07 isea4t
OpenEAGGR ISEA4TPandas key features¶
You can try out vgridpandas by using the cloud-computing platforms below without having to install anything on your computer:
Full VgridPandas DGGS documentation is available at vgridpandas document.
To work with Vgrid in Python or CLI, use vgrid package. Full Vgrid DGGS documentation is available at vgrid document.
To work with Vgrid DGGS in QGIS, install the Vgrid Plugin.
To visualize DGGS in Maplibre GL JS, try the vgrid-maplibre library.
For an interactive demo, visit the Vgrid Homepage.
Install vgridpandas¶
Uncomment the following line to install vgridpandas.
In [ ]:
Copied!
# %pip install vgridpandas
# %pip install vgridpandas
Latlon to ISEA4T¶
Pandas¶
In [1]:
Copied!
import pandas as pd
from vgridpandas import isea4tpandas
df = pd.read_csv('https://raw.githubusercontent.com/opengeoshub/vopendata/main/csv/housing.csv')
resolution = 7
df = df.isea4t.latlon2isea4t(resolution, lat_col='lat', lon_col='lon')
df
import pandas as pd
from vgridpandas import isea4tpandas
df = pd.read_csv('https://raw.githubusercontent.com/opengeoshub/vopendata/main/csv/housing.csv')
resolution = 7
df = df.isea4t.latlon2isea4t(resolution, lat_col='lat', lon_col='lon')
df
Out[1]:
| lon | lat | housing_median_age | total_rooms | total_bedrooms | population | households | median_income | median_house_value | ocean_proximity | isea4t | isea4t_res | |
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| 0 | -122.23 | 37.88 | 41 | 880 | 129.0 | 322 | 126 | 8.3252 | 452600 | NEAR BAY | 003013201 | 7 |
| 1 | -122.22 | 37.86 | 21 | 7099 | 1106.0 | 2401 | 1138 | 8.3014 | 358500 | NEAR BAY | 003013200 | 7 |
| 2 | -122.24 | 37.85 | 52 | 1467 | 190.0 | 496 | 177 | 7.2574 | 352100 | NEAR BAY | 003013200 | 7 |
| 3 | -122.25 | 37.85 | 52 | 1274 | 235.0 | 558 | 219 | 5.6431 | 341300 | NEAR BAY | 003013200 | 7 |
| 4 | -122.25 | 37.85 | 52 | 1627 | 280.0 | 565 | 259 | 3.8462 | 342200 | NEAR BAY | 003013200 | 7 |
| ... | ... | ... | ... | ... | ... | ... | ... | ... | ... | ... | ... | ... |
| 20635 | -121.09 | 39.48 | 25 | 1665 | 374.0 | 845 | 330 | 1.5603 | 78100 | INLAND | 003003002 | 7 |
| 20636 | -121.21 | 39.49 | 18 | 697 | 150.0 | 356 | 114 | 2.5568 | 77100 | INLAND | 003003021 | 7 |
| 20637 | -121.22 | 39.43 | 17 | 2254 | 485.0 | 1007 | 433 | 1.7000 | 92300 | INLAND | 003003021 | 7 |
| 20638 | -121.32 | 39.43 | 18 | 1860 | 409.0 | 741 | 349 | 1.8672 | 84700 | INLAND | 003003213 | 7 |
| 20639 | -121.24 | 39.37 | 16 | 2785 | 616.0 | 1387 | 530 | 2.3886 | 89400 | INLAND | 003003002 | 7 |
20640 rows × 12 columns
GeoPandas¶
In [2]:
Copied!
import geopandas as gpd
df = gpd.read_file('https://raw.githubusercontent.com/opengeoshub/vopendata/main/shape/housing.geojson')
resolution = 7
df = df.isea4t.latlon2isea4t(resolution)
df
import geopandas as gpd
df = gpd.read_file('https://raw.githubusercontent.com/opengeoshub/vopendata/main/shape/housing.geojson')
resolution = 7
df = df.isea4t.latlon2isea4t(resolution)
df
Out[2]:
| longitude | latitude | housing_median_age | total_rooms | total_bedrooms | population | households | median_income | median_house_value | ocean_proximity | geometry | isea4t | isea4t_res | |
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| 0 | -122.23 | 37.88 | 41.0 | 880.0 | 129.0 | 322.0 | 126.0 | 8.3252 | 452600.0 | NEAR BAY | POINT (-122.23 37.88) | 003013201 | 7 |
| 1 | -122.22 | 37.86 | 21.0 | 7099.0 | 1106.0 | 2401.0 | 1138.0 | 8.3014 | 358500.0 | NEAR BAY | POINT (-122.22 37.86) | 003013200 | 7 |
| 2 | -122.24 | 37.85 | 52.0 | 1467.0 | 190.0 | 496.0 | 177.0 | 7.2574 | 352100.0 | NEAR BAY | POINT (-122.24 37.85) | 003013200 | 7 |
| 3 | -122.25 | 37.85 | 52.0 | 1274.0 | 235.0 | 558.0 | 219.0 | 5.6431 | 341300.0 | NEAR BAY | POINT (-122.25 37.85) | 003013200 | 7 |
| 4 | -122.25 | 37.85 | 52.0 | 1627.0 | 280.0 | 565.0 | 259.0 | 3.8462 | 342200.0 | NEAR BAY | POINT (-122.25 37.85) | 003013200 | 7 |
| ... | ... | ... | ... | ... | ... | ... | ... | ... | ... | ... | ... | ... | ... |
| 20635 | -121.09 | 39.48 | 25.0 | 1665.0 | 374.0 | 845.0 | 330.0 | 1.5603 | 78100.0 | INLAND | POINT (-121.09 39.48) | 003003002 | 7 |
| 20636 | -121.21 | 39.49 | 18.0 | 697.0 | 150.0 | 356.0 | 114.0 | 2.5568 | 77100.0 | INLAND | POINT (-121.21 39.49) | 003003021 | 7 |
| 20637 | -121.22 | 39.43 | 17.0 | 2254.0 | 485.0 | 1007.0 | 433.0 | 1.7000 | 92300.0 | INLAND | POINT (-121.22 39.43) | 003003021 | 7 |
| 20638 | -121.32 | 39.43 | 18.0 | 1860.0 | 409.0 | 741.0 | 349.0 | 1.8672 | 84700.0 | INLAND | POINT (-121.32 39.43) | 003003213 | 7 |
| 20639 | -121.24 | 39.37 | 16.0 | 2785.0 | 616.0 | 1387.0 | 530.0 | 2.3886 | 89400.0 | INLAND | POINT (-121.24 39.37) | 003003002 | 7 |
20640 rows × 13 columns
ISEA4T to geo¶
In [3]:
Copied!
df = df.isea4t.isea4t2geo(isea4t_col='isea4t', fix_antimeridian = None)
df.plot(edgecolor='white')
df = df.isea4t.isea4t2geo(isea4t_col='isea4t', fix_antimeridian = None)
df.plot(edgecolor='white')
Out[3]:
<Axes: >
(Multi)Polygon to ISEA4T¶
In [6]:
Copied!
import geopandas as gpd
gdf = gpd.read_file('https://raw.githubusercontent.com/opengeoshub/vopendata/main/shape/polygon.geojson')
resolution = 16
gdf_polyfill = gdf.isea4t.polyfill(resolution, compact=True, predicate='intersect', explode=False)
gdf_polyfill = gdf_polyfill.isea4t.isea4t2geo(isea4t_col='isea4t', fix_antimeridian = None)
gdf_polyfill.plot(edgecolor='white')
import geopandas as gpd
gdf = gpd.read_file('https://raw.githubusercontent.com/opengeoshub/vopendata/main/shape/polygon.geojson')
resolution = 16
gdf_polyfill = gdf.isea4t.polyfill(resolution, compact=True, predicate='intersect', explode=False)
gdf_polyfill = gdf_polyfill.isea4t.isea4t2geo(isea4t_col='isea4t', fix_antimeridian = None)
gdf_polyfill.plot(edgecolor='white')
Out[6]:
<Axes: >
ISEA4T binning¶
Pandas¶
In [7]:
Copied!
import pandas as pd
from vgridpandas import isea4tpandas
resolution = 7
df = pd.read_csv('https://raw.githubusercontent.com/opengeoshub/vopendata/main/csv/housing.csv')
stats = 'max'
numeric_col = 'median_house_value'
df_bin = df.isea4t.isea4tbin(resolution=resolution,
lat_col='lat',
lon_col='lon',
stats=stats,
numeric_col=numeric_col,
# category_col='ocean_proximity',
)
df_bin.plot(
column=f'{numeric_col}_{stats}',
cmap='Spectral_r',
legend=True,
linewidth=0.2,
)
import pandas as pd
from vgridpandas import isea4tpandas
resolution = 7
df = pd.read_csv('https://raw.githubusercontent.com/opengeoshub/vopendata/main/csv/housing.csv')
stats = 'max'
numeric_col = 'median_house_value'
df_bin = df.isea4t.isea4tbin(resolution=resolution,
lat_col='lat',
lon_col='lon',
stats=stats,
numeric_col=numeric_col,
# category_col='ocean_proximity',
)
df_bin.plot(
column=f'{numeric_col}_{stats}',
cmap='Spectral_r',
legend=True,
linewidth=0.2,
)
Out[7]:
<Axes: >
GeoPandas¶
In [8]:
Copied!
import geopandas as gpd
from vgridpandas import isea4tpandas
resolution = 7
df = gpd.read_file('https://raw.githubusercontent.com/opengeoshub/vopendata/main/shape/housing.geojson')
stats = 'max'
numeric_col = 'median_house_value'
df_bin = df.isea4t.isea4tbin(resolution=resolution,
stats=stats,
numeric_col=numeric_col,
# category_col='ocean_proximity',
)
df_bin.plot(
column=f'{numeric_col}_{stats}',
cmap='Spectral_r',
legend=True,
linewidth=0.2,
)
import geopandas as gpd
from vgridpandas import isea4tpandas
resolution = 7
df = gpd.read_file('https://raw.githubusercontent.com/opengeoshub/vopendata/main/shape/housing.geojson')
stats = 'max'
numeric_col = 'median_house_value'
df_bin = df.isea4t.isea4tbin(resolution=resolution,
stats=stats,
numeric_col=numeric_col,
# category_col='ocean_proximity',
)
df_bin.plot(
column=f'{numeric_col}_{stats}',
cmap='Spectral_r',
legend=True,
linewidth=0.2,
)
Out[8]:
<Axes: >