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Published in: Water Resources Management 8/2015

01-06-2015

Quantile Regression-Based Probabilistic Estimation Scheme for Daily and Annual Suspended Sediment Loads

Authors: Jenq-Tzong Shiau, Ting-Ju Chen

Published in: Water Resources Management | Issue 8/2015

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Abstract

Assessing suspended sediment loads in rivers is important since it affects water quality, hydraulic-facility design, and many other sediment-induced problems. Sediment-load estimation heavily depends upon empirical approaches such as a sediment rating curve, which is the empirical relationship between sediment load and river discharge. However, the sediment rating curve is insufficient to describe the inevitable scatter between sediment and discharge. This study aims to develop a probabilistic estimation scheme for daily and annual suspended sediment loads using quantile regression. All recorded daily suspended sediment load and discharge data are employed to construct quantile-dependent sediment rating curves. The empirical probability distribution of daily suspended sediment load is then built by integrating the conditional estimations associated with the corresponding quantiles for a given discharge. The probability distribution of a cumulative sediment load over a longer period can also be derived by the obtained daily sediment-load probability distributions and convolution theorem. The proposed approach is applied to the Laonung station located in southern Taiwan. The results indicate that the proposed approach provides not only the probabilistic description for daily and annual suspended sediment loads, but also the single estimations including the mean, median, and mode of the derived probability distribution. For the 1,110 recorded data of Laonung station during the 1959–2008 period, the proposed mean and median estimation schemes outperform the traditional sediment-rating-curve approach for less mean absolute errors.

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Literature
go back to reference Afan HA, El-Shafie A, Yaseen ZM, Hameed MM, Wan Mohar WHM, Hussain A (2015) ANN based sediment prediction model utilizing different input scenarios. Water Resour Manag 29(4):1231–1245CrossRef Afan HA, El-Shafie A, Yaseen ZM, Hameed MM, Wan Mohar WHM, Hussain A (2015) ANN based sediment prediction model utilizing different input scenarios. Water Resour Manag 29(4):1231–1245CrossRef
go back to reference Alagidede P, Panagiotidis T (2012) Stock returns and inflation: evidence from quantile regressions. Econ Lett 117(1):283–286CrossRef Alagidede P, Panagiotidis T (2012) Stock returns and inflation: evidence from quantile regressions. Econ Lett 117(1):283–286CrossRef
go back to reference Alp M, Cigizoglu HK (2007) Suspended sediment load simulation by two artificial neural network methods using hydrometeorological data. Environ Model Softw 22(1):2–13CrossRef Alp M, Cigizoglu HK (2007) Suspended sediment load simulation by two artificial neural network methods using hydrometeorological data. Environ Model Softw 22(1):2–13CrossRef
go back to reference Asselman NEM (2000) Fitting and interpretation of sediment rating curve. J Hydrol 234:228–248CrossRef Asselman NEM (2000) Fitting and interpretation of sediment rating curve. J Hydrol 234:228–248CrossRef
go back to reference Austin M (2007) Species distribution models and ecological theory: a critical assessment and some possible new approaches. Ecol Model 200(1–2):1–19CrossRef Austin M (2007) Species distribution models and ecological theory: a critical assessment and some possible new approaches. Ecol Model 200(1–2):1–19CrossRef
go back to reference Aytek A, Kişi Ö (2008) A genetic programming approach to suspended sediment modelling. J Hydrol 351:288–298CrossRef Aytek A, Kişi Ö (2008) A genetic programming approach to suspended sediment modelling. J Hydrol 351:288–298CrossRef
go back to reference Barbosa SM, Scotto MG, Alonso AM (2011) Summarising changes in air temperature over Central Europe by quantile regression and clustering. Nat Hazards Earth Syst Sci 11(12):3227–3233CrossRef Barbosa SM, Scotto MG, Alonso AM (2011) Summarising changes in air temperature over Central Europe by quantile regression and clustering. Nat Hazards Earth Syst Sci 11(12):3227–3233CrossRef
go back to reference Cade BS, Noon BR (2003) A gentle introduction to quantile regression for ecologists. Front Ecol Environ 1(8):412–420CrossRef Cade BS, Noon BR (2003) A gentle introduction to quantile regression for ecologists. Front Ecol Environ 1(8):412–420CrossRef
go back to reference Çimen M (2008) Estimation of daily suspended sediments using support vector machines. Hydrol Sci J 53(3):656–666CrossRef Çimen M (2008) Estimation of daily suspended sediments using support vector machines. Hydrol Sci J 53(3):656–666CrossRef
go back to reference Clarke RT (1990a) Statistical characteristics of some estimators of sediment and nutrient loadings. Water Resour Res 26(9):2229–2233CrossRef Clarke RT (1990a) Statistical characteristics of some estimators of sediment and nutrient loadings. Water Resour Res 26(9):2229–2233CrossRef
go back to reference Clarke RT (1990b) Bias and variance of some estimators of suspended sediment load. Hydrol Sci J 35(3):253–261CrossRef Clarke RT (1990b) Bias and variance of some estimators of suspended sediment load. Hydrol Sci J 35(3):253–261CrossRef
go back to reference Cohn TA, DeLong LL, Gilroy EJ, Hirsch RM, Wells DK (1989) Estimating constituent loads. Water Resour Res 25(5):937–942CrossRef Cohn TA, DeLong LL, Gilroy EJ, Hirsch RM, Wells DK (1989) Estimating constituent loads. Water Resour Res 25(5):937–942CrossRef
go back to reference Cohn TA, Caulder DL, Gilroy EJ, Zynjuk LD, Summers RM (1992) The validity of a simple statistical model for estimating fluvial constituent loads: an empirical study involving nutrient loads entering Chesapeake Bay. Water Resour Res 28(9):2353–2363CrossRef Cohn TA, Caulder DL, Gilroy EJ, Zynjuk LD, Summers RM (1992) The validity of a simple statistical model for estimating fluvial constituent loads: an empirical study involving nutrient loads entering Chesapeake Bay. Water Resour Res 28(9):2353–2363CrossRef
go back to reference Cozzoli F, Bouma TJ, Ysebaert T, Herman PMJ (2013) Application of non-linear quantile regression to macrozoobenthic species distribution modelling: comparing two contrasting basins. Marine Ecol Process Ser 475:119–133CrossRef Cozzoli F, Bouma TJ, Ysebaert T, Herman PMJ (2013) Application of non-linear quantile regression to macrozoobenthic species distribution modelling: comparing two contrasting basins. Marine Ecol Process Ser 475:119–133CrossRef
go back to reference Ferguson R (1986) River loads underestimated by rating curves. Water Resour Res 22(1):74–76CrossRef Ferguson R (1986) River loads underestimated by rating curves. Water Resour Res 22(1):74–76CrossRef
go back to reference Gaglianone WP, Lima LR, Linton O, Smith DR (2011) Evaluating value-at-risk models via quantile regression. J Bus Econ Stat 29(1):150–160CrossRef Gaglianone WP, Lima LR, Linton O, Smith DR (2011) Evaluating value-at-risk models via quantile regression. J Bus Econ Stat 29(1):150–160CrossRef
go back to reference Guven A, Kişi Ö (2011) Estimation of suspended sediment yield in natural rivers using machine-coded linear genetic programming. Water Resour Manag 25(2):691–704CrossRef Guven A, Kişi Ö (2011) Estimation of suspended sediment yield in natural rivers using machine-coded linear genetic programming. Water Resour Manag 25(2):691–704CrossRef
go back to reference Hicks DM, Gomez B, Trustrum NA (2000) Erosion thresholds and suspended sediment yields, Waipaoa River Basin, New Zealand. Water Resour Res 36(4):1129–1142CrossRef Hicks DM, Gomez B, Trustrum NA (2000) Erosion thresholds and suspended sediment yields, Waipaoa River Basin, New Zealand. Water Resour Res 36(4):1129–1142CrossRef
go back to reference Hirschi M, Seneviratne SI, Alexandrov V, Boberg F, Boroneant C, Christensen OB, Formayer H, Orlowsky B, Stepanek P (2011) Observational evidence for soil-moisture impact on hot extremes in southwestern Europe. Nat Geosci 4(1):17–21CrossRef Hirschi M, Seneviratne SI, Alexandrov V, Boberg F, Boroneant C, Christensen OB, Formayer H, Orlowsky B, Stepanek P (2011) Observational evidence for soil-moisture impact on hot extremes in southwestern Europe. Nat Geosci 4(1):17–21CrossRef
go back to reference Jagger TH, Elsner JB (2009) Modeling tropical cyclone intensity with quantile regression. Int J Climatol 29(10):1351–1361CrossRef Jagger TH, Elsner JB (2009) Modeling tropical cyclone intensity with quantile regression. Int J Climatol 29(10):1351–1361CrossRef
go back to reference Jain SK (2001) Development of integrated sediment rating curves using ANNs. J Hydraul Eng 127(1):30–37CrossRef Jain SK (2001) Development of integrated sediment rating curves using ANNs. J Hydraul Eng 127(1):30–37CrossRef
go back to reference Kişi Ö (2004) Daily suspended sediment modeling using a fuzzy-differential evolution approach. Hydrol Sci J 49(1):183–197CrossRef Kişi Ö (2004) Daily suspended sediment modeling using a fuzzy-differential evolution approach. Hydrol Sci J 49(1):183–197CrossRef
go back to reference Kişi Ö (2005) Suspended sediment estimation using neuro-fuzzy and neural network approaches. Hydrol Sci J 50(4):683–696 Kişi Ö (2005) Suspended sediment estimation using neuro-fuzzy and neural network approaches. Hydrol Sci J 50(4):683–696
go back to reference Kitsikoudis V, Sidiropoulos E, Hrissanthou V (2014) Machine learning utilization for bed load transport in gravel-bed rivers. Water Resour Manag 28(11):3727–3743CrossRef Kitsikoudis V, Sidiropoulos E, Hrissanthou V (2014) Machine learning utilization for bed load transport in gravel-bed rivers. Water Resour Manag 28(11):3727–3743CrossRef
go back to reference Koenker R (2005) Quantile regression. Cambridge University Press, CambridgeCrossRef Koenker R (2005) Quantile regression. Cambridge University Press, CambridgeCrossRef
go back to reference Koenker R, Basset G (1978) Regression quantiles. Econometrica 46(1):33–50CrossRef Koenker R, Basset G (1978) Regression quantiles. Econometrica 46(1):33–50CrossRef
go back to reference Koenker R, D’Orey V (1987) Computing regression quantiles. Appl Stat 36(3):383–393CrossRef Koenker R, D’Orey V (1987) Computing regression quantiles. Appl Stat 36(3):383–393CrossRef
go back to reference Krishnaswamy J, Richter DD, Halpin PN, Hofmockel MS (2001) Spatial patterns of suspended sediment yields in a humid tropical watershed in Costa Rica. Hydrol Process 15(12):2237–2257CrossRef Krishnaswamy J, Richter DD, Halpin PN, Hofmockel MS (2001) Spatial patterns of suspended sediment yields in a humid tropical watershed in Costa Rica. Hydrol Process 15(12):2237–2257CrossRef
go back to reference Lafdani EK, Nia AM, Ahmadi A (2013) Daily suspended sediment load prediction using artificial neural networks and support vector machines. J Hydrol 478:50–62CrossRef Lafdani EK, Nia AM, Ahmadi A (2013) Daily suspended sediment load prediction using artificial neural networks and support vector machines. J Hydrol 478:50–62CrossRef
go back to reference Lohani AK, Goel NK, Bhatia KKS (2007) Deriving stage-discharge-sediment concentration relationship using fuzzy logic. Hydrol Sci J 52(4):793–807CrossRef Lohani AK, Goel NK, Bhatia KKS (2007) Deriving stage-discharge-sediment concentration relationship using fuzzy logic. Hydrol Sci J 52(4):793–807CrossRef
go back to reference McBean EA, Al-Nassri S (1988) Uncertainty in suspended sediment transport curves. J Hydraul Eng 114(1):63–74CrossRef McBean EA, Al-Nassri S (1988) Uncertainty in suspended sediment transport curves. J Hydraul Eng 114(1):63–74CrossRef
go back to reference Meligkotsidou L, Vrontos ID, Vrontos SD (2009) Quantile regression analysis of hedge fund strategies. J Emperic Fin 16(2):264–279CrossRef Meligkotsidou L, Vrontos ID, Vrontos SD (2009) Quantile regression analysis of hedge fund strategies. J Emperic Fin 16(2):264–279CrossRef
go back to reference Nagy HM, Watanabe K, Hirano M (2002) Prediction of sediment load concentration in rivers using artificial neural network model. J Hydraul Eng 128(6):588–595CrossRef Nagy HM, Watanabe K, Hirano M (2002) Prediction of sediment load concentration in rivers using artificial neural network model. J Hydraul Eng 128(6):588–595CrossRef
go back to reference Partal T, Cigizoglu HK (2008) Estimation and forecasting of daily suspended sediment data using wavelet − neural network. J Hydrol 358:317–331CrossRef Partal T, Cigizoglu HK (2008) Estimation and forecasting of daily suspended sediment data using wavelet − neural network. J Hydrol 358:317–331CrossRef
go back to reference Phillips JM, Webb BW, Walling DE, Leeks GJL (1999) Estimating the suspended sediment loads of rivers in the LOIS study area using infrequent samples. Hydrol Process 13(7):1035–1050CrossRef Phillips JM, Webb BW, Walling DE, Leeks GJL (1999) Estimating the suspended sediment loads of rivers in the LOIS study area using infrequent samples. Hydrol Process 13(7):1035–1050CrossRef
go back to reference Rai RK, Mathur BS (2008) Event-based sediment yield modeling using artificial neural network. Water Resour Manag 22(4):423–441CrossRef Rai RK, Mathur BS (2008) Event-based sediment yield modeling using artificial neural network. Water Resour Manag 22(4):423–441CrossRef
go back to reference Ross SM (2007) Introduction to probability models, 9th edn. Academic, Burlington Ross SM (2007) Introduction to probability models, 9th edn. Academic, Burlington
go back to reference Rustomji P, Wilkinson SN (2008) Applying bootstrap resampling to quantify uncertainty in fluvial suspended sediment loads estimated using rating curves. Water Resour Res 44(9), W09434. doi:10.1029/2007WR006088 Rustomji P, Wilkinson SN (2008) Applying bootstrap resampling to quantify uncertainty in fluvial suspended sediment loads estimated using rating curves. Water Resour Res 44(9), W09434. doi:10.​1029/​2007WR006088
go back to reference Shiau JT, Huang WH (2015) Detecting distributional changes of annual rainfall indices in Taiwan using quantile regression. Journal of Hydro-environment Research, http://dx.doi.org/10.1016/j.jher.2014.07.006 Shiau JT, Huang WH (2015) Detecting distributional changes of annual rainfall indices in Taiwan using quantile regression. Journal of Hydro-environment Research, http://​dx.​doi.​org/​10.​1016/​j.​jher.​2014.​07.​006
go back to reference Tarras-Wahlberg NH, Lane SN (2003) Suspended sediment yield and metal contamination in a river catchment affected by El Niño events and gold mining activities: the Puyango river basin, southern Ecuador. Hydrol Process 17(15):3101–3123CrossRef Tarras-Wahlberg NH, Lane SN (2003) Suspended sediment yield and metal contamination in a river catchment affected by El Niño events and gold mining activities: the Puyango river basin, southern Ecuador. Hydrol Process 17(15):3101–3123CrossRef
go back to reference Vigiak O, Bende-Michl U (2013) Estimating bootstrap and Bayesian prediction intervals for constituent load rating curve. Water Resources Research 49(12), doi:10.1029/2013WR013559 Vigiak O, Bende-Michl U (2013) Estimating bootstrap and Bayesian prediction intervals for constituent load rating curve. Water Resources Research 49(12), doi:10.​1029/​2013WR013559
go back to reference Walling DE (1977) Assessing the accuracy of suspended sediment rating curves for a small basin. Water Resour Res 13(3):531–538CrossRef Walling DE (1977) Assessing the accuracy of suspended sediment rating curves for a small basin. Water Resour Res 13(3):531–538CrossRef
go back to reference Wang P, Linker LC (2008) Improvement of regression simulation in fluvial sediment loads. J Hydraul Eng 134(10):1527–1531CrossRef Wang P, Linker LC (2008) Improvement of regression simulation in fluvial sediment loads. J Hydraul Eng 134(10):1527–1531CrossRef
go back to reference Wang YG, Tian T (2013) Sediment concentration prediction and statistical evaluation for annual load estimation. J Hydrol 482:69–78CrossRef Wang YG, Tian T (2013) Sediment concentration prediction and statistical evaluation for annual load estimation. J Hydrol 482:69–78CrossRef
go back to reference Wang YG, Kuhnert P, Henderson B (2011) Load estimation with uncertainties from opportunistic sampling data−a semiparametric approach. J Hydrol 396:148–157CrossRef Wang YG, Kuhnert P, Henderson B (2011) Load estimation with uncertainties from opportunistic sampling data−a semiparametric approach. J Hydrol 396:148–157CrossRef
Metadata
Title
Quantile Regression-Based Probabilistic Estimation Scheme for Daily and Annual Suspended Sediment Loads
Authors
Jenq-Tzong Shiau
Ting-Ju Chen
Publication date
01-06-2015
Publisher
Springer Netherlands
Published in
Water Resources Management / Issue 8/2015
Print ISSN: 0920-4741
Electronic ISSN: 1573-1650
DOI
https://doi.org/10.1007/s11269-015-0971-5

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