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Toward improved seasonal forecasting of water resources and North American monsoon precipitation in the Southwestern United States Hsin-I Chang1*, Christopher L. Castro1, Sharon Megdal2, Peter Troch1, Rajarshi Mukherjee1 ,Elia Tapia 1Dept. of Hydrology and Atmospheric Sciences and Water Resources Research Center, University of Arizona, Tucson, AZ Corresponding Author E-mail: [email protected] Introduction and Motivation Current and future streamflow in river basins within the Southwest is an increasing concern for water management. Population growth and residential construction have increased water demand in the Colorado River watershed, where water supply is highly sensitive to climate variability and change. Though there is evidence that climate change is presently occurring from the recent observational record on global and continental scales. How these changes bear on the hydroclimate at the river basin scale is still uncertain. Observed streamflow declines in the Colorado Basin in recent years are likely due to a synergistic combination of anthropogenic global warming and natural climate variability, which are creating an overall warmer and more extreme climate. More reliable projections of basin streamflow, that takes into account these dual effects, are urgently needed for long-term water resource planning. The research objective is to characterize how the combination of climate change and natural climate variability is changing the hydroclimate in the southwestern US. A multi-scale downscaling modeling approach is designed to incorporate both regional climate and hydrologic modeling components. Fig. 1: Upper and Lower Colorado River Basins Methodological approach Long-Term Regional Climate Projections Regional climate model data is generated by the WRF model as part of North American CORDEX, at 25 and 50 km grid spacing. The RCM forcing is from selected IPCC CMIP5 models (MPI-ECHAM6, HadGEM2). Fig. 2 shows the mean and extreme precipitation climatology difference between 20th and early 21st century, similar to our prior downscaled CMIP3 study (Chang et al. 2015) We consider the climatological performance of select dynamically downscaled CMIP5 GCMs by applying the CPVM methodology to analyze trends in extreme daily temperature and precipitation. Here we show the results with WRF-ECHAM6. The trends in extremes depart from the average trends shown in Fig. 2, where most of CONUS will be drier for the near future. Early summer precipitation extremes in association with Pacific SST variability have a similar trend between CPC observed data and dynamically downscaled WRF-ECHAM6 results. Under a positive CPVM signal (positive ENSO), extreme precipitation increases in Northwestern U.S., parts of Texas, and Midwest (Fig. 6), thereby enhancing the positive precipitation anomalies that occur in association with this phase of the mode. The most urgent need for water resource stakeholders is to find out what is the trend of climate extremes in the near future, crucial for risk management and resource planning. The near future trend of extremes (precipitation and temperature, Fig. 7) indicates when a negative ENSO signal is present, the anti-phase relationship in precipitation between Southwest and Northwest will be intensifying. Therefore, wet region become wetter cooler and dry regions become drier and warmer. Fig. 6 : Extreme June/July precipitation difference rate (%) under positive CPVM signal. Left: CPC, right: WRF-ECHAM6 (50km). Period: [1981-2010] vs [1950-1980]. Fig. 7: WRF-ECHAM6 June/July extreme precipitation (left) and extreme temperature (right) difference (K) under negative CPVM mode. Period: [2011-2040] vs [1950-2010]. Fig. 8 shows CPVM analysis results with WRF-ECHAM6 simulations for 25 and 50 km grid spacing. The magnitude of precipitation increase over lower Great Plains is reduced in the 25km simulation. The precipitation pattern over complex terrain is also better resolved. Fig. 8: Positive CPVM analysis in WRF-ECHAM6 as in Fig. 6. Left: 50 Km resolution, right: 25km resolution. Period: [2011-2040] vs [1950-2010]. Colorado River Sub-basin Streamflow Projections under the influence of climate change Fig. 2: WRF-ECHAM6 mean and extreme (>90%) precipitation difference (%) Climate Analysis following Pacific SST variability A new analytical approach (Combined Pacific Variability Mode (CPVM)) objectively evaluates North American climate variability related to remote sea Pacific SST variability. A positive phase of the CPVM typically leads to a drier Southwest and wetter Northwest during summer, and vice versa for the negative phase. (Fig. 3) Fig. 3: Historic precipitation pattern under positive CPVM [positive ENSO] mode Streamflow Hydrologic Modeling with New Bias-Correction methodology Colorado streamflow projection is conducted using the Variable Infiltration Capacity (VIC) model, calibrated for both upper and lower Colorado River Basins in 1/8°resolution. Fig. 4 compares the 60-yr simulated streamflow from Maurer et al. 2002 observed data to naturalized streamflow at Lee’s Ferry. Applying climate data to basin-scale hydrologic modeling, bias correction is often required. A new bias correction technique, Scaled Distribution Mapping (SDM, Switanek et al. 2016) is applied to the RCM temperature, wind and precipitation data. This technique not only corrects the seasonal biases present in the historical and future climate data, but also preserves the relative change or trend in the raw climate model. Summer Precipitation and Temperature Variability with Respect to Pacific SST Variability: Period comparison: [1950-2010] vs [2011-2040] using Dynamically Downscaled CMIP5 Figure 4: Naturalized Streamflow at Lee’s Ferry vs. simulated streamflow for Upper Colorado basin. Statistically downscaled CMIP models projects an increase in high and moderate flows. The equivalent dynamically downscaled projection shows larger streamflow reduction in flows. (Fig. 9). There is also a shift in the hydrograph peak from June to May (Fig. 10) Overall basin-scale precipitation shows an increasing winter and decreasing summer trend (Fig. 11). The dynamically downscaled projection has much drier future, and reflects the larger streamflow reduction shown in Fig. 10. Increasing future winter precipitation is due to warmer average temperature. The changes in the spatial pattern of precipitation with dynamical downscaling more realistically follows the orographic features, as compared to statistical downscaling (not shown). Conclusions • Regional climate datasets from dynamically downscaled selected CMIP5 models have a reasonable representation of summer precipitation. Fig. 9: Colorado River near future (2011-2040) streamflow projections from statistical and dynamical downscaled CMIP products. Streamflow Regime • Dominant precipitation and temperature extremes reflect strong Pacific SST influences similar to observations and our previous CMIP3 analysis (Chang et al. 2015) • Streamflow projections for Colorado River sub-basins have various degrees of future reduction, with dynamical downscaling yielding the largest reduction. • Methods of bias correction and downscaling techniques have am influence on the magnitude of streamflow reduction projected. Fig. 10: Upper Colorado River basin streamflow regime curve. • The streamflow regime curve shifts from summer to spring in the later part of 21st century • Both statistical and dynamical downscaled precipitation shows increases in winter and decreases in summer, which directly relates to the shifts in streamflow regime curve. Fig. 11: Winter (left) and summer (right) basin-scale precipitation % change comparing historic and far future periods. Shown with respect to elevation. Acknowledgements This work is supported by the Department of Interior, United States of Geological Survey, Southwest Climate Science Center; Bureau of Reclamation, Salt River Project and Central Arizona Project; Transboundary Aquifer Assessment Program, Water Resources Research Center