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An enhanced ozone forecasting model using air mass trajectory analysis
Institution:1. Department of Laboratory Medicine, Jingzhou Central Hospital, the Second Clinical Medical College, Yangtze University, Jingzhou, Hubei Province, China;2. Department of Neurology, Jingzhou Central Hospital, the Second Clinical Medical College, Yangtze University, Jingzhou, Hubei Province, China;1. National Atmospheric Research Laboratory, Gadanki, India;2. Space Physics Laboratory, Thiruvananthapuram, India;3. B1, Ceebros, 47/20, IIIrd Main Road, Chennai, India
Abstract:An enhanced ozone forecasting model using nonlinear regression and an air mass trajectory parameter has been developed and field tested. The model performed significantly better in predicting daily maximum 1-h ozone concentrations during a five-year model calibration period (1993–1997) than did a previously reported regression model. This was particularly true on the 28 “high ozone” days (O3]>120 ppb) during the period, for which the mean absolute error (MAE) improved from 21.7 to 12.1 ppb. On the 77 days meteorologically conducive to high ozone, the MAE improved from 12.2 to 9.1 ppb, and for all 580 calibration days the MAE improved from 9.5 to 8.35 ppb. The model was field-tested during the 1998 ozone season, and performed about as expected. Using actual meteorological data as input for the ozone predictions, the MAE for the season was 11.0 ppb. For the daily ozone forecasts, which used meteorological forecast data as input, the MAE was 13.4 ppb. The high ozone days were all anticipated by the ozone forecasters when the model was used for next day forecasts.
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