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Adaptive air quality management through operational sensitivity forecasting

Adaptive air quality management through operational sensitivity forecasting. Amir Hakami and Matthew Russell. 3 rd IWAQFR Workshop December 1, 2011. Air quality management. Models are used for long-term or short-term predictions Long-term planning (e.g. strategy design)

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Adaptive air quality management through operational sensitivity forecasting

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  1. Adaptive air quality management through operational sensitivity forecasting Amir Hakami and Matthew Russell 3rd IWAQFR Workshop December 1, 2011

  2. Air quality management • Models are used for long-term or short-term predictions • Long-term planning (e.g. strategy design) • Short-term prediction (public warning, etc) • Can we do short-term planning? Is modifying emission behavior in the short term (a day) worth the effort?

  3. Influence on Canadian mortality

  4. Variability of influence on Canadian mortality

  5. Adaptive but targeted emission modification • In cases where forecast leads to control measures, these efforts usually pay limited attention to effectiveness • Sensitivity analysis can guide short-term measures. Can forecast pollution episodes be averted?

  6. Adjoint or backward sensitivity analysis Inputs/Sources Outputs/Receptors • Backward 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.

  7. CMAQ Adjoint simulations • Continental domain • 36 km resolution • 13 vertical layers • Summer of 2007 • Gas-phase CMAQ with adjoint sensitivity • SAPRC-99 chemistry • Sensitivities of ozoneto NOx emissions

  8. Baltimore

  9. Methodology • 16 days in summer • Sensitivity of Baltimore to each source calculated • Top 10% locations (sources) modify their emissions by the following: • Scenario 1: 5% point + 8% mobile • Scenario 2: 10% point + 15% mobile • Scenario 3: 15% point + 25% mobile

  10. Baltimore 8-hr max ozone

  11. Baltimore 8-hr max ozone

  12. Baltimore 8-hr max ozone

  13. Spatio-temporal selectivity • Adding temporal sensitivities • Top 5% locations (sources) modify their emissions by the following: • Scenario 1: 5% point + 8% mobile • Scenario 2: 10% point + 15% mobile • Scenario 3: 15% point + 25% mobile

  14. Baltimore: hourly emission modification

  15. Baltimore: hourly emission modification

  16. AQHI in Toronto AQHI (summer) = 10*(0.101*NO2+0.104*O3)/12.8

  17. AQHI: hourly emission modification

  18. Challenges/Issues • The model predicts some improvement, but how can you confirm that? • Emission behavior modification on a fluctuating basis is not desirable • At moderate levels of aggressiveness, impacts are not sufficiently large to consistently move the receptor into attainment

  19. Next Steps • Should be done at high resolution! • How different the effectiveness is for various receptors? • Impact of regional planning

  20. Conclusions/thoughts • Short-term emission behavior modification can have sizeable impact; however, the impact is not large enough to significantly increase attainment likelihood • Adjoint sensitivities can guide the short-term, operational management • Temporal selectivity is an important component of the increased effectiveness. • The method may be more effective for longer forecast windows (> 1 day)

  21. Comments, questions?

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