目录

简介

数据集后处理

数据下载链接

矢量属性

代码

代码链接

引用

许可

网址推荐

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机器学习


加拿大卫星森林资源调查 (SBFI)

简介

卫星森林资源清查(SBFI)提供了 2020 年加拿大森林覆盖、干扰恢复、结构、物种、林分年龄以及 1985-2020 年林分替代干扰的信息。 SBFI 多边形代表了与战略森林资源清查中划定的林分相似的同质森林状况。 使用多分辨率分割算法对 2020 年大地遥感卫星表面反射 BAP 复合影像(30 米空间分辨率)、火灾年份和采伐年份图层进行了划分,这些图层是使用 C2C 方法从大地遥感卫星上获取的。 最小地图单位为 0.45 公顷(5 像素),用于定义多边形。 整个加拿大的森林生态系统都使用相同的数据、属性和时间表示方法进行测绘,从而形成了加拿大约 6.5 亿公顷森林生态系统的通用植被清查系统。 鉴于加拿大森林面积大且种类繁多,SBFI 的优势在于使用一致的数据源和方法,跨越管辖边界、管理和非管理林区,从而能够一致地生成综合、空间明确的信息输出。 此处包含的数据基于免费开放的卫星数据和信息产品,并遵循既定的交流方法。

数据集后处理

为便于使用,瓦片数据集被合并为一个单一的特征集合。 网格文件保留原样,以便用户了解网格是如何创建的。

数据下载链接

https://opendata.nfis.org/downloads/forest_change/CA_Forest_Satellite_Based_Inventory_2020.zip

矢量属性

Group

Field

Description

Units

ID

ID

Unique polygon identifier

TILE

Tile identifier

Geometry

AREA_HA

Area of the polygon

ha

PERIMETER_M

Length of polygon’s boundary

m

Stratification

JURSDICTION

Most represented province/territory

ECOZONE

Most represented terrestrial ecozone as defined by Ecological Stratification Working Group (1996)

ECOPROVINCE

Most represented ecoprovince as defined by Ecological Stratification Working Group (1996)

ECOREGION

Most represented ecoregion as defined by Ecological Stratification Working Group (1996)

MANAGEMENT

Most represented land status from the forest management classification from Stinson et al_ (2019)

Land cover

LC_WATER

Area covered by water

% of polygon area

LC_SNOW_ICE

Area covered by snow/ice

% of polygon area

LC_ROCK_RUBBLE

Area covered by rock/rubble

% of polygon area

LC_EXPOSED_BARREN

Area covered by exposed/barren land

% of polygon area

LC_BRYOIDS

Area covered by bryoids

% of polygon area

LC_SHRUBS

Area covered by shrubs

% of polygon area

LC_WETLAND

Area covered by wetland

% of polygon area

LC_WETLAND-TREED

Area covered by wetland-treed

% of polygon area

LC_HERBS

Area covered by herbs

% of polygon area

LC_CONIFEROUS

Area covered by coniferous

% of polygon area

LC_BROADLEAF

Area covered by broadleaf

% of polygon area

LC_MIXEDWOOD

Area covered by mixedwood

% of polygon area

LC_TREED

Area covered by treed vegetation derived from combining the land cover classes

% of polygon area

LC_FAO_FOREST

Area covered by forest consistent with FAO definitions (Wulder et al_ 2020)

% of polygon area

LC_WETLAND_VEGETATION

Area covered by wetlands derived from combining the land cover classes

% of polygon area

Disturbances

DISTURB_FIRE_PERC

Area impacted by fire disturbances

% of polygon area

DISTURB_FIRE_YEAR

Modal year of fire disturbances

years

DISTURB_FIRE_MAGNITUDE_MIN

Minimum value of fire magnitude

dNBR

DISTURB_FIRE_MAGNITUDE_MAX

Maximum value of fire magnitude

dNBR

DISTURB_FIRE_MAGNITUDE_AVG

Average value of fire magnitude

dNBR

DISTURB_FIRE_MAGNITUDE_SD

Standard deviation of fire magnitude

dNBR

DISTURB_FIRE_MAGNITUDE_MED

Median value of fire magnitude

dNBR

DISTURB_HARVEST_PERC

Area impacted by harvesting disturbances

% of polygon area

DISTURB_HARVEST_YEAR

Modal year of harvesting disturbances

years

Recovery

RECOVERY_FIRE_MIN

Minimum value of spectral recovery for fire disturbances

% of pre-disturbance

RECOVERY_FIRE_MAX

Maximum value of spectral recovery for fire disturbances

% of pre-disturbance

RECOVERY_FIRE_AVG

Average value of spectral recovery for fire disturbances

% of pre-disturbance

RECOVERY_FIRE_SD

Standard deviation of spectral recovery for fire disturbances

% of pre-disturbance

RECOVERY_FIRE_MED

Median value of spectral recovery for fire disturbances

% of pre-disturbance

RECOVERY_HARVEST_MIN

Minimum value of spectral recovery for harvesting disturbances

% of pre-disturbance

RECOVERY_HARVEST_MAX

Maximum value of spectral recovery for harvesting disturbances

% of pre-disturbance

RECOVERY_HARVEST_AVG

Average value of spectral recovery for harvesting disturbances

% of pre-disturbance

RECOVERY_HARVEST_SD

Standard deviation of spectral recovery for harvesting disturbances

% of pre-disturbance

RECOVERY_HARVEST_MED

Median value of spectral recovery for harvesting disturbances

% of pre-disturbance

Age

AGE_MIN

Minimum forest age

years

AGE_MAX

Maximum forest age

years

AGE_AVG

Average forest age

years

AGE_SD

Standard deviation of forest age

years

AGE_MED

Median forest age

years

AGE_0_10, AGE_10_20, AGE_20_30, AGE_30_40, AGE_40_50, AGE_50_60, AGE_60_70, AGE_70_80, AGE_80_90, AGE_90_100, AGE_100_110, AGE_110_120, AGE_120_130, AGE_130_140, AGE_140_150, AGE_GT_150

Ten-year age class frequency distribution

% of treed area in polygon

Forest structure

STRUCTURE_CANOPY_HEIGHT_MIN

Minimum canopy height

m

STRUCTURE_CANOPY_HEIGHT_MAX

Maximum canopy height

m

STRUCTURE_CANOPY_HEIGHT_AVG

Average canopy height

m

STRUCTURE_CANOPY_HEIGHT_SD

Standard deviation of canopy height

m

STRUCTURE_CANOPY_HEIGHT_MED

Median canopy height

m

STRUCTURE_CANOPY_COVER_MIN

Minimum canopy cover

%

STRUCTURE_CANOPY_COVER_MAX

Maximum canopy cover

%

STRUCTURE_CANOPY_COVER_AVG

Average canopy cover

%

STRUCTURE_CANOPY_COVER_SD

Standard deviation of canopy cover

%

STRUCTURE_CANOPY_COVER_MED

Median canopy cover

%

STRUCTURE_LOREYS_HEIGHT_MIN

Minimum Lorey’s height

m

STRUCTURE_LOREYS_HEIGHT_MAX

Maximum Lorey’s height

m

STRUCTURE_LOREYS_HEIGHT_AVG

Average Lorey’s height

m

STRUCTURE_LOREYS_HEIGHT_SD

Standard deviation of Lorey’s height

m

STRUCTURE_LOREYS_HEIGHT_MED

Median Lorey’s height

m

STRUCTURE_BASAL_AREA_MIN

Minimum basal area

m2 ha−1

STRUCTURE_BASAL_AREA_MAX

Maximum basal area

m2 ha−1

STRUCTURE_BASAL_AREA_AVG

Average basal area

m2 ha−1

STRUCTURE_BASAL_AREA_SD

Standard deviation of basal area

m2 ha−1

STRUCTURE_BASAL_AREA_MED

Median basal area

m2 ha−1

STRUCTURE_BASAL_AREA_TOTAL

Total basal area in polygon

m2

STRUCTURE_AGB_MIN

Minimum aboveground biomass

t ha−1

STRUCTURE_AGB_MAX

Maximum aboveground biomass

t ha−1

STRUCTURE_AGB_AVG

Average aboveground biomass

t ha−1

STRUCTURE_AGB_SD

Standard deviation of aboveground biomass

t ha−1

STRUCTURE_AGB_MED

Median aboveground biomass

t ha−1

STRUCTURE_AGB_TOTAL

Total aboveground biomass in polygon

t

STRUCTURE_VOLUME_MIN

Minimum gross stem volume

m3 ha−1

STRUCTURE_VOLUME_MAX

Maximum gross stem volume

m3 ha−1

STRUCTURE_VOLUME_AVG

Average gross stem volume

m3 ha−1

STRUCTURE_VOLUME_SD

Standard deviation of gross stem volume

m3 ha−1

STRUCTURE_VOLUME_MED

Median gross stem volume

m3 ha−1

STRUCTURE_VOLUME_TOTAL

Total gross stem volume in polygon

m3

Tree species

SPECIES_NUMBER

SPECIES_1

Name of the 1st most common leading tree species representing a percentage of treed area in polygon >2_5%

SPECIES_2

Name of the 2nd most common leading tree species representing a percentage of treed area in polygon >2_5%

SPECIES_3

Name of the 3rd most common leading tree species representing a percentage of treed area in polygon >2_5%

SPECIES_4

Name of the 4th most common leading tree species representing a percentage of treed area in polygon >2_5%

SPECIES_5

Name of the 5th most common leading tree species representing a percentage of treed area in polygon >2_5%

SPECIES_1_PERC

Area covered by the 1st most common leading tree species

% of treed area in polygon

SPECIES_2_PERC

Area covered by the 2nd most common leading tree species

% of treed area in polygon

SPECIES_3_PERC

Area covered by the 3rd most common leading tree species

% of treed area in polygon

SPECIES_5_PERC

Area covered by the 5th most common leading tree species

% of treed area in polygon

SPECIES_CONIFEROUS_PERC

Area covered by coniferous tree species

% of treed area in polygon

SPECIES_CML1

Name of the 1st most common tree species based on the class membership likelihood values

SPECIES_CML2

Name of the 2nd most common tree species based on the class membership likelihood values

SPECIES_CML3

Name of the 3rd most common tree species based on the class membership likelihood values

SPECIES_CML4

Name of the 4th most common tree species based on the class membership likelihood values

SPECIES_CML5

Name of the 5th most common tree species based on the class membership likelihood values

SPECIES_CML1_PERC

Distribution of the class membership likelihood values of the 1st most common tree species

% of class membership likelihood from treed pixels in polygon

SPECIES_CML2_PERC

Distribution of the class membership likelihood values of the 2nd most common tree species

% of class membership likelihood from treed pixels in polygon

SPECIES_CML3_PERC

Distribution of the class membership likelihood values of the 3rd most common tree species

% of class membership likelihood from treed pixels in polygon

SPECIES_CML4_PERC

Distribution of the class membership likelihood values of the 4th most common tree species

% of class membership likelihood from treed pixels in polygon

SPECIES_CML5_PERC

Distribution of the class membership likelihood values of the 5th most common tree species

% of class membership likelihood from treed pixels in polygon

SPECIES_CML_CONIFEROUS_PERC

Proportion of class membership likelihood values of coniferous tree species

% of class membership likelihood from treed pixels in polygon

SPECIES_CML_ASSEMBLAGES

Name of the tree species conforming an assemblage

SPECIES_CML_ASSEMBLAGES_PERC

Proportion of class membership likelihood values conforming the assemblage

% of class membership likelihood from treed pixels in polygon

Symbology

SYMB_LAND_BASE_LEVEL

Land base level classification based on the NFI land cover hierarchy (Wulder et al_ 2008)

SYMB_LAND_COVER_LEVEL

Land cover level classification based on the NFI land cover hierarchy (Wulder et al_ 2008)

SYMB_VEGETATION_LEVEL

Vegetation level classification based on the NFI land cover hierarchy (Wulder et al_ 2008)

SYMB_DISTURBANCE

Simplified coding for disturbance type and year

SYMB_RECOVERY

Simplified coding for spectral recovery

SYMB_AGE

Simplified coding for forest age

代码

!pip install leafmap
!pip install pandas
!pip install folium
!pip install matplotlib
!pip install mapclassify
 
import pandas as pd
import leafmap
 
url = "https://github.com/opengeos/NASA-Earth-Data/raw/main/nasa_earth_data.tsv"
df = pd.read_csv(url, sep="\t")
df
 
leafmap.nasa_data_login()
 
 
results, gdf = leafmap.nasa_data_search(
    short_name="ABoVE_ASCENDS_XCO2_2050",
    cloud_hosted=True,
    bounding_box=(-165.68, 34.59, -98.1, 71.28),
    temporal=("2017-07-20", "2017-08-08"),
    count=-1,  # use -1 to return all datasets
    return_gdf=True,
)
 
 
gdf.explore()
 
#leafmap.nasa_data_download(results[:5], out_dir="data")

GEE数据集:加拿大卫星森林资源调查 (SBFI)-2020 年加拿大森林覆盖、干扰恢复、结构、物种、林分年龄以及 1985-2020 年林分替代干扰的信息_javascript

代码链接

https://code.earthengine.google.com/?scriptPath=users/sat-io/awesome-gee-catalog-examples:agriculture-vegetation-forestry/CA-SBFI

引用

Wulder, Michael A., Txomin Hermosilla, Joanne C. White, Christopher W. Bater, Geordie Hobart, and Spencer C. Bronson. "Development and
implementation of a stand-level satellite-based forest inventory for Canada." Forestry: An International Journal of Forest Research (2024): cpad065.

Wulder, M.A., Hermosilla, T., White, J.C., Bater, C.W., Hobart, G., Bronson, S.C., 2024. Development and implementation of a stand-level
satellite-based forest inventory for Canada. Forestry: An International Journal of Forest Research. https://doi.org/10.1093/forestry/cpad065

许可

本作品采用加拿大开放式政府许可协议(Open Government Licence - Canada)进行许可,并向公众免费开放。 创作者:Wulder et al: Wulder et al. 2024 在 GEE 中策划: : Samapriya Roy 主要作品: 大地遥感卫星、土地覆盖、变化探测、森林结构、生物量;NFI 在 GEE 中的最新更新时间: 2024-08-29 

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