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Erschienen in: Neural Computing and Applications 8/2010

01.11.2010 | Original Article

Hybrid neural modeling for groundwater level prediction

verfasst von: Nikunja B. Dash, Sudhindra N. Panda, Renji Remesan, Narayan Sahoo

Erschienen in: Neural Computing and Applications | Ausgabe 8/2010

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Abstract

The accurate prediction of groundwater level is important for the efficient use and management of groundwater resources, particularly in sub-humid regions where water surplus in monsoon season and water scarcity in non-monsoon season is a common phenomenon. In this paper, an attempt has been made to develop a hybrid neural model (ANN-GA) employing an artificial neural network (ANN) model in conjunction with famous optimization strategy called genetic algorithms (GA) for accurate prediction of groundwater levels in the lower Mahanadi river basin of Orissa State, India. Three types of functionally different algorithm-based ANN models (viz. back-propagation (GDX), Levenberg–Marquardt (LM) and Bayesian regularization (BR)) were used to compare the strength of proposed hybrid model in the efficient prediction of groundwater fluctuations. The ANN-GA hybrid modeling was carried out with lead-time of 1 week and study mainly aimed at November and January months of a year. Overall, simulation results suggest that the Bayesian regularization model is the most efficient of the ANN models tested for the study period. However, a strong correlation between the observed and predicted groundwater levels was observed for all the models. The results reveal that the hybrid GA-based ANN algorithm is able to produce better accuracy and performance in medium and high groundwater level predictions compared to conventional ANN techniques including Bayesian regularization model. Furthermore, the study shows that hybrid neural models can offer significant implications for improving groundwater management and water supply planning in semi-arid areas where aquifer information is not available.

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Literatur
1.
Zurück zum Zitat ASCE Task Committee on Application of Neural Networks in Hydrology (2000) Artificial neural network in hydrology I: preliminary concepts. J Hydrol Energy ASCE 5(2):115–123CrossRef ASCE Task Committee on Application of Neural Networks in Hydrology (2000) Artificial neural network in hydrology I: preliminary concepts. J Hydrol Energy ASCE 5(2):115–123CrossRef
2.
Zurück zum Zitat ASCE Task Committee on Application of Neural Networks in Hydrology (2000) Artificial neural network in hydrology II: hydrologic application. J Hydrol Energy ASCE 5(2):124–137CrossRef ASCE Task Committee on Application of Neural Networks in Hydrology (2000) Artificial neural network in hydrology II: hydrologic application. J Hydrol Energy ASCE 5(2):124–137CrossRef
3.
Zurück zum Zitat Bhattacharjya RK, Datta B (2005) Optimal management of coastal aquifer using linked simulation optimization approach. Water Resour Manag 19(3):295–320CrossRef Bhattacharjya RK, Datta B (2005) Optimal management of coastal aquifer using linked simulation optimization approach. Water Resour Manag 19(3):295–320CrossRef
4.
Zurück zum Zitat Bhattacharjya RK, Datta B (2009) ANN-GA-based model for multiple objective management of coastal aquifers. J Water Resour Plann Manage 135(5):314–322CrossRef Bhattacharjya RK, Datta B (2009) ANN-GA-based model for multiple objective management of coastal aquifers. J Water Resour Plann Manage 135(5):314–322CrossRef
5.
Zurück zum Zitat Coulibaly P, Anctil F, Bobee B (2000) Daily reservoir inflow forecasting using artificial neural networks with stopped training approach. J Hydrol 230(3–4):244–257CrossRef Coulibaly P, Anctil F, Bobee B (2000) Daily reservoir inflow forecasting using artificial neural networks with stopped training approach. J Hydrol 230(3–4):244–257CrossRef
6.
Zurück zum Zitat Coulibaly P, Anctil F, Aravena R, Bobee B (2001) Artificial neural network modeling of water table depth fluctuations. Water Resour Res 37(4):885–896CrossRef Coulibaly P, Anctil F, Aravena R, Bobee B (2001) Artificial neural network modeling of water table depth fluctuations. Water Resour Res 37(4):885–896CrossRef
7.
Zurück zum Zitat Coulibaly P, Anctil F, Bobee B (2001) Multivariate reservoir inflow forecasting using temporal neural networks. J Hydrol Energy 9–10:367–376CrossRef Coulibaly P, Anctil F, Bobee B (2001) Multivariate reservoir inflow forecasting using temporal neural networks. J Hydrol Energy 9–10:367–376CrossRef
8.
Zurück zum Zitat Coulibaly P, Bobee B, Anctil F (2001) Improving extreme hydrologic events forecasting using a new criterion for artificial neural network selection. Hydrol Process 15:1533–1536CrossRef Coulibaly P, Bobee B, Anctil F (2001) Improving extreme hydrologic events forecasting using a new criterion for artificial neural network selection. Hydrol Process 15:1533–1536CrossRef
9.
Zurück zum Zitat Daliakopoulosa IN, Coulibaly P, Tsanis IK (2005) Groundwater level forecasting using artificial neural networks. J Hydrol 309:229–240CrossRef Daliakopoulosa IN, Coulibaly P, Tsanis IK (2005) Groundwater level forecasting using artificial neural networks. J Hydrol 309:229–240CrossRef
10.
Zurück zum Zitat Fausset L (1994) Fundamentals of neural networks. Prentice Hall, Englewood Cliffs Fausset L (1994) Fundamentals of neural networks. Prentice Hall, Englewood Cliffs
11.
Zurück zum Zitat French MN, Krajewski WF, Cuykendall RR (1992) Rainfall forecasting in space and time using a neural network. J Hydrol 137:1–31CrossRef French MN, Krajewski WF, Cuykendall RR (1992) Rainfall forecasting in space and time using a neural network. J Hydrol 137:1–31CrossRef
12.
Zurück zum Zitat Goldberg DE (2000) Genetic algorithms in search, optimization and machine learning. Addision-Wesley, Reading Goldberg DE (2000) Genetic algorithms in search, optimization and machine learning. Addision-Wesley, Reading
13.
Zurück zum Zitat Gautam MR, Watanabe K, Saegus H (2000) Runoff analysis in humid forest catchment with artificial neural network. J Hydrol 235:117–136CrossRef Gautam MR, Watanabe K, Saegus H (2000) Runoff analysis in humid forest catchment with artificial neural network. J Hydrol 235:117–136CrossRef
14.
Zurück zum Zitat Govindaraju RS, Rao AR (2000) Artificial neural networks in hydrology. Kluwer Academic Publishers, Amsterdam, The Netherlands Govindaraju RS, Rao AR (2000) Artificial neural networks in hydrology. Kluwer Academic Publishers, Amsterdam, The Netherlands
15.
Zurück zum Zitat Haykin S (1994) Neural networks—a comprehensive foundation. Macmillan, New YorkMATH Haykin S (1994) Neural networks—a comprehensive foundation. Macmillan, New YorkMATH
16.
Zurück zum Zitat Hornik K, Stinchcombe M, White H (1989) Multilayer feedforward networks are universal approximators. Neural Netw 2(5):359–366CrossRef Hornik K, Stinchcombe M, White H (1989) Multilayer feedforward networks are universal approximators. Neural Netw 2(5):359–366CrossRef
17.
Zurück zum Zitat Kelkar U, Narula KP, Sharma VP, Chandna U (2008) Vulnerability and adaptation to climate variability and water stress in Uttarakhand State, India. Global Environ Change 18:564–574CrossRef Kelkar U, Narula KP, Sharma VP, Chandna U (2008) Vulnerability and adaptation to climate variability and water stress in Uttarakhand State, India. Global Environ Change 18:564–574CrossRef
18.
Zurück zum Zitat Lallahem S, Mania J, Hani A, Najjar Y (2005) On the use of neural networks to evaluate groundwater levels in fractured media. J Hydrol 307:92–111CrossRef Lallahem S, Mania J, Hani A, Najjar Y (2005) On the use of neural networks to evaluate groundwater levels in fractured media. J Hydrol 307:92–111CrossRef
19.
Zurück zum Zitat Maier HR, Dandy GC (1998) Understanding the behavior and optimizing the performance of back-propagation neural networks: an empirical study. Environ Model Softw 13:179–191CrossRef Maier HR, Dandy GC (1998) Understanding the behavior and optimizing the performance of back-propagation neural networks: an empirical study. Environ Model Softw 13:179–191CrossRef
20.
Zurück zum Zitat Maier HR, Dandy GC (2000) Neural networks for the prediction and forecasting of water resources variables: a review of modeling issues and applications. Environ Model Softw 15:101–124CrossRef Maier HR, Dandy GC (2000) Neural networks for the prediction and forecasting of water resources variables: a review of modeling issues and applications. Environ Model Softw 15:101–124CrossRef
22.
Zurück zum Zitat Nash JE, Sutcliffe JV (1970) River flow forecasting through conceptual models part I—a discussion of principles. J Hydrol 10:282–290CrossRef Nash JE, Sutcliffe JV (1970) River flow forecasting through conceptual models part I—a discussion of principles. J Hydrol 10:282–290CrossRef
23.
Zurück zum Zitat Parasuraman K, Elshorbagy A (2007) Cluster-based hydrologic prediction using genetic algorithm-trained neural networks. J Hydrol Eng 12(1):52–62CrossRef Parasuraman K, Elshorbagy A (2007) Cluster-based hydrologic prediction using genetic algorithm-trained neural networks. J Hydrol Eng 12(1):52–62CrossRef
24.
Zurück zum Zitat Rao SVN, Kumar S, Shekhar S, Chakraborty D (2006) Optimal pumping from skimming wells. J Hydrol Energy 11(5):464–471CrossRef Rao SVN, Kumar S, Shekhar S, Chakraborty D (2006) Optimal pumping from skimming wells. J Hydrol Energy 11(5):464–471CrossRef
25.
Zurück zum Zitat Rojas R (1996) Neural networks: a systematic introduction. Springer, Berlin Rojas R (1996) Neural networks: a systematic introduction. Springer, Berlin
26.
Zurück zum Zitat Rumelhart DE, Hinton GE, William RJ (1986) Learning internal representation by error propagation. In: Rumelhart DE, McClelland JL (eds) Parallel distributed processing. MIT Press, Cambridge Rumelhart DE, Hinton GE, William RJ (1986) Learning internal representation by error propagation. In: Rumelhart DE, McClelland JL (eds) Parallel distributed processing. MIT Press, Cambridge
27.
Zurück zum Zitat Smith GN (1986) Probability and statistics in civil engineering: an introduction. Collins, London Smith GN (1986) Probability and statistics in civil engineering: an introduction. Collins, London
28.
Zurück zum Zitat Twomey JM, Smith AE (1997) Validation and verification. Artificial neural networks for civil engineers: fundamentals and applications. In: Kartam N, Flood I, Garrett JH (eds) ASCE, New York, pp 44–64 Twomey JM, Smith AE (1997) Validation and verification. Artificial neural networks for civil engineers: fundamentals and applications. In: Kartam N, Flood I, Garrett JH (eds) ASCE, New York, pp 44–64
29.
Zurück zum Zitat World Meteorological Organization (1975) Inter-comparison of conceptual models used in operational hydrological forecasting. World Meteorological Organization. Technical report no 429, Geneva, Switzerland World Meteorological Organization (1975) Inter-comparison of conceptual models used in operational hydrological forecasting. World Meteorological Organization. Technical report no 429, Geneva, Switzerland
30.
Zurück zum Zitat Wu CL, Chau KW (2006) A flood forecasting neural network model with genetic algorithm. Int J Environ Pollut 28(3–4):261–273CrossRef Wu CL, Chau KW (2006) A flood forecasting neural network model with genetic algorithm. Int J Environ Pollut 28(3–4):261–273CrossRef
31.
Zurück zum Zitat Yang CC, Prasher SO, Lacroix R, Sreekanth S, Patni NK, Masse L (1997) Artificial neural network model for subsurface-drained farmlands. J Irrig Drain Eng ASCE 123(4):285–292CrossRef Yang CC, Prasher SO, Lacroix R, Sreekanth S, Patni NK, Masse L (1997) Artificial neural network model for subsurface-drained farmlands. J Irrig Drain Eng ASCE 123(4):285–292CrossRef
32.
Zurück zum Zitat Yang CC, Prasher SO, Lacroix R (1996a) Applications of artificial neural networks in subsurface drainage system design. In Proceedings of ASAE, Computers and Electronics in Agriculture, pp 932–940 Yang CC, Prasher SO, Lacroix R (1996a) Applications of artificial neural networks in subsurface drainage system design. In Proceedings of ASAE, Computers and Electronics in Agriculture, pp 932–940
33.
Zurück zum Zitat Yang CC, Prasher SO, Lacroix R (1996) Applications of artificial neural networks to land drainage engineering. Trans ASAE 39(2):525–533 Yang CC, Prasher SO, Lacroix R (1996) Applications of artificial neural networks to land drainage engineering. Trans ASAE 39(2):525–533
34.
Zurück zum Zitat Yang CC, Prasher SO, Lacroix R (1996) Applications of artificial neural networks to simulate water-table depths under subirrigation. Can Water Resour J 21(1):27–44CrossRef Yang CC, Prasher SO, Lacroix R (1996) Applications of artificial neural networks to simulate water-table depths under subirrigation. Can Water Resour J 21(1):27–44CrossRef
Metadaten
Titel
Hybrid neural modeling for groundwater level prediction
verfasst von
Nikunja B. Dash
Sudhindra N. Panda
Renji Remesan
Narayan Sahoo
Publikationsdatum
01.11.2010
Verlag
Springer-Verlag
Erschienen in
Neural Computing and Applications / Ausgabe 8/2010
Print ISSN: 0941-0643
Elektronische ISSN: 1433-3058
DOI
https://doi.org/10.1007/s00521-010-0360-1

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