Technical Papers
Nov 9, 2013

Downscaling Global Climate Simulations to Regional Scales: Statistical Downscaling versus Dynamical Downscaling

Publication: Journal of Hydrologic Engineering
Volume 20, Issue 1

Abstract

Downscaling is a fundamental procedure in the assessment of the future climate change impact at regional and watershed scales. Hence, it is important to investigate the spatial variability of the climate conditions that are constructed by various downscaling methods to assess whether each method can properly model the climate conditions at various spatial scales. To gain some insight into this issue with respect to statistical versus dynamical downscaling approaches, an assessment of the precipitation variability from a popular statistical downscaling method [bias correction with spatial disaggregation (BCSD)] and a dynamical downscaling method [by MM5: Fifth-Generation National Center for Atmospheric Research (NCAR)/Penn State Mesoscale Model] was performed. This assessment is based on the historical NCAR/National Center for Environmental Prediction (NCEP) reanalysis data, a community climate system model version 3 (CCSM3) global climate model (GCM) control run for the 1950–1999 period, and the CCSM3 GCM A1B emission scenario simulations for a projection period. Two spatial characteristics are investigated: (1) the normalized standard deviation (NSD), and (2) the precipitation change over the northern California region. The results of this investigation show that BCSD-based NSD and local precipitation change values do not show realistic spatial variation. Instead, they show interpolated spatial patterns from the coarse grid data set of two-degree resolution for both historic and projection periods. Meanwhile, MM5-based NSD and local precipitation change values show realistic spatial characteristics of precipitation variability for each month (December and July), for each season [December-January-February (DJF) and June-July-August (JJA)], and for the annual values, due to the heterogeneity in the northern California study region’s land characteristics. Both PRISM (Parameter-elevation Regressions on Independent Slopes Model) and MM5-simulated precipitation values have similar spatial structures, and they describe well how the NSD values and the precipitation field change locally in a spatially diverse pattern over the study region. Hence, BCSD procedure and MM5 simulations show significant differences for the 100-year average precipitation change. Opposite wet and dry trends between the precipitation estimated by the BCSD method and by MM5 are found in many places (especially in high-elevation areas). The BCSD method has limitations in projecting future precipitation values. As such, it is questionable whether the BCSD method is suitable for the assessment of the impact of future climate change at regional, watershed, and local scales as the future climate will evolve in time and space as a nonlinear system with land–atmosphere feedbacks.

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References

Abatzoglou, J. T., and Brown, T. J. (2012). “A comparison of statistical downscaling methods suited for wildfire applications.” Int. J. Climatol., 32(5), 772–780.
Akintug, B., and Rasmussen, P. F. (2005). “A Markov switching model for annual hydrologic time series.” Water Resour. Res., 41(9), W09424.
Anderson, M. L., Chen, Z. Q., Kavvas, M. L., and Yoon, J. (2007). “Reconstructed historical atmospheric data by dynamical downscaling.” J. Hydrol. Eng., 156–162.
Anthes, R. A., and Warner, T. T. (1978). “Development of hydrodynamic models suitable for air pollution and other mesometeorological studies.” Mon. Weather Rev., 106(8), 1045–1078.
Beyene, T., Lettenmaier, D. P., and Kabat, P. (2010). “Hydrologic impacts of climate change on the Nile river basin: Implications of the 2007 IPCC scenarios.” Clim. Change, 100(3–4), 433–461.
Blöschl, G., and Montanari, A. (2010). “Climate change impacts—Throwing the dice?” Hydrol. Processes, 24(3), 374–381.
Bravar, L., and Kavvas, M. L. (1991). “On the physics of droughts II. Analysis and simulation of the interaction of atmospheric and hydrological processes during droughts.” J. Hydrol., 129(1–4), 299–330.
Burlando, P., and Rosso, R. (2002). “Effects of transient climate change on basin hydrology. 1. Precipitation scenarios for the Arno River, central Italy.” Hydrol. Processes, 16(6), 1151–1175.
Casimiro, W. S. L., Labat, D., Guyot, J. L., and Ardoin-Bardin, S. (2011). “Assessment of climate change impacts on the hydrology of the Peruvian Amazon–Andes basin.” Hydrol. Processes, 25(24), 3721–3734.
Chen, Z. Q., Kavvas, M. L., Ohara, N., Anderson, M. L., and Yoon, J. (2011). “Coupled regional hydroclimate model and its application to the Tigris-Euphrates basin.” J. Hydrol. Eng., 1059–1070.
Christensen, J. H., and Christensen, O. B. (2003). “Climate modeling: Severe summertime flooding in Europe.” Nature, 421(6925), 805–806.
Cuo, L., Beyene, T. K., Voisin, N., Su, T., and Lettenmaier, D. P. (2011). “Effects of mid-twenty-first century climate and land cover change on the hydrology of the Puget Sound basin, Washington.” Hydrol. Processes, 25(11), 1729–1753.
Daly, C., et al. (2008). “Physiographically-sensitive mapping of temperature and precipitation across the conterminous United States.” Int. J. Climatol., 28(15), 2031–2064.
Diaz-Nieto, J., and Wilby, R. L. (2005). “A comparison of statistical downscaling and climate change factor methods: Impacts on low flows in the River Thames, United Kingdom.” Clim. Change, 69(2–3), 245–268.
Dilley, M., and Heyman, B. N. (1995). “ENSO and disaster: Droughts, floods and El Niño/southern oscillation warm events.” Disasters, 19(3), 181–193.
Elsner, M. M., et al. (2010). “Implications of 21st century climate change for the hydrology of Washington State.” Clim. Change, 102(1–2), 225–260.
Enfield, D. B., Mestas-Nuñez, A. M., and Trimble, P. J. (2001). “The Atlantic multidecadal oscillation and its relation to rainfall and river flows in the continental U.S.” Geophys. Res. Lett., 28(10), 2077–2080.
Fowler, H. J., Blenkinsop, S., and Tebaldi, C. (2007). “Review linking climate change modeling to impacts studies: Recent advances in downscaling techniques for hydrological modeling.” Int. J. Climatol., 27(12), 1547–1578.
Gash, J. H. C., and Nobre, C. A. (1997). “Climatic effects of Amazonian deforestation: Some results from ABRACOS.” Bull. Am. Meteorol. Soc., 78(5), 823–830.
Goyal, M. K., and Ojha, C. S. P. (2011). “Evaluation of linear regression methods as downscaling tools in temperature projections over the Pichola Lake basin.” Hydrol. Processes, 25(9), 1453–1465.
Grell, G. A., Dudhia, J., and Stauffer, D. R. (1994). “A description of the fifth-generation Penn State/NCAR mesoscale model (MM5).”, NCAR, Boulder, CO, 122.
Grotch, S. L., and MacCracken, M. C. (1991). “The use of general circulation models to predict regional climate change.” J. Clim., 4(3), 286–303.
Hamlet, A. F., Mote, P. W., Clark, M. P., and Lettenmaier, D. P. (2005). “Effects of temperature and precipitation variability on snowpack trends in the western United States.” J. Clim., 18(21), 4545–4561.
Hashmi, M. Z., Shamseldin, A. Y., and Melville, B. W. (2011). “Comparison of SDSM and LARS-WG for simulation and downscaling of extreme precipitation events in a watershed.” Stochastic Environ. Res. Risk Assess., 25(4), 475–484.
Hashmi, M. Z., Shamseldin, A. Y., and Melville, B. W. (2013). “Statistically downscaled probabilistic multi-model ensemble projections of precipitation change in a watershed.” Hydrol. Process., 27(7), 1021–1062.
Hay, L. E., and Clark, M. P. (2003). “Use of statistically and dynamically downscaled atmospheric model output for hydrologic simulations in three mountainous basins in the western United States.” J. Hydrol., 282(1–4), 56–75.
Hayhoe, K., et al. (2007). “Past and future changes in climate and hydrological indicators in the U.S. northeast.” Clim. Dyn., 28(4), 381–407.
Haylock, M. R., Cawley, G. C., Harpham, C., Wilby, R. L., and Goodess, C. M. (2006). “Downscaling heavy precipitation over the United Kingdom: A comparison of dynamical and statistical methods and their future scenarios.” Int. J. Climatol., 26(10), 1397–1415.
Huang, S., Krysanova, V., Osterle, H., and Hattermann, F. F. (2010). “Simulation of spatiotemporal dynamics of water fluxes in Germany under climate change.” Hydrol. Processes, 24(23), 3289–3306.
Intergovernmental Panel on Climate Change (IPCC). (2007). “Climate change 2007: Synthesis report. An assessment of the Intergovernmental panel on climate change.” Geneva, Switzerland.
Johnson, T. E., Butcher, J. B., Parker, A., and Weaver, C. P. (2012). “Investigating the sensitivity of U.S. streamflow and water quality to climate change: U.S. EPA global change research program’s 20 watersheds project.” J. Water Resour. Plann. Manage., 453–464.
Jung, I. W., and Chang, H. (2011). “Assessment of future runoff trends under multiple climate change scenarios in the Willamette River basin, Oregon, USA.” Hydrol. Processes, 25(2), 258–277.
Kalnay, E., et al. (1996). “The NCEP/NCAR 40-year reanalysis project.” Bull. Am. Meteorol. Soc., 77(3), 437–471.
Kavvas, M. L., Kure, S., Chen, Z. Q., Ohara, N., and Jang, S. (2013). “WEHY-HCM for modeling interactive atmospheric-hydrologic processes at watershed scale: I. Model description.” J. Hydrol. Eng., 1262–1271.
Kiem, A. S., Ishidaira, H., Hapuarachchi, H. P., Zhou, M. C., Hirabayashi, Y., and Takeuchi, K. (2008). “Future hydroclimatology of the Mekong River basin simulated using the high-resolution Japan meteorological agency (JMA) AGCM.” Hydrol. Processes, 22(9), 1382–1394.
Konrad, C. P., and Booth, D. B. (2002). “Hydrologic trends associated with urban development for selected streams in the Puget Sound basin, Western Washington.”, USGS, Tacoma, WA.
Kundzewicz, Z. W., et al. (2007). “Freshwater resources and their management, in climate change 2007: Impacts, adaptation and vulnerability—Contribution of working group II to the fourth assessment report of the intergovernmental panel onclimate change.”, Cambridge University Press, Cambridge, U.K., 174–210.
Kundzewicz, Z. W., and Stakhiv, E. Z. (2010). “Are climate models “ready for prime time” in water resources management applications, or is more research needed?” Hydrol. Sci. J., 55(7), 1085–1089.
Kure, S., Jang, S., Ohara, N., Kavvas, M. L., and Chen, Z. Q. (2013). “WEHY-HCM for modeling interactive atmospheric-hydrologic processes at watershed scale: II. Model application to ungauged and sparsely gauged watersheds.” J. Hydrol. Eng., 1272–1281.
Lee, E., Chase, T. N., and Rajagopalan, B. (2008). “Seasonal forecasting of east Asian summer monsoon based on oceanic heat sources.” Int. J. Climatol., 28(5), 667–678.
Lee, E., Chase, T. N., Rajagopalan, B., Barry, R. G., Biggs, T. W., and Lawrence, P. J. (2009). “Effects of irrigation and vegetation activity on early Indian summer monsoon variability.” Int. J. Climatol., 29(4), 573–581.
Leung, L. R., and Qian, Y. (2009). “Atmospheric rivers induced heavy precipitation and flooding in the western U.S. simulated by the WRF regional climate model.” Geophys. Res. Lett., 36(3), L03820.
Leung, L. R., Qian, Y., and Bian, X. (2003a). “Hydroclimate of the Western United States based on observations an regional climate simulation of 1981-2000. Part II: Mesoscale ENSO anomalies.” J. Clim., 16(12), 1912–1928.
Leung, L. R., Qian, Y., and Bian, X. (2003b). “Hydroclimate of the western United States based on observations and regional climate simulation of 1981-2000. Part I: Seasonal statistics.” J. Clim., 16(12), 1892–1911.
Leung, L. R., Qian, Y., Bian, X., Washington, W. M., Han, J., and Roads, J. O. (2004). “Mid-century ensemble regional climate change scenarios for the western United States.” Clim. Change, 62(1–3), 75–113.
Liu, J., Bray, M., and Han, D. (2012). “Sensitivity of the weather research and forecasting (WRF) model to downscaling ratios and storm types in rainfall simulation.” Hydrol. Processes, 26(20), 3012–3031.
Liu, Z., Xu, Z., Huang, J., Stephen, P., Charles, S. P., and Guobin, F. G. (2010). “Impacts of climate change on hydrological processes in the headwater catchment of the Tarim River basin, China.” Hydrol. Process., 24(2), 196–208.
Mantua, N. J., Hare, S. R., Zhang, Y., Wallace, J. M., and Francis, R. C. (1997). “A Pacific decadal climate oscillation with impacts on salmon.” Bull. Am. Meteorol. Soc., 78(6), 1069–1079.
Maraun, D., et al. (2010). “Precipitation downscaling under climate change: Recent developments to bridge the gap between dynamical models and the end user.” Rev. Geophys., 48(3), 1–34.
Maurer, E. P., Brekke, L., Pruitt, T., and Duffy, P. B. (2007). “Fine resolution climate projections enhance regional climate change impact studies.” Eos, Trans. Am. Geophys. Union, 88(47), 504.
Maurer, E. P., and Hidalgo, H. G. (2007). “Utility of daily vs. monthly large-scale climate data: An intercomparison of two statistical downscaling methods.” Hydrol. Earth Syst. Sci. Discuss., 4(5), 3413–3440.
Maurer, E. P., Hidalgo, H. G., Das, T., Dettinger, M. D., and Cayan, D. R. (2010). “The utility of daily large-scale climate data in the assessment of climate change impacts on daily streamflow in California.” Hydrol. Earth Syst. Sci., 14(6), 1125–1138.
Maurer, E. P., Wood, A. W., Adam, J. C., Lettenmaier, D. P., and Nijssen, B. (2002). “A long-term hydrologically-based data set of land surface fluxes and states for the conterminous United States.” J. Clim., 15(22), 3237–3251.
Mearns, L. O., Giorgi, F., Whetton, P., Pabon, D., Hulme, M., and Lal, M. (2003). “Guideline for use of climate scenarios developed from regional climate model experiments.” Data distribution centre of the intergovernmental panel on climate change task group on data and scenario support for impact and climate analysis, Geneva, 38.
Miller, W. P., Butler, R. A., Piechota, T., Prairie, J., Grantz, K, and DeRosa, G. (2012). “Water management decisions using multiple hydrologic models within the San Juan River basin under changing climate conditions.” J. Water Resour. Plann. Manage., 412–420.
Miller, W. P., Piechota, T. C., Gangopadhyay, S., and Pruitt, T. (2010). “Development of streamflow projections under changing climate conditions over Colorado River basins headwaters.” Hydrol. Earth Syst. Sci. Discuss., 7(4), 5577–5619.
Milly, P. C. D., et al. (2008). “Stationarity is dead: Whither water management?” Science, 319(5863), 573–574.
Mishra, A. K., Ozger, M., and Singh, V. P. (2009). “Trend and persistence of precipitation under climate change scenarios for Kansabati basin, India.” Hydrol. Processes, 23(16), 2345–2357.
Murphy, J. M. (1999). “An evaluation of statistical and dynamical techniques for downscaling local climate.” J. Clim., 12(8), 2256–2284.
National Elevation Dataset (NED). “The national map.” U.S. Geological Survey (USGS), Washington, DC, 〈http://ned.usgs.gov/〉 (Jul. 16, 2012).
Ohara, N., Kavvas, M. L., Kure, S., Chen, Z. Q., Jang, S., and Tan, E. (2011). “Physically based estimation of maximum precipitation over American River watershed, California.” J. Hydrol. Eng., 351–361.
Pielke, R. A., Sr., et al. (2007). “An overview of regional land-use and landcover impacts on rainfall.” Tellus, Series B, 59(3), 587–601.
Pielke, R. A., Sr., et al. (2011). “Land use/land cover changes and climate: Modeling analysis and observational evidence.” Wiley Interdiscip. Rev. Clim. Change, 2(6), 828–850.
Pilling, C. G., and Jones, J. A. A. (2002). “The impact of future climate change on seasonal discharge, hydrological processes and extreme flows in the Upper Wye experimental catchment, mid-Wales.” Hydrol. Processes, 16(6), 1201–1213.
Prudhomme, C., Reynard, N., and Crooks, S. (2002). “Downscaling of global climate models for flood frequency analysis: Where are we now?” Hydrol. Processes, 16(6), 1137–1150.
Raff, D. A., Pruitt, T., and Brekke, L. D. (2009). “A framework for assessing flood frequency based on climate projection information.” Hydrol. Earth Syst. Sci. Discuss., 13(11), 2119–2136.
Raje, D., and Mujumdar, P. P. (2011). “A comparison of three methods for downscaling daily precipitation in the Punjab region.” Hydrol. Processes, 25(23), 3575–3589.
Rauscher, S. A., Coppola, E., Piani, C., Giorgi, F. (2010). “Resolution effects on regional climate model simulations of seasonal precipitation over Europe.” Clim. Dyn., 35(4), 685–711.
Salas, J. D., Paulet, M., and Vasconcelos, C. (2008). “Feasibility study for water resources development in the Chonta and Mashcon rivers, Cajamarca, Peru.” Colorado Water Resour. Circ., 25(5), 12–13.
Salas, J. D., Rajagopalan, B., Saito, L., and Brown, C. (2012). “Special section on climate change and water resources: Climate nonstationarity and water resources management.” J. Water Resour. Plann. Manage., 385–388.
Salathe, E. P., Leung, L. R., Qian, Y., and Zhang, Y. (2010). “Regional climate model projections for the State of Washington.” Clim. Change, 102(1–2), 51–75.
Salathe, E. P., Monte, P. W., and Wiley, M. W. (2007). “Review of scenario selection and downscaling methods for the assessment of climate change impacts on hydrology in the United States pacific northwest.” Int. J. Climatol., 27(12), 1611–1621.
Salathe, E. P., Steed, R., Mass, C. F., and Zahn, P. H. (2008). “A high-resolution climate model for the U.S. pacific northwest: Mesoscale feedbacks and local responses to climate change.” J. Clim., 21(21), 5708–5726.
Shaaban, A. J., Amin, M. Z. M., Chen, Z. Q., and Ohara, N. (2011). “Regional modeling of climate change impact on Peninsular Malaysia water resources.” J. Hydrol. Eng., 1040–1049.
Shepard, D. S. (1984). “Computer mapping: The SYMAP interpolation algorithm.” Spatial statistics models, Vol. 40, Springer, Theory and Decision Library, Netherlands, 133–145.
Shepherd, A., Gill, K. M., and Rood, S. B. (2010). “Climate change and future flows of Rocky Mountain rivers: Converging forecasts from empirical trend projection and down-scaled global circulation modeling.” Hydrol. Processes, 24(26), 3864–3877.
Shrestha, R. R., Schnorbus, M. A., Werner, A. T., and Berland, A. J. (2012). “Modelling spatial and temporal variability of hydrologic impacts of climate change in the Fraser River basin, British Columbia, Canada.” Hydrol. Processes, 26(12), 1840–1860.
USGS. “Global land cover characterization data (GLCC).” 〈http://edc2.usgs.gov/glcc/glcc.php〉 (Jul. 16, 2012).
Villarini, G., Smith, J. A., Serinaldi, F., Bales, J., Bates, P. D., and Krajewski, W. F. (2009). “Flood frequency analysis for nonstationary annual peak records in an urban drainage basin.” Adv. Water Resour., 32(8), 1255–1266.
Wilby, R. L., and Wigley, T. M. L. (1997). “Downscaling general circulation model output: A review of methods and limitations.” Process Phys. Geogr., 21(4), 530–548.
Wilby, R. L., and Wigley, T. M. L. (2000). “Precipitation predictors for downscaling: Observed and general circulation model relationships.” Int. J. Climatol., 20(6), 641–661.
Wood, A. W., Leung, L. R., Sridhar, V., and Lettenmaier, D. P. (2004). “Hydrologic implications of dynamical and statistical approaches to downscaling climate model outputs.” Clim. Change, 62(1–3), 189–216.
Wood, A. W., Maurer, E. P., Kumar, A., and Lettenmaier, D. P. (2002). “Long-range experimental hydrologic forecasting for the eastern United States.” J. Geophys. Res., 107(D20), ACL 6.1–6.15.
Yang, T., Lia, H., Wang, W., Xu, C. Y., and Yu, Z. (2012). “Statistical downscaling of extreme daily precipitation, evaporation and temperature and construction of future scenarios.” Hydrol. Processes, 26(23), 3510–3523.
Yang, T. C., Yu, P. S., Wei, C. M., and Chen, S. T. (2011). “Projection of climate change for daily precipitation: A case study in Shih-Men reservoir catchment in Taiwan.” Hydrol. Processes, 25(8), 1342–1354.
Yoshitani, J., Chen, Z. Q., Kavvas, M. L., and Fukami, K. (2009). “Atmospheric model-based streamflow forecasting at small, mountainous watersheds by a distributed hydrologic model: Application to a watershed in Japan.” J. Hydrol. Eng., 1107–1118.
Yu, P. S., and Wang, Y. C. (2009). “Impact of climate change on hydrological processes over a basin scale in northern Taiwan.” Hydrol. Processes, 23(25), 3556–3568.

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Journal of Hydrologic Engineering
Volume 20Issue 1January 2015

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Received: Feb 20, 2013
Accepted: Nov 7, 2013
Published online: Nov 9, 2013
Discussion open until: Nov 18, 2014
Published in print: Jan 1, 2015

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Assistant Project Scientist, Dept. of Civil and Environmental Engineering, Hydrologic Research Laboratory, Univ. of California, Davis, CA 95616 (corresponding author). E-mail: [email protected]
M. L. Kavvas, F.ASCE [email protected]
Professor, Dept. of Civil and Environmental Engineering, Hydrologic Research Laboratory, Univ. of California, Davis, CA 95616. E-mail: [email protected]

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