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Explore rural ozone patterns in the Intermountain West. Evaluate the CMAQ model's efficacy through MPE and time series charts. Discuss possible causes such as long-range transport and natural gas development. Consider future steps for reduction strategies and sensitivity testing. Conclusions show promising model performance, boosting confidence in inputs. Next steps include detailed analytical approaches and developing tools for comprehensive analysis. Contact pbarickman@utah.gov for more info.
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WRAP Stationary Sources Joint Forum Meeting August 16, 2006 The CMAQ Visibility Model Applied To Rural Ozone In The Intermountain West Patrick Barickman Colleen Delaney Brock LeBaron Tyler Cruickshank (Perl programming)
Does ozone outside of the metropolitan areas need to be studied? General O3 trend in the Intermountain West moving towards the 8-hour standard Rural Ozone Monitors, 4th High, Daily Max 8-Hour Value Linear Trend Line for 5 Monitors
What Are The Possible Causes? • Long range transport • Oil and gas development • Fire Emissions from long range transport (Asia), oil and gas development, and wildfire are all projected to increase. Are high values at particular monitors episode, and location dependent? What is the relationship of large NOx sources to areas immediately downwind?
Are the CMAQ model results a useful guide for rural ozone analysis? “Model Performance Evaluation” (MPE) answers this question • Detailed MPE during 5 years of continuous model improvement • Chemistry mechanism • Meteorology • Is the model providing good estimates of hourly ozone production and depletion? • Compare observed ozone at the 6 monitors in the domain with model estimates • Statistical metrics • Mean normalized bias • Mean normalized error • Time series charts
Establishing model value for comparison Bilinear interpolation 4-cell window around each monitor Weighted average of 4 cells based on distance of cell center to monitor location
Time Series Charts ( North to South ) June 1 – July 31, 2002
Mean Normalized Bias (MNB):A value of zero would indicate that the model over predictions and model under predictions exactly cancel each other out. Mean Normalized Gross Error (MNGE):A value of zero would indicate that the model exactly matches the observed values at all points in space/time. Previous guidance in the modeling community set a goal of: MNB <= 15% and MNGE of <= 25%. This was based on the experience of actual model performance over the years. Mean Normalized Bias (MNB) Mean Normalized Gross Error (MNGE) Minimum cutoff 50 ppb – only hours with observations > 50 used in bias and gross error calculations
Conclusions • Model performs well for rural ozone predictions • Good model performance increases confidence in the meteorology and emissions inputs
Next Steps • A suggested analytical approach in 4 broad areas • Use the emissions inventory for a general understanding of source contribution • NOx • Point source, oil/gas, etc. • VOC • Biogenic, oil/gas, etc. • Create a set of model runs to test reduction strategies • Does biogenic VOC overwhelm other sources of VOC? • Is there an increase in ozone from fires? • Adjust boundary conditions for sensitivity to global transport. • Are nested model runs at higher resolution needed for specific geographic areas?
Next Steps ( continued ) • Develop ancillary approaches • Approach similar to WRAP weight-of-evidence approach • HYSPLIT wind trajectories for downwind analysis of source regions • Emissions inventory to identify potential source regions • Monitoring trends • Develop a toolset and multi-state resource of data and analysis tools • Build upon the WRAP TSS infrastructure • Unlikely to be a point-and-click solution • Will require technically savvy staff for individual state analyses • Contact: pbarickman@utah.gov