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Can climate models represent the precipitation associated with extratropical cyclones?

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Abstract

Extratropical cyclones produce the majority of precipitation in many regions of the extratropics. This study evaluates the ability of a climate model, HiGEM, to reproduce the precipitation associated with extratropical cyclones. The model is evaluated using the ERA-Interim reanalysis and GPCP dataset. The analysis employs a cyclone centred compositing technique, evaluates composites across a range of geographical areas and cyclone intensities and also investigates the ability of the model to reproduce the climatological distribution of cyclone associated precipitation across the Northern Hemisphere. Using this phenomena centred approach provides an ability to identify the processes which are responsible for climatological biases in the model. Composite precipitation intensities are found to be comparable when all cyclones across the Northern Hemisphere are included. When the cyclones are filtered by region or intensity, differences are found, in particular, HiGEM produces too much precipitation in its most intense cyclones relative to ERA-Interim and GPCP. Biases in the climatological distribution of cyclone associated precipitation are also found, with biases around the storm track regions associated with both the number of cyclones in HiGEM and also their average precipitation intensity. These results have implications for the reliability of future projections of extratropical precipitation from the model.

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References

  • Adler R, Huffman G, Chang A, Ferraro R, Xie P, Janowiak J, Rudolf B, Schneider U, Curtis S, Bolvin D et al (2003) The version 2 global precipitation climatology project (GPCP) monthly precipitation analysis (1979–present). J Hydrometeorol 4(6):1147–1167

    Article  Google Scholar 

  • Bengtsson L, Hodges K, Roeckner E (2006) Storm tracks and climate change. J Clim 19(15):3518–3543

    Article  Google Scholar 

  • Bengtsson L, Hodges K, Esch M, Keenlyside N, Kornblueh L, Luo J, Yamagata T (2007) How may tropical cyclones change in a warmer climate? Tellus A 59(4):539–561

    Article  Google Scholar 

  • Bengtsson L, Hodges K, Keenlyside N (2009) Will extratropical storms intensify in a warmer climate? J Clim 22(9):2276–2301

    Article  Google Scholar 

  • Bolvin DT, Adler RF, Huffman GJ, Nelkin EJ, Poutiainen JP (2009) Comparison of GPCP monthly and daily precipitation estimates with high-latitude gauge observations. J Appl Meteorol Climatol 48(9):1843–1857

    Article  Google Scholar 

  • Butler AH, Thompson DW, Heikes R (2010) The steady-state atmospheric circulation response to climate change-like thermal forcings in a simple general circulation model. J Clim 23(13):3474–3496

    Article  Google Scholar 

  • Catto J, Shaffrey L, Hodges K (2010) Can climate models capture the structure of extratropical cyclones? J Clim 23:1621–1635

    Article  Google Scholar 

  • Catto JL, Shaffrey LC, Hodges KI (2011) Northern hemisphere extratropical cyclones in a warming climate in the HiGEM high-resolution climate model. J Clim 24(20):5336–5352

    Article  Google Scholar 

  • Catto J, Jakob C, Berry G, Nicholls N (2012) Relating global precipitation to atmospheric fronts. Geophys Res Lett 39(10):L10,805

    Article  Google Scholar 

  • Catto J, Jakob C, Nicholls N (2013) A global evaluation of fronts and precipitation in the ACCESS model. Aust Meteorol Ocean Soc J 63:191–203

    Google Scholar 

  • Catto J, Pfahl S (2013) The importance of fronts for extreme precipitation. J Geophys Res Atmos 118(19):10–791

    Article  Google Scholar 

  • Crétat J, Vizy EK, Cook KH (2014) How well are daily intense rainfall events captured by current climate models over Africa? Clim Dyn 42(9–10):2691–2711

    Article  Google Scholar 

  • Dacre H, Hawcroft M, Stringer M, Hodges K (2012) IN BOX—an extratropical cyclone atlas—a tool for illustrating cyclone structure and evolution characteristics. Bull Am Meteorol Soc 93(10):1497

    Article  Google Scholar 

  • Dacre H, Clark P, Martinez-Alvarado O, Stringer M, Lavers D (2014) How do atmospheric rivers form? Bull Am Meteorol Soc 96:1243–1255

    Article  Google Scholar 

  • Dacre HF, Gray SL (2013) Quantifying the climatological relationship between extratropical cyclone intensity and atmospheric precursors. Geophys Res Lett 40(10):2322–2327

    Article  Google Scholar 

  • Davies T, Cullen MJP, Malcolm AJ, Mawson MH, Staniforth A, White AA, Wood N (2005) A new dynamical core for the Met Office’s global and regional modelling of the atmosphere. Q J R Meteorol Soc 131:1759–1782

    Article  Google Scholar 

  • de Leeuw J, Methven J, Blackburn M (2014) Evaluation of ERA-Interim reanalysis precipitation products using England and Wales observations. Q J R Meteorol Soc 141(688):798–806

    Article  Google Scholar 

  • Dee D, Uppala S, Simmons A, Berrisford P, Poli P, Kobayashi S, Andrae U, Balmaseda M, Balsamo G, Bauer P et al (2011) The ERA-Interim reanalysis: configuration and performance of the data assimilation system. Q J R Meteorol Soc 137(656):553–597

    Article  Google Scholar 

  • Della-Marta P, Luterbacher J, Von Weissenfluh H, Xoplaki E, Brunet M, Wanner H (2007) Summer heat waves over western Europe 1880–2003, their relationship to large-scale forcings and predictability. Clim Dyn 29(2–3):251–275

    Article  Google Scholar 

  • Ferranti L, Viterbo P (2006) The European summer of 2003: sensitivity to soil water initial conditions. J Clim 19(15):3659–3680

    Article  Google Scholar 

  • Field P, Wood R (2007) Precipitation and cloud structure in midlatitude cyclones. J Clim 20(2):233–254

    Article  Google Scholar 

  • Finnis J, Holland M, Serreze M, Cassano J (2007) Response of Northern Hemisphere extratropical cyclone activity and associated precipitation to climate change, as represented by the Community Climate System Model. J Geophys Res 112:G04S42

    Article  Google Scholar 

  • Froude LS, Bengtsson L, Hodges KI (2007a) The predictability of extratropical storm tracks and the sensitivity of their prediction to the observing system. Mon Weather Rev 135(2):315–333

    Article  Google Scholar 

  • Froude LS, Bengtsson L, Hodges KI (2007b) The prediction of extratropical storm tracks by the ECMWF and NCEP ensemble prediction systems. Mon Weather Rev 135(7):2545–2567

    Article  Google Scholar 

  • Harvey B, Shaffrey L, Woollings T (2014) Equator-to-pole temperature differences and the extra-tropical storm track responses of the CMIP5 climate models. Clim Dyn 43(5–6):1171–1182

    Article  Google Scholar 

  • Hawcroft M, Shaffrey L, Hodges K, Dacre H (2012) How much Northern Hemisphere precipitation is associated with extratropical cyclones? Geophys Res Lett 39(24):L24809

    Article  Google Scholar 

  • Held I (1993) Large-scale dynamics and global warming. Bull Am Meteorol Soc 74(2):228–242

    Article  Google Scholar 

  • Hodges K (1994) A general method for tracking analysis and its application to meteorological data. Mon Weather Rev 122:2573–2586

    Article  Google Scholar 

  • Hodges K (1995) Feature tracking on the unit sphere. Mon Weather Rev 123:3458–3465

    Article  Google Scholar 

  • Hodges K (1999) Adaptive constraints for feature tracking. Mon Weather Rev 127:1362–1373

    Article  Google Scholar 

  • Hodges K, Lee R, Bengtsson L (2011) A comparison of extratropical cyclones in recent reanalyses ERA-Interim, NASA MERRA, NCEP CFSR, and JRA-25. J Clim 24(18):4888–4906

    Article  Google Scholar 

  • Hoskins B, Hodges K (2002) New perspectives on the Northern Hemisphere winter storm tracks. J Atmos Sci 59(6):1041–1061

    Article  Google Scholar 

  • Hou A, Zhang S, da Silva A, Olson W, Kummerow C, Simpson J (2001) Improving global analysis and short-range forecast using rainfall and moisture observations derived from TRMM and SSM/I passive microwave sensors. Bull Am Meteorol Soc 82(4):659–680

    Article  Google Scholar 

  • Huffman GJ, Adler RF, Bolvin DT, Gu G (2009) Improving the global precipitation record: GPCP version 2.1. Geophys Res Lett 36(17):L17808

    Article  Google Scholar 

  • Huffman G, Adler R, Morrissey M, Bolvin D, Curtis S, Joyce R, McGavock B, Susskind J (2001) Global precipitation at one-degree daily resolution from multi-satellite observations. J Hydrometeorol 2:36–50

    Article  Google Scholar 

  • John VO, Allan RP, Soden BJ (2009) How robust are observed and simulated precipitation responses to tropical ocean warming? Geophys Res Lett 36(14):L14702

    Article  Google Scholar 

  • Johns TC, Durman CF, Banks HT, Roberts MJ, McLaren AJ, Ridley JK, Senior CA, Williams KD, Jones A, Rickard GH, Cusack S, Ingram WJ, Crucifix M, Sexton DMH, Joshi MM, Dong BW, Spencer H, Hill RSR, Gregory JM, Keen AB, Pardaens AK, Lowe JA, Bodas-Salcedo A, Stark S, Searl Y (2006) The new Hadley Centre Climate Model (HadGEM1): evaluation of coupled simulations. J Clim 19:1327–1353

    Article  Google Scholar 

  • Joos H, Wernli H (2011) Influence of microphysical processes on the potential vorticity development in a warm conveyor belt: a case-study with the limited-area model COSMO. Q J R Meteorol Soc 138(663):407–418

    Article  Google Scholar 

  • Joshi MK, Rai A, Pandey A (2013) Validation of TMPA and GPCP 1DD against the ground truth rain-gauge data for Indian region. Int J Climatol 33(12):2633–2648

    Google Scholar 

  • Kållberg P (2011) Forecast drift in ERA-Interim. European Centre for Medium Range Weather Forecasts, Reading

    Google Scholar 

  • Kaspi Y, Schneider T (2013) The role of stationary eddies in shaping midlatitude storm tracks. J Atmos Sci 70(8):2596–2613

    Article  Google Scholar 

  • Keeley S, Sutton R, Shaffrey L (2012) The impact of North Atlantic sea surface temperature errors on the simulation of North Atlantic European region climate. Q J R Meteorol Soc 138(668):1774–1783

    Article  Google Scholar 

  • Kendon EJ, Roberts NM, Senior CA, Roberts MJ (2012) Realism of rainfall in a very high-resolution regional climate model. J Clim 25(17):5791–5806

    Article  Google Scholar 

  • Kobold M, Sušelj K (2005) Precipitation forecasts and their uncertainty as input into hydrological models. Hydrol Earth Syst Sci 9(4):322–332

    Article  Google Scholar 

  • Kummerow C, Berg W, Thomas-Stahle J, Masunaga H (2006) Quantifying global uncertainties in a simple microwave rainfall algorithm. J Atmos Ocean Technol 23(1):23–37

    Article  Google Scholar 

  • Lim EP, Simmonds I (2009) Effect of tropospheric temperature change on the zonal mean circulation and SH winter extratropical cyclones. Clim Dyn 33(1):19–32

    Article  Google Scholar 

  • Martin GM, Ringer MA, Pope VD, Lones A, Dearden C, Hinton TJ (2006) The physical properties of the atmosphere in the New Hadley Centre Global Environmental Model (HadGEM1). Part I: model description and global climatology. J Clim 19:1274–1301

    Article  Google Scholar 

  • McLaren A, Banks H, Durman C, Gregory J, Johns T, Keen A, Ridley J, Roberts M, Lipscomb W, Connolley W et al (2006) Evaluation of the sea ice simulation in a new coupled atmosphere–ocean climate model (HadGEM1). J Geophys Res Oceans (1978–2012) 111(C12):C12014

    Article  Google Scholar 

  • McPhee J, Margulis SA (2005) Validation and error characterization of the GPCP-1DD precipitation product over the contiguous united states. J Hydrometeorol 6(4):441–459

    Article  Google Scholar 

  • Nicholson SE, Some B, McCollum J, Nelkin E, Klotter D, Berte Y, Diallo B, Gaye I, Kpabeba G, Ndiaye O et al (2003) Validation of TRMM and other rainfall estimates with a high-density gauge dataset for West Africa. Part I: validation of GPCC rainfall product and pre-TRMM satellite and blended products. J Appl Meteorol 42(10):1337–1354

    Article  Google Scholar 

  • Pearson K, Shaffrey L, Methven J, Hodges K (2014) Can a climate model reproduce extreme regional precipitation events over England and Wales? Q J R Meteorol Soc 141(689):1466–1472

    Article  Google Scholar 

  • Peixoto JP, Oort AH (1992) Physics of climate. American Institute of Physics, New York

    Google Scholar 

  • Pfahl S, Wernli H (2012) Quantifying the relevance of cyclones for precipitation extremes. J Clim 25:6770–6780

    Article  Google Scholar 

  • Pitt M (2008) The Pitt review—learning lessons from the 2007 floods. Final report available at http://archive.cabinetoffice.gov.uk/pittreview/thepittreview/final_report.html

  • Rossow WB, Mekonnen A, Pearl C, Goncalves W (2013) Tropical precipitation extremes. J Clim 26(4):1457–1466

    Article  Google Scholar 

  • Roy P, Gachon P, Laprise R (2014) Sensitivity of seasonal precipitation extremes to model configuration of the Canadian Regional Climate Model over eastern Canada using historical simulations. Clim Dyn 43:1–23

    Article  Google Scholar 

  • Rudeva I, Gulev SK (2011) Composite analysis of North Atlantic Extratropical Cyclones in NCEP-NCAR reanalysis data. Mon Weather Rev 139(5):1419–1446

    Article  Google Scholar 

  • Shaffrey L, Stevens I, Norton W, Roberts M, Vidale P, Harle J, Jrrar A, Stevens D, Woodage M, Demory M et al (2009) UK HiGEM: the new UK high-resolution global environment model-model description and basic evaluation. J Clim 22(8):1861–1896

    Article  Google Scholar 

  • Sibley A (2010) Analysis of extreme rainfall and flooding in Cumbria 18–20 November 2009. Weather 65(11):287–292

    Article  Google Scholar 

  • Simmons A, Uppala S, Dee D, Kobayashi S (2007) ERA-Interim: New ECMWF reanalysis products from 1989 onwards. ECMWF Newsl 110:25–35

    Google Scholar 

  • Simmons A, Willett K, Jones P, Thorne P, Dee D (2010) Low-frequency variations in surface atmospheric humidity, temperature, and precipitation: inferences from reanalyses and monthly gridded observational data sets. J Geophys Res 115(D1):D01110

    Article  Google Scholar 

  • Stephens G, L’Ecuyer T, Forbes R, Gettlemen A, Golaz J, Bodas-Salcedo A, Suzuki K, Gabriel P, Haynes J (2010) Dreary state of precipitation in global models. J Geophys Res 115(D24):D24211

    Article  Google Scholar 

  • Trenberth K (1999) Conceptual framework for changes of extremes of the hydrological cycle with climate change. Clim Change 42(1):327–339

    Article  Google Scholar 

  • Ulbrich U, Brücher T, Fink A, Leckebusch G, Krüger A, Pinto J (2003) The central European floods of August 2002: part 1—rainfall periods and flood development. Weather 58(10):371–377

    Article  Google Scholar 

  • Uppala SM, Kallberg PW, Simmons AJ, Andrae U, Da Costa Bechtold V, Fiorino M, Gibson JK, Haseler J, Hernandez A, Kelly GA, Li X, Onogi K, Saarinen S, Sokka N, Allan RP, Andersson E, Arpe K, Balmaseda MA, Beljaars ACM, Van De Berg L, Bidlot J, Bormann N, Caires S, Chevallier F, Dethof A, Dragosavac M, Fisher M, Fuentes M, Hagemann S, Holm E, Hoskins BJ, Isaksen L, Janssen PAEM, Jenne R, McNally AP, Mahfouf JF, Morcrette JJ, Rayner NA, Saunders RW, Simon P, Sterl A, Trenberth KE, Untch A, Vasiljevic D, Viterbo P, Woollen J (2005) The ERA-40 re-analysis. Q J R Meteorol Soc 131(612):2961–3012

    Article  Google Scholar 

  • Vautard R, Yiou P, D’Andrea F, De Noblet N, Viovy N, Cassou C, Polcher J, Ciais P, Kageyama M, Fan Y (2007) Summertime European heat and drought waves induced by wintertime Mediterranean rainfall deficit. Geophys Res Lett 34(7):L07711

    Article  Google Scholar 

  • Wang G, Dolman A, Alessandri A (2011) A summer climate regime over Europe modulated by the North Atlantic Oscillation. Hydrol Earth Syst Sci 15(1):57–64

    Article  Google Scholar 

  • Willison J, Robinson WA, Lackmann GM (2013) The importance of resolving mesoscale latent heating in the North Atlantic storm track. J Atmos Sci 70(7):2234–2250

    Article  Google Scholar 

  • Woollings T (2010) Dynamical influences on European climate: an uncertain future. Philos Trans R Soc A Math Phys Eng Sci 368(1924):3733–3756

    Article  Google Scholar 

  • Zappa G, Hawcroft MK, Shaffrey L, Black E, Brayshaw DJ (2014) Extratropical cyclones and the projected decline of winter Mediterranean precipitation in the CMIP5 models. Clim Dyn 1–12

  • Zappa G, Shaffrey L, Hodges K (2013) The ability of CMIP5 models to simulate North Atlantic extratropical cyclones. J Clim 26(15):5379–5396

    Article  Google Scholar 

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Acknowledgments

MKH is supported by the Natural Environment Research Council’s project ’Testing and Evaluating Model Predictions of European Storms’ (TEMPEST). The authors would like to thank three anonymous reviewers for their insightful and helpful comments in improving this manuscript.

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Correspondence to Matthew K. Hawcroft.

Appendix

Appendix

1.1 Decadal variability in HiGEM

The data used in this study is taken from a single decade of an 80 year integration of the model forced with late twentieth-century radiative forcings. Figure 8 shows the percentage of the total precipitation contributed by ETCs in each of these decades. It can be seen that though there are small variations in the locations of the highest precipitation accumulations, associated with variability in the storm track locations, the biases in the model climatology relative to the observations remain consistent across the decades.

Fig. 8
figure 8

Decadal variability in the percentage of the total precipitation contributed by ETCs (%) in HiGEM. Each panel represents a single decade from the model integration. The masked and stippled areas in the percentage plots are where the total precipitation for that decade is less than 1 mm day−1

1.2 Spin-up in ERAI

The ERAI reanalysis (Dee et al. 2011; Simmons et al. 2007) uses a 4D-Var data assimilation system to incorporate observations over a 12-h analysis period, with forecasts commencing at 00:00 and 12:00 UTC. Precipitation is not an analysed field and must therefore be taken from short-range forecast accumulations. During the first several hours of the forecast simulation, the precipitation field (and many other fluxes and tendencies) is affected by “spin-up” as the model adjusts from the initialised fields, such that the estimates at the start of the forecast period are less robust than at later lead times (see Kållberg 2011). Moving too far from the start of the forecast also leads to degradation of the precipitation estimates. Given these issues, a suitable window must be chosen for the accumulations to be used in this study. The primary constraints on the selection of an appropriate period is the desire to use the GPCP dataset in this work. The GPCP dataset provides daily total precipitation estimates from 00:00 to 24:00 UTC. Further, the ERAI forecasts are initialised every 12 h so any accumulations must be selected from continuous 12 or 24 h periods in the forecast.

Given the requirement to have daily accumulations centred on 12:00 UTC, it would be possible to use either (1) a continuous 24-h accumulation from a single forecast for each day or (2) two 12 h accumulations from successive forecasts. To assess this, evaluating any spin-up/adjustment (as the model is initialised) or model drift (as the forecast increases in length and the model is no longer closely constrained by observations) is required. The adjustment/drift effect can be more readily demonstrated using shorter accumulation periods. In this analysis, given the 12 h or greater accumulation periods required for comparison to GPCP, 0–12, 12–24 or 24–36 h are likely candidate lead times for analysis. Longer forecasts are likely to degrade the quality of the estimates as the forecast model relaxes into a state which is less constrained by observations.

Fig. 9
figure 9

The effect of spin-up on composite precipitation. The composites are taken from the 200 Atlantic storms shown in Fig. 3. Accumulations are shown for leadtimes 0–3, 12–15, 24–27 and 36–39 h. All figures are expressed in mm day−1. Accumulations are from each 3-h window

In Fig. 9 composite precipitation taken from the 200 Atlantic storms in Fig. 3 is shown. The results for other regions are not materially different. The composites show accumulated precipitation at variable lead times from 0–3, 12–15, 24–27 and 36–39 h where the accumulation is from each 3 h window.

The storm position is centred on the analysed location at the time the precipitation fields are extracted, since to sample the forecast location would be laborious and add little value to the analysis. As such, there is some spatial offset in the location of the maxima in the longer lead times. This is because ETCs tend to propagate too slowly in the forecast model, giving the impression that the precipitation maxima move closer to the storm centre as lead time increases (see Froude et al. 2007a, b). It is clear that the 0–3 h accumulation has lower accumulated precipitation than the longer lead times. It is also apparent that the intensity of the precipitation maxima steadily degrades with lead times beyond 12 h.

Fig. 10
figure 10

Composite precipitation intensities. The left panels show a composite at 12-h lead time, with the locations of the cross-sections (AF) in the corresponding right hand panels overlaid. Lead times in the right hand panels are 0–3 (dotted line), 12–15 (solid), 24–27 (long dashes) and 36–29 h (short dashes). All figures in mm day−1. Accumulations are from each 3-h window

Fig. 11
figure 11

ERAI precipitation accumulations used for the daily periods in this analysis. Precipitation is extracted from 12 to 24 h in two forecasts which are initialised at 12 UTC on the previous day (FC1) and 00:00 UTC on the day of interest (FC2). The two accumulations are then combined

This is further evident in the precipitation cross sections shown in Fig. 10. Given the location of the precipitation maximum changes due to the storm centring, the cross-sections are shown for a number of locations, though the differences between the lead times remain clear. As a result of the adjustment effect in the 0–3 h period and the steady decay observed in the precipitation maxima and structure in the 24 and 36 h lead times, the forecast periods utilised in this study for comparison to GPCP are accumulations from 12 to 24 h from forecasts starting at 12:00 UTC the previous day and 00:00 UTC on the day of interest, as shown in Fig. 11. The two forecast accumulations are combined to provide daily precipitation estimates for comparison to GPCP. The 12- to 24-h forecast estimates have previously been found to compare well to gridded gauge data (Simmons et al. 2010), with longer lead times degrading the quality of the estimates (Kobold and Sušelj 2005). The results of de Leeuw et al. (2014) also indicate that this lead time offers the best estimates available from ERAI given the daily accumulations required in this study.

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Hawcroft, M.K., Shaffrey, L.C., Hodges, K.I. et al. Can climate models represent the precipitation associated with extratropical cyclones?. Clim Dyn 47, 679–695 (2016). https://doi.org/10.1007/s00382-015-2863-z

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