A comparison of nonlinear regression and neural network models for ground-level ozone forecasting

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Abstract

A hybrid nonlinear regression (NLR) model and a neural network (NN) model, each designed to forecast next-day maximum 1-hr average ground-level O3 concentrations in Louisville, KY, were compared for two O3 seasons—1998 and 1999. The model predictions were compared for the forecast mode, using forecasted meteorological data as input, and for the hindcast mode, using observed meteorological data as input. The two models performed nearly the same in the forecast mode. For the two seasons combined, the mean absolute forecast error was 12.5 ppb for the NLR model and 12.3 ppb for the NN model. The detection rate of 120 ppb threshold exceedances was 42% for each model in the forecast mode. In the hindcast mode, the NLR model performed marginally better than the NN. © 2000 Air and Waste Management Association.

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Cobourn, W. G., Dolcine, L., French, M., & Hubbard, M. C. (2000). A comparison of nonlinear regression and neural network models for ground-level ozone forecasting. Journal of the Air and Waste Management Association, 50(11), 1999–2009. https://doi.org/10.1080/10473289.2000.10464228

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