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Resolving Clouds in Atmospheric Models

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Title: Resolving Clouds in Atmospheric Models


1
Resolving Clouds in Atmospheric Models
Bill Skamarock NCAR/MMM
2
(No Transcript)
3
Clouds in the Atmosphere
Weather Precipitation rain, snow, hail
Wind, radiation, visibility
Chemistry/Air-Quality Chemical processing
(acid rain) Ozone chemistry Transport of
pollutants Wet deposition
Climate Moisture redistribution and
precipitation hydrological cycle
Radiation
4
Representation of Clouds in Atmospheric Models
Large-scale models ?h gt 30 km
  • The effects of the clouds are diagnosed
    (parameterized) from
  • the predicted water vapor field
  • precipitation
  • vertical transport and redistribution of
    moisture and heat
  • radiative effects
  • turbulence

5
Representation of Clouds in Atmospheric Models
Meso-scale models 8 km lt ?x lt 30 km
  • The effects of the clouds are partially prognosed
    from
  • predicted fields water vapor, cloud water and
    ice, and frozen
  • and liquid precipitation.
  • Some portions of the cloud effects are still
    diagnosed (parameterized).
  • some precipitation
  • some vertical transport and redistribution of
    moisture and heat
  • turbulence

6
Representation of Clouds in Atmospheric Models
Cloud-scale models 100 m lt ?x lt 8 km
The effects of the clouds are entirely prognosed
from predicted fields water vapor, cloud water
and ice, and frozen and liquid precipitation.
7
Problems with Modeled Clouds
  • Large-scale models (clouds completely diagnosed)
  • Poor diagnosis of cloud type, composition, and
    precipitation.
  • Clouds and cloud-systems do not know about
    vertical wind shear.
  • Implications
  • (1) Large uncertainty in climate-model
    predictions
  • (2) A key limiting factor for weather-forecast
    accuracy

8
Meso-/Cloud-Scale Model (WRF) Hurricane Katrina
Reflectivity at Landfall
29 Aug 2005 14 Z
Mobile AL Radar
4 km WRF, 62 h forecast
9
Realtime WRF 4 km BAMEX Forecast
12 h forecast Initialized 5/24/03 00Z
Composite NEXRAD Radar
Reflectivity Forecast
10
Realtime WRF 4 km BAMEX Forecast
12 h forecast Initialized 5/24/03 00Z
Composite NEXRAD Radar
Reflectivity Forecast
11
Vertical Velocity at z 5 km, t 5 h
Along-line cell spacing 6 to 8 Dh until Dh lt
500 m (cell diameter is 3 to 4 km in converged
solutions)
(Courtesy of G. Bryan, NCAR/MMM)
12
Simulations using ?x 4 km to ?x 250 m
?x 4000 m
?x 1000 m
Weak-shear case Vertical cross-section of
tracer concentration at 6 h (not a line-average).
?x 250 m
(Courtesy of G. Bryan, NCAR/MMM)
13
Surface rain rate, weak shear
  • 250 m solution close to convergence
  • 1, 2, 4 km solutions over-predict precipitation.

(Courtesy of G. Bryan, NCAR/MMM)
14
Problems with Cloud Models
  • Solutions do not statistically converge until
  • ?h lt O(100 m) - turbulence problem

When will our applications get there? (assume
comp. speed doubles every 18 months)
Climate - not in my lifetime Weather - global
(state-of-the-art ?h 25 km) 36 years
(maybe in my lifetime) Weather - regional
(state-of-the-art ?h 7 km)
19 years (hopefully in my lifetime but
will I be retired?)
15
Cloud Models
  • Cloud models solve the 3D Euler equations and
    transport equations for water vapor and
    liquid/solid water species with subgrid models
    for turbulence and other models
    (parameterizations) for everything else (moisture
    phase changes, radiation, land-surface,
    ocean-surface, etc.)
  • Generally speaking, there are 2 flavors
  • (1) Semi-Implicit (implicit treatment of acoustic
    and gravity waves)
  • usually found in global models on lat-long
    grids pole problem.
  • (2) Explicit (explicit treatment of acoustic and
    gravity waves)
  • some form of splitting is usually used to
    advance acoustic and
  • gravity waves with a shorter timestep.

16
WRF-ARW
  • Terrain-following hydrostatic pressure vertical
    coordinate
  • Arakawa C-grid
  • 3rd order Runge-Kutta split-explicit time
    integration
  • Conserves mass, momentum, entropy, and scalars
    using flux form prognostic equations
  • 5th order upwind or 6th order centered
    differencing for advection
  • Limited area (not global)

(more info - http//www.mmm.ucar.edu/wrf/users/)
17
Why Explicit
  • Explicit time integration with splitting is more
    efficient than implicit solvers (operations for a
    given level of accuracy).
  • Solver needs little tuning for application at
    different grid resolutions and problem sizes.
  • Easily parallelized for SM, DM and SM/DM
    architectures.

18
Time Integration in ARW
3rd Order Runge-Kutta time integration
advance
Amplification factor
19
Time-Split Runge-Kutta Integration Scheme
dt is the RK3 timestep
acoustic timestep (in this case dt/4)
20
Time-Split Runge-Kutta Integration Scheme
In DM applications A small amount of data is
communicated within each acoustic step.
21
Time-Split Runge-Kutta Integration Scheme
In DM applications A small amount of data is
communicated within each acoustic step. A larger
amount is data is communicated after each RK
substep.
22
Parallelism in WRF Multi-level Decomposition
Logical domain
1 Patch, divided into multiple tiles
  • Single version of code for efficient execution
    on
  • Distributed-memory
  • Shared-memory
  • Clusters of SMPs
  • Vector and microprocessors

Inter-processor communication
  • Model domains are decomposed for parallelism on
    two-levels
  • Patch section of model domain allocated to a
    distributed memory node
  • Tile section of a patch allocated to a
    shared-memory processor within a node this is
    also the scope of a model layer subroutine.
  • Distributed memory parallelism is over patches
    shared memory parallelism is over tiles within
    patches

23
WRF Software Framework Overview
  • Implementation of WRF Architecture
  • Hierarchical organization
  • Multiple dynamical cores
  • Plug compatible physics
  • Abstract interfaces (APIs) to external packages
  • Performance-portable

24
Courtesy of J. Michalakes see http//box.mmm.ucar
.edu/wrf/WG2/bench/ for more info
25
Petascale Computing and Clouds
  • Many effects of clouds on climate and weather are
    largely unknown/uncertain (observations lacking,
    models at coarse resolution have poor
    representation of clouds). Most important
    problem confronting dynamicists and modelers
    today.
  • Cloud-resolving (Dh O(100 m)) simulations of
    cloud systems are needed to understand cloud
    dynamics and to improve parameterizations - a
    petascale computing challenge.

cloud- mixing eddies
cloud systems
planetary waves synoptic systems
clouds
meters to 100s meters
102 - 104 meters
105 - 106 meters
gt106 meters
26
Petascale Computing and Clouds
  • Split-explicit cloud models are easiest to scale
    to peta-computing - no global data exchange or
    implicit solver needed, numerics are not scale
    dependent.
  • We can scale our problems to bigger machines.
  • Questions
  • What will new machine architectures look like?
  • Will we maintain efficiency with scaling and
    changes in machine architecture?
  • What code architecture changes will be needed?
  • Other problems load balancing, analysis, I/O.
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