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molod | 
1.1 | 
\section{Fizhi: High-end Atmospheric Physics} | 
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molod | 
1.3 | 
\input{texinputs/epsf.tex} | 
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molod | 
1.1 | 
 | 
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\subsection{Introduction} | 
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The fizhi (high-end atmospheric physics) package includes a collection of state-of-the-art | 
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physical parameterizations for atmospheric radiation, cumulus convection, atmospheric | 
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boundary layer turbulence, and land surface processes. | 
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% ************************************************************************* | 
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% ************************************************************************* | 
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  | 
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\subsection{Equations} | 
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\subsubsection{Moist Convective Processes} | 
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 | 
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molod | 
1.2 | 
\subsubsection{Sub-grid and Large-scale Convection} | 
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molod | 
1.1 | 
\label{sec:fizhi:mc} | 
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 | 
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Sub-grid scale cumulus convection is parameterized using the Relaxed Arakawa | 
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Schubert (RAS) scheme of Moorthi and Suarez (1992), which is a linearized Arakawa Schubert | 
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type scheme.  RAS predicts the mass flux from an ensemble of clouds.  Each subensemble is identified | 
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by its entrainment rate and level of neutral bouyancy which are determined by the grid-scale properties. | 
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 | 
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The thermodynamic variables that are used in RAS to describe the grid scale vertical profile are | 
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the dry static energy, $s=c_pT +gz$, and the moist static energy, $h=c_p T + gz + Lq$.  | 
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The conceptual model behind RAS depicts each subensemble as a rising plume cloud, entraining  | 
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mass from the environment during ascent, and detraining all cloud air at the level of neutral  | 
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buoyancy. RAS assumes that the normalized cloud mass flux, $\eta$, normalized by the cloud base  | 
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mass flux, is a linear function of height, expressed as: | 
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\[ | 
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\pp{\eta(z)}{z} = \lambda \hspace{0.4cm}or\hspace{0.4cm} \pp{\eta(P^{\kappa})}{P^{\kappa}} =  | 
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-{c_p \over {g}}\theta\lambda | 
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\] | 
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where we have used the hydrostatic equation written in the form: | 
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\[ | 
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\pp{z}{P^{\kappa}} = -{c_p \over {g}}\theta | 
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\] | 
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 | 
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The entrainment parameter, $\lambda$, characterizes a particular subensemble based on its | 
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detrainment level, and is obtained by assuming that the level of detrainment is the level of neutral | 
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buoyancy, ie., the level at which the moist static energy of the cloud, $h_c$, is equal  | 
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to the saturation moist static energy of the environment, $h^*$.  Following Moorthi and Suarez (1992), | 
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$\lambda$ may be written as | 
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\[ | 
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\lambda = { {h_B - h^*_D} \over { {c_p \over g} {\int_{P_D}^{P_B}\theta(h^*_D-h)dP^{\kappa}}} } , | 
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\] | 
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 | 
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where the subscript $B$ refers to cloud base, and the subscript $D$ refers to the detrainment level. | 
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 | 
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The convective instability is measured in terms of the cloud work function $A$, defined as the | 
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rate of change of cumulus kinetic energy. The cloud work function is  | 
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related to the buoyancy, or the difference | 
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between the moist static energy in the cloud and in the environment: | 
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\[ | 
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A = \int_{P_D}^{P_B} { {\eta \over {1 + \gamma} }  | 
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\left[ {{h_c-h^*} \over {P^{\kappa}}} \right] dP^{\kappa}} | 
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\] | 
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 | 
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where $\gamma$ is ${L \over {c_p}}\pp{q^*}{T}$ obtained from the Claussius Clapeyron equation, | 
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and the subscript $c$ refers to the value inside the cloud. | 
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 | 
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 | 
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To determine the cloud base mass flux, the rate of change of $A$ in time {\em due to dissipation by  | 
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the clouds} is assumed to approximately balance the rate of change of $A$ {\em due to the generation  | 
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by the large scale}. This is the quasi-equilibrium assumption, and results in an expression for $m_B$: | 
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\[ | 
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m_B = {{- \left.{dA \over dt} \right|_{ls}} \over K} | 
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\] | 
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 | 
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where $K$ is the cloud kernel, defined as the rate of change of the cloud work function per | 
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unit cloud base mass flux, and is currently obtained by analytically differentiating the  | 
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expression for $A$ in time. | 
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The rate of change of $A$ due to the generation by the large scale can be written as the | 
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difference between the current $A(t+\Delta t)$ and its equillibrated value after the previous  | 
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convective time step  | 
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$A(t)$, divided by the time step. $A(t)$ is approximated as some critical $A_{crit}$, | 
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computed by Lord (1982) from $in situ$ observations. | 
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The predicted convective mass fluxes are used to solve grid-scale temperature | 
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and moisture budget equations to determine the impact of convection on the large scale fields of | 
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temperature (through latent heating and compensating subsidence) and moisture (through | 
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precipitation and detrainment): | 
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\[ | 
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\left.{\pp{\theta}{t}}\right|_{c} = \alpha { m_B \over {c_p P^{\kappa}}} \eta \pp{s}{p} | 
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\] | 
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and | 
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\[ | 
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\left.{\pp{q}{t}}\right|_{c} = \alpha { m_B \over {L}} \eta (\pp{h}{p}-\pp{s}{p}) | 
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\] | 
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where $\theta = {T \over P^{\kappa}}$, $P = (p/p_0)$, and $\alpha$ is the relaxation parameter. | 
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As an approximation to a full interaction between the different allowable subensembles, | 
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many clouds are simulated frequently, each modifying the large scale environment some fraction | 
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$\alpha$ of the total adjustment. The parameterization thereby ``relaxes'' the large scale environment | 
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towards equillibrium.   | 
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 | 
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In addition to the RAS cumulus convection scheme, the fizhi package employs a | 
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Kessler-type scheme for the re-evaporation of falling rain (Sud and Molod, 1988), which | 
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correspondingly adjusts the temperature assuming $h$ is conserved. RAS in its current | 
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formulation assumes that all cloud water is deposited into the detrainment level as rain. | 
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All of the rain is available for re-evaporation, which begins in the level below detrainment.  | 
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The scheme accounts for some microphysics such as | 
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the rainfall intensity, the drop size distribution, as well as the temperature,  | 
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pressure and relative humidity of the surrounding air.  The fraction of the moisture deficit  | 
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in any model layer into which the rain may re-evaporate is controlled by a free parameter, | 
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which allows for a relatively efficient re-evaporation of liquid precipitate and larger rainout | 
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for frozen precipitation. | 
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Due to the increased vertical resolution near the surface, the lowest model  | 
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layers are averaged to provide a 50 mb thick sub-cloud layer for RAS.  Each time RAS is | 
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invoked (every ten simulated minutes),  | 
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a number of randomly chosen subensembles are checked for the possibility  | 
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of convection, from just above cloud base to 10 mb.   | 
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 | 
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Supersaturation or large-scale precipitation is initiated in the fizhi package whenever  | 
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the relative humidity in any grid-box exceeds a critical value, currently 100 \%. | 
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The large-scale precipitation re-evaporates during descent to partially saturate  | 
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lower layers in a process identical to the re-evaporation of convective rain.  | 
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 | 
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  | 
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molod | 
1.2 | 
\subsubsection{Cloud Formation} | 
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molod | 
1.1 | 
\label{sec:fizhi:clouds} | 
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 | 
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Convective and large-scale cloud fractons which are used for cloud-radiative interactions are determined | 
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diagnostically as part of the cumulus and large-scale parameterizations. | 
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Convective cloud fractions produced by RAS are proportional to the  | 
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detrained liquid water amount given by | 
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\[ | 
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F_{RAS} = \min\left[ {l_{RAS}\over l_c}, 1.0 \right] | 
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\] | 
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 | 
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where $l_c$ is an assigned critical value equal to $1.25$ g/kg. | 
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A memory is associated with convective clouds defined by: | 
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\[ | 
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F_{RAS}^n = \min\left[ F_{RAS} + (1-{\Delta t_{RAS}\over\tau})F_{RAS}^{n-1}, 1.0 \right] | 
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\] | 
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 | 
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where $F_{RAS}$ is the instantanious cloud fraction and $F_{RAS}^{n-1}$ is the cloud fraction | 
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from the previous RAS timestep.  The memory coefficient is computed using a RAS cloud timescale, | 
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$\tau$, equal to 1 hour.  RAS cloud fractions are cleared when they fall below 5 \%. | 
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Large-scale cloudiness is defined, following Slingo and Ritter (1985), as a function of relative | 
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humidity: | 
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 | 
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\[ | 
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F_{LS} = \min\left[ { \left( {RH-RH_c \over 1-RH_c} \right) }^2, 1.0 \right] | 
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\] | 
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 | 
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where | 
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 | 
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\bqa | 
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RH_c & = & 1-s(1-s)(2-\sqrt{3}+2\sqrt{3} \, s)r \nonumber \\ | 
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   s & = & p/p_{surf} \nonumber \\ | 
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   r & = & \left( {1.0-RH_{min} \over \alpha} \right) \nonumber \\ | 
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RH_{min} & = & 0.75 \nonumber \\ | 
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\alpha & = & 0.573285 \nonumber  . | 
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\eqa | 
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 | 
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These cloud fractions are suppressed, however, in regions where the convective | 
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sub-cloud layer is conditionally unstable.  The functional form of $RH_c$ is shown in | 
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Figure (\ref{fig:fizhi:rhcrit}). | 
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 | 
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\begin{figure*}[htbp] | 
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  \vspace{0.4in} | 
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  \centerline{  \epsfysize=4.0in  \epsfbox{rhcrit.ps}} | 
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  \vspace{0.4in} | 
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  \caption  [Critical Relative Humidity for Clouds.]  | 
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            {Critical Relative Humidity for Clouds.}  | 
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  \label{fig:fizhi:rhcrit} | 
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\end{figure*} | 
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 | 
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The total cloud fraction in a grid box is determined by the larger of the two cloud fractions: | 
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 | 
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\[ | 
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F_{CLD} = \max \left[ F_{RAS},F_{LS} \right] . | 
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\] | 
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 | 
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Finally, cloud fractions are time-averaged between calls to the radiation packages. | 
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\subsubsection{Radiation} | 
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The parameterization of radiative heating in the fizhi package includes effects  | 
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from both shortwave and longwave processes. | 
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Radiative fluxes are calculated at each | 
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model edge-level in both up and down directions. | 
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The heating rates/cooling rates are then obtained  | 
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from the vertical divergence of the net radiative fluxes. | 
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The net flux is | 
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\[ | 
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F = F^\uparrow - F^\downarrow | 
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\] | 
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where $F$ is the net flux, $F^\uparrow$ is the upward flux and $F^\downarrow$ is | 
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the downward flux. | 
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The heating rate due to the divergence of the radiative flux is given by | 
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\[ | 
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\pp{\rho c_p T}{t} = - \pp{F}{z} | 
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\] | 
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or | 
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\[ | 
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\pp{T}{t} = \frac{g}{c_p \pi} \pp{F}{\sigma} | 
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\] | 
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where $g$ is the accelation due to gravity | 
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and $c_p$ is the heat capacity of air at constant pressure. | 
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   | 
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The time tendency for Longwave | 
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Radiation is updated every 3 hours.  The time tendency for Shortwave Radiation is updated once | 
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every three hours assuming a normalized incident solar radiation, and subsequently modified at | 
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every model time step by the true incident radiation.   | 
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The solar constant value used in the package is equal to 1365 $W/m^2$ | 
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and a $CO_2$ mixing ratio of 330 ppm.  | 
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For the ozone mixing ratio, monthly mean zonally averaged  | 
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climatological values specified as a function | 
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of latitude and height (Rosenfield, et al., 1987) are linearly interpolated to the current time. | 
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 | 
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molod | 
1.2 | 
\subsubsection{Shortwave Radiation} | 
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molod | 
1.1 | 
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The shortwave radiation package used in the package computes solar radiative  | 
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heating due to the absoption by water vapor, ozone, carbon dioxide, oxygen, | 
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clouds, and aerosols and due to the | 
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scattering by clouds, aerosols, and gases. | 
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The shortwave radiative processes are described by  | 
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Chou (1990,1992). This shortwave package | 
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uses the Delta-Eddington approximation to compute the | 
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bulk scattering properties of a single layer following King and Harshvardhan (JAS, 1986). | 
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The transmittance and reflectance of diffuse radiation | 
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follow the procedures of Sagan and Pollock (JGR, 1967) and Lacis and Hansen (JAS, 1974). | 
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 | 
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Highly accurate heating rate calculations are obtained through the use | 
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of an optimal grouping strategy of spectral bands.  By grouping the UV and visible regions | 
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as indicated in Table \ref{tab:fizhi:solar2}, the Rayleigh scattering and the ozone absorption of solar radiation | 
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can be accurately computed in the ultraviolet region and the photosynthetically | 
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active radiation (PAR) region. | 
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The computation of solar flux in the infrared region is performed with a broadband | 
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parameterization using the spectrum regions shown in Table \ref{tab:fizhi:solar1}. | 
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The solar radiation algorithm used in the fizhi package can be applied not only for climate studies but | 
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also for studies on the photolysis in the upper atmosphere and the photosynthesis in the biosphere. | 
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\begin{table}[htb] | 
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\begin{center} | 
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{\bf UV and Visible Spectral Regions} \\ | 
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\vspace{0.1in} | 
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\begin{tabular}{|c|c|c|}  | 
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\hline | 
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Region & Band & Wavelength (micron) \\ \hline | 
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\hline | 
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UV-C   &  1.  &  .175 - .225  \\ | 
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       &  2.  &  .225 - .245  \\ | 
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       &      &  .260 - .280  \\ | 
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       &  3.  &  .245 - .260  \\ \hline | 
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UV-B   &  4.  &  .280 - .295  \\ | 
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       &  5.  &  .295 - .310  \\ | 
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       &  6.  &  .310 - .320  \\ \hline | 
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UV-A   &  7.  &  .320 - .400  \\ \hline | 
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PAR    &  8.  &  .400 - .700  \\ | 
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\hline | 
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\end{tabular} | 
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\end{center} | 
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\caption{UV and Visible Spectral Regions used in shortwave radiation package.} | 
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\label{tab:fizhi:solar2} | 
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\end{table} | 
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\begin{table}[htb] | 
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\begin{center} | 
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{\bf Infrared Spectral Regions} \\ | 
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\vspace{0.1in} | 
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\begin{tabular}{|c|c|c|}  | 
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\hline | 
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Band & Wavenumber(cm$^{-1}$) & Wavelength (micron) \\ \hline | 
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\hline | 
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1  &    1000-4400    &    2.27-10.0 \\ | 
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2  &    4400-8200    &    1.22-2.27 \\ | 
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3  &    8200-14300   &    0.70-1.22 \\ | 
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\hline | 
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\end{tabular} | 
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\end{center} | 
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\caption{Infrared Spectral Regions used in shortwave radiation package.} | 
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\label{tab:fizhi:solar1} | 
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\end{table} | 
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Within the shortwave radiation package,  | 
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both ice and liquid cloud particles are allowed to co-exist in any of the model layers.  | 
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Two sets of cloud parameters are used, one for ice paticles and the other for liquid particles. | 
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Cloud parameters are defined as the cloud optical thickness and the effective cloud particle size. | 
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In the fizhi package, the effective radius for water droplets is given as 10 microns, | 
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while 65 microns is used for ice particles.  The absorption due to aerosols is currently | 
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set to zero. | 
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 | 
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To simplify calculations in a cloudy atmosphere, clouds are | 
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  | 
  | 
grouped into low ($p>700$ mb), middle (700 mb $\ge p > 400$ mb), and high ($p < 400$ mb) cloud regions.  | 
| 298 | 
  | 
  | 
Within each of the three regions, clouds are assumed maximally | 
| 299 | 
  | 
  | 
overlapped, and the cloud cover of the group is the maximum | 
| 300 | 
  | 
  | 
cloud cover of all the layers in the group.  The optical thickness | 
| 301 | 
  | 
  | 
of a given layer is then scaled for both the direct (as a function of the | 
| 302 | 
  | 
  | 
solar zenith angle) and diffuse beam radiation  | 
| 303 | 
  | 
  | 
so that the grouped layer reflectance is the same as the original reflectance. | 
| 304 | 
  | 
  | 
The solar flux is computed for each of the eight cloud realizations possible  | 
| 305 | 
  | 
  | 
(see Figure \ref{fig:fizhi:cloud}) within this | 
| 306 | 
  | 
  | 
low/middle/high classification, and appropriately averaged to produce the net solar flux. | 
| 307 | 
  | 
  | 
 | 
| 308 | 
  | 
  | 
\begin{figure*}[htbp] | 
| 309 | 
  | 
  | 
  \vspace{0.4in} | 
| 310 | 
  | 
  | 
  \centerline{  \epsfysize=4.0in  %\epsfbox{rhcrit.ps} | 
| 311 | 
  | 
  | 
             } | 
| 312 | 
  | 
  | 
  \vspace{0.4in} | 
| 313 | 
  | 
  | 
  \caption  {Low-Middle-High Cloud Configurations}  | 
| 314 | 
  | 
  | 
  \label{fig:fizhi:cloud} | 
| 315 | 
  | 
  | 
\end{figure*} | 
| 316 | 
  | 
  | 
 | 
| 317 | 
  | 
  | 
 | 
| 318 | 
molod | 
1.2 | 
\subsubsection{Longwave Radiation} | 
| 319 | 
molod | 
1.1 | 
 | 
| 320 | 
  | 
  | 
The longwave radiation package used in the fizhi package is thoroughly described by Chou and Suarez (1994). | 
| 321 | 
  | 
  | 
As described in that document, IR fluxes are computed due to absorption by water vapor, carbon | 
| 322 | 
  | 
  | 
dioxide, and ozone.  The spectral bands together with their absorbers and parameterization methods, | 
| 323 | 
  | 
  | 
configured for the fizhi package, are shown in Table \ref{tab:fizhi:longwave}. | 
| 324 | 
  | 
  | 
 | 
| 325 | 
  | 
  | 
 | 
| 326 | 
  | 
  | 
\begin{table}[htb] | 
| 327 | 
  | 
  | 
\begin{center} | 
| 328 | 
  | 
  | 
{\bf IR Spectral Bands} \\ | 
| 329 | 
  | 
  | 
\vspace{0.1in} | 
| 330 | 
  | 
  | 
\begin{tabular}{|c|c|l|c| }  | 
| 331 | 
  | 
  | 
\hline | 
| 332 | 
  | 
  | 
Band & Spectral Range (cm$^{-1}$) & Absorber & Method \\ \hline | 
| 333 | 
  | 
  | 
\hline | 
| 334 | 
  | 
  | 
1   & 0-340      & H$_2$O line      & T \\ \hline | 
| 335 | 
  | 
  | 
2   & 340-540    & H$_2$O line      & T \\ \hline | 
| 336 | 
  | 
  | 
3a  & 540-620    & H$_2$O line      & K \\  | 
| 337 | 
  | 
  | 
3b  & 620-720    & H$_2$O continuum & S \\  | 
| 338 | 
  | 
  | 
3b  & 720-800    & CO$_2$           & T \\ \hline  | 
| 339 | 
  | 
  | 
4   & 800-980    & H$_2$O line      & K \\  | 
| 340 | 
  | 
  | 
    &            & H$_2$O continuum & S \\ \hline  | 
| 341 | 
  | 
  | 
    &            & H$_2$O line      & K \\  | 
| 342 | 
  | 
  | 
5   & 980-1100   & H$_2$O continuum & S \\  | 
| 343 | 
  | 
  | 
    &            & O$_3$            & T \\ \hline  | 
| 344 | 
  | 
  | 
6   & 1100-1380  & H$_2$O line      & K \\  | 
| 345 | 
  | 
  | 
    &            & H$_2$O continuum & S \\ \hline | 
| 346 | 
  | 
  | 
7   & 1380-1900  & H$_2$O line      & T \\ \hline  | 
| 347 | 
  | 
  | 
8   & 1900-3000  & H$_2$O line      & K \\ \hline  | 
| 348 | 
  | 
  | 
\hline | 
| 349 | 
  | 
  | 
\multicolumn{4}{|l|}{ \quad K: {\em k}-distribution method with linear pressure scaling } \\ | 
| 350 | 
  | 
  | 
\multicolumn{4}{|l|}{ \quad T: Table look-up with temperature and pressure scaling } \\ | 
| 351 | 
  | 
  | 
\multicolumn{4}{|l|}{ \quad S: One-parameter temperature scaling } \\ | 
| 352 | 
  | 
  | 
\hline | 
| 353 | 
  | 
  | 
\end{tabular} | 
| 354 | 
  | 
  | 
\end{center} | 
| 355 | 
  | 
  | 
\vspace{0.1in} | 
| 356 | 
  | 
  | 
\caption{IR Spectral Bands, Absorbers, and Parameterization Method (from Chou and Suarez, 1994)} | 
| 357 | 
  | 
  | 
\label{tab:fizhi:longwave} | 
| 358 | 
  | 
  | 
\end{table} | 
| 359 | 
  | 
  | 
 | 
| 360 | 
  | 
  | 
 | 
| 361 | 
  | 
  | 
The longwave radiation package accurately computes cooling rates for the middle and  | 
| 362 | 
  | 
  | 
lower atmosphere from 0.01 mb to the surface.  Errors are $<$ 0.4 C day$^{-1}$ in cooling | 
| 363 | 
  | 
  | 
rates and $<$ 1\% in fluxes.  From Chou and Suarez, it is estimated that the total effect of  | 
| 364 | 
  | 
  | 
neglecting all minor absorption bands and the effects of minor infrared absorbers such as | 
| 365 | 
  | 
  | 
nitrous oxide (N$_2$O), methane (CH$_4$), and the chlorofluorocarbons (CFCs), is an underestimate | 
| 366 | 
  | 
  | 
of $\approx$ 5 W/m$^2$ in the downward flux at the surface and an overestimate of $\approx$ 3 W/m$^2$ | 
| 367 | 
  | 
  | 
in the upward flux at the top of the atmosphere. | 
| 368 | 
  | 
  | 
 | 
| 369 | 
  | 
  | 
Similar to the procedure used in the shortwave radiation package, clouds are grouped into | 
| 370 | 
  | 
  | 
three regions catagorized as low/middle/high. | 
| 371 | 
  | 
  | 
The net clear line-of-site probability $(P)$ between any two levels, $p_1$ and $p_2 \quad (p_2 > p_1)$,   | 
| 372 | 
  | 
  | 
assuming randomly overlapped cloud groups, is simply the product of the probabilities within each group: | 
| 373 | 
  | 
  | 
 | 
| 374 | 
  | 
  | 
\[ P_{net} = P_{low} \times P_{mid} \times P_{hi} . \] | 
| 375 | 
  | 
  | 
 | 
| 376 | 
  | 
  | 
Since all clouds within a group are assumed maximally overlapped, the clear line-of-site probability within | 
| 377 | 
  | 
  | 
a group is given by: | 
| 378 | 
  | 
  | 
 | 
| 379 | 
  | 
  | 
\[ P_{group} = 1 - F_{max} , \] | 
| 380 | 
  | 
  | 
 | 
| 381 | 
  | 
  | 
where $F_{max}$ is the maximum cloud fraction encountered between $p_1$ and $p_2$ within that group. | 
| 382 | 
  | 
  | 
For groups and/or levels outside the range of $p_1$ and $p_2$, a clear line-of-site probability equal to 1 is | 
| 383 | 
  | 
  | 
assigned. | 
| 384 | 
  | 
  | 
 | 
| 385 | 
  | 
  | 
 | 
| 386 | 
molod | 
1.2 | 
\subsubsection{Cloud-Radiation Interaction} | 
| 387 | 
molod | 
1.1 | 
\label{sec:fizhi:radcloud} | 
| 388 | 
  | 
  | 
 | 
| 389 | 
  | 
  | 
The cloud fractions and diagnosed cloud liquid water produced by moist processes  | 
| 390 | 
  | 
  | 
within the fizhi package are used in the radiation packages to produce cloud-radiative forcing. | 
| 391 | 
  | 
  | 
The cloud optical thickness associated with large-scale cloudiness is made | 
| 392 | 
  | 
  | 
proportional to the diagnosed large-scale liquid water, $\ell$, detrained due to super-saturation. | 
| 393 | 
  | 
  | 
Two values are used corresponding to cloud ice particles and water droplets. | 
| 394 | 
  | 
  | 
The range of optical thickness for these clouds is given as | 
| 395 | 
  | 
  | 
 | 
| 396 | 
  | 
  | 
\[ 0.0002 \le \tau_{ice} (mb^{-1}) \le 0.002  \quad\mbox{for}\quad  0 \le \ell \le 2 \quad\mbox{mg/kg} , \] | 
| 397 | 
  | 
  | 
\[ 0.02 \le \tau_{h_2o} (mb^{-1}) \le 0.2  \quad\mbox{for}\quad  0 \le \ell \le 10 \quad\mbox{mg/kg} . \] | 
| 398 | 
  | 
  | 
 | 
| 399 | 
  | 
  | 
The partitioning, $\alpha$,  between ice particles and water droplets is achieved through a linear scaling | 
| 400 | 
  | 
  | 
in temperature: | 
| 401 | 
  | 
  | 
 | 
| 402 | 
  | 
  | 
\[ 0 \le \alpha \le 1 \quad\mbox{for}\quad  233.15 \le T \le 253.15 . \] | 
| 403 | 
  | 
  | 
 | 
| 404 | 
  | 
  | 
The resulting optical depth associated with large-scale cloudiness is given as | 
| 405 | 
  | 
  | 
 | 
| 406 | 
  | 
  | 
\[ \tau_{LS} = \alpha \tau_{h_2o} + (1-\alpha)\tau_{ice} . \] | 
| 407 | 
  | 
  | 
 | 
| 408 | 
  | 
  | 
The optical thickness associated with sub-grid scale convective clouds produced by RAS is given as | 
| 409 | 
  | 
  | 
 | 
| 410 | 
  | 
  | 
\[ \tau_{RAS} = 0.16 \quad mb^{-1} . \] | 
| 411 | 
  | 
  | 
 | 
| 412 | 
  | 
  | 
The total optical depth in a given model layer is computed as a weighted average between | 
| 413 | 
  | 
  | 
the large-scale and sub-grid scale optical depths, normalized by the total cloud fraction in the | 
| 414 | 
  | 
  | 
layer: | 
| 415 | 
  | 
  | 
 | 
| 416 | 
  | 
  | 
\[ \tau = \left( {F_{RAS} \,\,\, \tau_{RAS} + F_{LS} \,\,\, \tau_{LS} \over F_{RAS}+F_{LS} } \right) \Delta p, \] | 
| 417 | 
  | 
  | 
 | 
| 418 | 
  | 
  | 
where $F_{RAS}$ and $F_{LS}$ are the time-averaged cloud fractions associated with RAS and large-scale | 
| 419 | 
  | 
  | 
processes described in Section \ref{sec:fizhi:clouds}. | 
| 420 | 
  | 
  | 
The optical thickness for the longwave radiative feedback is assumed to be 75 $\%$ of these values. | 
| 421 | 
  | 
  | 
 | 
| 422 | 
  | 
  | 
The entire Moist Convective Processes Module is called with a frequency of 10 minutes.  | 
| 423 | 
  | 
  | 
The cloud fraction values are time-averaged over the period between Radiation calls (every 3 | 
| 424 | 
  | 
  | 
hours).  Therefore, in a time-averaged sense, both convective and large-scale  | 
| 425 | 
  | 
  | 
cloudiness can exist in a given grid-box.   | 
| 426 | 
  | 
  | 
 | 
| 427 | 
  | 
  | 
\subsubsection{Turbulence} | 
| 428 | 
  | 
  | 
Turbulence is parameterized in the fizhi package to account for its contribution to the | 
| 429 | 
  | 
  | 
vertical exchange of heat, moisture, and momentum.   | 
| 430 | 
  | 
  | 
The turbulence scheme is invoked every 30 minutes, and employs a backward-implicit iterative  | 
| 431 | 
  | 
  | 
time scheme with an internal time step of 5 minutes. | 
| 432 | 
  | 
  | 
The tendencies of atmospheric state variables due to turbulent diffusion are calculated using | 
| 433 | 
  | 
  | 
the diffusion equations: | 
| 434 | 
  | 
  | 
 | 
| 435 | 
  | 
  | 
\[ | 
| 436 | 
  | 
  | 
{\pp{u}{t}}_{turb} = {\pp{}{z} }{(- \overline{u^{\prime}w^{\prime}})} | 
| 437 | 
  | 
  | 
 = {\pp{}{z} }{(K_m \pp{u}{z})} | 
| 438 | 
  | 
  | 
\] | 
| 439 | 
  | 
  | 
\[ | 
| 440 | 
  | 
  | 
{\pp{v}{t}}_{turb} = {\pp{}{z} }{(- \overline{v^{\prime}w^{\prime}})} | 
| 441 | 
  | 
  | 
 = {\pp{}{z} }{(K_m \pp{v}{z})} | 
| 442 | 
  | 
  | 
\] | 
| 443 | 
  | 
  | 
\[ | 
| 444 | 
  | 
  | 
{\pp{T}{t}} = P^{\kappa}{\pp{\theta}{t}}_{turb} =  | 
| 445 | 
  | 
  | 
P^{\kappa}{\pp{}{z} }{(- \overline{w^{\prime}\theta^{\prime}})} | 
| 446 | 
  | 
  | 
 = P^{\kappa}{\pp{}{z} }{(K_h \pp{\theta_v}{z})} | 
| 447 | 
  | 
  | 
\] | 
| 448 | 
  | 
  | 
\[ | 
| 449 | 
  | 
  | 
{\pp{q}{t}}_{turb} = {\pp{}{z} }{(- \overline{w^{\prime}q^{\prime}})} | 
| 450 | 
  | 
  | 
 = {\pp{}{z} }{(K_h \pp{q}{z})} | 
| 451 | 
  | 
  | 
\] | 
| 452 | 
  | 
  | 
 | 
| 453 | 
  | 
  | 
Within the atmosphere, the time evolution | 
| 454 | 
  | 
  | 
of second turbulent moments is explicitly modeled by representing the third moments in terms of  | 
| 455 | 
  | 
  | 
the first and second moments.  This approach is known as a second-order closure modeling. | 
| 456 | 
  | 
  | 
To simplify and streamline the computation of the second moments, the level 2.5 assumption | 
| 457 | 
  | 
  | 
of Mellor and Yamada (1974) and Yamada (1977) is employed, in which only the turbulent  | 
| 458 | 
  | 
  | 
kinetic energy (TKE), | 
| 459 | 
  | 
  | 
 | 
| 460 | 
  | 
  | 
\[ {\h}{q^2}={\overline{{u^{\prime}}^2}}+{\overline{{v^{\prime}}^2}}+{\overline{{w^{\prime}}^2}}, \] | 
| 461 | 
  | 
  | 
 | 
| 462 | 
  | 
  | 
is solved prognostically and the other second moments are solved diagnostically. | 
| 463 | 
  | 
  | 
The prognostic equation for TKE allows the scheme to simulate  | 
| 464 | 
  | 
  | 
some of the transient and diffusive effects in the turbulence. The TKE budget equation | 
| 465 | 
  | 
  | 
is solved numerically using an implicit backward computation of the terms linear in $q^2$ | 
| 466 | 
  | 
  | 
and is written: | 
| 467 | 
  | 
  | 
 | 
| 468 | 
  | 
  | 
\[ | 
| 469 | 
  | 
  | 
{\dd{}{t} ({{\h} q^2})} - { \pp{}{z} ({ {5 \over 3} {{\lambda}_1} q { \pp {}{z}  | 
| 470 | 
  | 
  | 
({\h}q^2)} })} = | 
| 471 | 
  | 
  | 
{- \overline{{u^{\prime}}{w^{\prime}}} { \pp{U}{z} }} - {\overline{{v^{\prime}}{w^{\prime}}}  | 
| 472 | 
  | 
  | 
{ \pp{V}{z} }} + {{g \over {\Theta_0}}{\overline{{w^{\prime}}{{{\theta}_v}^{\prime}}}} }  | 
| 473 | 
  | 
  | 
- { q^3 \over {{\Lambda} _1} } | 
| 474 | 
  | 
  | 
\] | 
| 475 | 
  | 
  | 
 | 
| 476 | 
  | 
  | 
where $q$ is the turbulent velocity, ${u^{\prime}}$, ${v^{\prime}}$, ${w^{\prime}}$ and  | 
| 477 | 
  | 
  | 
${{\theta}^{\prime}}$ are the fluctuating parts of the velocity components and potential  | 
| 478 | 
  | 
  | 
temperature, $U$ and $V$ are the mean velocity components, ${\Theta_0}^{-1}$ is the | 
| 479 | 
  | 
  | 
coefficient of thermal expansion, and ${{\lambda}_1}$ and ${{\Lambda} _1}$ are constant | 
| 480 | 
  | 
  | 
multiples of the master length scale, $\ell$, which is designed to be a characteristic measure | 
| 481 | 
  | 
  | 
of the vertical structure of the turbulent layers. | 
| 482 | 
  | 
  | 
 | 
| 483 | 
  | 
  | 
The first term on the left-hand side represents the time rate of change of TKE, and | 
| 484 | 
  | 
  | 
the second term is a representation of the triple correlation, or turbulent | 
| 485 | 
  | 
  | 
transport term. The first three terms on the right-hand side represent the sources of | 
| 486 | 
  | 
  | 
TKE due to shear and bouyancy, and the last term on the right hand side is the dissipation | 
| 487 | 
  | 
  | 
of TKE. | 
| 488 | 
  | 
  | 
 | 
| 489 | 
  | 
  | 
In the level 2.5 approach, the vertical fluxes of the scalars $\theta_v$ and $q$ and the | 
| 490 | 
  | 
  | 
wind components $u$ and $v$ are expressed in terms of the diffusion coefficients $K_h$ and | 
| 491 | 
  | 
  | 
$K_m$, respectively.  In the statisically realizable level 2.5 turbulence scheme of Helfand | 
| 492 | 
  | 
  | 
and Labraga (1988), these diffusion coefficients are expressed as | 
| 493 | 
  | 
  | 
 | 
| 494 | 
  | 
  | 
\[ | 
| 495 | 
  | 
  | 
K_h  | 
| 496 | 
  | 
  | 
 = \left\{ \begin{array}{l@{\quad\mbox{for}\quad}l} q \, \ell \, S_H(G_M,G_H) \, & \mbox{decaying turbulence} | 
| 497 | 
  | 
  | 
\\ { q^2 \over {q_e} } \, \ell \, S_{H}(G_{M_e},G_{H_e}) \, & \mbox{growing turbulence} \end{array} \right. | 
| 498 | 
  | 
  | 
\] | 
| 499 | 
  | 
  | 
 | 
| 500 | 
  | 
  | 
and | 
| 501 | 
  | 
  | 
 | 
| 502 | 
  | 
  | 
\[ | 
| 503 | 
  | 
  | 
K_m | 
| 504 | 
  | 
  | 
 = \left\{ \begin{array}{l@{\quad\mbox{for}\quad}l} q \, \ell \, S_M(G_M,G_H) \, & \mbox{decaying turbulence}                 | 
| 505 | 
  | 
  | 
\\ { q^2 \over {q_e} } \, \ell \, S_{M}(G_{M_e},G_{H_e}) \, & \mbox{growing turbulence} \end{array} \right. | 
| 506 | 
  | 
  | 
\] | 
| 507 | 
  | 
  | 
 | 
| 508 | 
  | 
  | 
where the subscript $e$ refers to the value under conditions of local equillibrium | 
| 509 | 
  | 
  | 
(obtained from the Level 2.0 Model), $\ell$ is the master length scale related to the  | 
| 510 | 
  | 
  | 
vertical structure of the atmosphere, | 
| 511 | 
  | 
  | 
and $S_M$ and $S_H$ are functions of $G_H$ and $G_M$, the dimensionless buoyancy and | 
| 512 | 
  | 
  | 
wind shear parameters, respectively. | 
| 513 | 
  | 
  | 
Both $G_H$ and $G_M$, and their equilibrium values $G_{H_e}$ and $G_{M_e}$, | 
| 514 | 
  | 
  | 
are functions of the Richardson number: | 
| 515 | 
  | 
  | 
 | 
| 516 | 
  | 
  | 
\[ | 
| 517 | 
  | 
  | 
{\bf RI} = { { {g \over \theta_v} \pp {\theta_v}{z} } \over { (\pp{u}{z})^2 + (\pp{v}{z})^2 } } | 
| 518 | 
  | 
  | 
 =  {  {c_p \pp{\theta_v}{z} \pp{P^ \kappa}{z} } \over { (\pp{u}{z})^2 + (\pp{v}{z})^2 } } . | 
| 519 | 
  | 
  | 
\] | 
| 520 | 
  | 
  | 
 | 
| 521 | 
  | 
  | 
Negative values indicate unstable buoyancy and shear, small positive values ($<0.2$) | 
| 522 | 
  | 
  | 
indicate dominantly unstable shear, and large positive values indicate dominantly stable | 
| 523 | 
  | 
  | 
stratification. | 
| 524 | 
  | 
  | 
 | 
| 525 | 
  | 
  | 
Turbulent eddy diffusion coefficients of momentum, heat and moisture in the surface layer, | 
| 526 | 
  | 
  | 
which corresponds to the lowest GCM level (see \ref{tab:fizhi:sigma}), | 
| 527 | 
  | 
  | 
are calculated using stability-dependant functions based on Monin-Obukhov theory: | 
| 528 | 
  | 
  | 
\[ | 
| 529 | 
  | 
  | 
{K_m} (surface) = C_u \times u_* = C_D W_s | 
| 530 | 
  | 
  | 
\] | 
| 531 | 
  | 
  | 
and | 
| 532 | 
  | 
  | 
\[ | 
| 533 | 
  | 
  | 
{K_h} (surface) =  C_t \times u_* = C_H W_s | 
| 534 | 
  | 
  | 
\] | 
| 535 | 
  | 
  | 
where $u_*=C_uW_s$ is the surface friction velocity, | 
| 536 | 
  | 
  | 
$C_D$ is termed the surface drag coefficient, $C_H$ the heat transfer coefficient,  | 
| 537 | 
  | 
  | 
and $W_s$ is the magnitude of the surface layer wind. | 
| 538 | 
  | 
  | 
 | 
| 539 | 
  | 
  | 
$C_u$ is the dimensionless exchange coefficient for momentum from the surface layer | 
| 540 | 
  | 
  | 
similarity functions:  | 
| 541 | 
  | 
  | 
\[ | 
| 542 | 
  | 
  | 
{C_u} = {u_* \over W_s} = { k \over \psi_{m} } | 
| 543 | 
  | 
  | 
\] | 
| 544 | 
  | 
  | 
where k is the Von Karman constant and $\psi_m$ is the surface layer non-dimensional  | 
| 545 | 
  | 
  | 
wind shear given by | 
| 546 | 
  | 
  | 
\[ | 
| 547 | 
  | 
  | 
\psi_{m} = {\int_{\zeta_{0}}^{\zeta} {\phi_{m} \over \zeta} d \zeta} . | 
| 548 | 
  | 
  | 
\] | 
| 549 | 
  | 
  | 
Here $\zeta$ is the non-dimensional stability parameter, and | 
| 550 | 
  | 
  | 
$\phi_m$ is the similarity function of $\zeta$ which expresses the stability dependance of | 
| 551 | 
  | 
  | 
the momentum gradient.  The functional form of $\phi_m$ is specified differently for stable and unstable  | 
| 552 | 
  | 
  | 
layers. | 
| 553 | 
  | 
  | 
 | 
| 554 | 
  | 
  | 
$C_t$ is the dimensionless exchange coefficient for heat and  | 
| 555 | 
  | 
  | 
moisture from the surface layer similarity functions: | 
| 556 | 
  | 
  | 
\[ | 
| 557 | 
  | 
  | 
{C_t} = -{( {\overline{w^{\prime}\theta^{\prime}}}) \over {u_* \Delta \theta }} = | 
| 558 | 
  | 
  | 
-{( {\overline{w^{\prime}q^{\prime}}}) \over {u_* \Delta q }} = | 
| 559 | 
  | 
  | 
{ k \over { (\psi_{h} + \psi_{g}) } } | 
| 560 | 
  | 
  | 
\] | 
| 561 | 
  | 
  | 
where $\psi_h$ is the surface layer non-dimensional temperature gradient given by | 
| 562 | 
  | 
  | 
\[ | 
| 563 | 
  | 
  | 
\psi_{h} = {\int_{\zeta_{0}}^{\zeta} {\phi_{h} \over \zeta} d \zeta} . | 
| 564 | 
  | 
  | 
\] | 
| 565 | 
  | 
  | 
Here $\phi_h$ is the similarity function of $\zeta$, which expresses the stability dependance of | 
| 566 | 
  | 
  | 
the temperature and moisture gradients, and is specified differently for stable and unstable | 
| 567 | 
  | 
  | 
layers according to Helfand and Schubert, 1995. | 
| 568 | 
  | 
  | 
 | 
| 569 | 
  | 
  | 
$\psi_g$ is the non-dimensional temperature or moisture gradient in the viscous sublayer,  | 
| 570 | 
  | 
  | 
which is the mosstly laminar region between the surface and the tops of the roughness  | 
| 571 | 
  | 
  | 
elements, in which temperature and moisture gradients can be quite large. | 
| 572 | 
  | 
  | 
Based on Yaglom and Kader (1974): | 
| 573 | 
  | 
  | 
\[ | 
| 574 | 
  | 
  | 
\psi_{g} = { 0.55 (Pr^{2/3} - 0.2) \over \nu^{1/2} } | 
| 575 | 
  | 
  | 
(h_{0}u_{*} - h_{0_{ref}}u_{*_{ref}})^{1/2} | 
| 576 | 
  | 
  | 
\] | 
| 577 | 
  | 
  | 
where Pr is the Prandtl number for air, $\nu$ is the molecular viscosity, $z_{0}$ is the  | 
| 578 | 
  | 
  | 
surface roughness length, and the subscript {\em ref} refers to a reference value. | 
| 579 | 
  | 
  | 
$h_{0} = 30z_{0}$ with a maximum value over land of 0.01 | 
| 580 | 
  | 
  | 
  | 
| 581 | 
  | 
  | 
The surface roughness length over oceans is is a function of the surface-stress velocity, | 
| 582 | 
  | 
  | 
\[ | 
| 583 | 
  | 
  | 
{z_0} = c_1u^3_* + c_2u^2_* + c_3u_* + c_4 + {c_5 \over {u_*}} | 
| 584 | 
  | 
  | 
\] | 
| 585 | 
  | 
  | 
where the constants are chosen to interpolate between the reciprocal relation of | 
| 586 | 
  | 
  | 
Kondo(1975) for weak winds, and the piecewise linear relation of Large and Pond(1981) | 
| 587 | 
  | 
  | 
for moderate to large winds.  Roughness lengths over land are specified | 
| 588 | 
  | 
  | 
from the climatology of Dorman and Sellers (1989). | 
| 589 | 
  | 
  | 
 | 
| 590 | 
  | 
  | 
For an unstable surface layer, the stability functions, chosen to interpolate between the | 
| 591 | 
  | 
  | 
condition of small values of $\beta$ and the convective limit, are the KEYPS function  | 
| 592 | 
  | 
  | 
(Panofsky, 1973) for momentum, and its generalization for heat and moisture:   | 
| 593 | 
  | 
  | 
\[ | 
| 594 | 
  | 
  | 
{\phi_m}^4 - 18 \zeta {\phi_m}^3 = 1 \hspace{1cm} ; \hspace{1cm}  | 
| 595 | 
  | 
  | 
{\phi_h}^2 - 18 \zeta {\phi_h}^3 = 1 \hspace{1cm} . | 
| 596 | 
  | 
  | 
\] | 
| 597 | 
  | 
  | 
The function for heat and moisture assures non-vanishing heat and moisture fluxes as the wind  | 
| 598 | 
  | 
  | 
speed approaches zero.  | 
| 599 | 
  | 
  | 
 | 
| 600 | 
  | 
  | 
For a stable surface layer, the stability functions are the observationally  | 
| 601 | 
  | 
  | 
based functions of Clarke (1970),  slightly modified for | 
| 602 | 
  | 
  | 
the momemtum flux:   | 
| 603 | 
  | 
  | 
\[ | 
| 604 | 
  | 
  | 
{\phi_m} = { { 1 + 5 {{\zeta}_1} } \over { 1 + 0.00794 {{\zeta}_1} | 
| 605 | 
  | 
  | 
(1+ 5 {{\zeta}_1}) } } \hspace{1cm} ; \hspace{1cm} | 
| 606 | 
  | 
  | 
{\phi_h} = { { 1 + 5 {{\zeta}_1} } \over { 1 + 0.00794 {\zeta} | 
| 607 | 
  | 
  | 
(1+ 5 {{\zeta}_1}) } } . | 
| 608 | 
  | 
  | 
\] | 
| 609 | 
  | 
  | 
The moisture flux also depends on a specified evapotranspiration | 
| 610 | 
  | 
  | 
coefficient, set to unity over oceans and dependant on the climatological ground wetness over | 
| 611 | 
  | 
  | 
land.   | 
| 612 | 
  | 
  | 
 | 
| 613 | 
  | 
  | 
Once all the diffusion coefficients are calculated, the diffusion equations are solved numerically | 
| 614 | 
  | 
  | 
using an implicit backward operator. | 
| 615 | 
  | 
  | 
 | 
| 616 | 
molod | 
1.2 | 
\subsubsection{Atmospheric Boundary Layer} | 
| 617 | 
molod | 
1.1 | 
 | 
| 618 | 
  | 
  | 
The depth of the atmospheric boundary layer (ABL) is diagnosed by the parameterization as the | 
| 619 | 
  | 
  | 
level at which the turbulent kinetic energy is reduced to a tenth of its maximum near surface value. | 
| 620 | 
  | 
  | 
The vertical structure of the ABL is explicitly resolved by the lowest few (3-8) model layers. | 
| 621 | 
  | 
  | 
 | 
| 622 | 
molod | 
1.2 | 
\subsubsection{Surface Energy Budget} | 
| 623 | 
molod | 
1.1 | 
 | 
| 624 | 
  | 
  | 
The ground temperature equation is solved as part of the turbulence package | 
| 625 | 
  | 
  | 
using a backward implicit time differencing scheme: | 
| 626 | 
  | 
  | 
\[ | 
| 627 | 
  | 
  | 
C_g\pp{T_g}{t} = R_{sw} - R_{lw} + Q_{ice} - H - LE | 
| 628 | 
  | 
  | 
\] | 
| 629 | 
  | 
  | 
where $R_{sw}$ is the net surface downward shortwave radiative flux and $R_{lw}$ is the | 
| 630 | 
  | 
  | 
net surface upward longwave radiative flux.  | 
| 631 | 
  | 
  | 
 | 
| 632 | 
  | 
  | 
$H$ is the upward sensible heat flux, given by: | 
| 633 | 
  | 
  | 
\[ | 
| 634 | 
  | 
  | 
{H} =  P^{\kappa}\rho c_{p} C_{H} W_s (\theta_{surface} - \theta_{NLAY}) | 
| 635 | 
  | 
  | 
\hspace{1cm}where: \hspace{.2cm}C_H = C_u C_t | 
| 636 | 
  | 
  | 
\] | 
| 637 | 
  | 
  | 
where $\rho$ = the atmospheric density at the surface, $c_{p}$ is the specific | 
| 638 | 
  | 
  | 
heat of air at constant pressure, and $\theta$ represents the potential temperature | 
| 639 | 
  | 
  | 
of the surface and of the lowest $\sigma$-level, respectively. | 
| 640 | 
  | 
  | 
  | 
| 641 | 
  | 
  | 
The upward latent heat flux, $LE$, is given by | 
| 642 | 
  | 
  | 
\[ | 
| 643 | 
  | 
  | 
{LE} =  \rho \beta L C_{H} W_s (q_{surface} - q_{NLAY}) | 
| 644 | 
  | 
  | 
\hspace{1cm}where: \hspace{.2cm}C_H = C_u C_t | 
| 645 | 
  | 
  | 
\] | 
| 646 | 
  | 
  | 
where $\beta$ is the fraction of the potential evapotranspiration actually evaporated, | 
| 647 | 
  | 
  | 
L is the latent heat of evaporation, and $q_{surface}$ and $q_{NLAY}$ are the specific | 
| 648 | 
  | 
  | 
humidity of the surface and of the lowest $\sigma$-level, respectively. | 
| 649 | 
  | 
  | 
 | 
| 650 | 
  | 
  | 
The heat conduction through sea ice, $Q_{ice}$, is given by | 
| 651 | 
  | 
  | 
\[ | 
| 652 | 
  | 
  | 
{Q_{ice}} = {C_{ti} \over {H_i}} (T_i-T_g) | 
| 653 | 
  | 
  | 
\] | 
| 654 | 
  | 
  | 
where $C_{ti}$ is the thermal conductivity of ice, $H_i$ is the ice thickness, assumed to | 
| 655 | 
  | 
  | 
be $3 \hspace{.1cm} m$ where sea ice is present, $T_i$ is 273 degrees Kelvin, and $T_g$ is the  | 
| 656 | 
  | 
  | 
surface temperature of the ice. | 
| 657 | 
  | 
  | 
 | 
| 658 | 
  | 
  | 
$C_g$ is the total heat capacity of the ground, obtained by solving a heat diffusion equation | 
| 659 | 
  | 
  | 
for the penetration of the diurnal cycle into the ground (Blackadar, 1977), and is given by: | 
| 660 | 
  | 
  | 
\[ | 
| 661 | 
  | 
  | 
C_g = \sqrt{ {\lambda C_s \over 2\omega} } = \sqrt{(0.386 + 0.536W + 0.15W^2)2\times10^{-3} | 
| 662 | 
  | 
  | 
{86400 \over 2 \pi} } \, \, . | 
| 663 | 
  | 
  | 
\] | 
| 664 | 
  | 
  | 
Here, the thermal conductivity, $\lambda$, is equal to $2\times10^{-3}$ ${ly\over{ sec}} | 
| 665 | 
  | 
  | 
{cm \over {^oK}}$,     | 
| 666 | 
  | 
  | 
the angular velocity of the earth, $\omega$, is written as $86400$ $sec/day$ divided | 
| 667 | 
  | 
  | 
by $2 \pi$ $radians/   | 
| 668 | 
  | 
  | 
day$, and the expression for $C_s$, the heat capacity per unit volume at the surface, | 
| 669 | 
  | 
  | 
is a function of the ground wetness, $W$. | 
| 670 | 
  | 
  | 
 | 
| 671 | 
  | 
  | 
\subsubsection{Land Surface Processes} | 
| 672 | 
  | 
  | 
 | 
| 673 | 
molod | 
1.2 | 
\subsubsection{Surface Type} | 
| 674 | 
molod | 
1.1 | 
The fizhi package surface Types are designated using the Koster-Suarez (1992) mosaic | 
| 675 | 
  | 
  | 
philosophy which allows multiple ``tiles'', or multiple surface types, in any one | 
| 676 | 
  | 
  | 
grid cell. The Koster-Suarez Land Surface Model (LSM) surface type classifications | 
| 677 | 
  | 
  | 
are shown in Table \ref{tab:fizhi:surftype}. The surface types and the percent of the grid | 
| 678 | 
  | 
  | 
cell occupied by any surface type were derived from the surface classification of | 
| 679 | 
  | 
  | 
Defries and Townshend (1994), and information about the location of permanent | 
| 680 | 
  | 
  | 
ice was obtained from the classifications of Dorman and Sellers (1989). | 
| 681 | 
  | 
  | 
The surface type for the \txt GCM grid is shown in Figure \ref{fig:fizhi:surftype}. | 
| 682 | 
  | 
  | 
The determination of the land or sea category of surface type was made from NCAR's | 
| 683 | 
  | 
  | 
10 minute by 10 minute Navy topography  | 
| 684 | 
  | 
  | 
dataset, which includes information about the percentage of water-cover at any point. | 
| 685 | 
  | 
  | 
The data were averaged to the model's \fxf and \txt grid resolutions, | 
| 686 | 
  | 
  | 
and any grid-box whose averaged water percentage was $\geq 60 \%$ was | 
| 687 | 
  | 
  | 
defined as a water point. The \fxf grid Land-Water designation was further modified | 
| 688 | 
  | 
  | 
subjectively to ensure sufficient representation from small but isolated land and water regions. | 
| 689 | 
  | 
  | 
  | 
| 690 | 
  | 
  | 
\begin{table} | 
| 691 | 
  | 
  | 
\begin{center} | 
| 692 | 
  | 
  | 
{\bf Surface Type Designation} \\ | 
| 693 | 
  | 
  | 
\vspace{0.1in} | 
| 694 | 
  | 
  | 
\begin{tabular}{ |c|l| } | 
| 695 | 
  | 
  | 
\hline | 
| 696 | 
  | 
  | 
Type & Vegetation Designation \\ \hline | 
| 697 | 
  | 
  | 
\hline | 
| 698 | 
  | 
  | 
  1 & Broadleaf Evergreen Trees \\ \hline | 
| 699 | 
  | 
  | 
  2 & Broadleaf Deciduous Trees \\ \hline | 
| 700 | 
  | 
  | 
  3 & Needleleaf Trees \\ \hline | 
| 701 | 
  | 
  | 
  4 & Ground Cover \\ \hline    | 
| 702 | 
  | 
  | 
  5 & Broadleaf Shrubs \\ \hline | 
| 703 | 
  | 
  | 
  6 & Dwarf Trees (Tundra) \\ \hline | 
| 704 | 
  | 
  | 
  7 & Bare Soil \\ \hline | 
| 705 | 
  | 
  | 
  8 & Desert (Bright) \\ \hline | 
| 706 | 
  | 
  | 
  9 & Glacier \\ \hline | 
| 707 | 
  | 
  | 
 10 & Desert (Dark) \\ \hline | 
| 708 | 
  | 
  | 
100 & Ocean \\ \hline | 
| 709 | 
  | 
  | 
\end{tabular} | 
| 710 | 
  | 
  | 
\end{center} | 
| 711 | 
  | 
  | 
\caption{Surface type designations used to compute surface roughness (over land)  | 
| 712 | 
  | 
  | 
and surface albedo.} | 
| 713 | 
  | 
  | 
\label{tab:fizhi:surftype} | 
| 714 | 
  | 
  | 
\end{table} | 
| 715 | 
  | 
  | 
  | 
| 716 | 
  | 
  | 
  | 
| 717 | 
  | 
  | 
\begin{figure*}[htbp] | 
| 718 | 
  | 
  | 
  \centerline{  \epsfysize=7in  \epsfbox{surftypes.ps}} | 
| 719 | 
  | 
  | 
  \vspace{0.3in} | 
| 720 | 
  | 
  | 
  \caption  {Surface Type Compinations at \txt resolution.} | 
| 721 | 
  | 
  | 
  \label{fig:fizhi:surftype} | 
| 722 | 
  | 
  | 
\end{figure*} | 
| 723 | 
  | 
  | 
 | 
| 724 | 
  | 
  | 
\begin{figure*}[htbp] | 
| 725 | 
  | 
  | 
  \centerline{  \epsfysize=7in  \epsfbox{surftypes.descrip.ps}} | 
| 726 | 
  | 
  | 
  \vspace{0.3in} | 
| 727 | 
  | 
  | 
  \caption  {Surface Type Descriptions.} | 
| 728 | 
  | 
  | 
  \label{fig:fizhi:surftype.desc} | 
| 729 | 
  | 
  | 
\end{figure*} | 
| 730 | 
  | 
  | 
 | 
| 731 | 
  | 
  | 
 | 
| 732 | 
molod | 
1.2 | 
\subsubsection{Surface Roughness} | 
| 733 | 
molod | 
1.1 | 
The surface roughness length over oceans is computed iteratively with the wind | 
| 734 | 
  | 
  | 
stress by the surface layer parameterization (Helfand and Schubert, 1991). | 
| 735 | 
  | 
  | 
It employs an interpolation between the functions of Large and Pond (1981) | 
| 736 | 
  | 
  | 
for high winds and of Kondo (1975) for weak winds. | 
| 737 | 
  | 
  | 
 | 
| 738 | 
  | 
  | 
 | 
| 739 | 
molod | 
1.2 | 
\subsubsection{Albedo} | 
| 740 | 
molod | 
1.1 | 
The surface albedo computation, described in Koster and Suarez (1991), | 
| 741 | 
  | 
  | 
employs the ``two stream'' approximation used in Sellers' (1987) Simple Biosphere (SiB) | 
| 742 | 
  | 
  | 
Model which distinguishes between the direct and diffuse albedos in the visible | 
| 743 | 
  | 
  | 
and in the near infra-red spectral ranges. The albedos are functions of the observed | 
| 744 | 
  | 
  | 
leaf area index (a description of the relative orientation of the leaves to the | 
| 745 | 
  | 
  | 
sun), the greenness fraction, the vegetation type, and the solar zenith angle. | 
| 746 | 
  | 
  | 
Modifications are made to account for the presence of snow, and its depth relative | 
| 747 | 
  | 
  | 
to the height of the vegetation elements. | 
| 748 | 
  | 
  | 
 | 
| 749 | 
  | 
  | 
\subsubsection{Gravity Wave Drag} | 
| 750 | 
  | 
  | 
The fizhi package employs the gravity wave drag scheme of Zhou et al. (1996). | 
| 751 | 
  | 
  | 
This scheme is a modified version of Vernekar et al. (1992), | 
| 752 | 
  | 
  | 
which was based on Alpert et al. (1988) and Helfand et al. (1987).   | 
| 753 | 
  | 
  | 
In this version, the gravity wave stress at the surface is | 
| 754 | 
  | 
  | 
based on that derived by Pierrehumbert (1986) and is given by: | 
| 755 | 
  | 
  | 
 | 
| 756 | 
  | 
  | 
\bq | 
| 757 | 
  | 
  | 
|\vec{\tau}_{sfc}| = {\rho U^3\over{N \ell^*}} \left(F_r^2 \over{1+F_r^2}\right) \, \, , | 
| 758 | 
  | 
  | 
\eq | 
| 759 | 
  | 
  | 
 | 
| 760 | 
  | 
  | 
where $F_r = N h /U$ is the Froude number, $N$ is the {\em Brunt - V\"{a}is\"{a}l\"{a}} frequency, $U$ is the  | 
| 761 | 
  | 
  | 
surface wind speed, $h$ is the standard deviation of the sub-grid scale orography, | 
| 762 | 
  | 
  | 
and $\ell^*$ is the wavelength of the monochromatic gravity wave in the direction of the low-level wind. | 
| 763 | 
  | 
  | 
A modification introduced by Zhou et al. allows for the momentum flux to | 
| 764 | 
  | 
  | 
escape through the top of the model, although this effect is small for the current 70-level model.   | 
| 765 | 
  | 
  | 
The subgrid scale standard deviation is defined by $h$, and is not allowed to exceed 400 m.  | 
| 766 | 
  | 
  | 
 | 
| 767 | 
  | 
  | 
The effects of using this scheme within a GCM are shown in Takacs and Suarez (1996). | 
| 768 | 
  | 
  | 
Experiments using the gravity wave drag parameterization yielded significant and | 
| 769 | 
  | 
  | 
beneficial impacts on both the time-mean flow and the transient statistics of the | 
| 770 | 
  | 
  | 
a GCM climatology, and have eliminated most of the worst dynamically driven biases  | 
| 771 | 
  | 
  | 
in the a GCM simulation.  | 
| 772 | 
  | 
  | 
An examination of the angular momentum budget during climate runs indicates that the  | 
| 773 | 
  | 
  | 
resulting gravity wave torque is similar to the data-driven torque produced by a data  | 
| 774 | 
  | 
  | 
assimilation which was performed without gravity | 
| 775 | 
  | 
  | 
wave drag.  It was shown that the inclusion of gravity wave drag results in  | 
| 776 | 
  | 
  | 
large changes in both the mean flow and in eddy fluxes. | 
| 777 | 
  | 
  | 
The result is a more | 
| 778 | 
  | 
  | 
accurate simulation of surface stress (through a reduction in the surface wind strength),  | 
| 779 | 
  | 
  | 
of mountain torque (through a redistribution of mean sea-level pressure), and of momentum | 
| 780 | 
  | 
  | 
convergence (through a reduction in the flux of westerly momentum by transient flow eddies).   | 
| 781 | 
  | 
  | 
 | 
| 782 | 
  | 
  | 
 | 
| 783 | 
  | 
  | 
\subsubsection{Boundary Conditions and other Input Data} | 
| 784 | 
  | 
  | 
 | 
| 785 | 
  | 
  | 
Required fields which are not explicitly predicted or diagnosed during model execution must | 
| 786 | 
  | 
  | 
either be prescribed internally or obtained from external data sets.  In the fizhi package these | 
| 787 | 
  | 
  | 
fields include:  sea surface temperature, sea ice estent, surface geopotential variance,  | 
| 788 | 
  | 
  | 
vegetation index, and the radiation-related background levels of: ozone, carbon dioxide,  | 
| 789 | 
  | 
  | 
and stratospheric moisture. | 
| 790 | 
  | 
  | 
 | 
| 791 | 
  | 
  | 
Boundary condition data sets are available at the model's \fxf and \txt  | 
| 792 | 
  | 
  | 
resolutions for either climatological or yearly varying conditions.  | 
| 793 | 
  | 
  | 
Any frequency of boundary condition data can be used in the fizhi package;  | 
| 794 | 
  | 
  | 
however, the current selection of data is summarized in Table \ref{tab:fizhi:bcdata}\@. | 
| 795 | 
  | 
  | 
The time mean values are interpolated during each model timestep to the  | 
| 796 | 
  | 
  | 
current time. Future model versions will incorporate boundary conditions at | 
| 797 | 
  | 
  | 
higher spatial \mbox{($1^\circ$ x $1^\circ$)} resolutions. | 
| 798 | 
  | 
  | 
 | 
| 799 | 
  | 
  | 
\begin{table}[htb] | 
| 800 | 
  | 
  | 
\begin{center} | 
| 801 | 
  | 
  | 
{\bf Fizhi Input Datasets} \\ | 
| 802 | 
  | 
  | 
\vspace{0.1in} | 
| 803 | 
  | 
  | 
\begin{tabular}{|l|c|r|} \hline | 
| 804 | 
  | 
  | 
\multicolumn{1}{|c}{Variable} & \multicolumn{1}{|c}{Frequency} & \multicolumn{1}{|c|}{Years} \\ \hline\hline | 
| 805 | 
  | 
  | 
Sea Ice Extent & monthly & 1979-current, climatology \\ \hline | 
| 806 | 
  | 
  | 
Sea Ice Extent & weekly  & 1982-current, climatology \\ \hline | 
| 807 | 
  | 
  | 
Sea Surface Temperature & monthly & 1979-current, climatology \\ \hline | 
| 808 | 
  | 
  | 
Sea Surface Temperature & weekly & 1982-current, climatology \\ \hline | 
| 809 | 
  | 
  | 
Zonally Averaged Upper-Level Moisture & monthly  & climatology \\ \hline | 
| 810 | 
  | 
  | 
Zonally Averaged Ozone Concentration & monthly  & climatology \\ \hline | 
| 811 | 
  | 
  | 
\end{tabular} | 
| 812 | 
  | 
  | 
\end{center} | 
| 813 | 
  | 
  | 
\caption{Boundary conditions and other input data used in the fizhi package.  Also noted are the | 
| 814 | 
  | 
  | 
current years and frequencies available.} | 
| 815 | 
  | 
  | 
\label{tab:fizhi:bcdata} | 
| 816 | 
  | 
  | 
\end{table} | 
| 817 | 
  | 
  | 
 | 
| 818 | 
  | 
  | 
 | 
| 819 | 
molod | 
1.2 | 
\subsubsection{Topography and Topography Variance} | 
| 820 | 
molod | 
1.1 | 
 | 
| 821 | 
  | 
  | 
Surface geopotential heights are provided from an averaging of the Navy 10 minute | 
| 822 | 
  | 
  | 
by 10 minute dataset supplied by the National Center for Atmospheric Research (NCAR) to the | 
| 823 | 
  | 
  | 
model's grid resolution. The original topography is first rotated to the proper grid-orientation | 
| 824 | 
  | 
  | 
which is being run, and then   | 
| 825 | 
  | 
  | 
averages the data to the model resolution.   | 
| 826 | 
  | 
  | 
The averaged topography is then passed through a Lanczos (1966) filter in both dimensions  | 
| 827 | 
  | 
  | 
which removes the smallest | 
| 828 | 
  | 
  | 
scales while inhibiting Gibbs phenomena.   | 
| 829 | 
  | 
  | 
 | 
| 830 | 
  | 
  | 
In one dimension, we may define a cyclic function in $x$ as: | 
| 831 | 
  | 
  | 
\begin{equation} | 
| 832 | 
  | 
  | 
f(x) = {a_0 \over 2} + \sum_{k=1}^N \left( a_k \cos(kx) + b_k \sin(kx) \right) | 
| 833 | 
  | 
  | 
\label{eq:fizhi:filt} | 
| 834 | 
  | 
  | 
\end{equation} | 
| 835 | 
  | 
  | 
where $N = { {\rm IM} \over 2 }$ and ${\rm IM}$ is the total number of points in the $x$ direction. | 
| 836 | 
  | 
  | 
Defining $\Delta x = { 2 \pi \over {\rm IM}}$, we may define the average of $f(x)$ over a  | 
| 837 | 
  | 
  | 
$2 \Delta x$ region as: | 
| 838 | 
  | 
  | 
 | 
| 839 | 
  | 
  | 
\begin{equation} | 
| 840 | 
  | 
  | 
\overline {f(x)} = {1 \over {2 \Delta x}} \int_{x-\Delta x}^{x+\Delta x} f(x^{\prime}) dx^{\prime} | 
| 841 | 
  | 
  | 
\label{eq:fizhi:fave1} | 
| 842 | 
  | 
  | 
\end{equation} | 
| 843 | 
  | 
  | 
 | 
| 844 | 
  | 
  | 
Using equation (\ref{eq:fizhi:filt}) in equation (\ref{eq:fizhi:fave1}) and integrating, we may write: | 
| 845 | 
  | 
  | 
  | 
| 846 | 
  | 
  | 
\begin{equation} | 
| 847 | 
  | 
  | 
\overline {f(x)} = {a_0 \over 2} + {1 \over {2 \Delta x}} | 
| 848 | 
  | 
  | 
\sum_{k=1}^N \left [ | 
| 849 | 
  | 
  | 
\left. a_k { \sin(kx^{\prime}) \over k } \right /_{x-\Delta x}^{x+\Delta x} - | 
| 850 | 
  | 
  | 
\left. b_k { \cos(kx^{\prime}) \over k } \right /_{x-\Delta x}^{x+\Delta x}  | 
| 851 | 
  | 
  | 
\right] | 
| 852 | 
  | 
  | 
\end{equation} | 
| 853 | 
  | 
  | 
or | 
| 854 | 
  | 
  | 
 | 
| 855 | 
  | 
  | 
\begin{equation} | 
| 856 | 
  | 
  | 
\overline {f(x)} = {a_0 \over 2} + \sum_{k=1}^N {\sin(k \Delta x) \over {k \Delta x}} | 
| 857 | 
  | 
  | 
\left( a_k \cos(kx) + b_k \sin(kx) \right) | 
| 858 | 
  | 
  | 
\label{eq:fizhi:fave2} | 
| 859 | 
  | 
  | 
\end{equation} | 
| 860 | 
  | 
  | 
 | 
| 861 | 
  | 
  | 
Thus, the Fourier wave amplitudes are simply modified by the Lanczos filter response | 
| 862 | 
  | 
  | 
function ${\sin(k\Delta x) \over {k \Delta x}}$.  This may be compared with an $mth$-order  | 
| 863 | 
  | 
  | 
Shapiro (1970) filter response function, defined as $1-\sin^m({k \Delta x \over 2})$, | 
| 864 | 
  | 
  | 
shown in Figure \ref{fig:fizhi:lanczos}. | 
| 865 | 
  | 
  | 
It should be noted that negative values in the topography resulting from | 
| 866 | 
  | 
  | 
the filtering procedure are {\em not} filled. | 
| 867 | 
  | 
  | 
 | 
| 868 | 
  | 
  | 
\begin{figure*}[htbp] | 
| 869 | 
  | 
  | 
  \centerline{  \epsfysize=7.0in  \epsfbox{lanczos.ps}} | 
| 870 | 
  | 
  | 
  \caption{ \label{fig:fizhi:lanczos} Comparison between the Lanczos and $mth$-order Shapiro filter  | 
| 871 | 
  | 
  | 
  response functions for $m$ = 2, 4, and 8. } | 
| 872 | 
  | 
  | 
\end{figure*} | 
| 873 | 
  | 
  | 
 | 
| 874 | 
  | 
  | 
The standard deviation of the subgrid-scale topography | 
| 875 | 
  | 
  | 
is computed from a modified version of the the Navy 10 minute by 10 minute dataset. | 
| 876 | 
  | 
  | 
The 10 minute by 10 minute topography is passed through a wavelet | 
| 877 | 
  | 
  | 
filter in both dimensions which removes the scale smaller than 20 minutes. | 
| 878 | 
  | 
  | 
The topography is then averaged to $1^\circ x 1^\circ$ grid resolution, and then | 
| 879 | 
  | 
  | 
re-interpolated back to the 10 minute by 10 minute resolution.  | 
| 880 | 
  | 
  | 
The sub-grid scale variance is constructed based on this smoothed dataset. | 
| 881 | 
  | 
  | 
 | 
| 882 | 
  | 
  | 
 | 
| 883 | 
molod | 
1.2 | 
\subsubsection{Upper Level Moisture} | 
| 884 | 
molod | 
1.1 | 
The fizhi package uses climatological water vapor data above 100 mb from the Stratospheric Aerosol and Gas  | 
| 885 | 
  | 
  | 
Experiment (SAGE) as input into the model's radiation packages.  The SAGE data is archived | 
| 886 | 
  | 
  | 
as monthly zonal means at 5$^\circ$ latitudinal resolution.  The data is interpolated to the | 
| 887 | 
  | 
  | 
model's grid location and current time, and blended with the GCM's moisture data.  Below 300 mb, | 
| 888 | 
  | 
  | 
the model's moisture data is used.  Above 100 mb, the SAGE data is used.  Between 100 and 300 mb, | 
| 889 | 
  | 
  | 
a linear interpolation (in pressure) is performed using the data from SAGE and the GCM.  | 
| 890 | 
  | 
  | 
 |