Assessment of a Spatially and Temporally Consistent MODIS Derived NDVI Product for Application in Index-Based Drought Insurance
Autor: | Ashutosh Limaye, Lilian Ndungu, Robert Griffin, Emily Adams, W. Lee Ellenburg, Richard Kyuma, Daniel Irwin, Kel Markert, Sara Miller, Eric Anderson |
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Rok vydání: | 2020 |
Předmět: |
Percentile
Index (economics) 010504 meteorology & atmospheric sciences NDVI business.industry Comparability 0211 other engineering and technologies 02 engineering and technology Vegetation index-based insurance Kenya 01 natural sciences Arid Normalized Difference Vegetation Index livestock Product (business) New product development Statistics General Earth and Planetary Sciences Environmental science lcsh:Q lcsh:Science business 021101 geological & geomatics engineering 0105 earth and related environmental sciences |
Zdroj: | Remote Sensing Volume 12 Issue 18 Remote Sensing, Vol 12, Iss 3031, p 3031 (2020) |
ISSN: | 2072-4292 |
DOI: | 10.3390/rs12183031 |
Popis: | In arid and semi-arid regions of Eastern and Southern Africa, drought can be devastating to pastoralists who depend on healthy vegetation for their herds. The Kenya Livestock Insurance Program (KLIP) addresses this challenge through its insurance program that relies on a vegetation index product derived from eMODIS NDVI (enhanced Normalized Difference Vegetation Index). Insurance payouts are triggered when index values fall below a certain threshold for a Unit Area of Insurance (UAI). The objective of this study is to produce an updated, cloud-based NDVI product, potentially allowing for earlier payouts that may help herders to prevent, minimize, or offset drought-induced losses. The new product, named reNDVI (rapid enhanced NDVI), provides an updated cloud filtering algorithm and brings the entire processing chain to the cloud. Access to the scripts used for the processing described and resulting data is openly available. To test the performance of the new product, we provide a robust evaluation of reNDVI and eMODIS NDVI and their derived payout indices against historical drought, payouts provided, and mortality data. The implications of potential payout differences are also discussed. The products show good comparability the monthly average NDVI per UAI has correlation values over 0.95 and MAPD under 5% for most UAIs. However, there are moderate differences when assessing year-to-year payout amounts triggered. Because the payouts are currently calculated based on the 20th and first percentile of index values from 2003&ndash 2016, payouts are very sensitive to even small changes in NDVI. Where livestock mortality was available, payouts for reNDVI and eMODIS had similar correlations (r = 0.453 and r = 0.478, respectively) with mortality rates. Therefore, with the potential reduced latency and updated cloud filtering, the reNDVI product could be a suitable replacement for eMODIS in the Kenya Livestock Insurance Program. The updated reNDVI product shows promise as a vegetation index that could address a pressing drought insurance challenge. |
Databáze: | OpenAIRE |
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