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Richness index (2010) - ClimAfrica WP4

The “richness index” represents the level of economical wellbeing a country certain area in 2010. Regions with higher income per capita and low poverty rate and more access to market are wealthier and are therefore better able to prepare for and respond to adversity. The index results from the second cluster of the Principal Component Analysis preformed among 9 potential variables. The analysis identifies four dominant variables, namely “GDPppp per capita”, “agriculture share GDP per agriculture sector worker”, “poverty rate” and “market accessibility”, assigning weights of 0.33, 0.26, 0.25 and 0.16, respectively. Before to perform the analysis all variables were log transformed (except the “agriculture share GDP per agriculture sector worker”) to shorten the extreme variation and then were score-standardized (converted to distribution with average of 0 and standard deviation of 1; inverse method was applied for the “poverty rate” and “market accessibility”) in order to be comparable. The 0.5 arc-minute grid total GDPppp is based on the night time light satellite imagery of NOAA (see Ghosh, T., Powell, R., Elvidge, C. D., Baugh, K. E., Sutton, P. C., & Anderson, S. (2010).Shedding light on the global distribution of economic activity. The Open Geography Journal (3), 148-161) and adjusted to national total as recorded by International Monetary Fund for 2010. The “GDPppp per capita” was calculated dividing the total GDPppp by the population in each pixel. Further, a focal statistic ran to determine mean values within 10 km. This had a smoothing effect and represents some of the extended influence of intense economic activity for the local people. Country based data for “agriculture share GDP per agriculture sector worker” were calculated from GDPppp (data from International Monetary Fund) fraction from agriculture activity (measured by World Bank) divided by the number of worker in the agriculture sector (data from World Bank). The tabular data represents the average of the period 2008-2012 and were linked by country unit to the national boundaries shapefile (FAO/GAUL) and then converted into raster format (resolution 0.5 arc-minute). The first administrative level data for the “poverty rate” were estimated by NOAA for 2003 using nighttime lights satellite imagery. Tabular data were linked by first administrative unit to the first administrative boundaries shapefile (FAO/GAUL) and then converted into raster format (resolution 0.5 arc-minute). The 0.5 arc-minute grid “market accessibility” measures the travel distance in minutes to large cities (with population greater than 50,000 people). This dataset was developed by the European Commission and the World Bank to represent access to markets, schools, hospitals, etc.. The dataset capture the connectivity and the concentration of economic activity (in 2000). Markets may be important for a variety of reasons, including their abilities to spread risk and increase incomes. Markets are a means of linking people both spatially and over time. That is, they allow shocks (and risks) to be spread over wider areas. In particular, markets should make households less vulnerable to (localized) covariate shocks.

This dataset has been produced in the framework of the “Climate change predictions in Sub-Saharan Africa: impacts and adaptations (ClimAfrica)” project, Work Package 4 (WP4). More information on ClimAfrica project is provided in the Supplemental Information section of this metadata.

Simple

Date (Creation)
2014-09-01T00:00:00
Presentation form
Digital map
Purpose

Purpose of WP4 - D4.3 is to establish a medium-term warning system (based on ClimAfrica data) that produces prospective analyses about climate change impacts on agriculture for the next 10 years. This will fill the gap between seasonal scale predictions and long-term impact scenarios, and identify the future Areas of Concerns (AoCs) and likely hotspots of vulnerabilities.

Status
Completed
Originator
  FAO-UN - Selvaraju Ramasamy ( Natural Resources Officer )
Viale delle Terme di Caracalla , Rome , Italy
Maintenance and update frequency
As needed
Theme
  • GDP

  • agriculture GDP per worker

  • market accessibilty

  • poverty

  • adaptive capacity

  • WP4

  • ClimAfrica

  • Tag_climafrica

Place
  • Africa

Access constraints
Copyright
Spatial representation type
Grid
Distance
30  arc/sec
Metadata language
English
Character set
UTF8
Topic category
  • Society
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Supplemental Information

ClimAfrica was an international project funded by European Commission under the 7th Framework Programme (FP7) for the period 2010-2014. The ClimAfrica consortium was formed by 18 institutions, 9 from Europe, 8 from Africa, and the Food and Agriculture Organization of United Nations (FAO).


ClimAfrica was conceived to respond to the urgent international need for the most appropriate and up-to-date tools and methodologies to better understand and predict climate change, assess its impact on African ecosystems and population, and develop the correct adaptation strategies. Africa is probably the most vulnerable continent to climate change and climate variability and shows diverse range of agro-ecological and geographical features. Thus the impacts of climate change can be very high and can greatly differ across the continent, and even within countries.


The project focused on the following specific objectives:


1. Develop improved climate predictions on seasonal to decadal climatic scales, especially relevant to SSA;


2. Assess climate impacts in key sectors of SSA livelihood and economy, especially water resources and agriculture;


3. Evaluate the vulnerability of ecosystems and civil population to inter-annual variations and longer trends (10 years) in climate;


4. Suggest and analyse new suited adaptation strategies, focused on local needs;


5 Develop a new concept of 10 years monitoring and forecasting warning system, useful for food security, risk management and civil protection in SSA;


6. Analyse the economic impacts of climate change on agriculture and water resources in SSA and the cost-effectiveness of potential adaptation measures.


The work of ClimAfrica project was broken down into the following work packages (WPs) closely connected. All the activities described in WP1, WP2, WP3, WP4, WP5 consider the domain of the entire South Sahara Africa region. Only WP6 has a country specific (watershed) spatial scale where models validation and detailed processes analysis are carried out.

Reference system identifier
GCS WGS 84 (EPSG Ellipsoid 7030)
Distribution format
  • ( GeoTiff )

OnLine resource
ClimAfr25_richness_index.zip ( WWW:DOWNLOAD-1.0-http--download )

Richness index (2010)

OnLine resource
geonetwork:climafr25_richness_index_48369 ( OGC:WMS-1.1.1-http-get-map )

Richness index (2010)

OnLine resource
Scenarios of major production systems in Africa ( WWW:LINK-1.0-http--link )

Project deliverable D4.1 - Scenarios of major production systems in Africa

OnLine resource
CLIMAFRICA – Climate change predictions in Sub-Saharan Africa: impacts and adaptations ( WWW:LINK-1.0-http--link )

Climafrica Website - Climate Change Predictions In Sub-Saharan Africa: Impacts And Adaptations

File identifier
5d112b2b-9793-4484-808c-4a6172c5d4d0 XML
Metadata language
English
Character set
UTF8
Date stamp
2023-01-24T08:51:56
Metadata standard name

ISO 19115:2003/19139

Metadata standard version

1.0

Point of contact
  FAO-UN - FAO-Data
 
 

Overviews

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Spatial extent

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Keywords

ClimAfrica GDP Tag_climafrica WP4 adaptive capacity agriculture GDP per worker market accessibilty poverty

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