def housekeeping(var):
    # Convert units
    unit_dict={'m' : ('km', 1e-3)}
    units_in = var.attrs.get('units')
    if units_in in unit_dict:
        attrs = var.attrs
        attrs['units'] = unit_dict[units_in][0]
        var = var * unit_dict[units_in][1]
        var.attrs = attrs

    # Fill Ro200 with NaNs near equator
    if var.name == 'Ro200':
        latbuf = 5
        lat = atm.get_coord(var, 'lat')
        latbig = atm.biggify(lat, var, tile=True)
        vals = var.values
        vals = np.where(abs(latbig)>latbuf, vals, np.nan)
        var.values = vals

    return var
Beispiel #2
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        var, _, _ = utils.load_dailyrel(datafiles[key][nm])
        if 'year' in var.dims:
            var = var.mean(dim='year')
        data[key][nm] = var


# ----------------------------------------------------------------------
# Housekeeping

# Fill Ro200 with NaNs near equator
varnm = 'Ro200'
for key1 in data:
    if varnm in data[key1]:
        latbuf = 5
        lat = atm.get_coord(data[key1][varnm], 'lat')
        latbig = atm.biggify(lat, data[key1][varnm], tile=True)
        vals = data[key1][varnm].values
        vals = np.where(abs(latbig)>latbuf, vals, np.nan)
        data[key1][varnm].values = vals

# ----------------------------------------------------------------------
# Sector mean data

lonname, latname = 'XDim', 'YDim'
sectordata = {}
for key1 in data:
    sectordata[key1] = collections.OrderedDict()
    for varnm in data[key1]:
        var = atm.subset(data[key1][varnm], {lonname : (lon1, lon2)})
        sectordata[key1][varnm] = var.mean(dim=lonname)
Beispiel #3
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 def applymask(data, mask):
     _, _, coords, _ = atm.meta(data)
     maskbig = atm.biggify(mask, data, tile=True)
     vals = np.ma.masked_array(data, maskbig).filled(np.nan)
     data_out = xray.DataArray(vals, coords=coords)
     return data_out
Beispiel #4
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onset, retreat, length = index['onset'], index['retreat'], index['length']
tseries[onset_nm] = index['tseries']

# ENSO
enso = utils.get_enso_indices(years)
enso = xray.DataArray(enso[enso_nm]).rename({'Year' : 'year'})

# ----------------------------------------------------------------------
# Climatology

index_clim = index.mean(dim='year')
tseries_clim = tseries.mean(dim='year')
enso_clim = enso.mean(dim='year').values

# Tile the climatology to each year for plot_tseries_together
vals = atm.biggify(tseries_clim[onset_nm], index['tseries'].values, tile=True)
_, _, coords, dims = atm.meta(index['tseries'])
ts_clim = xray.DataArray(vals, name=tseries_clim[onset_nm].name, coords=coords,
                         dims=dims)
tseries[onset_nm + '_clim'] = ts_clim

# ----------------------------------------------------------------------
# Timeseries relative to onset, shifted to 0 at onset day

npre, npost = 0, 200
tseries_rel = xray.Dataset()
for key in tseries.data_vars:
    tseries_rel[key] = daily_rel2onset(tseries[key], onset, npre, npost,
                                       yearnm='year', daynm='day')
    if key.startswith('CHP') or key.endswith('ACC'):
        tseries_rel[key] = tseries_rel[key] - tseries_rel[key][:, 0]
Beispiel #5
0
def applymask(ds, mask_in):
    for nm in ds.data_vars:
        mask = atm.biggify(mask_in, ds[nm], tile=True)
        vals = np.ma.masked_array(ds[nm], mask=mask).filled(np.nan)
        ds[nm].values = vals
    return ds