/[MITgcm]/manual/s_phys_pkgs/text/fizhi.tex
ViewVC logotype

Annotation of /manual/s_phys_pkgs/text/fizhi.tex

Parent Directory Parent Directory | Revision Log Revision Log | View Revision Graph Revision Graph


Revision 1.4 - (hide annotations) (download) (as text)
Wed Jan 28 18:37:08 2004 UTC (21 years, 5 months ago) by molod
Branch: MAIN
Changes since 1.3: +5 -5 lines
File MIME type: application/x-tex
Added path to file names

1 molod 1.1 \section{Fizhi: High-end Atmospheric Physics}
2 molod 1.3 \input{texinputs/epsf.tex}
3 molod 1.1
4     \subsection{Introduction}
5     The fizhi (high-end atmospheric physics) package includes a collection of state-of-the-art
6     physical parameterizations for atmospheric radiation, cumulus convection, atmospheric
7     boundary layer turbulence, and land surface processes.
8    
9     % *************************************************************************
10     % *************************************************************************
11    
12     \subsection{Equations}
13    
14     \subsubsection{Moist Convective Processes}
15    
16 molod 1.2 \subsubsection{Sub-grid and Large-scale Convection}
17 molod 1.1 \label{sec:fizhi:mc}
18    
19     Sub-grid scale cumulus convection is parameterized using the Relaxed Arakawa
20     Schubert (RAS) scheme of Moorthi and Suarez (1992), which is a linearized Arakawa Schubert
21     type scheme. RAS predicts the mass flux from an ensemble of clouds. Each subensemble is identified
22     by its entrainment rate and level of neutral bouyancy which are determined by the grid-scale properties.
23    
24     The thermodynamic variables that are used in RAS to describe the grid scale vertical profile are
25     the dry static energy, $s=c_pT +gz$, and the moist static energy, $h=c_p T + gz + Lq$.
26     The conceptual model behind RAS depicts each subensemble as a rising plume cloud, entraining
27     mass from the environment during ascent, and detraining all cloud air at the level of neutral
28     buoyancy. RAS assumes that the normalized cloud mass flux, $\eta$, normalized by the cloud base
29     mass flux, is a linear function of height, expressed as:
30     \[
31     \pp{\eta(z)}{z} = \lambda \hspace{0.4cm}or\hspace{0.4cm} \pp{\eta(P^{\kappa})}{P^{\kappa}} =
32     -{c_p \over {g}}\theta\lambda
33     \]
34     where we have used the hydrostatic equation written in the form:
35     \[
36     \pp{z}{P^{\kappa}} = -{c_p \over {g}}\theta
37     \]
38    
39     The entrainment parameter, $\lambda$, characterizes a particular subensemble based on its
40     detrainment level, and is obtained by assuming that the level of detrainment is the level of neutral
41     buoyancy, ie., the level at which the moist static energy of the cloud, $h_c$, is equal
42     to the saturation moist static energy of the environment, $h^*$. Following Moorthi and Suarez (1992),
43     $\lambda$ may be written as
44     \[
45     \lambda = { {h_B - h^*_D} \over { {c_p \over g} {\int_{P_D}^{P_B}\theta(h^*_D-h)dP^{\kappa}}} } ,
46     \]
47    
48     where the subscript $B$ refers to cloud base, and the subscript $D$ refers to the detrainment level.
49    
50    
51     The convective instability is measured in terms of the cloud work function $A$, defined as the
52     rate of change of cumulus kinetic energy. The cloud work function is
53     related to the buoyancy, or the difference
54     between the moist static energy in the cloud and in the environment:
55     \[
56     A = \int_{P_D}^{P_B} { {\eta \over {1 + \gamma} }
57     \left[ {{h_c-h^*} \over {P^{\kappa}}} \right] dP^{\kappa}}
58     \]
59    
60     where $\gamma$ is ${L \over {c_p}}\pp{q^*}{T}$ obtained from the Claussius Clapeyron equation,
61     and the subscript $c$ refers to the value inside the cloud.
62    
63    
64     To determine the cloud base mass flux, the rate of change of $A$ in time {\em due to dissipation by
65     the clouds} is assumed to approximately balance the rate of change of $A$ {\em due to the generation
66     by the large scale}. This is the quasi-equilibrium assumption, and results in an expression for $m_B$:
67     \[
68     m_B = {{- \left.{dA \over dt} \right|_{ls}} \over K}
69     \]
70    
71     where $K$ is the cloud kernel, defined as the rate of change of the cloud work function per
72     unit cloud base mass flux, and is currently obtained by analytically differentiating the
73     expression for $A$ in time.
74     The rate of change of $A$ due to the generation by the large scale can be written as the
75     difference between the current $A(t+\Delta t)$ and its equillibrated value after the previous
76     convective time step
77     $A(t)$, divided by the time step. $A(t)$ is approximated as some critical $A_{crit}$,
78     computed by Lord (1982) from $in situ$ observations.
79    
80    
81     The predicted convective mass fluxes are used to solve grid-scale temperature
82     and moisture budget equations to determine the impact of convection on the large scale fields of
83     temperature (through latent heating and compensating subsidence) and moisture (through
84     precipitation and detrainment):
85     \[
86     \left.{\pp{\theta}{t}}\right|_{c} = \alpha { m_B \over {c_p P^{\kappa}}} \eta \pp{s}{p}
87     \]
88     and
89     \[
90     \left.{\pp{q}{t}}\right|_{c} = \alpha { m_B \over {L}} \eta (\pp{h}{p}-\pp{s}{p})
91     \]
92     where $\theta = {T \over P^{\kappa}}$, $P = (p/p_0)$, and $\alpha$ is the relaxation parameter.
93    
94     As an approximation to a full interaction between the different allowable subensembles,
95     many clouds are simulated frequently, each modifying the large scale environment some fraction
96     $\alpha$ of the total adjustment. The parameterization thereby ``relaxes'' the large scale environment
97     towards equillibrium.
98    
99     In addition to the RAS cumulus convection scheme, the fizhi package employs a
100     Kessler-type scheme for the re-evaporation of falling rain (Sud and Molod, 1988), which
101     correspondingly adjusts the temperature assuming $h$ is conserved. RAS in its current
102     formulation assumes that all cloud water is deposited into the detrainment level as rain.
103     All of the rain is available for re-evaporation, which begins in the level below detrainment.
104     The scheme accounts for some microphysics such as
105     the rainfall intensity, the drop size distribution, as well as the temperature,
106     pressure and relative humidity of the surrounding air. The fraction of the moisture deficit
107     in any model layer into which the rain may re-evaporate is controlled by a free parameter,
108     which allows for a relatively efficient re-evaporation of liquid precipitate and larger rainout
109     for frozen precipitation.
110    
111     Due to the increased vertical resolution near the surface, the lowest model
112     layers are averaged to provide a 50 mb thick sub-cloud layer for RAS. Each time RAS is
113     invoked (every ten simulated minutes),
114     a number of randomly chosen subensembles are checked for the possibility
115     of convection, from just above cloud base to 10 mb.
116    
117     Supersaturation or large-scale precipitation is initiated in the fizhi package whenever
118     the relative humidity in any grid-box exceeds a critical value, currently 100 \%.
119     The large-scale precipitation re-evaporates during descent to partially saturate
120     lower layers in a process identical to the re-evaporation of convective rain.
121    
122    
123 molod 1.2 \subsubsection{Cloud Formation}
124 molod 1.1 \label{sec:fizhi:clouds}
125    
126     Convective and large-scale cloud fractons which are used for cloud-radiative interactions are determined
127     diagnostically as part of the cumulus and large-scale parameterizations.
128     Convective cloud fractions produced by RAS are proportional to the
129     detrained liquid water amount given by
130    
131     \[
132     F_{RAS} = \min\left[ {l_{RAS}\over l_c}, 1.0 \right]
133     \]
134    
135     where $l_c$ is an assigned critical value equal to $1.25$ g/kg.
136     A memory is associated with convective clouds defined by:
137    
138     \[
139     F_{RAS}^n = \min\left[ F_{RAS} + (1-{\Delta t_{RAS}\over\tau})F_{RAS}^{n-1}, 1.0 \right]
140     \]
141    
142     where $F_{RAS}$ is the instantanious cloud fraction and $F_{RAS}^{n-1}$ is the cloud fraction
143     from the previous RAS timestep. The memory coefficient is computed using a RAS cloud timescale,
144     $\tau$, equal to 1 hour. RAS cloud fractions are cleared when they fall below 5 \%.
145    
146     Large-scale cloudiness is defined, following Slingo and Ritter (1985), as a function of relative
147     humidity:
148    
149     \[
150     F_{LS} = \min\left[ { \left( {RH-RH_c \over 1-RH_c} \right) }^2, 1.0 \right]
151     \]
152    
153     where
154    
155     \bqa
156     RH_c & = & 1-s(1-s)(2-\sqrt{3}+2\sqrt{3} \, s)r \nonumber \\
157     s & = & p/p_{surf} \nonumber \\
158     r & = & \left( {1.0-RH_{min} \over \alpha} \right) \nonumber \\
159     RH_{min} & = & 0.75 \nonumber \\
160     \alpha & = & 0.573285 \nonumber .
161     \eqa
162    
163     These cloud fractions are suppressed, however, in regions where the convective
164     sub-cloud layer is conditionally unstable. The functional form of $RH_c$ is shown in
165     Figure (\ref{fig:fizhi:rhcrit}).
166    
167     \begin{figure*}[htbp]
168     \vspace{0.4in}
169 molod 1.4 \centerline{ \epsfysize=4.0in \epsfbox{part6/rhcrit.ps}}
170 molod 1.1 \vspace{0.4in}
171     \caption [Critical Relative Humidity for Clouds.]
172     {Critical Relative Humidity for Clouds.}
173     \label{fig:fizhi:rhcrit}
174     \end{figure*}
175    
176     The total cloud fraction in a grid box is determined by the larger of the two cloud fractions:
177    
178     \[
179     F_{CLD} = \max \left[ F_{RAS},F_{LS} \right] .
180     \]
181    
182     Finally, cloud fractions are time-averaged between calls to the radiation packages.
183    
184    
185     \subsubsection{Radiation}
186    
187     The parameterization of radiative heating in the fizhi package includes effects
188     from both shortwave and longwave processes.
189     Radiative fluxes are calculated at each
190     model edge-level in both up and down directions.
191     The heating rates/cooling rates are then obtained
192     from the vertical divergence of the net radiative fluxes.
193    
194     The net flux is
195     \[
196     F = F^\uparrow - F^\downarrow
197     \]
198     where $F$ is the net flux, $F^\uparrow$ is the upward flux and $F^\downarrow$ is
199     the downward flux.
200    
201     The heating rate due to the divergence of the radiative flux is given by
202     \[
203     \pp{\rho c_p T}{t} = - \pp{F}{z}
204     \]
205     or
206     \[
207     \pp{T}{t} = \frac{g}{c_p \pi} \pp{F}{\sigma}
208     \]
209     where $g$ is the accelation due to gravity
210     and $c_p$ is the heat capacity of air at constant pressure.
211    
212     The time tendency for Longwave
213     Radiation is updated every 3 hours. The time tendency for Shortwave Radiation is updated once
214     every three hours assuming a normalized incident solar radiation, and subsequently modified at
215     every model time step by the true incident radiation.
216     The solar constant value used in the package is equal to 1365 $W/m^2$
217     and a $CO_2$ mixing ratio of 330 ppm.
218     For the ozone mixing ratio, monthly mean zonally averaged
219     climatological values specified as a function
220     of latitude and height (Rosenfield, et al., 1987) are linearly interpolated to the current time.
221    
222    
223 molod 1.2 \subsubsection{Shortwave Radiation}
224 molod 1.1
225     The shortwave radiation package used in the package computes solar radiative
226     heating due to the absoption by water vapor, ozone, carbon dioxide, oxygen,
227     clouds, and aerosols and due to the
228     scattering by clouds, aerosols, and gases.
229     The shortwave radiative processes are described by
230     Chou (1990,1992). This shortwave package
231     uses the Delta-Eddington approximation to compute the
232     bulk scattering properties of a single layer following King and Harshvardhan (JAS, 1986).
233     The transmittance and reflectance of diffuse radiation
234     follow the procedures of Sagan and Pollock (JGR, 1967) and Lacis and Hansen (JAS, 1974).
235    
236     Highly accurate heating rate calculations are obtained through the use
237     of an optimal grouping strategy of spectral bands. By grouping the UV and visible regions
238     as indicated in Table \ref{tab:fizhi:solar2}, the Rayleigh scattering and the ozone absorption of solar radiation
239     can be accurately computed in the ultraviolet region and the photosynthetically
240     active radiation (PAR) region.
241     The computation of solar flux in the infrared region is performed with a broadband
242     parameterization using the spectrum regions shown in Table \ref{tab:fizhi:solar1}.
243     The solar radiation algorithm used in the fizhi package can be applied not only for climate studies but
244     also for studies on the photolysis in the upper atmosphere and the photosynthesis in the biosphere.
245    
246     \begin{table}[htb]
247     \begin{center}
248     {\bf UV and Visible Spectral Regions} \\
249     \vspace{0.1in}
250     \begin{tabular}{|c|c|c|}
251     \hline
252     Region & Band & Wavelength (micron) \\ \hline
253     \hline
254     UV-C & 1. & .175 - .225 \\
255     & 2. & .225 - .245 \\
256     & & .260 - .280 \\
257     & 3. & .245 - .260 \\ \hline
258     UV-B & 4. & .280 - .295 \\
259     & 5. & .295 - .310 \\
260     & 6. & .310 - .320 \\ \hline
261     UV-A & 7. & .320 - .400 \\ \hline
262     PAR & 8. & .400 - .700 \\
263     \hline
264     \end{tabular}
265     \end{center}
266     \caption{UV and Visible Spectral Regions used in shortwave radiation package.}
267     \label{tab:fizhi:solar2}
268     \end{table}
269    
270     \begin{table}[htb]
271     \begin{center}
272     {\bf Infrared Spectral Regions} \\
273     \vspace{0.1in}
274     \begin{tabular}{|c|c|c|}
275     \hline
276     Band & Wavenumber(cm$^{-1}$) & Wavelength (micron) \\ \hline
277     \hline
278     1 & 1000-4400 & 2.27-10.0 \\
279     2 & 4400-8200 & 1.22-2.27 \\
280     3 & 8200-14300 & 0.70-1.22 \\
281     \hline
282     \end{tabular}
283     \end{center}
284     \caption{Infrared Spectral Regions used in shortwave radiation package.}
285     \label{tab:fizhi:solar1}
286     \end{table}
287    
288     Within the shortwave radiation package,
289     both ice and liquid cloud particles are allowed to co-exist in any of the model layers.
290     Two sets of cloud parameters are used, one for ice paticles and the other for liquid particles.
291     Cloud parameters are defined as the cloud optical thickness and the effective cloud particle size.
292     In the fizhi package, the effective radius for water droplets is given as 10 microns,
293     while 65 microns is used for ice particles. The absorption due to aerosols is currently
294     set to zero.
295    
296     To simplify calculations in a cloudy atmosphere, clouds are
297     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 molod 1.4 \centerline{ \epsfysize=4.0in %\epsfbox{part6/rhcrit.ps}
311 molod 1.1 }
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 molod 1.4 \centerline{ \epsfysize=7in \epsfbox{part6/surftypes.ps}}
719 molod 1.1 \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 molod 1.4 \centerline{ \epsfysize=7in \epsfbox{part6/surftypes.descrip.ps}}
726 molod 1.1 \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 molod 1.4 \centerline{ \epsfysize=7.0in \epsfbox{part6/lanczos.ps}}
870 molod 1.1 \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    

  ViewVC Help
Powered by ViewVC 1.1.22