H41F-1384
Incorporation of GRACE Data into a Bayesian Model for Groundwater Drought Monitoring
Thursday, 17 December 2015
Poster Hall (Moscone South)
Kimberly Slinski1, Terri S Hogue2, John E McCray1 and Aaron Porter1,3, (1)Colorado School of Mines, Golden, CO, United States, (2)Colorado School of Mines, Civil and Environmental Engineering, Golden, CO, United States, (3)Colorado School of Mines, Applied Mathematics & Statistics, Golden, CO, United States
Abstract:
Groundwater drought, defined as the sustained occurrence of below average availability of groundwater, is marked by below average water levels in aquifers and reduced flows to groundwater-fed rivers and wetlands. The impact of groundwater drought on ecosystems, agriculture, municipal water supply, and the energy sector is an increasingly important global issue. However, current drought monitors heavily rely on precipitation and vegetative stress indices to characterize the timing, duration, and severity of drought events. The paucity of in situ observations of aquifer levels is a substantial obstacle to the development of systems to monitor groundwater drought in drought-prone areas, particularly in developing countries. Observations from the NASA/German Space Agency’s Gravity Recovery and Climate Experiment (GRACE) have been used to estimate changes in groundwater storage over areas with sparse point measurements. This study incorporates GRACE total water storage observations into a Bayesian framework to assess the performance of a probabilistic model for monitoring groundwater drought based on remote sensing data. Overall, it is hoped that these methods will improve global drought preparedness and risk reduction by providing information on groundwater drought necessary to manage its impacts on ecosystems, as well as on the agricultural, municipal, and energy sectors.