Data Dictionary

ID
id
Type
numeric
Label
index

ID
year
Type
date
Label
Year

ID
state_code
Type
text
Label
State Code

ID
state_name
Type
text
Label
State Name

ID
district_code
Type
text
Label
District Code

ID
district_name
Type
text
Label
District Name

ID
climate_vul_in
Type
numeric
Label
Climate vulnerability index

ID
mar_small_land
Type
numeric
Label
Marginal and small landholding (%)

ID
area_crop_insur
Type
numeric
Label
Area covered under crop insurance (%)

ID
area_rainfed_agri
Type
numeric
Label
Proportion of the area under rainfed agriculture

ID
area_forest_per_hun_population
Type
numeric
Label
Total area of forest per 100 rural population

ID
women_workforce
Type
numeric
Label
Women participation in the workforce (%)

ID
avg_days_employement
Type
numeric
Label
Average days of employment provided per household under mgnrega in a year (%)

ID
road_density
Type
numeric
Label
Road density

ID
health_centre
Type
numeric
Label
Functional health centres per thousand population

ID
infant_mortality
Type
numeric
Label
Infant mortality rate

ID
household_electricity
Type
numeric
Label
Households with electricity (%)

ID
household_drinking_water
Type
numeric
Label
Households with the improved drinking water source (%)

ID
yield_variability
Type
numeric
Label
Yield variability of food grains

ID
per_capita_income
Type
numeric
Label
Per capita income

ID
livestock
Type
numeric
Label
Livestock per population (%)

ID
area_forest_cover
Type
numeric
Label
Area under forest cover (%)

ID
out_total_horticulture_agriculture
Type
numeric
Label
Value of output of total horticulture against value of agricultural output

ID
unirrigated_area
Type
numeric
Label
Unirrigated area (%)

ID
groundwater_extracted
Type
numeric
Label
Quantity ground water extracted per 1000 hectare

ID
households_kisan_creditcard
Type
numeric
Label
Rural households having kisan credit card (%)

ID
shg_per_population
Type
numeric
Label
Self help groups per 1000 population (%)

ID
doctors_per_population
Type
numeric
Label
Doctors per 1000 population (%)

ID
population_below_poverty
Type
numeric
Label
Population below poverty line (%)

ID
income_tertiary_sector
Type
numeric
Label
Proportion of income generated from tertiary sector

ID
area_forest_per_thous_population
Type
numeric
Label
Forest area per 1,000 rural population

ID
horticulture_agriculture
Type
numeric
Label
Share of horticulture in agriculture

ID
irrigated_area
Type
numeric
Label
Proportion of net irrigated area

ID
groundwater_available
Type
numeric
Label
Availability of ground water

ID
population_multi_hazard
Type
numeric
Label
Population in multi- hazard areas (%)

ID
rural_banks
Type
numeric
Label
Rural banks per 1000 rural population

ID
vector_diseases
Type
numeric
Label
Vector borne diseases per 1,000 population

ID
water_diseases
Type
numeric
Label
Water borne diseases per 1,000 population

ID
agricultural_labour
Type
numeric
Label
Agricultural labourers (%)

ID
agri_output_horti_output
Type
numeric
Label
Value of agricultural output to value of horticulture output

ID
irrgated_area_sown_area
Type
numeric
Label
Net irrigated area to net sown area

ID
road_length
Type
numeric
Label
Length of roads per 100 sq.km.

ID
household_banking_services
Type
numeric
Label
Households availing banking services (%)

ID
area_insured
Type
numeric
Label
Share of area insured under national institute of advanced studies

ID
sown_area_horticulture
Type
numeric
Label
Net sown area under horticulture (%)

ID
household_sanitation
Type
numeric
Label
Households with improved sanitation facility (%)

ID
female_literacy
Type
numeric
Label
Female literacy rate (%)

ID
net_agri_geo_area
Type
numeric
Label
Net area under agriculture to total geographical area (%)

ID
unirrigated_sown_area
Type
numeric
Label
Net un- irrigated area to net sown area (%)

ID
household_highest_earning
Type
numeric
Label
Households with monthly income of highest earning household members in a rural area less than rs. 5,000/- (%)

ID
household_no_land
Type
numeric
Label
Rural households with no land ownership (%)

ID
net_irrigated_sown_area
Type
numeric
Label
Net irrigated by net sown (%)

ID
drainage_density
Type
numeric
Label
Drainage density

ID
natural_resource_management
Type
numeric
Label
Natural resource management works per 1,000 hectares (%)

ID
anganwadi
Type
numeric
Label
Anganwadi centres per 1000 hectares (%)

ID
agri_area_under_slope
Type
numeric
Label
Percentage of agricultural area under slopes greater than 45 degree

ID
total_crop
Type
numeric
Label
Total crop produced in both agricultural and horticultural crops (%)

ID
main_local_market
Type
numeric
Label
Main and local markets per geographical area (%)

ID
water_scarcity
Type
numeric
Label
Water scarcity

ID
soil_fertility
Type
numeric
Label
Soil fertility

ID
crop_divsi_in
Type
numeric
Label
Crop diversification index

ID
road_connect
Type
numeric
Label
Road connectivity (%)

ID
market_access
Type
numeric
Label
Access to market

ID
income_divsi_agri
Type
numeric
Label
Income diversification within agriculture sector

ID
water_available
Type
numeric
Label
Water availability

ID
area_water_bodies
Type
numeric
Label
Area under water bodies (%)

ID
fair_price_shops
Type
numeric
Label
Fair price shops per 1000 population

ID
toal_female_workforce
Type
numeric
Label
Total female workforce

ID
groundwater_development
Type
numeric
Label
Stage of groundwater development (%)

ID
crop_intensity
Type
numeric
Label
Cropping intensity

ID
area_commer_crops
Type
numeric
Label
Proportion of area under commercial crops to set sown area

ID
variability
Type
numeric
Label
Variability of crop, livestock, and fish yield

ID
water_fish_culture
Type
numeric
Label
Available water resources under fish culture (%)

ID
forest_depend_tribal
Type
numeric
Label
Degree of forest dependence by rural tribal communities

ID
minor_forest_produce
Type
numeric
Label
Approved minor forest produce (mfp) microenterprises

ID
depend_ratio_below_poverty
Type
numeric
Label
Dependency ratio of rural households below the poverty line

ID
establishment
Type
numeric
Label
Establishments by oae, estt., micro, small and medium

ID
health_care
Type
numeric
Label
Functional health care facilities per 10,000 population

ID
household_health_scheme
Type
numeric
Label
Households with any usual member covered by a health scheme or health insurance

Additional Information

Field Value
Data last updated October 6, 2023
Metadata last updated August 22, 2024
Created October 6, 2023
Format CSV
License Open Data Commons Attribution License
Data extraction pagehttps://ndap.niti.gov.in/dataset/7160
Data insightsBy ranking and pinpointing the most vulnerable districts and states, these insights empower policymakers and decision-makers to strategically prioritize locations for climate risk mitigation. This data-driven approach not only informs adaptation planning but also guides targeted investments in key sectors such as agriculture, water resources, and healthcare. With a focus on vulnerable regions like the Himalayas and coastal areas, these insights enable the development of high-impact projects for climate-focused funds such as the Green Climate Fund and Adaptation Fund. Moreover, these findings facilitate the fulfillment of Nationally Determined Contributions, ensuring a more resilient response to climate change. By integrating this data into disaster management strategies, these insights pave the way for proactive and effective risk reduction, making a substantial difference in climate resilience efforts.
Data last updated2022-03-16 00:00:00
Data retreival date2022-06-12 00:00:00
Datastore activeTrue
FrequencyOnce
GranularityDistrict
Has viewsTrue
Id98947c1d-e9ff-4e5a-9407-6c77c6ef851e
Idp readyTrue
Lgd mappingyes
MethodologyThe methodology for vulnerability assessment is a systematic process involving the definition of scope, selection of assessment type, tier methods, sector, spatial scale, and assessment period. Indicators crucial for vulnerability evaluation are identified and quantified, with normalization techniques ensuring consistency. Indicators are then weighted and aggregated, providing a comprehensive representation of vulnerability. Through this structured approach, vulnerabilities are ranked, allowing for focused adaptation planning
No indicators73
Package ide4ccd3aa-beb8-436c-9ceb-db3998a10314
Position1
Size206.9 KiB
Skumost-climate_vulnerability_assessment-dt-yr-aaa
Stateactive
States uts no28
Url typeupload
Years covered2,021
Methodology The methodology for vulnerability assessment is a systematic process involving the definition of scope, selection of assessment type, tier methods, sector, spatial scale, and assessment period. Indicators crucial for vulnerability evaluation are identified and quantified, with normalization techniques ensuring consistency. Indicators are then weighted and aggregated, providing a comprehensive representation of vulnerability. Through this structured approach, vulnerabilities are ranked, allowing for focused adaptation planning
Indicators
Similar Resources
Granularity Level District
Data Extraction Page https://ndap.niti.gov.in/dataset/7160
Data Retreival Date 2022-06-12 00:00:00
Data Last Updated 2022-03-16 00:00:00
Sku most-climate_vulnerability_assessment-dt-yr-aaa
Dataset Frequency Once
Years Covered 2021.0
No of States/UT(s) 28
No of Districts
No of Tehsils/blocks
No of Gram Panchayats
Additional Information
Number of Indicators 73
Insights from the dataset By ranking and pinpointing the most vulnerable districts and states, these insights empower policymakers and decision-makers to strategically prioritize locations for climate risk mitigation. This data-driven approach not only informs adaptation planning but also guides targeted investments in key sectors such as agriculture, water resources, and healthcare. With a focus on vulnerable regions like the Himalayas and coastal areas, these insights enable the development of high-impact projects for climate-focused funds such as the Green Climate Fund and Adaptation Fund. Moreover, these findings facilitate the fulfillment of Nationally Determined Contributions, ensuring a more resilient response to climate change. By integrating this data into disaster management strategies, these insights pave the way for proactive and effective risk reduction, making a substantial difference in climate resilience efforts.
IDP Ready Yes
LGD Mapping Yes