Parcel Model. Meteorology September 3, 2008

Similar documents
Parcel Model. Atmospheric Sciences September 30, 2012

Simplified Microphysics. condensation evaporation. evaporation

Diabatic Processes. Diabatic processes are non-adiabatic processes such as. entrainment and mixing. radiative heating or cooling

Lecture Ch. 6. Condensed (Liquid) Water. Cloud in a Jar Demonstration. How does saturation occur? Saturation of Moist Air. Saturation of Moist Air

1. Water Vapor in Air

Radiative equilibrium Some thermodynamics review Radiative-convective equilibrium. Goal: Develop a 1D description of the [tropical] atmosphere

Meteorology 6150 Cloud System Modeling

PALM - Cloud Physics. Contents. PALM group. last update: Monday 21 st September, 2015

Thermodynamics Review [?] Entropy & thermodynamic potentials Hydrostatic equilibrium & buoyancy Stability [dry & moist adiabatic]

2σ e s (r,t) = e s (T)exp( rr v ρ l T ) = exp( ) 2σ R v ρ l Tln(e/e s (T)) e s (f H2 O,r,T) = f H2 O

Dynamic Meteorology: lecture 2

Clouds and turbulent moist convection

Outline. Aim. Gas law. Pressure. Scale height Mixing Column density. Temperature Lapse rate Stability. Condensation Humidity.

Atmospheric Dynamics: lecture 2

Chapter 5. Atmospheric Moisture

ATMO 551a Fall 08. Equivalent Potential Temperature

ATMO 551a Moist Adiabat Fall Change in internal energy: ΔU

Governing Equations and Scaling in the Tropics

ESCI 485 Air/Sea Interaction Lesson 1 Stresses and Fluxes Dr. DeCaria

Chapter 4 Water Vapor

Clouds associated with cold and warm fronts. Whiteman (2000)

1. Static Stability. (ρ V ) d2 z (1) d 2 z. = g (2) = g (3) T T = g T (4)

(Assignment continues on next page) 1

2.1 Effects of a cumulus ensemble upon the large scale temperature and moisture fields by induced subsidence and detrainment

Measuring State Parameters of the Atmosphere

A Novel Approach for Simulating Droplet Microphysics in Turbulent Clouds

GEF2200 atmospheric physics 2018

ENTRAINMENT-MIXING IN SHALLOW CUMULUS AND THE ONSET OF PRECIPITATION

Exam 1 (Chaps. 1-6 of the notes)

Convection and buoyancy oscillation

UNRESOLVED ISSUES. 1. Spectral broadening through different growth histories 2. Entrainment and mixing 3. In-cloud activation

Q. Deng a, NYU Abu Dhabi G. Hernandez-Duenas b, UNAM A. Majda, Courant S. Stechmann, UW-Madison L.M. Smith, UW-Madison

Project 3 Convection and Atmospheric Thermodynamics

Mixing and Turbulence

df dz = dp dt Essentially, this is just a statement of the first law in one of the forms we derived earlier (expressed here in W m 3 ) dq p dt dp

z g + F w (2.56) p(x, y, z, t) = p(z) + p (x, y, z, t) (2.120) ρ(x, y, z, t) = ρ(z) + ρ (x, y, z, t), (2.121)

Clouds and atmospheric convection

Multi-Scale Modeling of Turbulence and Microphysics in Clouds. Steven K. Krueger University of Utah

The Clausius-Clapeyron and the Kelvin Equations

Warm Rain Precipitation Processes

Sec Water vapour variables each has its own usefulness 2/11 The ideal gas law inter-relates vapour pressure (e) & absolute humidity ( ρv) 1 e

Atsc final Equations: page 1/6

On Formulas for Equivalent Potential Temperature

GEF2200 Atmosfærefysikk 2012

The perturbation pressure, p, can be represented as the sum of a hydrostatic pressure perturbation p h and a nonhydrostatic pressure perturbation p nh

P sat = A exp [B( 1/ /T)] B= 5308K. A=6.11 mbar=vapor press. 0C.

Kelvin Effect. Covers Reading Material in Chapter 10.3 Atmospheric Sciences 5200 Physical Meteorology III: Cloud Physics

Goal: Use understanding of physically-relevant scales to reduce the complexity of the governing equations

Temperature and Thermodynamics, Part II. Topics to be Covered

Chapter 6 Clouds. Cloud Development

where p oo is a reference level constant pressure (often 10 5 Pa). Since θ is conserved for adiabatic motions, a prognostic temperature equation is:

Today s Lecture: Atmosphere finish primitive equations, mostly thermodynamics

The Atmospheric Boundary Layer. The Surface Energy Balance (9.2)

Synoptic Meteorology I: Skew-T Diagrams and Thermodynamic Properties

Atm S 547 Boundary-Layer Meteorology. Lecture 15. Subtropical stratocumulus-capped boundary layers. In this lecture

Introduction. Lecture 6: Water in Atmosphere. How Much Heat Is Brought Upward By Water Vapor?

Chapter 5 - Atmospheric Moisture

Toward the Mitigation of Spurious Cloud-Edge Supersaturation in Cloud Models

NWP Equations (Adapted from UCAR/COMET Online Modules)

12.009/ Problem Set 2

1. Droplet Growth by Condensation

Effect of Turbulent Enhancemnt of Collision-coalescence on Warm Rain Formation in Maritime Shallow Convection

Atmospheric Dynamics: lecture 3

Diffusional Growth of Liquid Phase Hydrometeros.

Buoyancy and Coriolis forces

Precipitation Processes METR σ is the surface tension, ρ l is the water density, R v is the Gas constant for water vapor, T is the air

Precipitation Processes

ScienceDirect. Numerical modeling of atmospheric water content and probability evaluation. Part I

Spring Semester 2011 March 1, 2011

( ) = 1005 J kg 1 K 1 ;

Needs work : define boundary conditions and fluxes before, change slides Useful definitions and conservation equations

Observational and Numerical Studies on Turbulent Entrainment-Mixing

Reynolds Averaging. We separate the dynamical fields into slowly varying mean fields and rapidly varying turbulent components.

1 Introduction to Governing Equations 2 1a Methodology... 2

Interfacial Numerics For The Mathematical Modeling of Cloud Edge Dynamics

Generating cloud drops from CCN. Wallace & Hobbs (1977)

Exam 2: Cloud Physics April 16, 2008 Physical Meteorology Questions 1-10 are worth 5 points each. Questions are worth 10 points each.

Isentropic Analysis. Much of this presentation is due to Jim Moore, SLU

Lecture 7: The Monash Simple Climate

Aircraft Icing Icing Physics

PRECIPITATION PROCESSES

First Law of Thermodynamics

Lecture 10: Climate Sensitivity and Feedback

Lecture 07 February 10, 2010 Water in the Atmosphere: Part 1

Clouds and atmospheric convection

Thermodynamics ENGR360-MEP112 LECTURE 7

Chapter 1. Governing Equations of GFD. 1.1 Mass continuity

WaVaCS summerschool Autumn 2009 Cargese, Corsica

Boundary layer equilibrium [2005] over tropical oceans

Chapter 8 cont. Clouds and Storms

2. Conservation laws and basic equations

Precipitating convection in cold air: Virtual potential temperature structure

Measuring State Parameters of the Atmosphere

Atmospheric Thermodynamics

Modeling of cloud microphysics: from simple concepts to sophisticated parameterizations. Part I: warm-rain microphysics

4 WATER VAPOR. Contents 4.1. VAPOR PRESSURE AT SATURATION

The Parameterization of Deep Convection and the Betts-Miller scheme

Impact of different cumulus parameterizations on the numerical simulation of rain over southern China

Chapter 7 Precipitation Processes

5. General Circulation Models

Transcription:

Parcel Model Meteorology 5210 September 3, 2008 1 Governing Equations for Precipitating Convection For precipitating convection, we have the following set of equations for potential temperature, θ, mixing ratios of water vapor, w, cloud water, l, and rainwater, r; dθ dt = L c p π (C E r) + D θ dw dt = (C E r) + D w dl dt = C A r + D l dr dt = 1 ρ z ( ρv r) E r + A r + D r The dynamics are governed by the equations for the x, y, and z velocity components, U, V, and W ; and non-dimensional pressure perturbation, π 1 : dw dt du dt = c p θ v π 1 x + D U dv dt = c θ π 1 p v y + D V ( ) π 1 θ = c p θv z + g θ + 0.61(w w) l r + D W θ [ π 1 t = c2 s 2 c p θv x ( θ v U) y ( θ v V ) + ] z ( θ v W ). 1

where θ v is the virtual potential temperature, C is the net condensation rate, E r is the rain evaporation rate, A r is the cloud-to-rain water conversion rate, and D i represents the effects of turbulent mixing. Overbars indicate hydrostatic, reference state values. The hydrostatic reference state obeys d π dz = g, c p θv where π, the nondimensional pressure (Exner function), is defined as π ( ) R/cp p where p 0 is a constant reference pressure. T is given by 2 Parcel Model p 0 T = πθ. The parcel model assumes that convection consists of discrete buoyant parcels, often called thermals. The goal of the parcel model is to predict the average properties of such thermals. In the simplest versions of the parcel model, we assume that π = 0, and that any rain falls out of the parcel immediately. In the parcel model, the turbulent mixing terms D i represent entrainment of environmental air. The resulting equations for the average properties of a parcel are: dw dt = g dθ dt = γc + D θ (1) dw dt = C + D w (2) dl dt = C A r + D l (3) ( ) θ θ + 0.61(w w) l + D W (4) θ where γ L/(c p π). This set governs the properties of an air parcel as it undergoes ascent or descent. The vertical velocity equation determines the rate of ascent or descent of the parcel, and therefore its height as a function of time. We can determine the parcel s pressure from its height using the hydrostatic equation since π = 0. 2

3 Saturation Adjustment In general, this set of equations must be solved (or integrated) numerically. Given the initial parcel properties, we use the differential equations to calculate the change of the parcel properties over a small time interval. We then use the calculated changes to update the parcel properties. This process is repeated as many times as desired. Each small time interval, or time step, corresponds to a change in the parcel s pressure from p n to p n+1 = p n + p where n is the old time level and n + 1 denotes the new time level. For computational purposes, we consider the changes that occur in the parcel s properties during each time step to take place in two stages: 1. All processes operate except phase changes involving cloud droplets (C = 0). 2. Only phase changes involving cloud droplets operate (C 0). This two-stage process is very nearly thermodynamically equivalent to the actual, continuous process. Let the values of θ, w, and l after the first stage be θ, w, and l. The air may be subsaturated, supersaturated, or exactly saturated at this point. It is observed that supersaturation is very small in real clouds. We will simply assume that supersaturation does not occur. We will also assume that cloud droplets evaporate immediately when the relative humidity falls below 100%. In other words, when the air is saturated, w = w s (T, p), where w s is the saturation mixing ratio, and when unsaturated, l = 0. Saturation adjustment, the second stage, enforces these conditions. During the saturation adjustment, θ = γc t, w = C t, l = C t, where φ φ n+1 φ, for any variable φ, and t is the time step. See Fig. 1. The unknown C can be eliminated from this set of equations by forming the following set: θ + γ w = 0, These imply that: w + l = 0. θ n+1 + γw n+1 = θ + γw (5) w n+1 + l n+1 = w + l. (6) 3

These two equations express conservation of energy (first law of thermodynamics) and conservation of suspended water mixing ratio (vapor and cloud droplets), respectively. They also form a set of two equations in three unknowns: θ n+1, w n+1, and l n+1. This means that before we can solve for the unknowns, we need to provide another equation. We stated above that we will assume that when the air is saturated, w = w s, and when unsaturated, l = 0. At any given time, only one of these conditions can hold. We first assume that the air will be exactly saturated after adjustment, so that where w s (T, p) is the saturation mixing ratio, w n+1 = w s (T n+1, p n+1 ), (7) w s (T, p) = 0.622 e s(t ) p e s (T ), (8) and e s (T ) is the saturation vapor pressure. One may use Bolton s (1980) formula for e s (T ): ( ) 17.67Tc e s (T ) = 6.112 exp, (9) T c + 243.5 where e s is in mb, T c = T T 0, and T 0 = 273.15 K. Equation (7) closes the set (5), (6), and (7). However, this set must be solved iteratively because w s is a non-linear function of T. To obtain a direct (non-iterative) solution, expand w s in a Taylor series in T about w s (T, p n+1 ) and neglect all terms of second and higher order: w n+1 w s (T, p n+1 ) + ( ) ws (T n+1 T ). (10) T T =T,p=p n+1 The set (5), (6), and (10) can now be solved algebraically for θ n+1, w n+1, and l n+1. To solve the set, we first write (10) in terms of θ instead of T : where w s w s (T, p n+1 ), α α(t, p n+1 ), and w n+1 = w s + α (θ n+1 θ ), (11) πp α(t, p) 0.622 (p e s (T )) 2 For de s /dt, one may use the Clausius-Clapeyron equation: de s dt = ( ) des. (12) dt T Le s R v T 2, (13) 4

where L = 2.5 10 6 J/kg and R v = 461.5 J/(kg K). Now use (11) in (5) to eliminate w n+1. Then solve for θ n+1 : θ n+1 = θ + γ 1 + γα (w w s). (14) Once θ n+1 is known from (14), we can immediately obtain w n+1 from (11), and l n+1 from (6). If w n+1 w +l, then (6) implies that l n+1 0. This means that our assumption that the air is saturated is correct. If w n+1 > w +l, (6) implies that l n+1 < 0, which is impossible and means that our assumption of saturation is incorrect. Therefore, the air is not saturated, so l n+1 = 0 (15) replaces (10). Then (5) and (6) become w n+1 = w + l, (16) θ n+1 = θ γ(w n+1 w ). (17) p n+1 θ θ n+1 w n+1 θ w w p n θ n w n saturation mixing ratio saturation adiabat dry adiabat Figure 1: Saturation adjustment. 5

4 Diabatic Processes Both adiabatic and diabatic processes affect the thermodynamic properties of a parcel. These properties are governed by (1)-(3). Condensation of water vapor to form cloud droplets and evaporation of cloud droplets to form water vapor are (saturated) adiabatic processes. The net condensation rate is positive when more water is condensing than is evaporating, and negative when more water is evaporating than is condensing. In (1)-(3), the net condensation rate is denoted by C. It is implicitly determined by the saturation adjustment algorithm. The remaining processes, conversion of cloud water to rain (A r ) and entrainment (D θ, D w, D l ), are diabatic. They are usually represented explicitly. In (1)-(3), the process rates are per unit time interval. For example, A r ( ) dl = dt conversion to rain ( ) dr. dt conversion from cloud water We are often more interested in how the thermodynamic properties of a parcel change with pressure than with how they change with time. The equations that govern the rates of change with pressure of a parcel s thermodynamic properties are obtained from (1)-(3) by dividing by dp/dt: dθ dp = γĉ + ˆD θ (18) dw dp = Ĉ + ˆD w (19) dl dp = Ĉ Âr + ˆD l (20) In (18)-(20), the process rates are per unit decrease in pressure. As before, the net condensation rate, Ĉ, in (18)-(20), is implicitly determined by the saturation adjustment algorithm. The diabatic processes, conversion of cloud water to rain (Âr) and turbulent mixing ( ˆD θ, ˆD w, ˆD l ), remain to be specified. A very simple formulation of the conversion rate of cloud water to rain is ( Âr dl ) = Cl, dp conversion to rain for dp/dt < 0 only, with C = 2 10 2 mb 1. 6

4.1 Entrainment The other terms in (18)-(20) represent the effects of entrainment. Entrainment is the incorporation of environmental air into the parcel (Fig. 2). The fractional rate of entrainment of a parcel of mass m that entrains a blob of mass dm while the pressure changes by dp (due to ascent) is λ 1 dm m dp. droplet evaporation molecular diffusion turbulent deformation entrainment saturated parcel Figure 2: Entrainment. The rate of change of a scalar φ due to entrainment is ( ˆD φ dφ ) = λ(φ φ e ), (21) dp entrainment where φ e is the value of φ in the entrained air. We can derive (21) from ( dφ ) φ after ent φ before ent = lim dp p 0 p entrainment 7 (22)

using and Substitution of (23) and (24) into (22) gives ( dφ ) dp entrainment By applying (21) to θ, w, and l, we obtain φ before ent = φ (23) φ after ent = mφ + m φ e m + m. (24) 1 m = lim p 0 m + m p (φ φ e) = 1 dm m dp (φ φ e) = λ(φ φ e ). ˆD θ = λ(θ θ e ), (25) ˆD w = λ(w w e ), (26) ˆD l = λ(l l e ) = λl. (27) In cumulus clouds, the fractional rate of entrainment, λ, ranges from about 0.1 km 1 to 2 km 1. Cloud-top height is largely determined by λ: deep clouds are associated with small values, and shallow clouds with large values. It has been found from field studies that λ 0.2/R, where R is the cloud radius. 8