Ejemplo n.º 1
0
h0 = f.root.dh_mean_xcal[:]
h = f.root.dh_mean_xcal_interp_short_const[:]
#h = f.root.dh_mean_short_const_xcal[:]
h2 = f.root.dh_mean_xcal_short_const[:]
#h2 = f.root.dh_mean_short_const_xcal[:]
g = f.root.dg_mean_xcal[:]
g2 = f.root.dg_mean_xcal[:]
dt = ap.year2date(time)

# add interpolated grid-cells
ind = np.where(~np.isnan(h2))
h[ind] = h2[ind]

# gaussian filter (in space)
print 'smoothing seasonal fields...'
h = ap.gfilter2d(h, .5)

# array -> panel -> dataframe
data = pd.Panel(h, items=dt, major_axis=lat,
                minor_axis=lon).to_frame(filter_observations=False).T

# HP filter (in time)
print 'applying HP filter...'
#hpfilt = data.apply(hpfilter, lamb=7)
hpfilt = data

# split data
n = int(len(hpfilt) / 4.)
hpfilt1 = hpfilt.T.to_panel().values[0 * n:1 * n, ...]
hpfilt2 = hpfilt.T.to_panel().values[1 * n:2 * n, ...]
hpfilt3 = hpfilt.T.to_panel().values[2 * n:3 * n, ...]
Ejemplo n.º 2
0
h = f.root.dh_mean_xcal_interp_short_const[:]
#h = f.root.dh_mean_short_const_xcal[:]
h2 = f.root.dh_mean_xcal_short_const[:]
#h2 = f.root.dh_mean_short_const_xcal[:]
g = f.root.dg_mean_xcal[:]
g2 = f.root.dg_mean_xcal[:]
dt = ap.year2date(time)


# add interpolated grid-cells
ind = np.where(~np.isnan(h2))
h[ind] = h2[ind]

# gaussian filter (in space) 
print 'smoothing seasonal fields...'
h = ap.gfilter2d(h, .5)

# array -> panel -> dataframe
data = pd.Panel(h, items=dt, major_axis=lat, minor_axis=lon
                ).to_frame(filter_observations=False).T

# annual averages (forward-backward)
'''
print 'calculating annual averages...'
ann1 = pd.rolling_mean(data, 5, min_periods=3, center=True)
ann2 = pd.rolling_mean(data[::-1], 5, min_periods=3, center=True)[::-1]
annual = ann1.combine_first(ann2).T.to_panel().values
del ann1, ann2
'''

# HP filter (in time)
Ejemplo n.º 3
0
h = f.root.dh_mean_xcal_interp_short_const[:]
# h = f.root.dh_mean_short_const_xcal[:]
h2 = f.root.dh_mean_xcal_short_const[:]
# h2 = f.root.dh_mean_short_const_xcal[:]
g = f.root.dg_mean_xcal[:]
g2 = f.root.dg_mean_xcal[:]
dt = ap.year2date(time)


# add interpolated grid-cells
ind = np.where(~np.isnan(h2))
h[ind] = h2[ind]

# gaussian filter (in space)
print "smoothing seasonal fields..."
h = ap.gfilter2d(h, 0.5)

# array -> panel -> dataframe
data = pd.Panel(h, items=dt, major_axis=lat, minor_axis=lon).to_frame(filter_observations=False).T

# HP filter (in time)
print "applying HP filter..."
# hpfilt = data.apply(hpfilter, lamb=7)
hpfilt = data

# split data
n = int(len(hpfilt) / 4.0)
hpfilt1 = hpfilt.T.to_panel().values[0 * n : 1 * n, ...]
hpfilt2 = hpfilt.T.to_panel().values[1 * n : 2 * n, ...]
hpfilt3 = hpfilt.T.to_panel().values[2 * n : 3 * n, ...]
hpfilt4 = hpfilt.T.to_panel().values[3 * n : -1, ...]
Ejemplo n.º 4
0
h0 = f.root.dh_mean_xcal[:]
h = f.root.dh_mean_xcal_interp_short_const[:]
#h = f.root.dh_mean_short_const_xcal[:]
h2 = f.root.dh_mean_xcal_short_const[:]
#h2 = f.root.dh_mean_short_const_xcal[:]
g = f.root.dg_mean_xcal[:]
g2 = f.root.dg_mean_xcal[:]
dt = ap.year2date(time)

# add interpolated grid-cells
ind = np.where(~np.isnan(h2))
h[ind] = h2[ind]

# gaussian filter (in space)
print 'smoothing seasonal fields...'
h = ap.gfilter2d(h, .5)

# array -> panel -> dataframe
data = pd.Panel(h, items=dt, major_axis=lat,
                minor_axis=lon).to_frame(filter_observations=False).T

# annual averages (forward-backward)
'''
print 'calculating annual averages...'
ann1 = pd.rolling_mean(data, 5, min_periods=3, center=True)
ann2 = pd.rolling_mean(data[::-1], 5, min_periods=3, center=True)[::-1]
annual = ann1.combine_first(ann2).T.to_panel().values
del ann1, ann2
'''

# HP filter (in time)