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Detecting Global Water Cycle Intensification: Temporal & Spatial Scales

This study aims to identify the appropriate temporal and spatial scales for detecting global water cycle intensification. By analyzing water flux trends and variability, the minimum time required to detect significant trends will be estimated. Indicator basins will also be identified for monitoring purposes.

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Detecting Global Water Cycle Intensification: Temporal & Spatial Scales

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  1. Identifying Appropriate Temporal and Spatial Scales for Detecting Global Water Cycle Intensification Justin Sheffield1, Alan Ziegler1, Edwin P. Maurer2, Bart Nijssen2, Eric F. Wood1, Dennis P. Lettenmaier2, Anthony Broccoli3 1 Princeton University 2 University of Washington 3 NOAA/GFDL

  2. Questions • Is the global water cycle intensifying? • How to detect intensification? • Trends in water fluxes: P, E, Q, ds/dt • What is the required time to detect a significant trend? • Where and to what extent should monitoring be done?

  3. Methodology • Determine Continental-scale variability in P, E, Q (VIC & GCM simulations) • Estimate minimum time required to detect warming-induced trends predicted from GCM run • Identify continental indicator “basins” that may be used for monitoring

  4. Datasets: variance VIC PCM • Variable Infiltration Capacity LSM • 14-year (1980-1993) • Water balance variables • Global: six continents • 2 grid cells • DOE Parallel Climate Model • 100-year (2000-2099) • P & E, Q = P - E • Control (no warming) • Interpolated to VIC 2 domain (terrestrial) (Nijssen et al., J. Climate 2001)

  5. A2 A2 Dataset: trends • PCM run B6.20 • 2000-2099 - IPCC A2 scenario: “worst plausible case” (IPCC, 2001)

  6. Predicted Trends • Period: 2000-2099 • Mann-Kendall trend Global Trends • P: 0.6 mm y-1 • E: 0.4 mm y-1 • Q*: 0.2 mm y-1 Tmin P E Q=P-E

  7. Trends and Variability Mm units: mm y-1

  8. Trend Detection Minimum number of years (nmin) required to detect a trend Time series variance (VIC & GCM) b= probability for Type II error b= probability of NOT detecting intensification when it is actually occurring Trend magnitude (GCM) a= probability for Type I error a = probability of detecting intensification when there is none

  9. Results: Minimum years for detection VIC only Low Risk/High Detectability: a = 0.05; b = 0.10

  10. Levels of Risk P only, PCM-VIC units: years

  11. Indicator Basins • Objective • Locate indicator basins which mimic the statistical nature of continental hydrology • Approach • VIC 14-year global dataset (2 grid cells) • Search for cells using a Genetic algorithm • Based on GAlib, http://lancet.mit.edu/ga

  12. Genetic Algorithm • “Closeness” of a solution defined by an Objective Function: all continent cells 5% of the cells • Solutions are analogous to binary strands of genetic material • New generations are created by “mating” the better solutions and through random “mutations”

  13. (27,30) (21,21) (19,30) (50,50) (52,50) (54,52) (All cells, N cells), P only Results: Indicator basins 10,000 generations, 173 cells = 5% of total (3459) Validated versus 1 million random solutions

  14. Conclusions • Preliminary results indicate decades may be required to detect trends in P, E, Q • Detectability depends on risk acceptance • Diverse spatial extent needed to mimic continental hydrological variability

  15. Acknowledgment Thanks Justin Sheffield, Alan Ziegler, Eric F. Wood EEWR, Princeton University Edwin P. Maurer, Bart Nijssen, Dennis P. Lettenmaier CEE, University of Washington NASA grants: NAG5-9414, NAG5-9886

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