Boznar, M., Lesjak, M. and Mlakar, P.: 1993, 'A neural network-based method for short-term predictions of ambient SO2 concentrations in highly polluted industrial areas of complex terrain', Atmosph. Environ.
B27(2), 221-230.
Google Scholar
Burnett, R. T., Smith-Doiron, M., Stieb, D., Cakmak, S. and Brook, J. R.: 1999, 'Effects of particulate and gaseous air pollution on cardiorespiratory hospitalizations', Arch. Environ. Health
54(2), 130-139.
Google Scholar
Broomhead, D. and Lowe, D.: 1988, 'Multivariable functional interpolation and adaptive networks', Complex Syst.
2, 321-355.
Google Scholar
Chan, L. Y. and Kwok, W. S.: 2000, 'Vertical dispersion of suspended particulates in urban area of Hong Kong', Atmosph. Environ.
34, 4403-4412.
Google Scholar
Chan, L. Y. and Liu, Y. M.: 2001, 'Carbon monoxide levels in popular passenger commuting modes traversing major commuting routes in Hong Kong', Atmosph. Environ.
35, 2637-2646.
Google Scholar
Collet, R. S. and Oduyemi, K.: 1997, 'Air quality modeling: A technical review of mathematical approachs', Meteorolog. Applicat.
4, 235-246.
Google Scholar
Comrie, A. C.: 1997, 'Comparing neural networks and regression models for ozone forecasting', J. Air Waste Manage.
47, 653-663.
Google Scholar
Fan, H. Y., Lu, W. Z. and Xu, Z. B.: 2000, 'An empirical comparison of three novel genetic algorithms', Engin. Comput.
17(8), 981-1001.
Google Scholar
Gardner, M. W. and Dorling, S. R.: 1996, 'Neural Network Modelling of the Influence of Local Meteorology on Surface Ozone Concentrations', Proceedings 1st International Conference on GeoComputation, University of Leeds, pp. 359-370.
Gardner, M. W. and Dorling, S. R.: 1998, 'Artificial neural networks (the multi-layer feed-forward neural networks)-A review of applications in the atmospheric science', Atmosph. Environ.
30(14/15), 2627-2636.
Google Scholar
Hadjiiski, L. and Hopke, P. K.: 2000, 'Application of artificial neural network to modeling and prediction of ambient ozone concentrations', J. Air Waste Manage. Assoc.
50, 894-901.
Google Scholar
Harrison, R. M., Smith, D. J. T. and Luhana, L.: 1996, 'Source apportionment of atmospheric polycyclic aromatic hydrocarbons collected from urban location in Birmingham, U.K.', Environ. Sci. Technol.
30, 825-832.
Google Scholar
Harrison, R. M., Deacon, A. R. and Jones, M. R.: 1997, 'Sources and processes affecting concentrations of PM10 and PM2.5 particulate matter in Birmingham (U.K.)', Atmosph. Environ.
31(24), 4103-4117.
Google Scholar
Hong Kong Environment Protection Department: 1998, 1999, 2000, Environment Hong Kong.
Kaminski, W., Skrzypski, J. and Strumillo, P.: 2000, Forecasting of Air Pollution in Urban Areas by Means of Artificial Neural Networks. Urban Transport and the Environment for the 21st Century, L. J. Sucharov (ed.), WIT Press, Southampton, Boston, pp. 114-124.
Google Scholar
Lee, E., Chan, C. K. and Paatero, P.: 1999, 'Application of positive matrix factorization in source apportionment of particulate pollutants', Atmosph. Environ.
33, 3201-3212.
Google Scholar
Lu, W. Z., Fan, H. Y., Lo, S. M. and Wong, J. C. K.: 2002, 'Analysis of pollutant levels in Central Hong Kong applying neural network method with particle swarm optimization, Environ. Monit. Assess.
79, 217-230.
Google Scholar
Lu, W. Z., Fan, H. Y., Lo, S. M. and Wong, J. C. K.: 2001, 'A Particle-swarm-optimization-based Neural Network Approach and its Application to Environmental Modeling', Proceedings of IAQVEC'2001 I, October, Changsha, P.R. of China, pp. 405-411.
Lu, W. Z., Wang, W. J., Fan, H. Y., Leung, A. Y. T, Lo, S. M., Xu, Z. B. and Wong, J. C. K.: 2002, 'Prediction of pollutant levels in causeway bay area in Hong Kong using an improved neural network model', ASCE J. Environ. Engin.
128(12), 1146-1157, December.
Google Scholar
Lu, W. Z.,Wang, W. J., Leung, A. Y. T., Lo, S. M., Yuen, K. K., Xu, Z. B. and Fan, H. Y.: 2002, 'Air Pollutant Parameter Forecasting using Support Vector Machines, IEEE/IJCNN'2002.
Perez, P., Trier, A. and Reyes, J.: 2000, 'Prediction of PM2.5 concentrations several hours in advance using neural networks in Santiago, Chile', Atmosph. Environ.
34, 1189-1196.
Google Scholar
Reich, S. L., Gomez, D. R. and Dawidowski, L. E.: 1999, 'Artificial neural network for the identification of unknown air pollution sources', Atmosph. Environ.
33, 3045-3052.
Google Scholar
Roadknight, C. M., Balls, G. R., Mills, G. E. and Palmer-Brown, D.: 1997, 'Modeling complex environmental data', IEEE Transact. Neural Networks
8(4), 852-861.
Google Scholar
Shi, J. P. and Harrison, R. M.: 1997, 'Regression modeling of hourly and concentrations in urban air in London', Atmosph. Environ.
31(24), 4081-1094.
Google Scholar
Song, X. H. and Hopke, P. K.: 1996, 'Solving the chemical mass balance problem using an artificial neural network', Environ. Sci. Technol.
30(2), 531-535.
Google Scholar
Spurny, K. R.: 1998, 'On the physics, chemistry and toxicology of ultrafine anthropogenic, atmospheric aerosols (UAAA): New advances', Toxicol. Lett.
96, 253-261.
Google Scholar
Thurston, G. D. and Spengler, J. D.: 1985, 'A quantitative assessment of source contributions to inhalable particulate in metropolitan Boston', Atmosph. Environ.
19, 9-25.
Google Scholar
Transport Department: 1999, Annual Transport Digest: Hong Kong Printing Department, Hong Kong.
Wang, W. J., Vircent, T., Cheung, T. F., Lam, K. S., Kok, G. L. and Harris, J. M.: 2001, 'The characteristics of ozone and related compounds in the boundary layer of the South China coast: Temporal and vertical variations during autumn season', Atmosph. Environ., 2735-2746.
Wang,W. J., Lu,W. Z., Leung, A. Y. T., Lo, S. M., Xu, Z. B. and Wang, X. K.: 2002, 'Optimal Feed-Forward Neural Networks Based on the Combination of Constructing and Pruning by Genetic Algorithms', IEEE/IJCNN'2002.
Yi, J. and Prybutok, R.: 1996, 'A neural network model forecasting for prediction of daily maximum ozone concentration in an industrialized urban area', Environ. Pollut.
92(3), 349-357.
Google Scholar