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Downscaling

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Downscaling is any procedure to infer high-resolution information from low-resolution variables. This technique is based on dynamical or statistical approaches commonly used in several disciplines, especially meteorology, climatology and remote sensing.[1][2] The term downscaling usually refers to an increase in spatial resolution, but it is often also used for temporal resolution.[3][4] This is not to be confused with image downscaling which is a process of reducing an image from a higher resolution to a lower resolution.

Meteorology and climatology

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Global Climate Models (GCMs) used for climate studies and climate projections are typically run at spatial resolutions of the order of 150 to 200 km[5] and are limited in their ability to resolve important sub-grid scale features such as convection clouds and topography. As a result, GCM based projections may not be robust for local impact studies.

To overcome this problem, downscaling methods are developed to obtain local-scale weather and climate, particularly at the surface level, from regional-scale atmospheric variables that are provided by GCMs. Two main forms of downscaling technique exist. One form is dynamical downscaling, where output from the GCM is used to drive a regional, numerical model in higher spatial resolution, which therefore is able to simulate local conditions in greater detail. The other form is statistical downscaling, where a statistical relationship is established from observations between large scale variables, like atmospheric surface pressure, and a local variable, like the wind speed at a particular site. The relationship is then subsequently used on the GCM data to obtain the local variables from the GCM output.

Wilby and Wigley placed meteorological downscaling techniques into four categories:[6] regression methods, weather pattern-based approaches, stochastic weather generators, which are all statistical downscaling methods, and limited-area modeling (which corresponds to dynamical downscaling methods). Among these approaches regression methods are preferred because of their relative ease of implementation and low computation requirements. Additionally, a semi-mechanistic downscaling approach can be applied as for example used for the CHELSA data of downscaled model output. In this example, the temperature algorithm is based on statistical downscaling and the precipitation algorithm incorporates orographic predictors with a subsequent bias correction.[7]

Examples

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In 2007 the U.S. Bureau of Reclamation collaborated with U.S. Department of Energy's National Energy Technology Laboratory (DOE NETL), Santa Clara University (SCU), Lawrence Livermore National Laboratory (LLNL), and University of California's Institute for Research on Climate Change and Its Societal Impacts (IRCCSI) to apply a proven technique called "Bias Correction Spatial Disaggregation" BCSD;[8] see also "About on the Web site" to 112 contemporary global climate projections made available through the World Climate Research Program Couple Model Intercomparison Project, Phase 3 (WCRP CMIP3). These projections represent 16 GCMs simulating climate responses to three GHG scenarios from multiple initial climate system conditions.

The effort resulted in development of 112 monthly temperature and precipitation projections over the continental U.S. at 1/8° (12 kilometres (7.5 mi)) spatial resolution during a 1950–2099 climate simulation period.

CORDEX

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The Coordinated Regional Downscaling Experiment (CORDEX) was initiated in 2009 with the objective of providing a framework for the evaluation and comparison of downscaling model performance, as well as define a set of experiments to produce climate projections for use in impact and adaptation studies.[9][10] CORDEX climate change experiments are driven by the World Climate Research Programme Coupled Model Intercomparison Project Phase 5 (CMIP5)[11] GCM outputs. CORDEX defined 14 downscaling regions or domains.

References

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  • Hessami, M., Quarda, T.B.M.J., Gachon, P., St-Hailaire, A., Selva, F. and Bobee, B., "Evaluation of statistical downscaling method over several regions of eastern Canada", 57th Canadian water resources association annual congress, 2004.
  • Kim, J.W., Chang, J.T., Baker, N.L., Wilks, D.S., Gates, W.L., 1984. The statistical problem of climate inversion: determination of the relationship between local and large-scale climate. Monthly Weather Review 112, 2069–2077.
  • Maraun, D., Wetterhall, F., Ireson, A.M., Chandler, R.E., Kendon, E.J., Widmann, M., Brienen, S., Rust, H.W., Sauter, T., Themessl, M., Venema V.K.C., Chun, K.P., Goodess, C.M., Jones, R.G., Onof C., Vrac M. and Thiele-Eich, I., "Precipitation Downscaling under climate change. Recent developments to bridge the gap between dynamical models and the end user", Rev. Geophys. 48, RG3003, 2010.
  • Maraun, D. and Widmann, M., "Statistical Downscaling and Bias Correction for Climate Research", Cambridge University Press, Cambridge, 2018.
  • Sahour, H., Sultan, M., Vazifedan, M., Abdelmohsen, K., Karki, S., Yellich, J. A., Gebremichael, E., Alshehri, F., Elbayoumi, T. M. (2020). Statistical Applications to Downscale GRACE-Derived Terrestrial Water Storage Data and to Fill Temporal Gaps. Remote Sensing, 12(3), 533.https://doi.org/10.3390/rs12030533
  • von Storch, H., Zorita, E., Cubasch, U., 1993. Downscaling of global climate change estimates to regional scales: an application to Iberian rainfall in wintertime. Journal of Climate 6, 1161–1171.
  • Wilby, R.L. and Wigley, T.M.L., (1997) Downscaling general circulation model output: a review of methods and limitations, Progress in Physical Geography, 21, 530–548.
  • Wilby, R.L., Dawson, C.W. and Barrow E.M., (2002) SDSM - a decision support tool for the assessment of regional climate change impacts, Environmental Modelling & Software, 17, 147– 159.
  • Wood, A. W., Leung, L. 5 R., Sridhar, V., and Lettenmaier, D. P.: Hydrologic implications of dynamical and statistical approaches to downscaling climate model outputs, Climatic Change, 62, 189–216, 2004.
  • Reclamation et al. "Bias Correction and Downscaled WCRP CMIP3 Climate and Hydrology Projections" <http://gdo-dcp.ucllnl.org/ downscaled_cmip3_projections/>
  • Xu, Z. and Z.-L. Yang, (2012) An Improved Dynamical Downscaling Method with GCM Bias Corrections and Its Validation with 30 Years of Climate Simulations. J. Climate, 25, 6271–6286.
  • Xu, Z. and Z.-L. Yang, (2015) A new dynamical downscaling approach with GCM bias corrections and spectral nudging. J. Geophys. Res. Atmos., doi:10.1002/2014JD022958
Notes
  1. ^ Ribalaygua, J.; Torres, L.; Pórtoles, J.; Monjo, R.; Gaitan, E.; Pino, M.R. (2013). "Description and validation of a two-step analogue/regression downscaling method". Theoretical and Applied Climatology. 114 (1–2): 253–269. Bibcode:2013ThApC.114..253R. doi:10.1007/s00704-013-0836-x. S2CID 52253427.
  2. ^ Peng, J.; Loew, A.; Merlin, O.; Verhoest, N.E.C. (2017). "A review of spatial downscaling of satellite remotely sensed soil moisture". Reviews of Geophysics. 55 (2): 341. Bibcode:2017RvGeo..55..341P. doi:10.1002/2016RG000543. hdl:11858/00-001M-0000-002D-3843-0. S2CID 73579104.
  3. ^ Lee, T.; Jeong, C. (2014). "Nonparametric statistical temporal downscaling of daily precipitation to hourly precipitation and implications for climate change scenarios". Journal of Hydrology. 510: 182–196. Bibcode:2014JHyd..510..182L. doi:10.1016/j.jhydrol.2013.12.027.
  4. ^ Monjo, R. (2016). "Measure of rainfall time structure using the dimensionless n-index". Climate Research. 67 (1): 71–86. Bibcode:2016ClRes..67...71M. doi:10.3354/cr01359. (pdf)
  5. ^ Change, Intergovernmental Panel on Climate (March 2014). "Evaluation of Climate Models". In Intergovernmental Panel On Climate Change (ed.). Climate Change 2013 - the Physical Science Basis (PDF). pp. 741–866. doi:10.1017/cbo9781107415324.020. ISBN 9781107415324. Retrieved 2019-08-06. {{cite book}}: |website= ignored (help)
  6. ^ Wilby, R.L.; Wigley, T.M.L. (1997). "Downscaling general circulation model output: a review of methods and limitations". Progress in Physical Geography. 21 (4): 530–548. doi:10.1177/030913339702100403. S2CID 18058016.
  7. ^ Karger, D.N.; Conrad, O.; Böhner, J.; Kawohl, T.; Kreft, H.; Soria-Auza, R.W.; Zimmermann, N.E.; Linder, P.; Kessler, M. (2017). "Climatologies at high resolution for the Earth land surface areas". Scientific Data. 4 (170122): 170122. Bibcode:2017NatSD...470122K. doi:10.1038/sdata.2017.122. PMC 5584396. PMID 28872642.
  8. ^ Wood, A. W.; Leung, L. R.; Sridhar, V.; Lettenmaier, D. P. (2004-01-01). "Hydrologic Implications of Dynamical and Statistical Approaches to Downscaling Climate Model Outputs". Climatic Change. 62 (1–3): 189–216. doi:10.1023/B:CLIM.0000013685.99609.9e. ISSN 0165-0009. S2CID 27377984.
  9. ^ "CAB Direct". www.cabdirect.org. Retrieved 2019-08-06.
  10. ^ Gutowski Jr., William J.; Giorgi, Filippo; Timbal, Bertrand; Frigon, Anne; Jacob, Daniela; Kang, Hyun-Suk; Raghavan, Krishnan; Lee, Boram; Lennard, Christopher (2016-11-17). "WCRP COordinated Regional Downscaling EXperiment (CORDEX): a diagnostic MIP for CMIP6". Geoscientific Model Development. 9 (11): 4087–4095. Bibcode:2016GMD.....9.4087G. doi:10.5194/gmd-9-4087-2016. hdl:11336/29500. ISSN 1991-9603.
  11. ^ Taylor, Karl E.; Stouffer, Ronald J.; Meehl, Gerald A. (2011-10-07). "An Overview of CMIP5 and the Experiment Design". Bulletin of the American Meteorological Society. 93 (4): 485–498. doi:10.1175/BAMS-D-11-00094.1. ISSN 0003-0007.