Artificial neural network model as a potential alternative for groundwater salinity forecasting

被引:108
作者
Banerjee, Pallavi [1 ]
Singh, V. S. [1 ]
Chatttopadhyay, Kausik [2 ]
Chandra, P. C. [3 ]
Singh, Bhoop [4 ]
机构
[1] CSIR, Natl Geophys Res Inst, Hyderabad 500007, Andhra Pradesh, India
[2] Satyam Comp Serv Ltd, Hyderabad, Andhra Pradesh, India
[3] Govt India, Minist Water Resources, Cent Ground Water Board, Patna, Bihar, India
[4] Technol Bhavan, Dept Sci & Technol, New Delhi, India
关键词
Artificial neural network; Feed-forward neural network; Quick propagation algorithm; Groundwater salinity; Pumping rate; Finite-element simulation model; AQUIFER PARAMETERS; WATER-QUALITY; CORAL ISLAND; TIME-SERIES; PREDICTION; OPTIMIZATION; OPERATIONS; REGRESSION; CLIMATE; LEVEL;
D O I
10.1016/j.jhydrol.2010.12.016
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
The paper evaluates the prospect of artificial neural network (ANN) simulation over mathematical modeling in estimating safe pumping rate to maintain groundwater salinity in island aquifers. Feed-forward ANN model with quick propagation (QP) as training algorithm has been used to forecast the salinity under varied pumping rates. The accuracy, generalization ability and reliability of the model are verified by real-time field data. The model is trained with 2 years of real-time field data and prediction on water quality with varying pumping rate is made for a span of 5 years. The same is then compared with both real-time field data and the prediction based on SUTRA (Saturated-Unsaturated Transport) computations. The proposed ANN model has surfaced as a simpler and more accurate alternative to the numerical method techniques. The ANN methodology using minimal lag and number of hidden nodes, along with the optimal number of spatial and temporal variables consistently produced the best performing network based simulation models. The prediction accuracy of the ANN model has been extended for another 5 years to further define the limit of pumping at a permissible level of groundwater salinity. (C) 2010 Elsevier B.V. All rights reserved.
引用
收藏
页码:212 / 220
页数:9
相关论文
共 61 条
[1]  
[Anonymous], 1987, IEEE ASP MAGAZINE, DOI DOI 10.1109/MASSP.1987.1165576
[2]   Support vector machines for nonlinear state space reconstruction: Application to the Great Salt Lake time series [J].
Asefa, T ;
Kemblowski, M ;
Lall, U ;
Urroz, G .
WATER RESOURCES RESEARCH, 2005, 41 (12) :1-10
[3]   Forecasting of groundwater level in hard rock region using artificial neural network [J].
Banerjee, Pallavi ;
Prasad, R. K. ;
Singh, V. S. .
ENVIRONMENTAL GEOLOGY, 2009, 58 (06) :1239-1246
[4]   NEURAL NETWORKS AND OPERATIONS-RESEARCH - AN OVERVIEW [J].
BURKE, LI ;
IGNIZIO, JP .
COMPUTERS & OPERATIONS RESEARCH, 1992, 19 (3-4) :179-189
[5]   Stochastic fuzzy neural network: Case study of optimal reservoir operation [J].
Chaves, Paulo ;
Kojiri, Toshiharu .
JOURNAL OF WATER RESOURCES PLANNING AND MANAGEMENT, 2007, 133 (06) :509-518
[6]   Dynamic ANN for precipitation estimation and forecasting from radar observations [J].
Chiang, Yen-Ming ;
Chang, Fi-John ;
Jou, Ben Jong-Dao ;
Lin, Pin-Fang .
JOURNAL OF HYDROLOGY, 2007, 334 (1-2) :250-261
[7]   Variations in discharge and dissolved organic carbon and nitrogen export from terrestrial basins with changes in climate: A neural network approach [J].
Clair, TA ;
Ehrman, JM .
LIMNOLOGY AND OCEANOGRAPHY, 1996, 41 (05) :921-927
[8]   Artificial neural network modeling of water table depth fluctuations [J].
Coulibaly, P ;
Anctil, F ;
Aravena, R ;
Bobée, B .
WATER RESOURCES RESEARCH, 2001, 37 (04) :885-896
[9]  
Culloch W. S. Mac, 1943, B MATH BIOPHYS, V5, P113
[10]  
Fahlman S.E., 1988, Tech. Rep., CMU-CS-88-162