2014
DOI: 10.1080/19443994.2014.958288
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Multi-variable approach to determine treatment efficiency of wetland: size effect and electro-kinetic effects

Abstract: Empirical stochastic multi-variable models for prediction of treatment efficiency of wetlands are presented in this article. Wetlands of seven different shapes are visualized using tracer studies. Two different variants of experiments are carried out. Numerous flow rate variations are performed keeping surface area of the wetland constant. The experiment is also carried out with a variation in volume of the wetland which helps to study the effect of flow height on the hydrodynamics within the wetland. A multi-… Show more

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Cited by 2 publications
(4 citation statements)
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References 12 publications
(14 reference statements)
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“…It is observed that the dead zone volume is minimal in case of a volumetric flow rate of 500 ml/min and increases with decrease in wetland inflow velocity. Similar result is also reiterated by the experimental results in Gupta et al 2014. This is clearly illustrated in Fig.…”
Section: Hydrodynamic Analysis Of Wetlands: 3d Case Studiessupporting
confidence: 89%
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“…It is observed that the dead zone volume is minimal in case of a volumetric flow rate of 500 ml/min and increases with decrease in wetland inflow velocity. Similar result is also reiterated by the experimental results in Gupta et al 2014. This is clearly illustrated in Fig.…”
Section: Hydrodynamic Analysis Of Wetlands: 3d Case Studiessupporting
confidence: 89%
“…This is also supported and illustrated by the increase in value of k for the square with islands Table 5 Coefficient of determination R 2 and error of the model S for predicting E-curve using ln Y ¼ a þ b 1 X 1 þ b 2 X 2 for flow rate = 300 ml/min and height = 15.5 cm Table 6 Coefficient of determination R 2 and error of the model S for predicting E-curve using ln X ln Y ¼ a þ b 1 X 1 þ b 2 X 2 for flow rate = 500 ml/min and a height = 15.5 cm Table 7 Coefficient of determination R 2 and error of the model S for predicting E-curve using ln X ln Y ¼ a þ b 1 X 1 for flow rate = 150 ml/min and height = 31 cm Table 8 Coefficient of determination R 2 and error of the model S for predicting E-curve using ln X ln Y ¼ a þ b 1 X 1 for flow rate = 300 ml/min and height = 31 cm Table 9 Coefficient of determination R 2 and error of the model S for predicting E-curve using ln X ln Y ¼ a þ b 1 X 1 for flow rate = 500 ml/min and height = 31 cm Table 11 Coefficient of determination R 2 and error of the model S for predicting E-curve using ln X ln Y ¼ a þ b 1 X 1 þ b 2 X 2 for flow rate = 500 ml/min and height = 45.5 cm model for the cases of heads of water at 15.5, 31 and 45.5 cm, respectively. The highest value of k was found to be 0.72 for the case of 500 ml/min flow rate at a head of 15.5 cm, indicating maximum occurrence of mixing [21]. A comparison of the results from Figs.…”
Section: Hydrodynamic Analysis Of Wetlands: 3d Case Studiesmentioning
confidence: 86%
“…Where X is any electro-kinetic parameter The influent and filtrate are both dilute solutions in this experiment [21]. The porous media flow treatment can be effectively predicted on the basis of the gradient in electro-kinetic parameters of these dilute solutions as they traverse across the porous clay ceramic cylinders [22]. From Plappally et al 2010, the characteristic gradient of an electro-kinetic parameter will help predict the treatment provided by the clay ceramic to the water [23][24].…”
Section: Resultsmentioning
confidence: 99%
“…From Plappally et al 2010, the characteristic gradient of an electro-kinetic parameter will help predict the treatment provided by the clay ceramic to the water [23][24]. Therefore the gradient in turbidity between the influent and filtrate water from the sip-up can be predicted with an expression in Eq.2 [21,22].…”
Section: Resultsmentioning
confidence: 99%