Title: Making of a supermodel
1Making of a supermodel
ENVE 5103 November 14, 2007
2Applications of air quality models
- How air quality models are utilized beyond the
streamlined regulatory framework? - Examples of applications
- Inverse modeling of emissions using satellite
observations - Models as policy support tools
- High-order analysis
- Cross-boundary pollution transport
- Some other potential applications
- Future directions in modeling
3Air quality management system
Air quality models can contain more information
than we usually use (i.e. sensitivity
coefficients).
4Sensitivity analysis
- What is the response to possible changes in
inputs? - Were mainly concerned with emissions, but also
- Uncertain parameters such as deposition
velocities, rate constants, turbulence
parameterization, etc - Initial conditions ? practical significance in
air quality forecasting - In essence every modeling practice is sensitivity
analysis because were ultimately interested in
being able to characterize/predict the response. - Formal sensitivity analysis gaining more
momentum, in part owing to significant advance in
computational resources. - What if vs. How to questions?
5Local sensitivity coefficients
First-order sensitivities provide information
about slopes of the response surface, not
curvatures (nonlinearities).
6Forward vs. backward sensitivity analysis
Inputs/Sources
Outputs/Receptors
- Adjoint analysis is efficient for calculating
sensitivities of a small number of outputs with
respect to a large number of inputs. Forward
analysis is efficient for the opposite case. - Complementary methods (Source-based vs.
Receptor-based), each suitable for specific types
of problems.
7Model, forward, and adjoint formulations
- Forward sensitivity or DDM (Dunket et al., 1984)
- Backward/adjoint sensitivity (Sandu et al., 2005)
8High-order sensitivity analysis
9The question of nonlinearity
- Resulting mainly from the chemistry, but also
from aerosol thermodynamics and dynamics - Our analysis of air pollution control often
presumes linearity - First-order approximation
- Not an entirely bad assumption!
- By knowing second-order sensitivities
(curvatures) in addition to first-order ones
(slopes), we can explain the nonlinear behaviour
10Nonlinearity ozone isopleth
- Best example of nonlinearity in atmospheric
response
11Nonlinearity sensitivity characterization
12HDDM formulation
High-order DDM or HDDM (Hakami et al., 2003)
13Presence of nonlinearities -daytime
2nd order DDM
1st order DDM
14Presence of nonlinearities - nighttime
2nd order DDM
1st order DDM
15Time- and location-dependent isopleths
Ozone isopleth, peak location
High-order coefficients can be used in a Taylor
expansion for creating isopleths (Hakami et al.,
2004)
16Time evolution of isopleths
17Improved projections
18Projection errors
19Adjoin sensitivity analysis of ozone nonattainment
20Adjoint formulation
- Target-based, receptor-oriented method Depends
on the definition of a cost function ( J ) for
which sensitivity calculations are carried out. - Adjoint equations are integrated backward in
time. At each location and time adjoint variables
are gradients (sensitivities) of the cost
function with respect to concentrations.
21General context (an example from the US)
- Ozone nonattainment One of the major air quality
issues facing the U.S. and the World - During 2004, 474 counties in the US, with 160
million inhabitants, were in some degree of
non-attainment with respect to the 8-hour NAAQS
standard for ozone (80ppb). - Because of sufficiently long lifetime of ozone
and its precursors interstate transport plays an
important role. - CAIR (Clean Air Interstate Rule) for ozone and
PM2.5. - 28 eastern states in the US.
- Regulates NOx emissions from power plants only.
- Calls for cap-and-trade programs at the
discretion of the states. - Objective Development of a robust method for
analysis of multi-state ozone nonattainment and
long-range transport of ozone.
22Application details
- Adjoint version of STEM-2k1.
- Modeling domain covers continental US.
- 97x62x21 computational grid with 60 km horizontal
grid resolution. - Month of July and part of August 2004 (ICARTT
campaign). - 2001 NEI emission inventory.
Model performance statistics (40 ppb cut-point)
23Nonattainment (NA) analysis
- Cost function calculated only for concentrations
above the threshold. - Quadratic cost function to emphasize higher
concentrations.
24Spatially-resolved NA sensitivities
- Total non-attainment sensitivities amount to
335. - Of the total, NOx, biogenic VOCs, and
anthropogenic VOCs, account for 66, 21, and 13
percent, respectively. - Negative NOx sensitivities in metropolitan
areas.
25Interstate transport state ranks
State ranks in NOx emissions, NA, and NA
sensitivity
- There is not a solid correlation between the
first measure of responsibility (emissions) for
the NA and scientifically more robust estimates
(NA sensitivities) at the state level.
26Adjoint analysis as a policy support tool
Cost
Benefit
Effectiveness
- Nondiscriminatory emission trading (as proposed
in CAIR) between the states with significantly
differing contribution potentials (NA
sensitivities) may compromise benefits from the
reduction in the nationwide cap in the US (Hakami
et al., 2006).
27Target-based analysis
28Potential applications
- Different applications depending on the
definition of the cost function. - As a receptor-based method, adjoint analysis is
particularly powerful for policy applications - Nonattainment analysis
- Most common uses in data assimilation and inverse
modelling - Lets look at few other examples (Hakami et al.,
2007)
29Potential applications population exposure
Sensitivity to NOx emissions
Metric distribution
(Plots are normalized to the total metric)
30Potential applications - vegetation Stress
Sensitivity to NOx emissions
Metric distribution
(Plots are normalized to the total metric)
31Potential applications - temperature dependence
Population exposure
Vegetation stress
NB This only includes the effects through
chemistry.
32Satellite-based inverse modeling of emissions
33Application details
- An adjoint of gas-phase CMAQ is developed.
- SCIAMACHY tropospheric NO2 column densities used
as observations. - 3-day simulation (6/20/2005-6/22/2005).
- 36 km horizontal resolution (45x46), 23 vertical
layers. - 3-D time-independent, emission scaling factors
(47610 variables to adjust). - Time-dependent boundary conditions from GEOS-Chem
global model (ozone, NO, NO2, PAN, HNO3). - Lightning Emissions added to CMAQ.
- Why satellites? Why inverse modeling? And, what
is inverse modeling?
34Adjoint formulation
- Cost function is defined to measure model misfits
and deviation from a priori estimates - Gradients of the cost function with respect to
the control variables are calculated during
backward calculations. - The cost function is minimized iteratively using
the calculated gradient. - Here, we solve for emission scaling factors
- CMAQ grid cells are interpolated horizontally and
vertically to produce concentrations that
correspond to SCIAMACHY averaging kernel.
35SCIAMACHY vs. CMAQ
36Scaling factors
- Unrealistically large needs to be vastly
improved
37Emerging areas of research (at Carleton and
elsewhere)
38At home
- Inverse modeling of satellite observations
(Dalhousie, Caltech, JPL) - The lightning question (Dalhousie).
- Forecasting (Waterloo, EC)
- Multi-pollutant non-attainment analysis
- Cross-border and intercontinental transport
- PM and mortality in Denver (CU, CSU)
- Adjoint for aerosols (GaTech)
- Control strategy optimization
- Climate change and air quality (JPL, UCLA)
39Elsewhere
- Aerosol parameterization
- Particularly secondary organic aerosols
- Inverse modeling
- One-atmosphere modeling
- Online dynamic/chemistry modeling
- Forecasting
- Ensemble forecasting
- Air quality and climate change
- Sub-grid representation
- Integration of space-borne observations in air
quality applications - Geo-synchronous satellites
- And
40Acknowledgements
- Thanks to
- John Seinfeld and Daven Henze (Caltech)
- Ted Russell, Talat Odman, Yongtao Hu, and
Michelle Bergin (Georgia Tech) - Adrian Sandu and Kumaresh Singh (Virginia Tech)
- Greg Carmichael, Tianfeng Chai, and Youhua Tang
(University of Iowa) - Daewon Byun (University of Houston)
- Dan Cohan (Rice University)
- Qinbin Li (JPL)
41Questions? Comments?
Thank you!!