Identification of land use with water quality data in stormwater using a neural network

被引:76
作者
Ha, HJ [1 ]
Stenstrom, MK [1 ]
机构
[1] Univ Calif Los Angeles, Dept Civil & Environm Engn, Los Angeles, CA 90095 USA
关键词
artificial neural network; stormwater; land use; classification; Bayesian network; water quality data;
D O I
10.1016/S0043-1354(03)00344-0
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
To control stormwater pollution effectively, development of innovative, land-use-related control strategies will be required. An approach that could differentiate land-use types from stormwater quality would be the first step to solving this problem. We propose a neural network approach to examine the relationship between stormwater water quality and various types of land use. The neural network model can be used to identify land-use types for future known and unknown cases. The neural model uses a Bayesian network and has 10 water quality input variables, four neurons in the hidden layer, and five land-use target variables (commercial, industrial, residential, transportation, and vacant). We obtained 92.3 percent of correct classification and 0.157 root-mean-squared error on test files. Based on the neural model, simulations were performed to predict the land-use type of a known data set, which was not used when developing the model. The simulation accurately described the behavior of the new data set. This study demonstrates that a neural network can be effectively used to produce land-use type classification with water quality data. (C) 2003 Elsevier Ltd. All rights reserved.
引用
收藏
页码:4222 / 4230
页数:9
相关论文
共 22 条
[1]   Neuronet modeling of VOC adsorption by GAC [J].
Basheer, IA ;
Najjar, YM ;
Hajmeer, MN .
ENVIRONMENTAL TECHNOLOGY, 1996, 17 (08) :795-806
[2]   A neural network approach to identifying non-point sources of microbial contamination [J].
Brion, GM ;
Lingireddy, S .
WATER RESEARCH, 1999, 33 (14) :3099-3106
[3]  
*CAL STAT WAT RES, 2000, CAL BEACH CLOS REP 1
[4]   Estimating sanitary flows using neural networks [J].
Djebbar, Y ;
Kadota, PT .
WATER SCIENCE AND TECHNOLOGY, 1998, 38 (10) :215-222
[5]   A neural network model to predict the wastewater inflow incorporating rainfall events [J].
El-Din, AG ;
Smith, DW .
WATER RESEARCH, 2002, 36 (05) :1115-1126
[6]   Optimal experimental design and artificial neural networks applied to the photochemically enhanced Fenton reaction [J].
Göb, S ;
Oliveros, E ;
Bossmann, SH ;
Braun, AM ;
Nascimento, CAO ;
Guardani, R .
WATER SCIENCE AND TECHNOLOGY, 2001, 44 (05) :339-345
[7]   Neural networks for solid transport modelling in sewer systems during storm events [J].
Gong, N ;
Denoeux, T ;
Bertrand-Krajewski, JL .
WATER SCIENCE AND TECHNOLOGY, 1996, 33 (09) :85-92
[8]   Modeling nitrate leaching using neural networks [J].
Kaluli, JW ;
Madramootoo, CA ;
Djebbar, Y .
WATER SCIENCE AND TECHNOLOGY, 1998, 38 (07) :127-134
[9]   Metal bioleaching prediction in continuous processing of municipal sewage with Thiobacillus ferrooxidans using neural networks [J].
Laberge, C ;
Cluis, D ;
Mercier, G .
WATER RESEARCH, 2000, 34 (04) :1145-1156
[10]   Predicting stream nitrogen concentration from watershed features using neural networks [J].
Lek, S ;
Guiresse, M ;
Giraudel, JL .
WATER RESEARCH, 1999, 33 (16) :3469-3478