:].astype(np.float64)
    zsurf = fs[-1].variables['zsurf'][:].astype(np.float64)
    fs[-1].close()
    nlat = np.size(lat)
    nlon = np.size(lon)
    nphalf = np.size(phalf)
    """
    #%%
    filedir = atmdir+subdir
    
    filename = filedir+diag+'.'+yrC+'.'+var+'.nc'
    fs.append(nc.netcdf_file(filename,'r',mmap=True))
    #pfull = fs[-1].variables['pfull'][:].astype(np.float64)
    tmp = fs[-1].variables[var][:].astype(np.float64) #t,p,lat,lon
    #tmp[np.where(tmp<-999)] = np.nan
    tmp = np.mean(tmp,2)
    tmp = np.mean(tmp,0)
    fs[-1].close()
    #%%
    #outfile = outdir+'dim.'+perto[i]+'_sigma.npz'
    #fio.save(outfile,lat=lat,lon=lon,phalf=phalf,pfull=pfull)
    outfile = outdir+diago+'.'+perto[i]+'_sigma.npz'
    fio.save(outfile,**{varo:tmp})
    
Esempio n. 20
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var = 't_ref'
diag = 'var2d'
time = '1880-2015'

grid_inf = indir + 'dim.' + obs_in + '.npz'
npz = np.load(grid_inf)
lat_in = npz['lat']
lon_in = npz['lon']
land_mask_in = npz['land_mask']
(latt, lont, land_maskt) = (lat_in, lon_in, land_mask_in)
(lonm_in, latm_in) = np.meshgrid(lont, latt)
land_mask_out = interp.griddata(np.array([latm_in.ravel(),lonm_in.ravel()]).T,\
    land_maskt.ravel(),(latm_out,lonm_out),method='linear')
outfile = outdir + 'dim.' + obs_out + '.npz'
fio.save(outfile, lat=lat_out, lon=lon_out, land_mask=land_mask_out)
filename = indir + indir_sub + diag + '.' + time + '.' + obs_in + '.npz'
npz = np.load(filename)
tmp_in = npz[var]
latt, lont, tmpt = lat_in, lon_in, tmp_in
ntime = np.shape(tmpt)[0]
tmp_out = np.zeros((ntime, nlat, nlon))
for ti in range(ntime):
    (lonm_in, latm_in) = np.meshgrid(lont, latt)
    """
    tmp_rbf = interp.Rbf(latm_in,lonm_in,tmpt[ti,:,:],function='linear',smooth=0)
    tmp_out[ti,:,:] = tmp_rbf(latm_out,lonm_out)
    """
    tmp_out[ti,:,:] = \
        interp.griddata(np.array([latm_in.ravel(),lonm_in.ravel()]).T,\
        tmpt[ti,:,:].ravel(),(latm_out,lonm_out),method='linear')
Esempio n. 21
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for i in ind:
    atmdir = basedir + exper + pert[i] + plat + 'pp/' + diag + '/'
    stafile = atmdir + diag + '.static.nc'
    fs = []
    fs.append(nc.netcdf_file(stafile, 'r', mmap=True))
    bk = fs[-1].variables['bk'][:].astype(np.float64)
    pk = fs[-1].variables['pk'][:].astype(np.float64)
    lat = fs[-1].variables['lat'][:].astype(np.float64)
    lon = fs[-1].variables['lon'][:].astype(np.float64)
    phalf = fs[-1].variables['phalf'][:].astype(np.float64)
    zsurf = fs[-1].variables['zsurf'][:].astype(np.float64)
    fs[-1].close()
    nlat = np.size(lat)
    nlon = np.size(lon)
    nphalf = np.size(phalf)
    #%%
    filedir = atmdir + subdir
    filename = filedir + diag + '.' + yrC + '.' + var + '.nc'
    fs.append(nc.netcdf_file(filename, 'r', mmap=True))
    #pfull = fs[-1].variables['pfull'][:].astype(np.float64)
    tmp = fs[-1].variables[var][:].astype(np.float64)  #t,p,lat,lon
    #tmp[np.where(tmp<-999)] = np.nan
    tmp = np.mean(tmp, 2)
    #tmp = np.mean(tmp,0)
    fs[-1].close()
    #%%
    #outfile = outdir+'dim.'+perto[i]+'_sigma.npz'
    #fio.save(outfile,lat=lat,lon=lon,phalf=phalf,pfull=pfull)
    outfile = outdir + diago + '.' + perto[i] + '_sigma.npz'
    fio.save(outfile, **{varo: tmp})
Esempio n. 22
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    pfull = fs[-1].variables['pfull'][:].astype(np.float64)
    #zsurf = fs[-1].variables['zsurf'][:].astype(np.float64)
    fs[-1].close()
    #%%
    filename = atmdir + '00000.atmos_daily.nc'
    fs.append(nc.netcdf_file(filename, 'r', mmap=True))

    temp = fs[-1].variables['temp'][500:, :, :, :].astype(
        np.float64)  #t,p,lat,lon
    q = fs[-1].variables['mix_rat'][500:, :, :, :].astype(np.float64)
    pfull.shape = (1, 20, 1, 1)
    theta = temp * (p0 / pfull)**(Rair / Cp)
    thetae = theta * np.exp(sc[i] * Le * q / (Cp * temp))
    temp_zm = np.mean(np.mean(temp, 3), 0)
    theta_zm = np.mean(np.mean(theta, 3), 0)
    thetae_zm = np.mean(np.mean(thetae, 3), 0)
    pfull.shape = (20)

    tmp = fs[-1].variables[var][500:, :, :, :].astype(np.float64)
    tmp_zm = np.mean(np.mean(tmp, 3), 0)
    if init:
        outfile = outdir + 'dim.' + perto[i] + '.npz'
        fio.save(outfile, lat=lat, lon=lon)
    if init3d:
        pfull = fs[-1].variables['pfull'][:].astype(np.float64)
        outfile = outdir + 'dim.' + perto[i] + '.npz'
        fio.save(outfile, pfull=pfull, phalf=phalf)
    outfile = outdir + 'av/' + diago + '.' + perto[i] + '.npz'
    fio.save(outfile, **{varo: tmp_zm})
    fio.save(outfile, temp_zm=temp_zm, theta_zm=theta_zm, thetae_zm=thetae_zm)