Prediction of vegetation anomalies to improve food security and water management in India

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Abstract

Prediction of vegetation anomalies at regional scales is essential for management of food and water resources. Forecast of vegetation anomalies at 1-3months lead time can help in decision making. Here we show that normalized difference vegetation index (NDVI) along with other hydroclimatic variables (soil moisture and sea surface temperature) can be effectively used to predict vegetation anomalies in India. The spatiotemporal analysis of NDVI showed significant greening over the region during the period of 1982-2013. The root-zone soil moisture showed a positive correlation with NDVI, whereas the El Niño-Southern Oscillation index (Nino 3.4) is negatively correlated in most of the regions. We extended this relationship to develop a model to predict NDVI in 1 to 3months lead time. The predicted vegetation anomalies compare well with observations, which can be effectively utilized in early warning and better planning in water resources and agricultural sectors in India. Key Points Development of model to predict NDVI in India The model can be used to predict vegetation dynamics at 1-3months lead time The model can be used for decision making in agriculture and water sectors.

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APA

Asoka, A., & Mishra, V. (2015). Prediction of vegetation anomalies to improve food security and water management in India. Geophysical Research Letters, 42(13), 5290–5298. https://doi.org/10.1002/2015GL063991

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