Agricultural drought monitoring and early warning at the regional scale using a remote sensing-based combined index

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  • Indian Institute of Technology Bhubaneswar (IITBBS)
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Details

OriginalspracheEnglisch
Aufsatznummer1132
FachzeitschriftEnvironmental Monitoring and Assessment
Jahrgang196
Ausgabenummer11
PublikationsstatusVeröffentlicht - 30 Okt. 2024

Abstract

Early detection of agricultural drought can alert farmers and authorities, enhancing the resilience of the food sector. A framework is proposed for developing a novel regional agricultural drought index (RegCDI) by combining remotely sensed vegetation health, soil moisture and crop water stress via a transparent Shannon’s entropy weighting method. The framework consists of the selection of suitable datasets based on their regional performance, the aggregation of selected drought indicators, the validation of the combined index against crop yield, and the testing of predictive capabilities. The creation and performance of RegCDI are demonstrated for the drought prone Indian state of Odisha. MODIS surface reflectance is selected for crop water stress and GLDAS-2 for assessing soil moisture deficits and vegetation health. Three selected indicators (SMCI, TCI, and SIWSI-1) are combined into RegCDI for Odisha. The performance of RegCDI is evaluated (a) against other popular drought indices and (b) by comparing with seasonal crop yields. RegCDI is used to identify drought hotspots based on drought severity, duration, and propensity over the study area. A reforecast evaluation of RegCDI (up to three months ahead) showed that the indicators based on soil moisture deficit and crop water stress could predict drought conditions up to two months ahead with no less than 80% accuracy. This demonstrated the potential of the RegCDI framework and its component indicators for early warning of drought in Odisha.

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Agricultural drought monitoring and early warning at the regional scale using a remote sensing-based combined index. / Satapathy, Trupti; Dietrich, Jörg; Ramadas, Meenu.
in: Environmental Monitoring and Assessment, Jahrgang 196, Nr. 11, 1132, 30.10.2024.

Publikation: Beitrag in FachzeitschriftArtikelForschungPeer-Review

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abstract = "Early detection of agricultural drought can alert farmers and authorities, enhancing the resilience of the food sector. A framework is proposed for developing a novel regional agricultural drought index (RegCDI) by combining remotely sensed vegetation health, soil moisture and crop water stress via a transparent Shannon{\textquoteright}s entropy weighting method. The framework consists of the selection of suitable datasets based on their regional performance, the aggregation of selected drought indicators, the validation of the combined index against crop yield, and the testing of predictive capabilities. The creation and performance of RegCDI are demonstrated for the drought prone Indian state of Odisha. MODIS surface reflectance is selected for crop water stress and GLDAS-2 for assessing soil moisture deficits and vegetation health. Three selected indicators (SMCI, TCI, and SIWSI-1) are combined into RegCDI for Odisha. The performance of RegCDI is evaluated (a) against other popular drought indices and (b) by comparing with seasonal crop yields. RegCDI is used to identify drought hotspots based on drought severity, duration, and propensity over the study area. A reforecast evaluation of RegCDI (up to three months ahead) showed that the indicators based on soil moisture deficit and crop water stress could predict drought conditions up to two months ahead with no less than 80% accuracy. This demonstrated the potential of the RegCDI framework and its component indicators for early warning of drought in Odisha.",
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T1 - Agricultural drought monitoring and early warning at the regional scale using a remote sensing-based combined index

AU - Satapathy, Trupti

AU - Dietrich, Jörg

AU - Ramadas, Meenu

N1 - Publisher Copyright: © The Author(s) 2024.

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Y1 - 2024/10/30

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