Earth Engine은 공유 컴퓨팅 리소스를 보호하고 모든 사용자에게 안정적인 성능을 보장하기 위해
비상업적 할당량 등급 을 도입했습니다. 비상업적 프로젝트는 기본적으로 커뮤니티 등급을 사용하지만 언제든지 프로젝트의 등급을 변경할 수 있습니다.
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의견 보내기
ee.FeatureCollection.flatten
컬렉션을 사용해 정리하기
내 환경설정을 기준으로 콘텐츠를 저장하고 분류하세요.
컬렉션의 컬렉션을 평면화합니다.
사용 반환 값 FeatureCollection. flatten ()FeatureCollection
인수 유형 세부정보 다음과 같은 경우: collection FeatureCollection 컬렉션의 입력 컬렉션입니다.
예
코드 편집기 (JavaScript)
// Counties in New Mexico, USA.
var counties = ee . FeatureCollection ( 'TIGER/2018/Counties' )
. filter ( 'STATEFP == "35"' );
// Monthly climate and climatic water balance surfaces for January 2020.
var climate = ee . ImageCollection ( 'IDAHO_EPSCOR/TERRACLIMATE' )
. filterDate ( '2020-01' , '2020-02' );
// Calculate mean climate variables for each county per climate surface
// time step. The result is a FeatureCollection of FeatureCollections.
var countiesClimate = climate . map ( function ( image ) {
return image . reduceRegions ({
collection : counties ,
reducer : ee . Reducer . mean (),
scale : 5000 ,
crs : 'EPSG:4326'
});
});
// Note that a printed FeatureCollection of FeatureCollections is not
// recursively expanded, you cannot view metadata of the features within the
// nested collections until you isolate a single collection or flatten the
// collections.
print ( 'FeatureCollection of FeatureCollections' , countiesClimate );
print ( 'Flattened FeatureCollection of FeatureCollections' ,
countiesClimate . flatten ());
Python 설정
Python API 및 geemap를 사용한 대화형 개발에 관한 자세한 내용은
Python 환경 페이지를 참고하세요.
import ee
import geemap.core as geemap
Colab (Python)
# Counties in New Mexico, USA.
counties = ee . FeatureCollection ( 'TIGER/2018/Counties' ) . filter ( 'STATEFP == "35"' )
# Monthly climate and climatic water balance surfaces for January 2020.
climate = ee . ImageCollection ( 'IDAHO_EPSCOR/TERRACLIMATE' ) . filterDate (
'2020-01' , '2020-02' )
# Calculate mean climate variables for each county per climate surface
# time step. The result is a FeatureCollection of FeatureCollections.
def reduce_mean ( image ):
return image . reduceRegions ( ** {
'collection' : counties ,
'reducer' : ee . Reducer . mean (),
'scale' : 5000 ,
'crs' : 'EPSG:4326'
})
counties_climate = climate . map ( reduce_mean )
# Note that a printed FeatureCollection of FeatureCollections is not
# recursively expanded, you cannot view metadata of the features within the
# nested collections until you isolate a single collection or flatten the
# collections.
display ( 'FeatureCollection of FeatureCollections:' , counties_climate )
display ( 'Flattened FeatureCollection of FeatureCollections:' ,
counties_climate . flatten ())
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달리 명시되지 않는 한 이 페이지의 콘텐츠에는 Creative Commons Attribution 4.0 라이선스 에 따라 라이선스가 부여되며, 코드 샘플에는 Apache 2.0 라이선스 에 따라 라이선스가 부여됩니다. 자세한 내용은 Google Developers 사이트 정책 을 참조하세요. 자바는 Oracle 및/또는 Oracle 계열사의 등록 상표입니다.
최종 업데이트: 2025-10-30(UTC)
의견을 전달하고 싶나요?
[[["이해하기 쉬움","easyToUnderstand","thumb-up"],["문제가 해결됨","solvedMyProblem","thumb-up"],["기타","otherUp","thumb-up"]],[["필요한 정보가 없음","missingTheInformationINeed","thumb-down"],["너무 복잡함/단계 수가 너무 많음","tooComplicatedTooManySteps","thumb-down"],["오래됨","outOfDate","thumb-down"],["번역 문제","translationIssue","thumb-down"],["샘플/코드 문제","samplesCodeIssue","thumb-down"],["기타","otherDown","thumb-down"]],["최종 업데이트: 2025-10-30(UTC)"],[],["The `flatten()` method transforms a nested `FeatureCollection` of `FeatureCollections` into a single, flat `FeatureCollection`. It takes a `FeatureCollection` as input and returns a flattened `FeatureCollection`. This allows for the metadata of features within the nested collections to be viewed, which is not possible with unflattened collections. An example demonstrates calculating mean climate variables for counties per climate surface timestep and then flattening the resulting nested collection.\n"]]