Arctic bias improvements with longwave spectral surface emissivity modeling in CESM

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Arctic bias improvements with longwave spectral surface emissivity modeling in CESM Chaincy Kuo1, Daniel Feldman1, Xianglei Huang2, Mark Flanner2, Ping Yang3, Xiuhong Chen2 1Lawrence Berkeley National Laboratory, 2University of Michigan, 3Texas A&M CESM Polar Climate Working Group National Center for Atmospheric Research, Boulder, CO 01/12/2018

Outline/Motivation Motivation Modeling the polar climate and its response to global warming has underestimated high latitude warming. Surface emissivity=1.0 in atmospheric component of 24 CMIP5 models. Some models assume grey-body in surface components Inconsistent treatment of between atmospheric and surface components (eg. CESM) Objective Implement realistic spectral surface emissivity in CESM atmospheric component Secure physical consistency between atmospheric and surface components Test model realism with hindcast Are these modifications justified? Quantify surface emissivity feedback

Multi-model Arctic Cold Bias Reported in IPCC AR5 CMIP5 Multi Model Mean TS Bias Surface air temperature bias 1980-2005 against ERA-Interim (Dee et al, 2011) Flato et a, 2013, IPCC AR5

Multi-model Arctic Cold Bias Reported in IPCC AR5 CMIP5 Multi Model Mean TS Bias Surface air temperature bias 1980-2005 against ERA-Interim (Dee et al, 2011) CESM Flato et a, 2013, IPCC AR5

High latitude atmosphere more transparent to Infrared Clear-sky Tropical Atmosphere Clear-sky sub-arctic Winter Atmosphere Harries et al, 2008, Rev of Geophys Feldman et al,2014,pnas

Spectral Emissivity ε ν = P %(ν, T) P(ν, T) P % (ν, T) is the actual power emitted by a body P(ν, T) is the power emitted by a black-body ν is wavenumber T is equilibrium temperature of the body 1/9/18 6

Emissivity dependence on geometry n 1 =1.0 n 2 >n 1 ε(ν) = Q + (ν) from Mie theory Fresnel Equations R(ν)+T(ν)=1 e (ν)=1-r (ν) (ang. avg) Scattered field dependence on Size of particle vs. wavelength Bulk asymmetry of field scaled by multiple scattering

Far Infrared photons strongly attenuated by unfrozen and frozen water Water indices of refraction Ice indices of refraction Hale & Querry, 1973, Applied Optics Warren & Brandt, 2008

Water Emissivity Spectral Emissivity Emissivity implemented in CESM-e(n) Snow Emissivity Huang XL et al, 2016, JAS 70 µm 600 µm 800 µm Chen et al, 2014, GRL

CESM: Surface emissivity & radiative surface temperature in atmospheric component (CAM) not consistent with surface components Surface upwelling longwave flux Atmospheric model (CAM 5.3) F -./0 4 = εσt - -./0 ε < 1 F %78 = F -./0 4 F %78 = σt - %78 ε = 1 9 T -,%78 = F -./0 σ ε = 1 Consequences T -,%78 T -,-./0 Planck function shape shifted redistributed spectral fluxes Planetary boundary layer cooling rate errors up to 20% (Cheng et al., 2016, JQSRT )

CESM-e(n) Experimental Setup F %78 8;<=> C = π @ ε ν B ν, T -./0 dν D F -./0 8;<=> 4 = ε σ FG T -./0 where is the Planck-weighted emissivity ε = L M I J G J,K <J L M G J,K <J

CESM-e(n) control model is stable 1850CNTL (1850-2005) Global Mean Variable Global Mean Value 155-year Trend TS 287.12 ± 0.11 K +1.6 10 4 K/year TS (CESM-LME) 287.16 ± 0.43 K +1.2 10 4 K/year SST 285.71 ± 0.06 K +0.9 ± 1.1 10 4 K/year F atm - F land 1.3 ± 0.1 10 2 W/m 2 5.3 ± 19.1 10 6 W/m 2 /year Case Name Forcing Scenario Years 1850CNTL 1850 atmosphere, no forcing 1850-2005 HISTCO2 Start 1850 atmosphere, Historical CO 2 1850-2005 RCP2.6 RCP2.6 scenario 2005-2100 RCP8.5 RCP8.5 scenario 2005-2100

Model Validation with Observation Tε(ν) = 1.1 ± 1.2 K TLME = 7.2 ± 0.9 K DJF Tε(ν) = 0.0 ± 0.4 K TLME = 1.1 ± 0.4 K JJA C. Kuo et al, 2018, JGR-Atmospheres

CESM1 Wintertime Cold Bias Resolved by e(n) 1997-2005 C. Kuo et al, 2018, JGR-Atmospheres

Summertime surface temperatures 1997-2005 C. Kuo et al, 2018, JGR-Atmospheres

Emissivity feedback with analytic ε(ν, r, t) kernel J VZ[ OLR ε U r, t = @ B ν, r, T - r, t F ν, r, t θ ν, r, t dν J V J V Planck function Longwave downwelling flux Atmospheric transmission Analytic expression allows for online calculation during model integration Kernel evolves along with atmospheric state evolution Operation of e kernel on contemporaneous e perturbation is possible Surface emissivity feedback O(10^_ ) W/m 2 /K Positivity/negativity? Details in Kuo et al, 2018, JGR-Atm

Far-IR multiple scattering in clouds Radiative transfer calculations in flux and heating rate simulations MODIS Collection 6 cloud optics models CALIPSO, CloudSat, CERES & MODIS When neglecting LW scattering in clouds, Region Bias (W/m 2 ) Outgoing Longwave Global 2.6 over Surface Downward Global Greenland, Antarctic, Tibetan Plateau 1.2 under 3.6 under Biases are larger for ice clouds than water clouds LW scattering should not be neglected in GCM s. Kuo, C.-P., Yang, P., Huang, X., Feldman, D., Flanner, M., Kuo, C., & Mlawer, E. J. (2017). Impact of multiple scattering on longwave radiative transfer involving clouds. JAMES, 9. https://doi.org/10.1002/ 2017MS001117

Summary Realistic surface emissivity and consistent physical representation in both surface and atmospheric components of the CESM coupled-climate model. The representation of longwave surface emissivity in CESM impacts its cryospheric response to climate change by +6.1±1.9 K of wintertime Arctic surface temperature in a recent historical period. Longwave effects continue in polar wintertime Similar analyses to what is presented here for CESM will need to be performed in other climate models to establish if surface-emissivity physics are important for high-latitude bias reduction in the multi-model ensemble. Kuo, C., Feldman, D. R., Huang, X., Flanner, M., Yang, P., & Chen, X. (2018). Time-dependent cryospheric longwave surface emissivity feedback in the Community Earth System Model. JGR: Atmospheres, 123. https://doi.org/10.1002/2017jd027595

Acknowledgements Gautam Bisht, Bill Riley, Marika Holland, Elizabeth Hunke, William Large This material is based upon work supported by the U.S. DOE BER SciDAC, under contract number DE-AC02-05CH11231. National Energy Research Scientific Computing Center (NERSC), a DOE Office of Science User Facility supported by the Office of Science of the U.S. Department of Energy under that same award. Thanks for your attention! Questions and suggestions?