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Ninth International Conference on Permafrost ... - IARC Research

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Mountain <strong>Permafrost</strong> Parameters Simulated by Regi<strong>on</strong>al Climate ModelsNadine SalzmannNati<strong>on</strong>al Center for Atmospheric <strong>Research</strong> (NCAR/ISSE), Boulder, CO, USAChristian HauckInstitute for Meteorology and Climate <strong>Research</strong>, Karlsruhe Institute of Technology (KIT), GermanyLinda O. MearnsNati<strong>on</strong>al Center for Atmospheric <strong>Research</strong> (NCAR/ISSE), Boulder, CO, USAIntroducti<strong>on</strong><strong>Permafrost</strong> as a thermal phenomen<strong>on</strong> is str<strong>on</strong>gly affected bythe changes in the atmospheric c<strong>on</strong>diti<strong>on</strong> (Haeberli & Benist<strong>on</strong>1998). However, for a significant time of the year the seas<strong>on</strong>alsnow cover decouples the ground from the atmosphereand thus c<strong>on</strong>siderably influences the ground thermal regime(Zhang 2005). As a c<strong>on</strong>sequence, permafrost c<strong>on</strong>diti<strong>on</strong>s areaffected by climatic change twofold: directly by changes inthe atmospheric c<strong>on</strong>diti<strong>on</strong>, and indirectly by the changes inthe durati<strong>on</strong> and dynamics of the seas<strong>on</strong>al snow cover. Thesensitivity of permafrost <strong>on</strong> these two interacting variables isnot clear in detail so far, and neither is how the atmosphereand thus also the seas<strong>on</strong>al snow cover will change.Snow accumulati<strong>on</strong> and snowmelt in mountain topographyhave n<strong>on</strong>uniform and high spatial variability mainly causedby the local topography, which interacts am<strong>on</strong>g others withatmospheric stability, precipitati<strong>on</strong>, moisture distributi<strong>on</strong>,radiati<strong>on</strong>, wind and avalanches. Measuring and modelingof snow parameters in complex mountain topography isthus a challenging task. Am<strong>on</strong>g the most promising tools tosimulate climate variables in mountain areas are Regi<strong>on</strong>alClimate Models (Leung & Qian 2003). Due to their higherspatial resoluti<strong>on</strong> compared to GCM, they better resolvethe atmospheric dynamics caused by the heterogeneoussurfaces such as mountain topographies. The benefits ofusing RCM simulati<strong>on</strong>s for permafrost modeling in complexhigh mountain topography have been dem<strong>on</strong>strated bySalzmann et al. 2007a,b. However, the performance of snowrepresentati<strong>on</strong> in RCMs related to permafrost has not beenvalidated in detail so far and most likely differs for differentregi<strong>on</strong>s and models.With large projects such as NARCCAP in North Americaor PRUDENCE and ENSEMBLES in Europe, there isnow increasing RCM output available for further use bythe impact community. However, the performance of thesemodel outputs must be proven for specific applicati<strong>on</strong>sbecause model performance is not simply transferablebetween variables and regi<strong>on</strong>s.This study aims at investigating the performance of RCMsto simulate seas<strong>on</strong>al snow cover in mountain envir<strong>on</strong>ments,with regard <strong>on</strong> further modeling of subsurface processes.Study Site and DataStudy siteWe focus <strong>on</strong> a relatively small area (about 500 km2)in the Colorado Rocky Mountains—the Upper ColoradoRiver Basin (UCRB). This basin is surrounded by someof the highest peaks of the Rocky Mountains. Because thestreamflow of this area is a major c<strong>on</strong>tributor to the ColoradoRiver’s annual run off, this area is relatively well equippedwith snow measurement stati<strong>on</strong>s (see next secti<strong>on</strong>).DataAll RCM simulati<strong>on</strong>s used in this study have beenperformed within the North American Regi<strong>on</strong>al ClimateChange Program NARCCAP (http://www.narccap.ucar.edu/). Here, we analyze <strong>on</strong>ly NCEP-Reanalyses driven runs,since they allow us to compare the RCM output directly withobservati<strong>on</strong>s. They are all run with a grid spacing of 50 kmand cover the UCRB by 10 grid boxes. The following RCMsimulati<strong>on</strong>s are used here:• ECPC (Experimental Climate Predicti<strong>on</strong> Center):Scripps Instituti<strong>on</strong> of Oceanography, La Jolla, CA, USA.• MRCC (Modèle Régi<strong>on</strong>al Canadien du Climat):Ouranos C<strong>on</strong>sortium, M<strong>on</strong>treal (Quebec), Canada.• RegCM3 (REGi<strong>on</strong>al Climate Model): UC Santa Cruz,ITCP, USA.The observati<strong>on</strong>s we use are point measurement fromSNOTEL stati<strong>on</strong>s. There are 45 stati<strong>on</strong>s located in theUCRB, many of them providing data since 1981.In additi<strong>on</strong> to the SNOTEL data, we use high-resoluti<strong>on</strong>reanalyses (NARR; North American Regi<strong>on</strong>al Reanalyses)for comparis<strong>on</strong> purposes. NARR has a grid spacing of 32km and covers UCRB by 26 grid boxes. NARR data aresupposed to be especially valuable for hydrological studies.First AnalysisWe have analyzed the total volume of accumulatedprecipitati<strong>on</strong> for the individual grid boxes and the average ofall grid boxes covering the UCRB. The RCM outputs werecompared to SNOTEL and NARR data. The total volumeof accumulated precipitati<strong>on</strong> and their temporal distributi<strong>on</strong>showed overall good agreement.We also compared the 2 m air temperature. The NARCCAPruns simulated generally higher air temperature than NARR,and particularly than SNOTEL.The results for the annual snow cycles for two time periodsare shown in the following Figures. Most obvious are thedeviati<strong>on</strong>s between NARCCAP (and NARR!) and SNOTEL.Some of these deviati<strong>on</strong>s can certainly be explained by gridelevati<strong>on</strong> differences between NARCCAP and SNOTEL,which is also apparent from air temperature, where263

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