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

被引:53
作者
Cobourn, WG [1 ]
Dolcine, L
French, M
Hubbard, MC
机构
[1] Univ Louisville, Speed Sci Sch, Dept Mech Engn, Louisville, KY 40292 USA
[2] Univ Louisville, Speed Sci Sch, Dept Civil & Environm Engn, Louisville, KY 40292 USA
[3] Automated Anal Corp, Peoria, IL USA
关键词
D O I
10.1080/10473289.2000.10464228
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
A hybrid nonlinear regression (NLR) model and a neural network (NN) model, each designed to forecast next-day maximum I-hr average ground-level O-3 concentrations in Louisville, KY, were compared for two O-3 seasons-1998 and 1999. The model predictions were compared for the forecast mode, using forecasted meteorological data as input, and for the hindcast I-node, 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 model. The mean absolute hindcast error was 11.1 ppb for the NLR model and 12.9 ppb for the NN model. The hindcast detection rate was 92% for the NLR model and 75% for the NN model.
引用
收藏
页码:1999 / 2009
页数:11
相关论文
共 20 条
[1]   Accounting for meteorological effects in measuring urban ozone levels and trends [J].
Bloomfield, P ;
Royle, JA ;
Steinberg, LJ ;
Yang, Q .
ATMOSPHERIC ENVIRONMENT, 1996, 30 (17) :3067-3077
[2]   A NEURAL-NETWORK-BASED METHOD FOR SHORT-TERM PREDICTIONS OF AMBIENT SO2 CONCENTRATIONS IN HIGHLY POLLUTED INDUSTRIAL-AREAS OF COMPLEX TERRAIN [J].
BOZNAR, M ;
LESJAK, M ;
MLAKAR, P .
ATMOSPHERIC ENVIRONMENT PART B-URBAN ATMOSPHERE, 1993, 27 (02) :221-230
[3]   An enhanced ozone forecasting model using air mass trajectory analysis [J].
Cobourn, WG ;
Hubbard, MC .
ATMOSPHERIC ENVIRONMENT, 1999, 33 (28) :4663-4674
[4]  
*COMP SOC I EL EL, 1988, COMP SOC PRESS TECHN
[5]   Comparing neural networks and regression models for ozone forecasting [J].
Comrie, AC .
JOURNAL OF THE AIR & WASTE MANAGEMENT ASSOCIATION, 1997, 47 (06) :653-663
[6]   A model for predicting maximum and 8 h average ozone in Houston [J].
Davis, JM ;
Speckman, P .
ATMOSPHERIC ENVIRONMENT, 1999, 33 (16) :2487-2500
[7]  
Draxler R., 1997, ARL224 NOAA ERL
[8]   RAINFALL FORECASTING IN SPACE AND TIME USING A NEURAL NETWORK [J].
FRENCH, MN ;
KRAJEWSKI, WF ;
CUYKENDALL, RR .
JOURNAL OF HYDROLOGY, 1992, 137 (1-4) :1-31
[9]   Artificial neural networks (the multilayer perceptron) - A review of applications in the atmospheric sciences [J].
Gardner, MW ;
Dorling, SR .
ATMOSPHERIC ENVIRONMENT, 1998, 32 (14-15) :2627-2636
[10]   Development of a regression model to forecast ground-level ozone concentration in Louisville, KY [J].
Hubbard, MC ;
Cobourn, WG .
ATMOSPHERIC ENVIRONMENT, 1998, 32 (14-15) :2637-2647