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Erschienen in: Hydrogeology Journal 2/2007

01.03.2007 | Paper

Evaluation of the ability of an artificial neural network model to simulate the input-output responses of a large karstic aquifer: the La Rochefoucauld aquifer (Charente, France)

verfasst von: Bedri Kurtulus, Moumtaz Razack

Erschienen in: Hydrogeology Journal | Ausgabe 2/2007

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Abstract

The ability of artificial neural networks (ANN) to model the rainfall-discharge relationships of karstic aquifers has been studied in the La Rochefoucauld karst system, south-west France, which supplies water to the city of Angoulême. A neural networks model was developed based on MLP (multi-layer perceptron) networks and the Levenberg-Marquardt optimization algorithm. Raw rainfall data were used without transformation into effective rainfall. This allowed for the elimination of certain non-verifiable simplifying assumptions and their subsequent introduction into the modeling procedure. The raw rainfall and discharge data were divided into three groups for the training, the validation and the prediction test of the ANN model. The training and validation phases led to a very satisfactory calibration of the ANN model. The attempt to predict discharges showed that the ANN model is able to simulate the karstic aquifer discharges. The shape of the simulated hydrographs was found to be similar to that of the actual hydrographs. These encouraging results make it possible to consider interesting and new prospects for the modeling of karstic aquifers, which are highly non-linear systems.

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Literatur
Zurück zum Zitat Amraoui F, Razack M, Bouchaou L (2003) Turbidity dynamics in karstic systems: example of Ribaa and Bittit springs in the Middle Atlas (Morocco). Hydrol Sci J 48(6):971–984CrossRef Amraoui F, Razack M, Bouchaou L (2003) Turbidity dynamics in karstic systems: example of Ribaa and Bittit springs in the Middle Atlas (Morocco). Hydrol Sci J 48(6):971–984CrossRef
Zurück zum Zitat Angelini P, Dragoni W (1997) The problem of modeling limestone spring: the case of Bagnara (North Apennines, Italy). Ground Water 35(4)612–618CrossRef Angelini P, Dragoni W (1997) The problem of modeling limestone spring: the case of Bagnara (North Apennines, Italy). Ground Water 35(4)612–618CrossRef
Zurück zum Zitat Aziz AR, Wong KFV (1992) A neural network approach to the determination of aquifer parameters. Ground Water 30(2):164–166CrossRef Aziz AR, Wong KFV (1992) A neural network approach to the determination of aquifer parameters. Ground Water 30(2):164–166CrossRef
Zurück zum Zitat Bakalowicz M (1995) La zone d’infiltration des aquifères karstiques: méthodes d’étude, structure et fonctionnement (The infiltration zone of karstic aquifers: study methods, structure and functioning). Hydrogéologie 4:3–21 Bakalowicz M (1995) La zone d’infiltration des aquifères karstiques: méthodes d’étude, structure et fonctionnement (The infiltration zone of karstic aquifers: study methods, structure and functioning). Hydrogéologie 4:3–21
Zurück zum Zitat Bakalowicz M (2005) Karst groundwater: a challenge for new resources. Hydrogeol J 13:148–160CrossRef Bakalowicz M (2005) Karst groundwater: a challenge for new resources. Hydrogeol J 13:148–160CrossRef
Zurück zum Zitat Balkhair KS (2002) Aquifer parameters determination for large diameter wells using neural network approach. J Hydrol 265:118–128CrossRef Balkhair KS (2002) Aquifer parameters determination for large diameter wells using neural network approach. J Hydrol 265:118–128CrossRef
Zurück zum Zitat Barrett J, Charbeneau RJ (1996) A parsimonious model for simulation of flow and transport in a karst aquifer. Center for Research in Water Resources, University of Texas, Austin, Technical Rep. 269 http://www.crwr.utexas.edu. Cited March 2006 Barrett J, Charbeneau RJ (1996) A parsimonious model for simulation of flow and transport in a karst aquifer. Center for Research in Water Resources, University of Texas, Austin, Technical Rep. 269 http://​www.​crwr.​utexas.​edu. Cited March 2006
Zurück zum Zitat Beale R, Jackson T (1991) Neural computing: an introduction. Techno House, Bristol, UK Beale R, Jackson T (1991) Neural computing: an introduction. Techno House, Bristol, UK
Zurück zum Zitat Bonacci O (1987) Karst Hydrology. Springer-Verlag, Berlin Heidelberg New York Bonacci O (1987) Karst Hydrology. Springer-Verlag, Berlin Heidelberg New York
Zurück zum Zitat Cheng B, Titterington DM (1994) Neural networks: a review from a statistical perspective. Statist Sci 9(1)2–54 Cheng B, Titterington DM (1994) Neural networks: a review from a statistical perspective. Statist Sci 9(1)2–54
Zurück zum Zitat Demuth H, Beale M (2003) ‘Neural networks toolbox’ user guide. Mathworks Inc., Natick, MA Demuth H, Beale M (2003) ‘Neural networks toolbox’ user guide. Mathworks Inc., Natick, MA
Zurück zum Zitat Drogue C (1992) Hydrodynamics of karstic aquifers: experimental sites in the Mediterranean karsts, southern France. In: Back W, Herman JS, Paloc H (eds) Hydrogeology of selected Karst Regions. Int Contrib Hydrogeol 13:133–149 Drogue C (1992) Hydrodynamics of karstic aquifers: experimental sites in the Mediterranean karsts, southern France. In: Back W, Herman JS, Paloc H (eds) Hydrogeology of selected Karst Regions. Int Contrib Hydrogeol 13:133–149
Zurück zum Zitat Fausett L (1994) Fundamentals of neural networks: architecture, algorithms and application. Prentice Hall, Englewood Cliffs, NJ Fausett L (1994) Fundamentals of neural networks: architecture, algorithms and application. Prentice Hall, Englewood Cliffs, NJ
Zurück zum Zitat Flood I, Kartam N (1994) Neural networks in civil engineering: principles and understanding. J Comput Civ Eng 8(2):131–148CrossRef Flood I, Kartam N (1994) Neural networks in civil engineering: principles and understanding. J Comput Civ Eng 8(2):131–148CrossRef
Zurück zum Zitat Ford DC, William PW (1989) Karst geomorphology and hydrology. Unwin Hyman, London Ford DC, William PW (1989) Karst geomorphology and hydrology. Unwin Hyman, London
Zurück zum Zitat French M, Krajewski W, Cuykendall R (1992) Rainfall forecasting in space and time using a neural network. J Hydrol 137:1–31CrossRef French M, Krajewski W, Cuykendall R (1992) Rainfall forecasting in space and time using a neural network. J Hydrol 137:1–31CrossRef
Zurück zum Zitat Hagan MT, Menhaj MB (1994) Training feedforward networks with the Marquardt algorithm. IEEE Trans Neural Netw 5:989–993CrossRef Hagan MT, Menhaj MB (1994) Training feedforward networks with the Marquardt algorithm. IEEE Trans Neural Netw 5:989–993CrossRef
Zurück zum Zitat Hagan MT, Demuth HB, Beale MH (1996) Neural network design. PWS, Boston, MA Hagan MT, Demuth HB, Beale MH (1996) Neural network design. PWS, Boston, MA
Zurück zum Zitat Halff AH, Halff HM, Azmoodeh M (1993) Predicting runoff from rainfall using neural networks. Proc Eng Hydrol, ASCE, New York, pp 768–775 Halff AH, Halff HM, Azmoodeh M (1993) Predicting runoff from rainfall using neural networks. Proc Eng Hydrol, ASCE, New York, pp 768–775
Zurück zum Zitat Heuvelman G, Muys B, Feyen J (2006) Regionalisation of the parameters of a hydrological model: comparison of linear regression models with artificial neural nets. J Hydrol 319:245–265CrossRef Heuvelman G, Muys B, Feyen J (2006) Regionalisation of the parameters of a hydrological model: comparison of linear regression models with artificial neural nets. J Hydrol 319:245–265CrossRef
Zurück zum Zitat Hsu K, Gupta HV, Sorooshian S (1995) Artificial neural network modeling of the rainfall-runoff process. Wat Resour Res 31(10):2517–2530CrossRef Hsu K, Gupta HV, Sorooshian S (1995) Artificial neural network modeling of the rainfall-runoff process. Wat Resour Res 31(10):2517–2530CrossRef
Zurück zum Zitat Huntoon PW (1995) Is it appropriate to apply porous media groundwater circulation models to karstic aquifers? In: El-Kadi AI (ed) Groundwater models for resources analysis and management, Pacific Northwest/Oceania Conf., Honolulu, HI, CRC Press, Boca Raton, FL, pp 339–358 Huntoon PW (1995) Is it appropriate to apply porous media groundwater circulation models to karstic aquifers? In: El-Kadi AI (ed) Groundwater models for resources analysis and management, Pacific Northwest/Oceania Conf., Honolulu, HI, CRC Press, Boca Raton, FL, pp 339–358
Zurück zum Zitat Imrie CE, Durucan S, Korre A (2000) River flow prediction using artificial neural networks: generalization beyond the calibration range. J Hydrol 233:138–153CrossRef Imrie CE, Durucan S, Korre A (2000) River flow prediction using artificial neural networks: generalization beyond the calibration range. J Hydrol 233:138–153CrossRef
Zurück zum Zitat Jukic D, Denic-Jukic V (2003) A frequency domain approach to groundwater recharge estimation in karst. J Hydrol 289:95–110CrossRef Jukic D, Denic-Jukic V (2003) A frequency domain approach to groundwater recharge estimation in karst. J Hydrol 289:95–110CrossRef
Zurück zum Zitat Kiraly L (1975) Rapport sur l’état actuel des connaissances dans le domaine des caractères physiques des roches karstiques (Report on the present state of knowledge about the physical characteristics of karstic rocks). In: Burger A, Dubertret L (eds) Hydrogeology of karstic terrains. Int Union Geol Sci Ser B 3:53–67 Kiraly L (1975) Rapport sur l’état actuel des connaissances dans le domaine des caractères physiques des roches karstiques (Report on the present state of knowledge about the physical characteristics of karstic rocks). In: Burger A, Dubertret L (eds) Hydrogeology of karstic terrains. Int Union Geol Sci Ser B 3:53–67
Zurück zum Zitat Kruseman G, de Ridder NA (1994) Analysis and evaluation of pumping tests data. Bull. No. 47, International Institute for Land Reclamation and Improvement, Wageningen, The Netherlands, p 377 Kruseman G, de Ridder NA (1994) Analysis and evaluation of pumping tests data. Bull. No. 47, International Institute for Land Reclamation and Improvement, Wageningen, The Netherlands, p 377
Zurück zum Zitat Kuo YM, Liu CW, Lin KH (2004) Evaluation of the ability of an artificial neural network model to assess the variation of groundwater quality in an area of blackfoot disease in Taiwan. Water Res 38:148–158CrossRef Kuo YM, Liu CW, Lin KH (2004) Evaluation of the ability of an artificial neural network model to assess the variation of groundwater quality in an area of blackfoot disease in Taiwan. Water Res 38:148–158CrossRef
Zurück zum Zitat Labat D, Ababou R, Mangin A (2002) Analyse multirésolution croisée de pluie et débits de sources karstiques (Multi-resolution cross analysis of rainfall rates and karstic springs runoffs). C R Geoscience 334(8):51–556 Labat D, Ababou R, Mangin A (2002) Analyse multirésolution croisée de pluie et débits de sources karstiques (Multi-resolution cross analysis of rainfall rates and karstic springs runoffs). C R Geoscience 334(8):51–556
Zurück zum Zitat Lallahem S, Mania J (2003) A non-linear rainfall-runoff model using neural network technique: example in fractured porous media. Math Comput Model 37:1047–1061CrossRef Lallahem S, Mania J (2003) A non-linear rainfall-runoff model using neural network technique: example in fractured porous media. Math Comput Model 37:1047–1061CrossRef
Zurück zum Zitat Larocque M, Razack M (1998) Synthèse hydrogéologique de l’aquifère de La Rochefoucauld: bilan des nouvelles connaissances (Hydrogeological synthesis of La Rochefoucauld karst aquifer: review of new data). Hydrogéologie 3:35–45 Larocque M, Razack M (1998) Synthèse hydrogéologique de l’aquifère de La Rochefoucauld: bilan des nouvelles connaissances (Hydrogeological synthesis of La Rochefoucauld karst aquifer: review of new data). Hydrogéologie 3:35–45
Zurück zum Zitat Larocque M, Banton O, Ackerer P, Razack M (1999) Determining karst transmissivities with inverse modeling and an equivalent porous media. Ground Water 37:897–903CrossRef Larocque M, Banton O, Ackerer P, Razack M (1999) Determining karst transmissivities with inverse modeling and an equivalent porous media. Ground Water 37:897–903CrossRef
Zurück zum Zitat Maier HR, Dandy GC (2000) Neural networks for the prediction and forecasting of water resources variables: a review of modelling 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 modelling issues and applications. Environ Model Softw 15:101–124CrossRef
Zurück zum Zitat Mangin A (1984) Pour une meilleure connaissance des systèmes hydrologiques à partir des analyses corrélatoires et spectrales (Towards a better knowledge of hydrologic systems using correlation and spectral analysis). J Hydrol 67:25–43CrossRef Mangin A (1984) Pour une meilleure connaissance des systèmes hydrologiques à partir des analyses corrélatoires et spectrales (Towards a better knowledge of hydrologic systems using correlation and spectral analysis). J Hydrol 67:25–43CrossRef
Zurück zum Zitat Maren AJ (1990) Neural networks structures. In: Maren AJ, Harston CT, Pap RM (eds) Handbook of neural computing and applications. Academic Press, San Diego, CA Maren AJ (1990) Neural networks structures. In: Maren AJ, Harston CT, Pap RM (eds) Handbook of neural computing and applications. Academic Press, San Diego, CA
Zurück zum Zitat Maren AJ, Harston CT, Pap RM (1990) Handbook of neural computing applications. Academic Press, San Diego, CA 92101 Maren AJ, Harston CT, Pap RM (1990) Handbook of neural computing applications. Academic Press, San Diego, CA 92101
Zurück zum Zitat Masters T (1993) Practical neural networks. Academic Press, San Diego, CA Masters T (1993) Practical neural networks. Academic Press, San Diego, CA
Zurück zum Zitat Medsker L (1994) Hybrid neural network and expert systems. Kluwer Academic, Boston, MA Medsker L (1994) Hybrid neural network and expert systems. Kluwer Academic, Boston, MA
Zurück zum Zitat Minns AW, Hall MJ (1996) Artificial neural networks as rainfall-runoff models. Hydrol Sci J 41(3):399–417CrossRef Minns AW, Hall MJ (1996) Artificial neural networks as rainfall-runoff models. Hydrol Sci J 41(3):399–417CrossRef
Zurück zum Zitat Moré JJ (1978) The Levenberg-Marquardt algorithm: implementation and theory. In: Watson GA (ed) Lecture notes in mathematics 630. Springer, Berlin Heidelberg New York, pp 5–116 Moré JJ (1978) The Levenberg-Marquardt algorithm: implementation and theory. In: Watson GA (ed) Lecture notes in mathematics 630. Springer, Berlin Heidelberg New York, pp 5–116
Zurück zum Zitat Morshed J, Kaluarachchi JJ (1998) Application of artificial neural networks and genetic algorithm in flow and transport simulation. Adv Water Resour 22(2):145–158CrossRef Morshed J, Kaluarachchi JJ (1998) Application of artificial neural networks and genetic algorithm in flow and transport simulation. Adv Water Resour 22(2):145–158CrossRef
Zurück zum Zitat Padilla A, Pulido-Bosch A (1995) Study of hydrographs of karstic aquifers by means of correlation and cross-spectral analysis. J Hydrol 168:73–89CrossRef Padilla A, Pulido-Bosch A (1995) Study of hydrographs of karstic aquifers by means of correlation and cross-spectral analysis. J Hydrol 168:73–89CrossRef
Zurück zum Zitat Press WH, Teukolski SA, Vetterling WT, Flannery BP (1992) Numerical recipes in Fortran, 2nd edn. Cambridge Univ. Press, New York, pp 675–683 Press WH, Teukolski SA, Vetterling WT, Flannery BP (1992) Numerical recipes in Fortran, 2nd edn. Cambridge Univ. Press, New York, pp 675–683
Zurück zum Zitat Quélennec R, Sauret JC, Séguin M, Vouvé J (1971) Les résurgences de la Touvre: etude préliminaire (The spring of La Touvre: preliminary study). Proc Int. Symp. Hydrologie en pays calcaires, Univ. Besançon, France, pp 197–205 Quélennec R, Sauret JC, Séguin M, Vouvé J (1971) Les résurgences de la Touvre: etude préliminaire (The spring of La Touvre: preliminary study). Proc Int. Symp. Hydrologie en pays calcaires, Univ. Besançon, France, pp 197–205
Zurück zum Zitat Rahnemai M, Zare M, Nematollahi AR, Sedghi H (2005) Application of spectral analysis of daily water level and spring discharge hydrographs data for comparing physical characteristics of karstic aquifers. J Hydrol 311:106–116 Rahnemai M, Zare M, Nematollahi AR, Sedghi H (2005) Application of spectral analysis of daily water level and spring discharge hydrographs data for comparing physical characteristics of karstic aquifers. J Hydrol 311:106–116
Zurück zum Zitat Rajurkar MP, Kothyari UC, Chaube UC (2004) Modeling of the daily rainfall-runoff relationship with artificial neural network. J Hydrol 285:96–113CrossRef Rajurkar MP, Kothyari UC, Chaube UC (2004) Modeling of the daily rainfall-runoff relationship with artificial neural network. J Hydrol 285:96–113CrossRef
Zurück zum Zitat Rambaud D (1979) Hydrogéologie du Département de la Charente. Principaux systèmes aquifères: essai d’analyse et cartographie (Hydrogeology of the Department of Charente. Principal aquifer systems: analysis and cartography). PhD Thesis, Bordeaux III University, France Rambaud D (1979) Hydrogéologie du Département de la Charente. Principaux systèmes aquifères: essai d’analyse et cartographie (Hydrogeology of the Department of Charente. Principal aquifer systems: analysis and cartography). PhD Thesis, Bordeaux III University, France
Zurück zum Zitat Ranjithan SJ, Eheart JW, Garett JH (1993) Neural network based screening for groundwater reclamation under uncertainty. Water Resour Res 29(3):563–574CrossRef Ranjithan SJ, Eheart JW, Garett JH (1993) Neural network based screening for groundwater reclamation under uncertainty. Water Resour Res 29(3):563–574CrossRef
Zurück zum Zitat Rogers LL, Dowla FU, Johnson VM (1995) Optimal field scale groundwater remediation using neural networks and the genetic algorithm. Env Sci Tech 29(5):1145–1155CrossRef Rogers LL, Dowla FU, Johnson VM (1995) Optimal field scale groundwater remediation using neural networks and the genetic algorithm. Env Sci Tech 29(5):1145–1155CrossRef
Zurück zum Zitat Ross JH, Rieg A, Leibundgut C (2001) Tracer study on the tectonic control of the drainage system in the contact karst zone of Lake Voralp (Swiss Alps). Acta Carsol 30/2(15):203–213 Ross JH, Rieg A, Leibundgut C (2001) Tracer study on the tectonic control of the drainage system in the contact karst zone of Lake Voralp (Swiss Alps). Acta Carsol 30/2(15):203–213
Zurück zum Zitat Rouiller D (1987) Etude des systèmes karstiques de la Touvre et de la Lèche (Angoulême, Charente) (Study of the karstic systems of La Touvre and of La Lèche, Angouleme, Charente). PhD Thesis, University of Avignon, France Rouiller D (1987) Etude des systèmes karstiques de la Touvre et de la Lèche (Angoulême, Charente) (Study of the karstic systems of La Touvre and of La Lèche, Angouleme, Charente). PhD Thesis, University of Avignon, France
Zurück zum Zitat Sajikumar N, Thandaveswara BS (1999) A nonlinear rainfall runoff model using an artificial neural network. J Hydrol 216:32–55CrossRef Sajikumar N, Thandaveswara BS (1999) A nonlinear rainfall runoff model using an artificial neural network. J Hydrol 216:32–55CrossRef
Zurück zum Zitat Scanlon BR, Mace RE, Barrett ME, Smith B (2003) Can we simulate regional groundwater flow in a karst system using equivalent porous media models? Case study, Barton Springs, Edwards aquifer, USA. J Hydrol 276:137–158CrossRef Scanlon BR, Mace RE, Barrett ME, Smith B (2003) Can we simulate regional groundwater flow in a karst system using equivalent porous media models? Case study, Barton Springs, Edwards aquifer, USA. J Hydrol 276:137–158CrossRef
Zurück zum Zitat Shamseldin AY (1997) Application of a neural technique to rainfall-runoff modelling. J Hydrol 199:272–294CrossRef Shamseldin AY (1997) Application of a neural technique to rainfall-runoff modelling. J Hydrol 199:272–294CrossRef
Zurück zum Zitat White WB (1969) Conceptual model for carbonate aquifers. Ground Water 7:15–21CrossRef White WB (1969) Conceptual model for carbonate aquifers. Ground Water 7:15–21CrossRef
Zurück zum Zitat Zio E (1997) Approaching the inverse problem of parameter estimation in groundwater models by means of artificial neural networks. Prog Nucl Energy 31:303–315CrossRef Zio E (1997) Approaching the inverse problem of parameter estimation in groundwater models by means of artificial neural networks. Prog Nucl Energy 31:303–315CrossRef
Metadaten
Titel
Evaluation of the ability of an artificial neural network model to simulate the input-output responses of a large karstic aquifer: the La Rochefoucauld aquifer (Charente, France)
verfasst von
Bedri Kurtulus
Moumtaz Razack
Publikationsdatum
01.03.2007
Verlag
Springer-Verlag
Erschienen in
Hydrogeology Journal / Ausgabe 2/2007
Print ISSN: 1431-2174
Elektronische ISSN: 1435-0157
DOI
https://doi.org/10.1007/s10040-006-0077-5

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