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Evaluation of the Hydraulic Conductivity of Geosynthetic Clay Liners

Published online by Cambridge University Press:  01 January 2024

Juan Hou*
Affiliation:
State Key Laboratory of Geomechanics and Geotechnical Engineering, Institute of Rock and Soil Mechanics, Chinese Academy of Sciences, Wuhan 430071, China School of Mechanics and Engineering Science, Shanghai University, Shanghai 200444, China School of Engineering, University of Virginia, Charlottesville, VA 22904, USA
Yuyang Teng
Affiliation:
School of Mechanics and Engineering Science, Shanghai University, Shanghai 200444, China
Shifen Bao
Affiliation:
School of Mechanics and Engineering Science, Shanghai University, Shanghai 200444, China
Hao Li
Affiliation:
School of Mechanics and Engineering Science, Shanghai University, Shanghai 200444, China
Lei Liu
Affiliation:
State Key Laboratory of Geomechanics and Geotechnical Engineering, Institute of Rock and Soil Mechanics, Chinese Academy of Sciences, Wuhan 430071, China IRSM-CAS/HK PolyU Joint Laboratory on Solid Waste Science, Wuhan 430071, China Hubei Province Key Laboratory of Contaminated Sludge & Soil Science and Engineering, Wuhan 430071, China
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Abstract

The hydraulic conductivity of geosynthetic clay liners (GCLs) is not fully understood and certain gaps in knowledge are still present, such as the effect of coupled mechanical and chemical processes. The current study aimed to develop a simplified mathematical model to predict the hydraulic conductivity of GCLs, particularly regarding the coupled effects of mechanical and chemical processes. Based on Darcy's Law and Poiseuille’s Law, the method combines diffuse double layer (DDL) theory and fractal theory. External factors such as confining pressure and the concentration of the permeating solution, and inherent properties such as exchangeable cations, ionic radius, montmorillonite surface fractal dimension, the distance between two montmorillonite layers (m) after swelling at the exchangeable cation i (i denotes the primary exchangeable cations, such as Na+, Ca2+, K+, and Mg2+ in bentonite), density, and coefficient of viscosity of interlayer water between two montmorillonite layers, were considered. The proposed theoretical model gave relatively accurate predictions. A practical estimate of GCL hydraulic conductivity was also derived. The predictions were compared with experimental results and good qualitative agreement was found. From the experimental results, the proposed prediction model has a maximum deviation of ~1:10–10:1, and the empirical model has a mean deviation of ~1:15–15:1.

Type
Original Paper
Copyright
Copyright © The Clay Minerals Society 2022

Introduction

In recent years, geosynthetic clay liners (GCLs) have received much attention as barrier systems in municipal solid-waste landfill applications because of their good physical and chemical properties, ability to self-repair, easy processing, and environmental endurance. Extensive experimental studies have investigated the hydraulic conductivity of GCLs (Abuel-Naga et al., Reference Abuel-Naga, Bouazza and Gates2013; Bouazza, Reference Bouazza2002; Bouazza et al., Reference Bouazza, Gates and Abuel-Naga2006; Giroud et al., Reference Giroud, Badu-Tweneboah and Soderman1997; Liu et al., Reference Liu, Gates, Bouazza and Rowe2014; Rouf et al., Reference Rouf, Bouazza, Singh, Gates and Rowe2016; Rowe, Reference Rowe1998; Xue et al., Reference Xue, Zhang and Liu2012). Numerous investigators have focused on the factors influencing GCL hydraulic conductivity through compatibility tests (Jo et al., Reference Jo, Katsumi and Benson2001; Vasko et al., Reference Vasko, Jo, Benson and Edil2001; Jo et al., Reference Jo, Benson, Shackelford, Lee and Edil2005; Fox and Ross, Reference Fox and Ross2011; Benson, Reference Benson2013; Shen et al., Reference Shen, Wang, Wu, Xu, Ye and Yin2015). Considering actual field conditions, the coupling effect of the overlying load pressure and the leachate on the hydraulic conductivity of GCLs has been addressed recently (Shackelford et al., Reference Shackelford, Sevick and Eykholt2010; Kang & Shackelford, Reference Kang and Shackelford2011; Zhu et al., Reference Zhu, Ye, Chen, Chen and Cui2015; Malusis et al., Reference Malusis, Shackelford and Kang2015; Chen et al., Reference Chen, Zhu, Ye, Cui and Chen2016; Scalia et al., Reference Scalia, Bohnhof, Shackelford, Benson, Sample-Lord, Malusis and Likos2018, Wang et al., Reference Wang, Xu, Chen, Dong and Dou2019a, Reference Wang, Chen, Dou and Dongb). Naka et al. (Reference Naka, Flores, Katsumi and Sakanakura2016) presented a state-of-the-art review of the factors impacting the hydraulic conductivity of GCLs, concluding that bentonite type, prehydration, confining pressure, pH, metal concentration, and metal ion type are the strongest influences. Numerical simulations and theoretical models, which have made possible the measurement of hydraulic conductivity of GCLs from information about the porous media structure, are powerful alternatives in predicting this physical parameter (Dexter & Richard, Reference Dexter and Richard2009; Guan et al., Reference Guan, Xie, Wang, Chen, Jiang and Tang2014; Nakano & Miyazaki, Reference Nakano and Miyazaki2005; Quinton et al., Reference Quinton, Elliot, Price, Rezanezhad and Heck2009; Schaap & Leij, Reference Schaap and Leij1998; Xie et al., Reference Xie, Zhang, Feng and Wang2018).

Compared to the extensive experimental studies, however, numerical simulations have been relatively few (Bolt, Reference Bolt1956; Bouazza et al., Reference Bouazza, Zornberg, McCartney and Singh2013, Reference Bouazza, Singh and Rowe2014; Saidi et al., Reference Saidi, Touze-Foltz and Goblet2006; Siemens et al., Reference Siemens, Take, Rowe and Brachman2012; Stępniewski et al., Reference Stępniewski, Horn and Dikinya2011). Theories based on case studies remain quite rare (Benson et al., Reference Benson, Chen, Edil and Likos2018; Kolstad et al., Reference Kolstad, Benson and Edil2004, Reference Kolstad, Benson and Edil2006; Siddiqua et al., Reference Siddiqua, Blatz and Siemens2011; Yan et al., Reference Yan, Wu and Thomas2020). Chai and Shen (Reference Chai and Shen2018) used diffuse double layer (DDL) theory to analyze the swelling behavior of a Na+ bentonite used in GCLs with lower dry unit weights and found linear relationships between the calculated double layer thickness and the measured corresponding free swelling index and liquid limit. Dominijanni et al. (Reference Dominijanni, Manassero and Puma2012, Reference Dominijanni, Guarena and Manassero2018) proposed a physical approach to interpreting the phenomenological parameters obtained from laboratory tests. Michels et al. (Reference Michels, Méheust, Mario, Santos, dos Hemmen, Droppa, Fossum and Silva2019) inferred mesoporous humidity from a space-resolved measurement with a fractal diffusion equation and showed that water transport through a system of clay minerals could be hysteretic. However, they suggested that sample preparation history in Na bentonite has little effect on the water vapor transport through the mesopores. Using the study of Chung and Daniel (Reference Chung and Daniel2008), Liu et al. (Reference Liu and Wang2018) calculated the hydraulic conductivity of GCLs using DDL theory. However, Sposito (Reference Sposito1984) stated that the DDL theory cannot predict the dissolved divalent cations accurately, especially in the initial stages of swelling, as was verified by Schanz and Tripathy (Reference Schanz and Tripathy2009). Meanwhile, the fractal model is characterized mainly by the fractal dimension, which is affected by the physical properties of porous media. Some studies showed that the fractal theory can be used to determine the swelling properties of bentonite (Boadu, Reference Boadu2000; Thevanayagam & Nesarajah, Reference Thevanayagam and Nesarajah1998), especially in the initial swelling stage. Peng et al. (Reference Peng, Chen and Pan2020) employed small-angle X-ray scattering (SAXS) and liquid nitrogen adsorption (Frenkel-Halsey-Hill (FHH) and Neimark thermodynamic method) to determine the fractal dimension of four Chinese bentonites. The swelling strain and the clay particle thickness changed non-linearly as a function of water content and cation type (Altoé et al., Reference Altoé, Michels, Santos and Roosevelt2016; Michels et al., Reference Michels, Fonseca, Méheust, Altoé, Grassi, Droppa, Knudsen, Cavalcanti and Cavalcanti2020). Further studies have extended fractal theory in studying bentonite (Li & Xu, Reference Li and Xu2019; Xiang et al., Reference Xiang, Xu, Yu, Fang and Wang2019; Xu et al., Reference Xu, Matsuoka and Sun2003, Reference Xu, Sun and Yao2004).

The overall objective of the current study was to present a theoretical mathematical equation for calculating the hydraulic conductivity of GCLs, particularly regarding the coupled effect of mechanical and chemical processes. The DDL theory and a new fractal model of montmorillonite were combined. Also investigated was the influence on the hydraulic conductivity of GCLs of confining pressure, the concentration of permeate salt solutions, exchangeable cations, bentonite ionic radius, the surface fractal dimension of montmorillonite, and the distance, density, and coefficient of viscosity of interlayer water between two montmorillonite layers. The flow chart showing how the theoretical model is developed is shown in Fig. 1.

Fig. 1 The flow chart of the theoretical model

As shown in the flow chart (Fig. 1), from a macro view, the hydraulic conductivity of GCLs can be calculated using Poiseuille’s Law and Darcy's Law. From the micro view, the hydraulic conductivity of GCLs can be calculated using the capillary rise concept of clay swelling and fractal dimensions. Combining the micro and macro views, a theoretical model for predicting the hydraulic conductivity of GCL is developed. The effect of confining pressure, the concentration of the permeating solution, the exchangeable cations, the ionic radii of cations, the montmorillonite surface fractal dimension, and the distance between two montmorillonite layers (m) after swelling are considered in this theoretical model.

A Theoretical Model of GCL Hydraulic Conductivity

GCLs consist generally of bentonite sandwiched between two geotextile layers that are needled or sewn together to provide shear strength. Bentonite materials, the most important components of the GCLs, are characterized by potentials for high water retention and swelling (Rowe, Reference Rowe2014). For the bentonite material, Komine (Reference Komine2005) assumed that water goes mainly through two montmorillonite layers swollen by adsorbed water, based on their experimental work (Komine & Ogata, Reference Komine and Ogata1996, Reference Komine and Ogata2003, Reference Komine and Ogata2004; Komine, Reference Komine2004a, Reference Komineb). Therefore, according to the plane Poiseuille flow equation, the maximum velocity, v max , can be expressed as:

(1) v max = - ( 2 s i ) 2 8 μ wi dp dx = - ρ g ( 2 s i ) 2 8 μ wi dh dx = - r p ( 2 s i ) 2 8 μ wi dh dx

where s i is the half distance between two montmorillonite layers (m) after swelling at the exchangeable cation i (i denotes the primary exchangeable cations, such as Na+, Ca2+, K+, and Mg2+ in bentonite) (Komine & Ogata, Reference Komine and Ogata2003), μ wi is the coefficient of viscosity of interlayer water between two montmorillonite parallel layers (Pa⋅s), p is hydraulic pressure, x is the coordinate along the flow, dp dx is differentiation of p with x, ρ is solution density, g is gravitational acceleration, dh dx is the hydraulic gradient, and r p is the density of interlayer fluid between two montmorillonite parallel-plate layers (Pa/m).

The average velocity v then can be expressed as (Komine & Ogata, Reference Komine and Ogata2003):

(2) v = 2 3 v max = - 2 3 × r p ( 2 s i ) 2 8 μ wi dh dx = - r p ( 2 s i ) 2 12 μ wi dh dx

Using Darcy’s law for flow through a porous medium, the average velocity can be expressed as follows:

(3) v = - k dh dx

where k is the hydraulic conductivity of GCLs (m/s).

By simultaneous solution of Eqs. 2 and 3, the hydraulic conductivity (m/s) of two montmorillonite parallel layers at the exchangeable-cation i, k i can be expressed as:

(4) k i = r p 12 μ wi ( 2 s i ) 2 = r p 3 μ wi s i 2

Moreover, for a given bentonite, μ wi and r p are constant. Therefore, k i depends only on s i.

Komine & Ogata (Reference Komine and Ogata2003, Reference Komine and Ogata2004) proposed the parameter “swelling volumetric strain of montmorillonite εsv.” The εsv is the percentage volume increase of swelling deformation of montmorillonite. This parameter is defined by:

(5) ε sv = V V + V sw V m × 100 ( % )

where V m is the volume of montmorillonite in the buffer material, V v is the volume of voids in the buffer material, and V sw is the maximum swelling deformation of the buffer material at constant vertical pressure (V sw ≥ 0).

Meanwhile, from the viewpoint of the behavior of montmorillonite, εsv can also be expressed as (Komine & Ogata, Reference Komine and Ogata2003, Reference Komine and Ogata2004):

(6) ε sv = H 1 - H 0 H 0 = d - R ion t + R ion × 100 %

where t is the thickness of the montmorillonite layer (m) and R ion is the ionic radius.

In addition, an equation that accommodates the influences of the exchangeable-cation composition of bentonite by parameters giving the numbers of Na+, K+, Ca2+, Mg2+, and the radius of exchangeable cations after montmorillonite swelling can be obtained as:

(7) s i = ε sv [ t + ( R ion ) i ] + ( R ion ) i

where (R ion) i is the ionic radius of the exchangeable-cation i.

Evidence of self-similar microstructures were found in bentonite (Mandelbrot, Reference Mandelbrot1982; Pusch & Yong, Reference Pusch and Yong2003; Pusch, Reference Pusch1999). Xu et al. (Reference Xu, Xiang, Jiang, Chen and Chu2014a, Reference Xu, Xiang, Jiang, Chen and Chub) analyzed the deformation and fractal behavior of bentonite by relating the elastic and fracture behaviors as proposed in the following model:

(8) ε sv = V w V m = K σ c D s - 3

where V w is the water volume adsorbed by montmorillonite and V m is the volume of montmorillonite (Xu et al., Reference Xu, Sun and Yao2004). K is the montmorillonite expansion coefficient, σ c is swelling stress, and D s is the surface fractal dimension of montmorillonite in bentonite.

The montmorillonite fraction in bentonite can be measured using XRD. Meanwhile, in the GCL permeation tests, the bentonite is completely saturated at a constant confining pressure (ASTM D6766). This indicates that a relationship exists between the structure of a montmorillonite mineral after swelling (d, t, and R ion, etc.) and a confining pressure (σc). Therefore, from the combined Eqs. 4, 7, and 8, the hydraulic conductivity of GCLs can be expressed by the structure of a montmorillonite mineral after swelling and the confining pressure as follows:

(9) k i = r p 3 μ wi × { K × σ c D s - 3 × [ t + ( R ion ) i ] + ( R ion ) i } 2

Among these, K can be estimated as follows (Xu et al., Reference Xu, Matsuoka and Sun2003):

(10) K = ( D s - 2 ) C F ( 2 τ cos α ) 2 - D s V m

where C is the Hausdorff measurement of the fractal surface (Pfeifer & Schmidt, Reference Pfeifer and Schmidt1988), F is the free energy of the chemical solution, τ is the surface tension, and α is the contact angle of the adsorbed liquid with the material.

Some researchers have introduced 0.1 mol/L as the threshold to distinguish the stronger from the weaker solutions (Vasko et al., Reference Vasko, Jo, Benson and Edil2001; Jo et al., Reference Jo, Benson, Shackelford, Lee and Edil2005). Xu et al. (Reference Xu, Xiang, Jiang, Chen and Chu2014a, Reference Xu, Xiang, Jiang, Chen and Chub) found that K varies with the concentration of the permeating solution due to the limitations of the bilayer model. The present theoretical models, therefore, will be represented by dividing the chemical salt solution concentration into two zones:

(11) k pre = k a , C = 0 - 0.1 mol/L k b , C > 0.1 mol/L

where k pre (m/s) is the hydraulic conductivity of GCL in the theoretical models; k a (m/s) is the hydraulic conductivity of GCL when the solution concentration is 0–0.1 mol/L; k b (m/s) is the hydraulic conductivity of GCL when the solution concentration is > 0.1 mol/L.

Based on the theory of Frenkel-Halsey-Hill (FHH), D s can be given by (Avnir & Jaroniec, Reference Avnir and Jaroniec1989; Neimark, Reference Neimark1990; Yin, Reference Yin1991):

(12) D s = 3 + ln V ads - B ln(ln P o P )

where V ads is the gas volume adsorbed at equilibrium pressure (cm2/g), B is an FHH constant, P 0 is the saturation pressure of the adsorbate, and P is the nitrogen partial pressure.

Rao and Thyajaraj (Reference Rao and Thyagaraj2007) investigated the effect of the inflow of sodium chloride solutions on the swell compression behavior of compacted expansive clays under a range of external loads. The ratio of total vertical stress to swell stress determined the nature of strains experienced by the compacted clay specimens subjected to direct inundation with salt solutions. Therefore,

(13) σ c = σ v + σ Π

where σ c is the total net vertical stress (Rao & Thyajaraj, Reference Rao and Thyagaraj2007), σ v is vertical confining stress, and σ Π is osmotic stress.

Using partition theory, Xu et al. (Reference Xu, Xiang, Jiang, Chen and Chu2014a, Reference Xu, Xiang, Jiang, Chen and Chub) proposed that σ Π can be written as

(14) σ Π = Π ( σ v Π ) D s - 2

where Π is osmotic suction and can be calculated through the Van’t Hoff equation as (Colin et al., Reference Colin, Clarke and Clew1985; Lang, Reference Lang1967)

(15) Π = A c ξ R T

where A is the Van’t Hoff coefficient, c the concentration of salt solutions, ξ the cation valence, R the universal gas constant, and T the absolute temperature.

Substituting Eqs. 13 and 14 into 9 yields:

(16) k i = r p 3 μ wi × { K × [ σ v + Π ( σ v Π ) D s - 2 ] D s - 3 × [ t + ( R ion ) i ] + ( R ion ) i } 2

From Eq. 9, when the confining pressure (p) increases, the hydraulic conductivity decreases. This is consistent with many experimental studies (Benson et al., Reference Benson, Chen, Edil and Likos2018; Kang & Shackelford, Reference Kang and Shackelford2011; Malusis et al., Reference Malusis, Shackelford and Kang2015; Shackelford et al., Reference Shackelford, Sevick and Eykholt2010; Zhu et al., Reference Zhu, Ye, Chen, Chen and Cui2015) as shown in Fig. 2. Shackelford et al. (Reference Shackelford, Sevick and Eykholt2010) explained that the average confining pressure leads to a reduction in the void ratio, which results in a reduction of the hydraulic conductivity. In addition, from Eqs. 15 and 16, the increase in solution concentration will lead to an increase in Π and then, accordingly, an increase in the hydraulic conductivity. This is consistent with the experimental study of Jadda and Bag (Reference Jadda and Bag2020), who found, using SEM, that the solution leads to the limitation of the bentonite swelling and results in the large pore size (comparing Fig. 3a through c in the red boxes), which increases the hydraulic conductivity.

Fig. 2 The experimental hydraulic conductivity of GCLs under different pressures

Fig. 3 Scanning Electron Microscope images of the bentonites: (a) Divalent bentonite powder sample, (b) Divalent bentonite in DI water, (c) Divalent bentonite in 1.0 mol/L NaCl (Jadda and Bag, 2011)

Considering the main exchangeable cations (Na+, Ca2+, K+, and Mg2+) in bentonite, the hydraulic conductivity of bentonite, k pb, can be approximated by

(17) k pb = 1 CEC i = N a + , C a 2 + K + , M g 2 + [ E X C i k i ]

where CEC is the bentonite cation exchange capacity (meq/g) and EXC i is the CEC (meq/g) with respect to the i th ion

Introducing the montmorillonite fraction in bentonite, C m, the hydraulic conductivity of GCLs, k pre, can be written as:

(18) k pre = C m × k pb

Considerable research has shown that the hydraulic conductivity of GCLs increased in the stronger solutions (Petrov & Rowe, Reference Petrov and Rowe1997; Jo et al., Reference Jo, Katsumi and Benson2001; Lee et al., Reference Lee, Shackelford and Benson2005; Scalia & Benson, Reference Scalia and Benson2011; Xu et al., Reference Xu, Xiang, Jiang, Chen and Chu2014a, Reference Xu, Xiang, Jiang, Chen and Chub). Other studies (Mesri & Olson, Reference Mesri and Olson1970; Yong & Mohamed, Reference Yong and Mohamed1992; Egloffstein, Reference Egloffstein2001) reported a positive ratio between the hydraulic conductivity of GCLs and the square root of cationic concentration. Therefore, the hydraulic conductivity at 0.1 mol/L is being used to represent the hydraulic conductivity at concentrations > 0.1 mol/L. The following equation for predicting the hydraulic conductivity of GCL in the stronger solutions (> 0.1 mol/L, Bouazza et al., Reference Bouazza, Gates and Abuel-Naga2006) can be derived:

(19) k pre = c 0.1 × ( k pre ) 0.1

Verification of the Analytical Model

To validate this theoretical model of GCL permeability coefficients, the theoretical values obtained from Eqs. 18 and 19 were verified by the experimental results of Petrov and Rowe (Reference Petrov and Rowe1997), Jo et al. (Reference Jo, Benson, Shackelford, Lee and Edil2005), Lee et al. (Reference Lee, Shackelford and Benson2005), and Wang et al. (Reference Wang, Xu, Chen, Dong and Dou2019a, Reference Wang, Chen, Dou and Dongb, Reference Wang, Dong, Chen and Douc). All the parameters used in the formula are the same as those in the experiments. An example calculation is presented in Appendix I. The comparisons for different cases are summarized in Figs. 4, 5 and 6. In Fig. 4, the experimental data are represented by the x-axis and the predict data are represented by the y-axis. This 'One to one' graph is common to illustrate the deviation of the hydraulic conductivities of GCL (Benson et al., Reference Benson, Chen, Edil and Likos2018; Chen et al., Reference Chen, Benson and Edil2019; Li et al., Reference Li, Chen and Benson2020). The dashed line indicates the specific deviation of hydraulic conductivities of GCL (e.g. 1:1, 2:1, 1:2). The closer to the 1:1 dash line, the smaller is the deviation of the hydraulic conductivity of GCLs. The deviation of the hydraulic conductivity of GCLs in the logarithmic coordinate system is generally between 1:10 and 10:1 (Shackelford et al., Reference Shackelford, Sevick and Eykholt2010; Wang et al., Reference Wang, Xu, Chen, Dong and Dou2019a, Reference Wang, Chen, Dou and Dongb, Reference Wang, Dong, Chen and Douc). It is one order of magnitude deviation, which is a conventional deviation in illustrating the hydraulic conductivity of GCL.

Fig. 4 Hydraulic conductivities of GCL: predicted model (k pre) versus experimental data (k exp)

Fig. 5 Hydraulic conductivities in weak and medium solutions

Fig. 6 Hydraulic conductivities at different pressures (NaCl)

An Empirical Model of GCL Hydraulic Conductivity

Kolstad et al. (Reference Kolstad, Benson and Edil2004, Reference Kolstad, Benson and Edil2006) proposed a relatively simple empirical model that can be used to estimate the hydraulic conductivity of GCLs based on experimental data. It is a function of ionic strength and relative abundance of monovalent and divalent cations (RMD). An adjustment model relating these parameters was developed through stepwise regression analysis (Draper & Smith, Reference Draper and Smith1981) using a significance level of 0.05:

(20) log K exp log K DI = 0.965 - 0.976 I + 0.0797 R M D + 0.251 I 2 R M D

where K exp is the hydraulic conductivity to the inorganic chemical (m/s); K DI is the hydraulic conductivity of deionized water (m/s); and I is the ionic strength. The influence of confining pressure cannot be considered in this model. To address the coupling of mechanical and chemical processes, the model accounted for the influence of the confining pressure by using regression techniques on extensive experimental data (Bradshaw et al., Reference Bradshaw, Benson and Rauen2016; Chen et al., Reference Chen, Benson and Edil2019; Jo et al., Reference Jo, Benson, Shackelford, Lee and Edil2005; Lee & Shackelford, Reference Lee and Shackelford2005; Petrov & Rowe, Reference Petrov and Rowe1997); a good relationship between hydraulic conductivity of deionized water and the total net confining stress can be introduced conveniently as:

(21) log K DI = - 15.54 + 5.52 log ( 10.20 - 1.89 log σ c ) ( r 2 = 0.99 )

Substituting Eq. 21 into 20 yields an empirical hydraulic conductivity which combines mechanical and chemical processes:

(22) log K emp = ( 0.965 - 0.976 I + 0.0797 R M D + 0.251 I 2 R M D ) × ( - 15.54 + 5.52 log ( 10.20 - 1.89 log σ c )

Using the experimental data from Jo et al. (Reference Jo, Benson, Shackelford, Lee and Edil2005), details from example calculations of k pre and k emp are shown in Appendices I and II, respectively.

The deviation of the two models can be compared by the standard deviation of the sample

(23) s = 1 N - 1 i = 1 N ( x i - x ¯ ) 2

where N is the number of samples, x i is the i th sample, and x ¯ is the sample average.

Comparison of the deterministic and the empirical models is summarized in Fig. 7 and in Table 1, using the standard deviations of the two models. All other data used in Fig. 7. were calculated using the method shown in Appendices I and II, and summarized in Appendix III. From Fig. 7 and Table 1, the predicted model is more accurate while the empirical model is simpler.

Fig. 7 Hydraulic conductivities of GCL: predicted model (k pre) versus empirical model (k exp)

Table 1 The sample standard deviation in two models

Conclusions

A simplified mathematical expression was developed to predict the hydraulic conductivity of GCLs. Two external factors were identified: confining pressure and concentration of permeating salt solutions. Six internal factors were identified: exchangeable cations; ionic radius in bentonite; surface fractal dimension of montmorillonite; the distance between two montmorillonite layers (m), exchanged with cation i (i denotes the primary exchangeable cations, such as Na+, Ca2+, K+, and Mg2+ in bentonite), after swelling; and the density and coefficient of viscosity of the interlayer fluid, which is often controlled or measured during construction of GCLs liners.

The proposed prediction model (k pre) has a maximum deviation of ~1 :10–10:1 compared to experimental results (k exp), and the empirical model (k emp) has a mean deviation of ~1:15–15:1 compared to experimental results (k exp). The theoretical model is more accurate than the empirical model, especially in the case of high effective stress. The writers caution, however, that the practical regression empirical model should not be used as a substitute for hydraulic conductivity assessment in the field and laboratory.

This study presents a theoretical model that predicts the hydraulic conductivity of GCL. Although the predictions have been shown to agree well with experimental data, one must remember, however, that with theoretical models, taking into account all of the actual conditions in the calculation process is complex. The theoretical model was developed based on the DDL and fractal theory, and the assumptions inherent in those theories will affect the analytical model accordingly. Therefore, more details and suitable hypotheses should be considered when this theoretical model is used in the field and in practice.

Note also that this study was developed assuming room temperature conditions only. However, some studies have shown that the temperature will affect the expansion of clay minerals (Altoé et al., Reference Altoé, Michels, Santos and Roosevelt2016; Gates et al., Reference Gates, Aldridge and Carnero-Guzman2017; Michels et al., Reference Michels, Fonseca, Méheust, Altoé, Grassi, Droppa, Knudsen, Cavalcanti and Cavalcanti2020), which is the term s i in Eq. 4, and the predicted hydraulic conductivity accordingly. Therefore, the effect of temperature on the permeability coefficient should be addressed in future work.

Supplementary Information

The online version contains supplementary material available at https://doi.org/10.1007/s42860-021-00167-0.

Funding

This study was supported by the National Natural Science Foundation of China (NSFC) (Nos. 51778353, 51978390); Open Research Fund of State Key Laboratory of Geomechanics and Geotechnical Engineering, Institute of Rock and Soil Mechanics, Chinese Academy of Sciences (No. Z018007); China Scholarship Council (CSC 201906895014); and the Youth Innovation Promotion Association CAS (2017376). The authors express their gratitude for this financial assistance. The authors also express their sincere gratitude to Prof. Benson, the former Dean and Hamilton Chair in Engineering, School of Engineering, University of Virginia, who offered valuable suggestions for this study.

Declarations

Conflict of Interest

The authors declare that they have no conflict of interest.

References

Abuel-Naga, H. M., Bouazza, A., & Gates, W. P. (2013). Thermomechanical behaveior of saturatd geosynthetic clay liners. Journal of Geotechnical and Geo-Environmental Engineering, 139, 539547. https://doi.org/10.1061/(ASCE)GT.1943-5606.0000799CrossRefGoogle Scholar
Altoé, M., Michels, L., Santos, E., & Roosevelt, D. Jr. (2016). Continuous water adsorption states promoted by Ni2+ confined in a synthetic smectite[J]. Applied Clay Science, 123, 8391. https://doi.org/10.1016/j.clay.2016.01.012CrossRefGoogle Scholar
Avnir, D., & Jaroniec, M. (1989). An isotherm equation for adsorption on fractal surfaces of heterogeneous porous materials. Langmuir, 5, 14311433. https://doi.org/10.1021/la00090a032CrossRefGoogle Scholar
Benson, C. H., Chen, J. N., Edil, T. B., & Likos, W. J. (2018). Hydraulic conductivity of compacted soil liners permeated with coal combustion product leachates. Journal of Geotechnical and Geoenvironmental Engineering, 144, 04018011. https://doi.org/10.1061/(ASCE)GT.1943-5606.0001855CrossRefGoogle Scholar
Benson, C.H. (2013). Impact of subgrade water content on cation exchange and hydraulic conductivity of geosynthetic clay liners in composite barriers. In Coupled Phenomena in Environmental Geotechnics; CRC Press: Boca Raton, Florida, USA. pp. 7984. https://doi.org/10.1201/b15004CrossRefGoogle Scholar
Boadu, F. K. (2000). Hydraulic conductivity of soils from grain size distribution: New Models. Journal of Geotechnical and Geoenvironmental Engineering, 126, 739746. https://doi.org/10.1061/(ASCE)1090-0241(2000)126:8(739)CrossRefGoogle Scholar
Bolt, G. H. (1956). Physicochemical analysis of the compressibility of pure clays. Geotechnique, 6, 8693. https://doi.org/10.1680/geot.1956.6.2.86CrossRefGoogle Scholar
Bouazza, A. (2002). Geosynthetic clay liners. Geotextiles and Geomembranes, 20, 37. https://doi.org/10.1016/S0266-1144(01)00025-5CrossRefGoogle Scholar
Bouazza, A., Zornberg, J., McCartney, J., & Singh, R. M. (2013). Unsaturated geotechnics applied to geoenvironmental engineering problems involving geo-synthetics. Engineering Geology, 165, 143153. https://doi.org/10.1016/j.enggeo.2012.11.018CrossRefGoogle Scholar
Bouazza, A., Singh, R. M., & Rowe, R. K. (2014). Heat and moisture migration in a geomembrane-GCL composite liner subjected to high tem-peratures and low vertical stresses. Geotextiles and Geomembranes, 42, 555563. https://doi.org/10.1016/j.geotexmem.2014.08.002CrossRefGoogle Scholar
Bouazza, A. Gates, W.P., & Abuel-Naga, H. (2006). Factors impacting liquid and gas flow through geosynthetic clay liners. In: Two Decades of Geosynthetics in India, pp. 119146. https://www.researchgate.net/publication/285773141_Factors_impacting_liquid_and_gas_flow_through_geosynthetic_clay_linersGoogle Scholar
Bradshaw, S. L., Benson, C. H., & Rauen, T. L. (2016). Hydraulic conductivity of geosynthetic clay liners to recirculated municipal solid waste leachates. Jo-Urnal of Geotechnical and Geoenvironmental Engineering, 142, 04015074. https://doi.org/10.1061/(ASCE)GT.1943-5606.0001387CrossRefGoogle Scholar
Chai, J. C., & Shen, S. L. (2018). Predicting swelling behavior of a Na+-Bentonite used in GCLs. International Journal of Geosynthetics and Ground Engineering, 4, 9. https://doi.org/10.1007/s40891-018-0126-xCrossRefGoogle Scholar
Chen, Y. G., Zhu, C. M., Ye, W. M., Cui, Y. J., & Chen, B. (2016). Effects of solut-ion concentration and vertical stress on the swelling behavior of compact-ed GMZ01 bentonite. Applied Clay Science, 124–125, 1120. https://doi.org/10.1016/j.clay.2016.01.050CrossRefGoogle Scholar
Chen, J. N., Benson, C. H., & Edil, T. B. (2019). Hydraulic conductivity of geosy-nthetic clay liners with sodium bentonite to coal combustion product leac-hates. Journal of Geotechnical and Geoenvironmental Engineering, 144, 04018008. https://doi.org/10.1061/(ASCE)GT.1943-5606.0001844CrossRefGoogle Scholar
Chung, J., & Daniel, D. (2008). Modified fluid loss test as an improved measure of hydraulic conductivity for bentonite. Geotechnical Testing Journnal, 3, 243251. https://www.astm.org/gtj100005.htmlGoogle Scholar
Colin, E., Clarke, W., & Clew, D. N. (1985). Evaluation of the thermodynamic functions for aqueous sodium chloride from equilibrium and calorimetric measurements below 154 °C. Journal of Physical and Chemical Reference Data, 14, 489610. https://doi.org/10.1063/1.555730Google Scholar
Dexter, A. R., & Richard, G. (2009). The saturated hydraulic conductivity of soils with n-modal pore size distributions. Geoderma, 154, 7685. https://doi.org/10.1016/j.geoderma.2009.09.015CrossRefGoogle Scholar
Dominijanni, A., Manassero, M., & Puma, S. (2012). Coupled chemical hydraul-icme-chanical behaviour of bentonites. Geotechnique, 63, 191205. https://doi.org/10.1680/geot.SIP13.P.010CrossRefGoogle Scholar
Dominijanni, A., Guarena, N., & Manassero, M. (2018). Laboratory assessment of semi-permeable properties of a natural sodium bentonite. Canadian Gotechnical Journal, 55, 16111631. https://doi.org/10.1139/cgj-2017-0599CrossRefGoogle Scholar
Draper, N. R., & Smith, H. (1981). Applied Regression Analysis (2nd ed.). Wiley, New York.Google Scholar
Egloffstein, T. A. (2001). Natural bentonites—influence of the ion exchange and partial desiccation on permeability and self-healing capacity of bentonites used in GCLs. Geotextiles and Geomembranes, 19, 427444. https://doi.org/10.1016/S0266-1144(01)00017-6CrossRefGoogle Scholar
Fox, P. J., & Ross, J. D. (2011). Relationship between NPGCL internal and HDPE GMX/NP GCL interface shear strengths. Journal of Geotechnical and Geoenvironmental Engineering, 137, 743753. https://doi.org/10.1061/(ASCE)GT.1943-5606.0000490CrossRefGoogle Scholar
Gates, W. P., Aldridge, L. P., Carnero-Guzman, G. G., et al. (2017). Water desorption and absorption isotherms of sodium montmorillonite: A QENS study. Applied Clay Science, 147, 97104. https://doi.org/10.1016/j.clay.2017.07.011CrossRefGoogle Scholar
Giroud, J., Badu-Tweneboah, K., & Soderman, K. L. (1997). Comparison of leachate flow through compacted clay liners in landfill liner systems. Geosynthetics International, 4, 34. https://doi.org/10.1680/gein.4.0100CrossRefGoogle Scholar
Guan, C., Xie, H. J., Wang, Y. Z., Chen, Y. M., Jiang, Y. S., & Tang, X. W. (2014). An Analytical model for solute transport through a GCL-based two-layered liner considering biodegradation. Science of the Total Environment, 466–467, 221231. https://doi.org/10.1016/j.scitotenv.2013.07.028CrossRefGoogle ScholarPubMed
Jadda, K., & Bag, R. (2020). Variation of swelling pressure, consolidation characteristics and hydraulic conductivity of two Indian bentonites due to electrolyte concentration. Engineering Geology, 272. https://doi.org/10.1016/j.enggeo.2020.105637CrossRefGoogle Scholar
Jo, H. Y., Katsumi, T., & Benson, C. H. (2001). Hydraulic conductivity and swell-ing of nonprehydrated GCLs permeated with single-species salt solutions. Journal of Geotechnical and Geoenvironmental Engineering, 127, 557567. https://doi.org/10.1061/(ASCE)1090-0241(2001)127:7(557)CrossRefGoogle Scholar
Jo, H. Y., Benson, C. H., Shackelford, C. D., Lee, J. M., & Edil, T. B. (2005). Long-term hydraulic conductivity of a geosynthetic clay liner permeated with inorganic salt solutions. Journal of Geotechnical and Geoenvironmental Engineering, 131, 405417. https://doi.org/10.1061/(ASCE)1090-0241(2005)131:4(405)CrossRefGoogle Scholar
Kang, J. B., & Shackelford, C. D. (2011). Consolidation enhanced membrane behavior of a geosynthetic clay liner. Geotextiles and Geomembranes, 29, 544556. https://doi.org/10.1016/j.geotexmem.2011.07.002CrossRefGoogle Scholar
Kolstad, D. C., Benson, C. H., & Edil, T. B. (2004). Hydraulic conductivity and swell of nonprehydrated geosynthetic clay liners permeated with multispecies inorganic solutions. Journal of Geotechnical and Geoenvironmental Engineering, 130, 12361249. https://doi.org/10.1061/(ASCE)1090-0241(2004)130:12(1236)CrossRefGoogle Scholar
Kolstad, D. C., Benson, C. H., & Edil, T. B. (2006). Errata for “Hydraulic conducti-vity and swell of nonprehydrated geosynthetic clay liners permeated with multispecies inorganic solutions.” Journal of Geotechnical and Geoenvironmental Engineering, 132, 962962. https://doi.org/10.1061/(ASCE)1090-0241(2006)132:7(962)CrossRefGoogle Scholar
Komine, H. (2004a). Simplified evaluation for swelling characteristics of bentonites. Engineering Geology, 71, 265279. https://doi.org/10.1016/S0013-7952(03)00140-6CrossRefGoogle Scholar
Komine, H. (2004b). Simplified evaluation on hydraulic conductivities of sand be-ntonite mixture backfill. Applied Clay Science., 26, 1319. https://doi.org/10.1016/j.clay.2003.09.006CrossRefGoogle Scholar
Komine, H. (2005). Theoretical equations for evaluating hydraulic conductivities of bentonite-based buffer and backfill. Proceedings of the 16th International Conference on Soil Mechanics and Geotechnical Engineering, 22892292.Google Scholar
Komine, H., & Ogata, N. (1996). Prediction for swelling characteristics of comp-acted bentonite. Canadian Gotechnical Journal, 33, 1122. https://doi.org/10.1139/t96-021CrossRefGoogle Scholar
Komine, H., & Ogata, N. (2003). New equations for swelling characteristics of bentonite-based buffer materials. Canadian Gotechnical Journal, 40, 460475. https://doi.org/10.1139/t02-115CrossRefGoogle Scholar
Komine, H., & Ogata, N. (2004). Predicting swelling characteristics of bentonites. Journal of Geotechnical and Geoenvironmental Engineering, 130, 818829. https://doi.org/10.1061/(ASCE)1090-0241(2004)130:8(818)CrossRefGoogle Scholar
Lang, A. R. G. (1967). Osmotic coefficients and water potentials of sodium chloride solutions from 0 to 40°C. Australian Journal of Chemistry, 20, 20172023. https://doi.org/10.1071/CH9672017CrossRefGoogle Scholar
Lee, J. M., & Shackelford, C. D. (2005). Concentration dependency of the prehydration effect for a geosynthetic clay liner. Soils and Foundations, 45, 2741. https://doi.org/10.3208/sandf.45.4_27CrossRefGoogle Scholar
Lee, J. M., Shackelford, C. D., Benson, C. H., et al. (2005). Correlating index properties and hydraulic conductivity of geosynthetic clay liners. Journal of Geotechnical and Geoenvironmental Engineering, 131, 13191329. https://doi.org/10.1061/(ASCE)1090-0241(2005)131:11(1319)CrossRefGoogle Scholar
Li, X. Y., & Xu, Y. F. (2019). Method for calculating swelling deformation of bentonite in salt solution. Chinese Journal of Geotechnical Engineering, 41, 23532359.Google Scholar
Li, Q., Chen, J. N., Benson, C. H., et al. (2020). Hydraulic conductivity of bentonite-polymer composite geosynthetic clay liners permeated with bauxite liquor. Geotextiles and Geomembranes, 49, 420429. https://doi.org/10.1016/j.geotexmem.2020.10.015CrossRefGoogle Scholar
Liu, Y., Gates, W. P., Bouazza, A., & Rowe, R. K. (2014). Fluid loss as a quick method to evaluate hydraulic conductivity of geosynthetic clay liners under acidic conditions. Canadian Geotechnical Journal, 51, 158163. https://doi.org/10.1139/cgj-2013-0241CrossRefGoogle Scholar
Liu, Y. Hao & Wang, L.Z. (2018). Using fluid loss to evaluate the hydraulic conductivity of geosynthetic clay liners under mining leachates. Proceedings of the 8th International Congress on Environmental Geotechnics. 2, 679685. https://doi.org/10.1007/978-981-13-2224-2_84Google Scholar
Malusis, M. A., Shackelford, C. D., & Kang, J. B. (2015). Restricted salt diffusion in a geosynthetic clay liner. Environmental Geotechnics, 2, 6877. https://doi.org/10.1680/envgeo.13.00080CrossRefGoogle Scholar
Mandelbrot, B. B. (1982). The fractal geometry of nature. W.H. Freeman.Google Scholar
Mesri, G., & Olson, R. E. (1970). Shear strength of montmorillonite. Geotechnique, 20, 261270. https://doi.org/10.1680/geot.1970.20.3.261CrossRefGoogle Scholar
Michels, L., Méheust, Y., Mario, A. S., Santos, A. É. C., dos Hemmen, H., Droppa, R., Fossum, J. J. O., & Silva, G. J. (2019). Water vapor diffusive transport in a smectite clay: Cationic control of normal versus anomalous diffusion. Physical Review E, 99, 1. https://doi.org/10.1103/PhysRevE.99.013102CrossRefGoogle Scholar
Michels, L., Fonseca, C., Méheust, M. A. S., Altoé, E. C. S., Grassi, G., Droppa, R., Knudsen, J. K. D., Cavalcanti, L. P., & Cavalcanti, P. (2020). The Impact of Thermal History on Water Adsorption in a Synthetic Nanolayered Silicate with Intercalated Li+ or Na+. The Journal of Physical Chemistry C, 124(45), 2469024703. https://doi.org/10.1021/acs.jpcc.0c05847CrossRefGoogle Scholar
Naka, A., Flores, G., Katsumi, T., & Sakanakura, H. (2016). Factors influencing hydraulic conductivity and metal retention capacity of geosynthetic clay liners exposed to acid rock drainage. Japanese Geotechnical Society Special Publication, 2, 23792384. https://doi.org/10.3208/jgssp.IGS-43CrossRefGoogle Scholar
Nakano, K., & Miyazaki, T. (2005). Predicting the saturated hydraulic conductivity of compacted subsoils using the nonsimilar media concept. Soil and Tillage Research, 84, 145153. https://doi.org/10.1016/j.still.2004.11.010CrossRefGoogle Scholar
Neimark, A. V. (1990). Thermodynamic method for calculating surface fractal dimension. Soviet Journal of Experimental and Theoretical Physics Letters, 50, 607.Google Scholar
Peng, L., Chen, B., & Pan, Y. (2020). Evaluation and comparison of bentonite surface fractal dimension and prediction of swelling deformation: Synchrotron radiation SAXS and N2-adsorption isotherms method. Construction and Building Materials, 269, 121331. https://doi.org/10.1016/j.conbuildmat.2020.121331CrossRefGoogle Scholar
Petrov, R. J., & Rowe, R. K. (1997). Geosynthetic clay liner (GCL)-chemical compatibility by hydraulic conductivity testing and factors impacting its performance. Canadian Gotechnical Journal, 34, 863885. https://doi.org/10.1139/t97-055CrossRefGoogle Scholar
Pfeifer, P., & Schmidt, P. W. (1988). Porod scattering from fractal surfaces. Physical Review Letters, 60, 1435. https://doi.org/10.1103/PhysRevLett.60.1344Google Scholar
Pusch, R. (1999). Microstructural evolution of buffers. Engineering Geology, 54, 3341. https://doi.org/10.1016/S0013-7952(99)00059-9CrossRefGoogle Scholar
Pusch, R., & Yong, R. (2003). Water saturation and retention of hydrophilic cl-ay buffer microstructural aspects. Applied Clay Science, 23, 6168. https://doi.org/10.1016/S0169-1317(03)00087-5CrossRefGoogle Scholar
Quinton, W. L., Elliot, T., Price, J. S., Rezanezhad, F., & Heck, R. (2009). Measuring physical and hydraulic properties of peat from X-ray tomography. Geoderma, 153, 269277. https://doi.org/10.1016/j.geoderma.2009.08.010CrossRefGoogle Scholar
Rao, S. M., & Thyagaraj, T. (2007). Swell-compression behaviour of compacted clays under chemical gradients. Canadian Gotechnical Journal, 44, 520532. https://doi.org/10.1139/t07-002CrossRefGoogle Scholar
Rouf, M. A., Bouazza, A., Singh, R. M., Gates, W. P., & Rowe, R. K. (2016). Water vapour adsorption and desorption in GCLs. Geosynthetics International, 23, 8699. https://doi.org/10.1680/jgein.15.00034CrossRefGoogle Scholar
Rowe, R.K. (1998). Geosynthetics and the minimization of contaminant migration through barrier systems beneath solid waste. Proceedings 6th International Conference on Geosynthetics, Atlanta. 1, 27102. https://www.researchgate.net/publication/291698097Google Scholar
Rowe, R. K. (2014). Performance of GCLs in liners for landfill and mining ap-plications. Environmental Geotechnics, 1, 321. https://doi.org/10.1680/envgeo.13.00031CrossRefGoogle Scholar
Saidi, F., Touze-Foltz, N., & Goblet, P. (2006). 2D and 3D numerical modelling of flow through composite liners involving partially saturated GCLs. Geosynthetics International, 13, 265276. https://doi.org/10.1680/gein.2006.13.6.265CrossRefGoogle Scholar
Scalia, J., & Benson, C. H. (2011). Hydraulic conductivity of geosynthetic clay liners exhumed from landfill final covers with composite barriers. Journal of Geotechnical and Geoenviron-Mental Engineering, 137, 113. https://doi.org/10.1061/(ASCE)GT.1943-5606.0000407CrossRefGoogle Scholar
Scalia, J., Bohnhof, G. L., Shackelford, C. D., Benson, C. H., Sample-Lord, K. M., Malusis, M. A., & Likos, W. J. (2018). Enhanced bentonites for containment of inorganic waste leachates by GCLs. Geosynthetics International, 25, 392411. https://doi.org/10.1680/jgein.18.00024CrossRefGoogle Scholar
Schaap, M. G., & Leij, F. J. (1998). Using neural networks to predict soil water retention and soil hydraulic conductivity. Soil and Tillage Research, 47, 3742. https://doi.org/10.1016/S0167-1987(98)00070-1CrossRefGoogle Scholar
Schanz, T., & Tripathy, S. (2009). Swelling pressure of a divalent-rich bentonite: Diffuse double-layer theory revisited. Water Resources Research, 45, W00C12. https://doi.org/10.1029/2007WR006495CrossRefGoogle Scholar
Shackelford, C. D., Sevick, G. W., & Eykholt, G. R. (2010). Hydraulic conductivity of geosynthetic clay liners to tailings impoundment solutions. Geotextiles and Geomembranes, 28, 149162. https://doi.org/10.1016/j.geotexmem.2009.10.005CrossRefGoogle Scholar
Shen, S. L., Wang, J. P., Wu, H. N., Xu, Y. S., Ye, G. L., & Yin, Z. Y. (2015). Evaluation of hydraulic conductivity for both marine and deltaic deposit based on piezocone test. Ocean Engineering, 110, 174182. https://doi.org/10.1016/j.oceaneng.2015.10.011CrossRefGoogle Scholar
Siddiqua, S. S., Blatz, J. B., & Siemens, G. S. (2011). Evaluation of the impact of pore fluid chemistry on the hydromel-chanical behavior of clay-based sealing materials. Canadian Geotechnical Journal, 48, 199213. https://doi.org/10.1139/T10-064CrossRefGoogle Scholar
Siemens, G., Take, W. A., Rowe, R. K., & Brachman, R. W. I. (2012). Numerical investigation of transient hydration of unsaturated geosynthetic clay liners. Geosynthetics International, 19, 232251. https://doi.org/10.1680/gein.12.00011CrossRefGoogle Scholar
Sposito, G. (1984). The Surface Chemistry of Soils. Oxford University Press, Oxford, UK.Google Scholar
Stępniewski, W. Widomski, & Horn, R. (2011). Hydraulic conductivity and landfill construction. In Dikinya, O. (ed.): Developments in Hydraulic Conductivity Research. Intech, Rijeka, Croatia, 249270.Google Scholar
Thevanayagam, S., & Nesarajah, S. (1998). Fractal model for flow through saturated soils. Journal of Geotechnical and Geoenvironmental Engineering, 124, 5366. https://doi.org/10.1061/(ASCE)1090-0241(1998)124:1(53)CrossRefGoogle Scholar
Vasko, S. Jo, H.Y. Benson, C.H., & Edil, T.B. (2001). Hydraulic conductivity of partially prehydrated geosynthetic clay liners permeated with aqueous calcium chloride solutions. Proc. Geosynthetics, St. Paul, Minnesota, USA. 685699. https://www.researchgate.net/publication/285735788Google Scholar
Wang, B., Xu, J., Chen, B., Dong, X. L., & Dou, T. T. (2019a). Hydraulic conductivity of geosynthetic clay liners to inorganic waste leachate. Applied Clay Science, 168, 244–238. https://doi.org/10.1016/j.clay.2018.11.021CrossRefGoogle Scholar
Wang, B., Chen, B., Dou, T. T., & Dong, X. L. (2019b). Influences of stabilization/solidification product leachates on hydraulic performance of geosynthetic clay liners. Chinese Journal of Geotechnical Engineering, 41, 390396. http://manu31.magtech.com.cn/Jwk_ytgcxb/EN/abstract/abstract17697.shtml in Chinese.Google Scholar
Wang, B., Dong, X. L., Chen, B., & Dou, T. T. (2019c). Hydraulic conductivity of geosynthetic clay liners permeated with acid mine drainage. Mine Water and the Environment, 38, 658666. https://doi.org/10.1007/s10230-019-00611-7CrossRefGoogle Scholar
Xiang, S. G., Xu, Y. F., Yu, F., Fang, Y., & Wang, Y. (2019). Prediction of swelling characteristics of compacted GMZ bentonite in salt solution incorporating ion-exchange reactions. Clays and Clay Minerals, 67, 163172.CrossRefGoogle Scholar
Xie, H. J., Zhang, C. H., Feng, S. J., & Wang, Q. (2018). Analytical model for degradable organic contaminant transport through GMB/GCL/AL system. Journal of Environmental Engineering, 144, 04018006. https://doi.org/10.1061/(ASCE)EE.1943-7870.0001338CrossRefGoogle Scholar
Xu, Y. F., Matsuoka, H., & Sun, D. A. (2003). Swelling characteristics of fractal-textured bentonite and its mixtures. Applied Clay Science, 22, 197209. https://doi.org/10.1016/S0169-1317(02)00159-XCrossRefGoogle Scholar
Xu, Y. F., Sun, D. A., & Yao, Y. P. (2004). Surface fractal dimension of bentonite and its application to determination of swelling properties chaos. Solitons and Fractals, 19, 347356. https://doi.org/10.1016/S0960-0779(03)00047-XCrossRefGoogle Scholar
Xu, Y., Xiang, G., Jiang, H., Chen, T., & Chu, F. F. (2014a). Role of osmotic suction in volume change of clays in salt solution. Applied Clay Science, 101, 354361. https://doi.org/10.1016/j.clay.2014.09.006CrossRefGoogle Scholar
Xu, Y. F., Xiang, G. S., Jiang, H., Chen, T., & Chu, F. F. (2014b). Role of osmotic suction in volume change of clays in salt solution. Applied Clay Science, 101, 354361. https://doi.org/10.1016/j.clay.2014.09.006CrossRefGoogle Scholar
Xue, Q., Zhang, Q., & Liu, L. (2012). Impact of high concentration solutions on hydraulic properties of geosynthetic clay liner materials. Materials, 5, 23262341. https://doi.org/10.3390/ma5112326CrossRefGoogle Scholar
Yan, H. X., Wu, J. W., & Thomas, H. R. (2020). Analytical model for coupled consolidation and diffusion of organic contaminant transport in triple landfill liners. Geotextiles and Geomembranes, 49, 489499. https://doi.org/10.1016/j.geotexmem.2020.10.019CrossRefGoogle Scholar
Yin, Y. (1991). Adsorption isotherm on fractally porous materials. Langmuir, 7, 216217. https://doi.org/10.1021/la00050a002CrossRefGoogle Scholar
Yong, R. N., & Mohamed, A. M. O. (1992). A study of particle interaction energies in wetting of unsaturated expensive clays. Canadian Gotechnical Journal, 29, 10601070. https://doi.org/10.1139/t92-123CrossRefGoogle Scholar
Zhu, C. M., Ye, W. M., Chen, Y. G., Chen, B., & Cui, Y. J. (2015). Impact of cyclically infiltration of CaCl2 solution and deionized water on volume change behavior of compacted GMZ01 bentonite. Engineering Geology, 184, 104110. https://doi.org/10.1016/j.enggeo.2014.11.005CrossRefGoogle Scholar
Figure 0

Fig. 1 The flow chart of the theoretical model

Figure 1

Fig. 2 The experimental hydraulic conductivity of GCLs under different pressures

Figure 2

Fig. 3 Scanning Electron Microscope images of the bentonites: (a) Divalent bentonite powder sample, (b) Divalent bentonite in DI water, (c) Divalent bentonite in 1.0 mol/L NaCl (Jadda and Bag, 2011)

Figure 3

Fig. 4 Hydraulic conductivities of GCL: predicted model (kpre) versus experimental data (kexp)

Figure 4

Fig. 5 Hydraulic conductivities in weak and medium solutions

Figure 5

Fig. 6 Hydraulic conductivities at different pressures (NaCl)

Figure 6

Fig. 7 Hydraulic conductivities of GCL: predicted model (kpre) versus empirical model (kexp)

Figure 7

Table 1 The sample standard deviation in two models

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