Pengumuman: Semua project nonkomersial yang terdaftar untuk menggunakan Earth Engine sebelum
15 April 2025 harus
memverifikasi kelayakan nonkomersial untuk mempertahankan akses Earth Engine.
ee.FeatureCollection.reduceColumns
Tetap teratur dengan koleksi
Simpan dan kategorikan konten berdasarkan preferensi Anda.
Terapkan peredam ke setiap elemen koleksi, menggunakan pemilih yang diberikan untuk menentukan input.
Menampilkan kamus hasil, yang dikunci dengan nama output.
Penggunaan | Hasil |
---|
FeatureCollection.reduceColumns(reducer, selectors, weightSelectors) | Kamus |
Argumen | Jenis | Detail |
---|
ini: collection | FeatureCollection | Koleksi yang akan digabungkan. |
reducer | Pengurang | Pengurang yang akan diterapkan. |
selectors | Daftar | Pemilih untuk setiap input peredam. |
weightSelectors | Daftar, default: null | Pemilih untuk setiap input berbobot peredam. |
Contoh
Code Editor (JavaScript)
// FeatureCollection of power plants in Belgium.
var fc = ee.FeatureCollection('WRI/GPPD/power_plants')
.filter('country_lg == "Belgium"');
// Calculate mean of a single FeatureCollection property.
var propMean = fc.reduceColumns({
reducer: ee.Reducer.mean(),
selectors: ['gwh_estimt']
});
print('Mean of a single property', propMean);
// Calculate mean of multiple FeatureCollection properties.
var propsMean = fc.reduceColumns({
reducer: ee.Reducer.mean().repeat(2),
selectors: ['gwh_estimt', 'capacitymw']
});
print('Mean of multiple properties', propsMean);
// Calculate weighted mean of a single FeatureCollection property. Add a fuel
// source weight property to the FeatureCollection.
var fuelWeights = ee.Dictionary({
Wind: 0.9,
Gas: 0.2,
Oil: 0.2,
Coal: 0.1,
Hydro: 0.7,
Biomass: 0.5,
Nuclear: 0.3
});
fc = fc.map(function(feature) {
return feature.set('weight', fuelWeights.getNumber(feature.get('fuel1')));
});
var weightedMean = fc.reduceColumns({
reducer: ee.Reducer.mean(),
selectors: ['gwh_estimt'],
weightSelectors: ['weight']
});
print('Weighted mean of a single property', weightedMean);
Penyiapan Python
Lihat halaman
Lingkungan Python untuk mengetahui informasi tentang Python API dan penggunaan
geemap
untuk pengembangan interaktif.
import ee
import geemap.core as geemap
Colab (Python)
# FeatureCollection of power plants in Belgium.
fc = ee.FeatureCollection('WRI/GPPD/power_plants').filter(
'country_lg == "Belgium"')
# Calculate mean of a single FeatureCollection property.
prop_mean = fc.reduceColumns(**{
'reducer': ee.Reducer.mean(),
'selectors': ['gwh_estimt']
})
print('Mean of a single property:', prop_mean.getInfo())
# Calculate mean of multiple FeatureCollection properties.
props_mean = fc.reduceColumns(**{
'reducer': ee.Reducer.mean().repeat(2),
'selectors': ['gwh_estimt', 'capacitymw']
})
print('Mean of multiple properties:', props_mean.getInfo())
# Calculate weighted mean of a single FeatureCollection property. Add a fuel
# source weight property to the FeatureCollection.
def get_fuel(feature):
return feature.set('weight', fuel_weights.getNumber(feature.get('fuel1')))
fuel_weights = ee.Dictionary({
'Wind': 0.9,
'Gas': 0.2,
'Oil': 0.2,
'Coal': 0.1,
'Hydro': 0.7,
'Biomass': 0.5,
'Nuclear': 0.3
})
fc = fc.map(get_fuel)
weighted_mean = fc.reduceColumns(**{
'reducer': ee.Reducer.mean(),
'selectors': ['gwh_estimt'],
'weightSelectors': ['weight']
})
print('Weighted mean of a single property:', weighted_mean.getInfo())
Kecuali dinyatakan lain, konten di halaman ini dilisensikan berdasarkan Lisensi Creative Commons Attribution 4.0, sedangkan contoh kode dilisensikan berdasarkan Lisensi Apache 2.0. Untuk mengetahui informasi selengkapnya, lihat Kebijakan Situs Google Developers. Java adalah merek dagang terdaftar dari Oracle dan/atau afiliasinya.
Terakhir diperbarui pada 2025-07-26 UTC.
[null,null,["Terakhir diperbarui pada 2025-07-26 UTC."],[[["\u003cp\u003e\u003ccode\u003ereduceColumns\u003c/code\u003e applies a reducer function to properties (columns) of a FeatureCollection, effectively aggregating data across all features.\u003c/p\u003e\n"],["\u003cp\u003eIt takes a reducer, a list of selectors specifying the properties to use as input, and optionally, weight selectors for weighted reductions.\u003c/p\u003e\n"],["\u003cp\u003eThe output is a dictionary containing the results, keyed by the names defined within the reducer.\u003c/p\u003e\n"],["\u003cp\u003eThis function allows for calculating statistics such as mean, sum, or other custom aggregations across the features in a FeatureCollection, using specified properties and optional weights.\u003c/p\u003e\n"],["\u003cp\u003eExamples provided demonstrate calculating mean and weighted mean of properties within a FeatureCollection of power plants.\u003c/p\u003e\n"]]],["The `reduceColumns` function applies a reducer to a FeatureCollection, generating a dictionary of results. It uses `selectors` to specify input properties and can use `weightSelectors` for weighted inputs. The function takes a `reducer`, and a list of `selectors` and `weightSelectors`. This method can calculate means of single or multiple properties and weighted means by using a reducer and specifying properties to calculate on. The results are returned as a dictionary.\n"],null,["# ee.FeatureCollection.reduceColumns\n\nApply a reducer to each element of a collection, using the given selectors to determine the inputs.\n\n\u003cbr /\u003e\n\nReturns a dictionary of results, keyed with the output names.\n\n| Usage | Returns |\n|----------------------------------------------------------------------------|------------|\n| FeatureCollection.reduceColumns`(reducer, selectors, `*weightSelectors*`)` | Dictionary |\n\n| Argument | Type | Details |\n|--------------------|---------------------|----------------------------------------------------|\n| this: `collection` | FeatureCollection | The collection to aggregate over. |\n| `reducer` | Reducer | The reducer to apply. |\n| `selectors` | List | A selector for each input of the reducer. |\n| `weightSelectors` | List, default: null | A selector for each weighted input of the reducer. |\n\nExamples\n--------\n\n### Code Editor (JavaScript)\n\n```javascript\n// FeatureCollection of power plants in Belgium.\nvar fc = ee.FeatureCollection('WRI/GPPD/power_plants')\n .filter('country_lg == \"Belgium\"');\n\n// Calculate mean of a single FeatureCollection property.\nvar propMean = fc.reduceColumns({\n reducer: ee.Reducer.mean(),\n selectors: ['gwh_estimt']\n});\nprint('Mean of a single property', propMean);\n\n// Calculate mean of multiple FeatureCollection properties.\nvar propsMean = fc.reduceColumns({\n reducer: ee.Reducer.mean().repeat(2),\n selectors: ['gwh_estimt', 'capacitymw']\n});\nprint('Mean of multiple properties', propsMean);\n\n// Calculate weighted mean of a single FeatureCollection property. Add a fuel\n// source weight property to the FeatureCollection.\nvar fuelWeights = ee.Dictionary({\n Wind: 0.9,\n Gas: 0.2,\n Oil: 0.2,\n Coal: 0.1,\n Hydro: 0.7,\n Biomass: 0.5,\n Nuclear: 0.3\n});\nfc = fc.map(function(feature) {\n return feature.set('weight', fuelWeights.getNumber(feature.get('fuel1')));\n});\n\nvar weightedMean = fc.reduceColumns({\n reducer: ee.Reducer.mean(),\n selectors: ['gwh_estimt'],\n weightSelectors: ['weight']\n});\nprint('Weighted mean of a single property', weightedMean);\n```\nPython setup\n\nSee the [Python Environment](/earth-engine/guides/python_install) page for information on the Python API and using\n`geemap` for interactive development. \n\n```python\nimport ee\nimport geemap.core as geemap\n```\n\n### Colab (Python)\n\n```python\n# FeatureCollection of power plants in Belgium.\nfc = ee.FeatureCollection('WRI/GPPD/power_plants').filter(\n 'country_lg == \"Belgium\"')\n\n# Calculate mean of a single FeatureCollection property.\nprop_mean = fc.reduceColumns(**{\n 'reducer': ee.Reducer.mean(),\n 'selectors': ['gwh_estimt']\n })\nprint('Mean of a single property:', prop_mean.getInfo())\n\n# Calculate mean of multiple FeatureCollection properties.\nprops_mean = fc.reduceColumns(**{\n 'reducer': ee.Reducer.mean().repeat(2),\n 'selectors': ['gwh_estimt', 'capacitymw']\n })\nprint('Mean of multiple properties:', props_mean.getInfo())\n\n\n# Calculate weighted mean of a single FeatureCollection property. Add a fuel\n# source weight property to the FeatureCollection.\ndef get_fuel(feature):\n return feature.set('weight', fuel_weights.getNumber(feature.get('fuel1')))\n\nfuel_weights = ee.Dictionary({\n 'Wind': 0.9,\n 'Gas': 0.2,\n 'Oil': 0.2,\n 'Coal': 0.1,\n 'Hydro': 0.7,\n 'Biomass': 0.5,\n 'Nuclear': 0.3\n })\n\nfc = fc.map(get_fuel)\n\nweighted_mean = fc.reduceColumns(**{\n 'reducer': ee.Reducer.mean(),\n 'selectors': ['gwh_estimt'],\n 'weightSelectors': ['weight']\n })\nprint('Weighted mean of a single property:', weighted_mean.getInfo())\n```"]]