The proposed activity here addresses the Health and Air Quality Application Area. The project anticipates improving the accuracy of the Decision Support Tools (DSTs) used by health and air quality managers to meet the health effect standards set by the Clean Air Act (CAA). The CAA is the comprehensive federal law that authorizes EPA to establish National Ambient Air Quality Standards (NAAQS) to protect public health and public welfare. The states are responsible to meet these standards through the use of the DST to develop and evaluate emissions control strategies under
For this project, the target Decision Support Tool is the Weather Research and Forecasting (WRF) and the Community Multiscale Air Quality (CMAQ) modeling systems. CMAQ is an EPA-developed photochemical modeling system typical of the modeling systems now used by many regulatory agencies. The modeling system is also being used for operational air quality forecasting by NOAA.
The objective of the proposed project is to utilize Earth observations and NASA science in the DST to improve key physical factors such as soil moisture and heat capacity, boundary layer development, and clouds that are critical in air quality photochemical simulations. A critical area in the DSS that will be targeted for improvement is in improving model location and timing of clouds. Clouds have a profound role in photolysis activity, boundary-layer development and deep vertical mixing of pollutants and precursors. Also, a new technique for near-realtime estimation of lightning generated NOx (LNOx) will be tested in the NASA Lightning NO production Model (LNOM). The technique introduces a methodology for directly estimating LNOx, on a flash-by-flash basis, from the observed cloud-top lightning optical energy detected from satellite lightning