Wind and Sea Level Pressure InterpolationΒΆ

Interpolate sea level pressure, as well as wind component data, to make a consistent looking analysis, featuring contours of pressure and wind barbs.

import cartopy.crs as ccrs
import cartopy.feature as cfeature
from matplotlib.colors import BoundaryNorm
import matplotlib.pyplot as plt
import numpy as np
import pandas as pd

from metpy.calc import wind_components
from metpy.cbook import get_test_data
from metpy.interpolate import interpolate_to_grid, remove_nan_observations
from metpy.plots import add_metpy_logo
from metpy.units import units

to_proj = ccrs.AlbersEqualArea(central_longitude=-97., central_latitude=38.)

Read in data

with get_test_data('station_data.txt') as f:
    data = pd.read_csv(f, header=0, usecols=(2, 3, 4, 5, 18, 19),
                       names=['latitude', 'longitude', 'slp', 'temperature', 'wind_dir',
                              'wind_speed'],
                       na_values=-99999)

Project the lon/lat locations to our final projection

lon = data['longitude'].values
lat = data['latitude'].values
xp, yp, _ = to_proj.transform_points(ccrs.Geodetic(), lon, lat).T

Remove all missing data from pressure

x_masked, y_masked, pres = remove_nan_observations(xp, yp, data['slp'].values)

Interpolate pressure using Cressman interpolation

slpgridx, slpgridy, slp = interpolate_to_grid(x_masked, y_masked, pres, interp_type='cressman',
                                              minimum_neighbors=1, search_radius=400000,
                                              hres=100000)

Get wind information and mask where either speed or direction is unavailable

wind_speed = (data['wind_speed'].values * units('m/s')).to('knots')
wind_dir = data['wind_dir'].values * units.degree

good_indices = np.where((~np.isnan(wind_dir)) & (~np.isnan(wind_speed)))

x_masked = xp[good_indices]
y_masked = yp[good_indices]
wind_speed = wind_speed[good_indices]
wind_dir = wind_dir[good_indices]

Calculate u and v components of wind and then interpolate both.

Both will have the same underlying grid so throw away grid returned from v interpolation.

u, v = wind_components(wind_speed, wind_dir)

windgridx, windgridy, uwind = interpolate_to_grid(x_masked, y_masked, np.array(u),
                                                  interp_type='cressman', search_radius=400000,
                                                  hres=100000)

_, _, vwind = interpolate_to_grid(x_masked, y_masked, np.array(v), interp_type='cressman',
                                  search_radius=400000, hres=100000)

Get temperature information

x_masked, y_masked, t = remove_nan_observations(xp, yp, data['temperature'].values)
tempx, tempy, temp = interpolate_to_grid(x_masked, y_masked, t, interp_type='cressman',
                                         minimum_neighbors=3, search_radius=400000, hres=35000)

temp = np.ma.masked_where(np.isnan(temp), temp)

Set up the map and plot the interpolated grids appropriately.

levels = list(range(-20, 20, 1))
cmap = plt.get_cmap('viridis')
norm = BoundaryNorm(levels, ncolors=cmap.N, clip=True)

fig = plt.figure(figsize=(20, 10))
add_metpy_logo(fig, 360, 120, size='large')
view = fig.add_subplot(1, 1, 1, projection=to_proj)

view.set_extent([-120, -70, 20, 50])
view.add_feature(cfeature.STATES.with_scale('50m'))
view.add_feature(cfeature.OCEAN)
view.add_feature(cfeature.COASTLINE.with_scale('50m'))
view.add_feature(cfeature.BORDERS, linestyle=':')

cs = view.contour(slpgridx, slpgridy, slp, colors='k', levels=list(range(990, 1034, 4)))
view.clabel(cs, inline=1, fontsize=12, fmt='%i')

mmb = view.pcolormesh(tempx, tempy, temp, cmap=cmap, norm=norm)
fig.colorbar(mmb, shrink=.4, pad=0.02, boundaries=levels)

view.barbs(windgridx, windgridy, uwind, vwind, alpha=.4, length=5)

view.set_title('Surface Temperature (shaded), SLP, and Wind.')

plt.show()
Surface Temperature (shaded), SLP, and Wind.

Total running time of the script: ( 0 minutes 11.517 seconds)

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