4.6 Article

Developing a Combined Drought Index to Monitor Agricultural Drought in Sri Lanka

期刊

WATER
卷 14, 期 20, 页码 -

出版社

MDPI
DOI: 10.3390/w14203317

关键词

agricultural drought monitoring; aggregate drought indicator; evaluation of drought index; data mining approach; Sri Lanka

资金

  1. Japan-Bank Program for Mainstreaming DRM in Developing Countries

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Developing an agricultural drought index (agCDI) that integrates multiple input variables into a single index is crucial for monitoring and characterizing drought patterns in Sri Lanka. This study successfully developed agCDI using remote sensing and model-based agroclimatic input parameters, and evaluated its performance using independent datasets. The results demonstrate that agCDI effectively captures and characterizes historic drought conditions in major agricultural regions, and it can be used to develop a monitoring and early warning system to mitigate the impacts of drought.
Developing an agricultural drought monitoring index through integrating multiple input variables into a single index is vital to facilitate the decision-making process. This study aims to develop an agricultural drought index (agCDI) to monitor and characterize the spatial and temporal patterns of drought in Sri Lanka. Long-term (1982 to 2020) remote sensing and model-based agroclimatic input parameters-normalized difference vegetation index (NDVI), land surface temperature (LST), 3-month precipitation z-score (stdPCP), and evaporative demand drought index (EDDI)-were used to develop agCDI. The principal component analysis (PCA) approach was employed to qualitatively determine the grid-based percentage contribution of each input parameter. The agCDI was apparently evaluated using an independent dataset, including the crop yield for the major crop growing districts and observed streamflow-based surface runoff index (SRI) for the two main crop growing seasons locally, called Yala (April to September) and Maha (October to March), using 20-years of data (from 2000 to 2020). The results illustrate the good performance of agCDI, in terms of predominantly capturing and characterizing the historic drought conditions in the main agricultural producing districts both during the Yala and Maha seasons. There is a relatively higher chance of the occurrence of moderate to extreme droughts in the Yala season, compared to the Maha season. The result further depicts that relatively good correlation coefficient values (> 0.6) were obtained when agCDI was evaluated using a rice crop yield in the selected districts. Although the agCDI correlated well with SRI in some of the stations (>0.6), its performance was somehow underestimated in some of the stations, perhaps due to the time lag of the streamflow response to drought. In general, agCDI showed its good performance in capturing the spatial and temporal patterns of the historic drought and, hence, the model can be used to develop agricultural drought monitoring and an early warning system to mitigate the adverse impacts of drought in Sri Lanka.

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