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Erschienen in: Water Resources Management 7/2016

01.05.2016

Drought Forecasting using Markov Chain Model and Artificial Neural Networks

verfasst von: Mehdi Rezaeianzadeh, Alfred Stein, Jonathan Peter Cox

Erschienen in: Water Resources Management | Ausgabe 7/2016

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Abstract

Water resources management is a complex task. It requires accurate prediction of inflow to reservoirs for the optimal management of surface resources, especially in arid and semi-arid regions. It is in particular complicated by droughts. Markov chain models have provided valuable information on drought or moisture conditions. A complementary method, however, is required that can both evaluate the accuracy of the Markov chain models for predicted drought conditions, and forecast the values for ensuing months. To that end, this study draws on Artificial Neural Networks (ANNs) as a data-driven model. The employed ANNs were trained and tested by means of a statistically-based input selection procedure to accurately predict reservoir inflow and consequently drought conditions. Thirty three years’ data of inflow volume on a monthly time resolution were selected to enable calculation of the standardized streamflow index (SSI) for the Markov chain model. Availability of hydro-climatic data from the Doroodzan reservoir in the Fars province, Iran, allowed us to develop a reservoir specific ANN model. Results demonstrated that both models accurately predicted drought conditions, by employing a randomization procedure that facilitated the selection of the required data for the ANN to forecast reservoir inflow close to the observed values over a validation period. The results confirmed that combining the two models improved short-term prediction reliability. This was in contrast to single model applications that resulted into substantial uncertainty. This research emphasized the importance of the correct selection of data or data mining, prior to entering a specific modeling routine.

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Literatur
Zurück zum Zitat Araghinejad S (2011) An approach for probabilistic hydrological drought forecasting. Water Resour Manag 25:191–200 Araghinejad S (2011) An approach for probabilistic hydrological drought forecasting. Water Resour Manag 25:191–200
Zurück zum Zitat Chen CLP, Zhang CY (2014) Data-intensive applications, challenges, techniques and technologies: a survey on Big Data. Information Sciences 275:314–347 Chen CLP, Zhang CY (2014) Data-intensive applications, challenges, techniques and technologies: a survey on Big Data. Information Sciences 275:314–347
Zurück zum Zitat Çinlar E (1975) Introduction to stochastic processes. Prentice-Hall, New Jersey, p 402 Çinlar E (1975) Introduction to stochastic processes. Prentice-Hall, New Jersey, p 402
Zurück zum Zitat Coulibali P, Anctil F, Bobe’e B (2000) Daily reservoir inflow forecasting using artificial neural networks with stopped training approach. J Hydrol 230(3–4):244–257CrossRef Coulibali P, Anctil F, Bobe’e B (2000) Daily reservoir inflow forecasting using artificial neural networks with stopped training approach. J Hydrol 230(3–4):244–257CrossRef
Zurück zum Zitat Coulibali P, Anctil F, Bobee B (2001) Multivariate reservoir inflow forecasting using temporal neural network. J Hydrol Eng 6(5):367–376CrossRef Coulibali P, Anctil F, Bobee B (2001) Multivariate reservoir inflow forecasting using temporal neural network. J Hydrol Eng 6(5):367–376CrossRef
Zurück zum Zitat Coulibaly P, Hache´ M, Fortin V, Bobe´e B (2005). Improving daily reservoir inflow forecasts with model combination. J Hydrol Eng 10(2):91–99 Coulibaly P, Hache´ M, Fortin V, Bobe´e B (2005). Improving daily reservoir inflow forecasts with model combination. J Hydrol Eng 10(2):91–99
Zurück zum Zitat Dawson CW, Wilby R (1998). “An artificial neural network approach to rainfall–runoff modeling.” Hydrol Sci J 43(1):47–66 Dawson CW, Wilby R (1998). “An artificial neural network approach to rainfall–runoff modeling.” Hydrol Sci J 43(1):47–66
Zurück zum Zitat Edwards CD, McKee TB (1997). Characteristics of 20th century drought in the United States at multiple time scales. Atmospheric Science Paper No. 634, Climatology Report, No. 97-2, Department of Atmospheric Sciences, Colorado State University Edwards CD, McKee TB (1997). Characteristics of 20th century drought in the United States at multiple time scales. Atmospheric Science Paper No. 634, Climatology Report, No. 97-2, Department of Atmospheric Sciences, Colorado State University
Zurück zum Zitat Emamgholizadeh S, Moslemi K, Karami G (2014) Prediction the groundwater level of bastam plain (Iran) by artificial neural network (ANN) and adaptive neuro-fuzzy inference system (ANFIS). Water ResourManag 28(15):5433–5446 Emamgholizadeh S, Moslemi K, Karami G (2014) Prediction the groundwater level of bastam plain (Iran) by artificial neural network (ANN) and adaptive neuro-fuzzy inference system (ANFIS). Water ResourManag 28(15):5433–5446
Zurück zum Zitat Hayes MJ, Svoboda MD, Wihite DA, Vanyarhko OV (1999). Monitoring the 1996 drought using the standardized precipitation index, Bulletin of American Meteorological Society 80(3):429–438 Hayes MJ, Svoboda MD, Wihite DA, Vanyarhko OV (1999). Monitoring the 1996 drought using the standardized precipitation index, Bulletin of American Meteorological Society 80(3):429–438
Zurück zum Zitat Hsu KL, Gupta HV, Sorooshian S (1995) Artificial neural network modeling of rainfall-runoff process. Water Resour Res 31(10):2517–2530CrossRef Hsu KL, Gupta HV, Sorooshian S (1995) Artificial neural network modeling of rainfall-runoff process. Water Resour Res 31(10):2517–2530CrossRef
Zurück zum Zitat Isik S, Kalin L, Schoonover J, Srivastava P, Lockaby B (2013) Modeling effects of changing land use/cover on daily streamflow: an artificial neural network and curve number based hybrid approach. J Hydrol 485:103–12CrossRef Isik S, Kalin L, Schoonover J, Srivastava P, Lockaby B (2013) Modeling effects of changing land use/cover on daily streamflow: an artificial neural network and curve number based hybrid approach. J Hydrol 485:103–12CrossRef
Zurück zum Zitat Jain SK, Das A, Srivastava DK (1999) Application of ANN for reservoir inflow prediction and operation. J Water Resour Plann Manag 125(5):263–271CrossRef Jain SK, Das A, Srivastava DK (1999) Application of ANN for reservoir inflow prediction and operation. J Water Resour Plann Manag 125(5):263–271CrossRef
Zurück zum Zitat Kalin L, Isik S, Schoonover JE, Lockaby BG (2010). “Predicting water quality in unmonitored watersheds using artificial neural networks.” J Environ Qual 39(4):1429–1440 Kalin L, Isik S, Schoonover JE, Lockaby BG (2010). “Predicting water quality in unmonitored watersheds using artificial neural networks.” J Environ Qual 39(4):1429–1440
Zurück zum Zitat Keskin ME, Terzi O, Taylan ED, Küçükyaman D (2011) Meteorological drought analysis using artificial neural networks. Sci Res Essays 6(21):4469–4477 Keskin ME, Terzi O, Taylan ED, Küçükyaman D (2011) Meteorological drought analysis using artificial neural networks. Sci Res Essays 6(21):4469–4477
Zurück zum Zitat Kisi O (2007) Streamflow forecasting using different artificial neural network algorithms. J Hydrol Eng 12(5):532–539CrossRef Kisi O (2007) Streamflow forecasting using different artificial neural network algorithms. J Hydrol Eng 12(5):532–539CrossRef
Zurück zum Zitat Krishna B (2014) Comparison of wavelet-based ANN and regression models for reservoir inflow forecasting. J Hydrol Eng 19(7):1385–1400CrossRef Krishna B (2014) Comparison of wavelet-based ANN and regression models for reservoir inflow forecasting. J Hydrol Eng 19(7):1385–1400CrossRef
Zurück zum Zitat Kumar APS, Sudheer KP, Jain SK, Agarwal PK (2005) Rainfall-runoff modeling using artificial neural networks: comparison of network types. Hydrol Process 19:1277–1291CrossRef Kumar APS, Sudheer KP, Jain SK, Agarwal PK (2005) Rainfall-runoff modeling using artificial neural networks: comparison of network types. Hydrol Process 19:1277–1291CrossRef
Zurück zum Zitat Lohani VK, Loganathan GV (1997) An early warning system for drought management using the Palmer drought index. J Am Water Resour Assoc 33(6):1375–1386 Lohani VK, Loganathan GV (1997) An early warning system for drought management using the Palmer drought index. J Am Water Resour Assoc 33(6):1375–1386
Zurück zum Zitat McKee TB, Doesken NJ, Kleist J (1993). The relationship of drought frequency and duration to time scales. In, Proc. 8th Conf. on Applied Climatology, January 17 – 22, 1993. American Meteorological Society, Massachusetts, pp. 179 – 184 McKee TB, Doesken NJ, Kleist J (1993). The relationship of drought frequency and duration to time scales. In, Proc. 8th Conf. on Applied Climatology, January 17 – 22, 1993. American Meteorological Society, Massachusetts, pp. 179 – 184
Zurück zum Zitat Mishra AK, Desai VR (2006) Drought forecasting using feed-forward recursive neural network. Ecol Model 198:127–138CrossRef Mishra AK, Desai VR (2006) Drought forecasting using feed-forward recursive neural network. Ecol Model 198:127–138CrossRef
Zurück zum Zitat Morid S, Smakhtin V, Bagherzadeh K (2007) Drought forecasting using artificial neural networks and time series of drought indices. Int J Climatol 27:2103–2111CrossRef Morid S, Smakhtin V, Bagherzadeh K (2007) Drought forecasting using artificial neural networks and time series of drought indices. Int J Climatol 27:2103–2111CrossRef
Zurück zum Zitat Nalbantis I, Tsakiris G (2009) Assessment of hydrological droughts revisited. Water Resour Manag 23:881–897 Nalbantis I, Tsakiris G (2009) Assessment of hydrological droughts revisited. Water Resour Manag 23:881–897
Zurück zum Zitat Paulo AA, Pereira LS (2007) Prediction of SPI drought class transitions using Markov chains. Water Resour Manag 21(10):1813–1827CrossRef Paulo AA, Pereira LS (2007) Prediction of SPI drought class transitions using Markov chains. Water Resour Manag 21(10):1813–1827CrossRef
Zurück zum Zitat Rezaeianzadeh M, Tabari H (2012) MLP-based drought forecasting in different climatic regions. Theor Appl Climatol 109(3–4):407–414CrossRef Rezaeianzadeh M, Tabari H (2012) MLP-based drought forecasting in different climatic regions. Theor Appl Climatol 109(3–4):407–414CrossRef
Zurück zum Zitat Rezaeianzadeh M, Amin S, Khalili D, Singh VP (2010) Daily outflow prediction by multi-layer perceptron with logistic sigmoid and tangent sigmoid activation functions. Water Resour Manag 24(11):2673–2688CrossRef Rezaeianzadeh M, Amin S, Khalili D, Singh VP (2010) Daily outflow prediction by multi-layer perceptron with logistic sigmoid and tangent sigmoid activation functions. Water Resour Manag 24(11):2673–2688CrossRef
Zurück zum Zitat Rezaeianzadeh M, Stein A, Tabari H, Abghari H, Jalalkamali N, Hosseinipour EZ, Singh VP (2013a) Assessment of a conceptual hydrological model and artificial neural networks for daily outflows forecasting. Int J Environ Sci Technol 10(6):1181–1192CrossRef Rezaeianzadeh M, Stein A, Tabari H, Abghari H, Jalalkamali N, Hosseinipour EZ, Singh VP (2013a) Assessment of a conceptual hydrological model and artificial neural networks for daily outflows forecasting. Int J Environ Sci Technol 10(6):1181–1192CrossRef
Zurück zum Zitat Rezaeianzadeh M, Tabari H, ArabiYazdi A, Isik S, Kalin L (2013b) Flood flow forecasting using ANN, ANFIS and regression models. Neural Comput & Applic 25(1):25–37CrossRef Rezaeianzadeh M, Tabari H, ArabiYazdi A, Isik S, Kalin L (2013b) Flood flow forecasting using ANN, ANFIS and regression models. Neural Comput & Applic 25(1):25–37CrossRef
Zurück zum Zitat Rezaeianzadeh M, Tabari H, Abghari H (2013c) Prediction of monthly discharge volume by different artificial neural network algorithms in semi-arid regions. Arab J Geosci 6(7):2529–2537 Rezaeianzadeh M, Tabari H, Abghari H (2013c) Prediction of monthly discharge volume by different artificial neural network algorithms in semi-arid regions. Arab J Geosci 6(7):2529–2537
Zurück zum Zitat Sattari MT, Yurekli K, Pal M (2012) Performance evaluation of artificial neural network approaches in forecasting reservoir inflow. Appl Math Model 36(6):2649–2657CrossRef Sattari MT, Yurekli K, Pal M (2012) Performance evaluation of artificial neural network approaches in forecasting reservoir inflow. Appl Math Model 36(6):2649–2657CrossRef
Zurück zum Zitat Shamseldin AY (1997) Application of a neural network technique to rainfall-runoff modelling. J Hydrol 199:272–294CrossRef Shamseldin AY (1997) Application of a neural network technique to rainfall-runoff modelling. J Hydrol 199:272–294CrossRef
Zurück zum Zitat Singh KP, Basant A, Malik A, Jain G (2009). “Artificial neural network modeling of the river water quality: A case study.” Ecol Modell 220:888–895 Singh KP, Basant A, Malik A, Jain G (2009). “Artificial neural network modeling of the river water quality: A case study.” Ecol Modell 220:888–895
Zurück zum Zitat Sonnadara DUJ, Jayewardene DR (2015) A Markov chain probability model to describe wet and dry patterns of weather at Colombo. Theor Appl Climatol 119(1–2):333–340CrossRef Sonnadara DUJ, Jayewardene DR (2015) A Markov chain probability model to describe wet and dry patterns of weather at Colombo. Theor Appl Climatol 119(1–2):333–340CrossRef
Zurück zum Zitat Tabari H, Nikbakht J, Hosseinzade P (2013) Hydrological drought assessment in Northwesterm Iran based on streamflow drought index (SDI). Water Resour Manag 27:137–151 Tabari H, Nikbakht J, Hosseinzade P (2013) Hydrological drought assessment in Northwesterm Iran based on streamflow drought index (SDI). Water Resour Manag 27:137–151
Zurück zum Zitat Tabari H, Zamani R, Rahmati H, Willems P (2015) Markov Chains of different orders for streamflow drought analysis. Water Resour Manag 29:3441–3457 Tabari H, Zamani R, Rahmati H, Willems P (2015) Markov Chains of different orders for streamflow drought analysis. Water Resour Manag 29:3441–3457
Zurück zum Zitat Tabrizi AA, Khalili D, Kamgar-Haghighi AA, Zand-Parsa S (2010) Utilization of time-based meteorologicaldroughts to investigate occurrence of streamflow droughts. Water Resour Manag 24:4287–4306CrossRef Tabrizi AA, Khalili D, Kamgar-Haghighi AA, Zand-Parsa S (2010) Utilization of time-based meteorologicaldroughts to investigate occurrence of streamflow droughts. Water Resour Manag 24:4287–4306CrossRef
Zurück zum Zitat Tokar AS, Johnson A (1999) Rainfall–runoff modeling using artificial neural networks. J Hydrol Eng 4(3):232–239CrossRef Tokar AS, Johnson A (1999) Rainfall–runoff modeling using artificial neural networks. J Hydrol Eng 4(3):232–239CrossRef
Zurück zum Zitat Tsakiris G, Vangelis H (2004) Towards a drought watch system based on spatial SPI. Water Resour Manag 18:1–12 Tsakiris G, Vangelis H (2004) Towards a drought watch system based on spatial SPI. Water Resour Manag 18:1–12
Zurück zum Zitat Tsakiris G, Vangelis H (2005) Establishing a drought index incorporating evapotranspiration. Eur Water 9(10):3–11 Tsakiris G, Vangelis H (2005) Establishing a drought index incorporating evapotranspiration. Eur Water 9(10):3–11
Zurück zum Zitat Tsakiris G, Pangalou D, Vangelis H (2006) Regional drought assessment based on the reconnaissance drought index (RDI). Water Resour Manag 21(5):821–833 Tsakiris G, Pangalou D, Vangelis H (2006) Regional drought assessment based on the reconnaissance drought index (RDI). Water Resour Manag 21(5):821–833
Zurück zum Zitat Tsakiris G, Nalbantis I, Vangelis H, Verbeiren B, Huysmans M, Tychon B, Jacquemin I, Canters F, VanderhaegenS EG, Poelmans L, De Becker P, Batelaan O (2013) A system-based paradigm of drought analysisfor operational management. Water Resour Manag 27(15):5281–5297 Tsakiris G, Nalbantis I, Vangelis H, Verbeiren B, Huysmans M, Tychon B, Jacquemin I, Canters F, VanderhaegenS EG, Poelmans L, De Becker P, Batelaan O (2013) A system-based paradigm of drought analysisfor operational management. Water Resour Manag 27(15):5281–5297
Zurück zum Zitat Valipour M, Banihabib ME, Behbahani SMR (2013) Comparison of the ARMA, ARIMA, and the autoregressive artificial neural network models in forecasting the monthly inflow of Dez dam reservoir. J Hydrol 476:433–441CrossRef Valipour M, Banihabib ME, Behbahani SMR (2013) Comparison of the ARMA, ARIMA, and the autoregressive artificial neural network models in forecasting the monthly inflow of Dez dam reservoir. J Hydrol 476:433–441CrossRef
Zurück zum Zitat Wilks DS (1995) Statistical methods in the atmospheric sciences. Academic Press Wilks DS (1995) Statistical methods in the atmospheric sciences. Academic Press
Metadaten
Titel
Drought Forecasting using Markov Chain Model and Artificial Neural Networks
verfasst von
Mehdi Rezaeianzadeh
Alfred Stein
Jonathan Peter Cox
Publikationsdatum
01.05.2016
Verlag
Springer Netherlands
Erschienen in
Water Resources Management / Ausgabe 7/2016
Print ISSN: 0920-4741
Elektronische ISSN: 1573-1650
DOI
https://doi.org/10.1007/s11269-016-1283-0

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