The application of time-series MODIS NDVI profiles for the acquisition of crop information across Afghanistan

Date

2014-08-26

Authors

Simms, Daniel M.
Waine, Toby W.
Taylor, John C.
Juniper, Graham R.

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Volume Title

Publisher

Taylor and Francis

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Type

Article

ISSN

0143-1161

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Free to read from

Citation

Daniel M. Simms, Toby W. Waine, John C. Taylor & Graham R. Juniper (2014) The application of time-series MODIS NDVI profiles for the acquisition of crop, information across Afghanistan, International Journal of Remote Sensing, Vol 35(16), pp6234-6254.

Abstract

We investigated and developed a prototype crop information system integrating 250 m Moderate Resolution Imaging Spectroradiometer (MODIS) normalized difference vegetation index (NDVI) data with other available remotely sensed imagery, field data, and knowledge as part of a wider project monitoring opium and cereal crops. NDVI profiles exhibited large geographical variations in timing, height, shape, and number of peaks, with characteristics determined by underlying crop mixes, growth cycles, and agricultural practices. MODIS pixels were typically bigger than the field sizes, but profiles were indicators of crop phenology as the growth stages of the main first-cycle crops (opium poppy and cereals) were in phase. Profiles were used to investigate crop rotations, areas of newly exploited agriculture, localized variation in land management, and environmental factors such as water availability and disease. Near-real-time tracking of the current years’ profile provided forecasts of crop growth stages, early warning of drought, and mapping of affected areas. Derived data products and bulletins provided timely crop information to the UK Government and other international stakeholders to assist the development of counter-narcotic policy, plan activity, and measure progress. Results show the potential for transferring these techniques to other agricultural systems.

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Github

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