B43A-0524
Monitoring Food Security Indicators from Remote Sensing and Predicting Cereal Production in Afghanistan
Thursday, 17 December 2015
Poster Hall (Moscone South)
Md Shahriar Pervez1, Michael E Budde2 and James Rowland2, (1)ASRC Federal InuTeq, Contractor to USGS EROS, Sioux Falls, SD, United States, (2)U.S. Geological Survey, Sioux Falls, SD, United States
Abstract:
We extract percent of basin snow covered areas above 2500m elevation from
Moderate Resolution Imaging Spectroradiometer (MODIS) 500-meter 8-day snow cover composites to monitor accumulation and depletion of snow in the basin. While the accumulation and depletion of snow cover extent provides an indication of the temporal progression of the snow pack, it does not provide insight into available water for irrigation. Therefore, we use snow model results from the National Operational Hydrologic Remote Sensing Center to quantify snow water equivalent and volume of water available within the snowpack for irrigation. In an effort to understand how water availability, along with its inter-annual variability, relates to the food security of the country, we develop a simple, effective, and easy-to-implement model to identify irrigated areas across the country on both annual and mid-season basis. The model is based on applying thresholds to peak growing season vegetation indices—derived from 250-meter MODIS images—in a decision-tree classifier to separate irrigated crops from non-irrigated vegetation. The spatial distribution and areal estimates of irrigated areas from these maps compare well with irrigated areas classified from multiple snap shots of the landscape from Landsat 5 optical and thermal images over selected locations. We observed that the extents of irrigated areas varied depending on the availability of snowmelt and can be between 1.35 million hectares in a year with significant water deficit and 2.4 million hectares in a year with significant water surplus. The changes in the amount of available water generally can contribute up to a 30% change in irrigated areas. We also observed that the strong correlation between inter-annual variability of irrigated areas and the variability in the country’s cereal production could be utilized to predict an annual estimate of cereal production, providing early indication of food security scenarios for the country.