Abstract
This study takes the rock masses in the dam foundation of a sluice gate of the Datengxia Hydropower Station in China as a case study to determine the geometrical and mechanical representative volume elements (RVEs) considering the special natures of rock masses (inhomogeneity and anisotropy). 3D fracture networks are generated on the basis of fracture data in the field and then used in this study for RVE determination. The representative parameters for RVE determination are selected and presented first. Through the comparison and analysis of the RVEs in different regions and directions, it is discovered that the inhomogeneity and anisotropy of the rock result in the spatial effect and directional effect in the RVE size, respectively. Therefore, the traditional method of RVE determination needs to be improved. Subsequently, on the basis of the sampling methods considering the special natures, the special natures of the geometrical and mechanical parameters are studied in detail and fully considered to improve the accuracy of the RVE results. Finally, the geometrical RVE size (10 m) and mechanical RVE size (18 m) are determined with the coefficient of variation. Moreover, the relationship between the geometrical and mechanical RVE sizes is also established.
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1 Introduction
A large number of discontinuities may develop in rock masses. Such discontinuities may be large-scale structures, such as faults and bedding planes that extend to tens or hundreds of metres, or medium- to small-scale structures, such as joints and foliations that extend from a few centimetres to tens of metres (Esmaieli et al. 2010). These discontinuities result in the inhomogeneity and anisotropy of rock masses and a prominent scale effect on rock mass properties (Wu and Kulatilake 2012; Yong et al. 2018). An essential way to quantify the scale effect is to use the representative volume element (RVE). When the size of a rock mass is equal to or larger than the RVE size, the fluctuation in the rock properties significantly decreases. In this case, the properties of the rock mass with the RVE size effectively represent those of the whole rock mass. Similarly, in the analysis of rock mass engineering problems through numerical simulation methods, the continuum model is only applicable when the divided units are equal to or larger than the RVE (Zhang et al. 2013a; Liu et al. 2018). Therefore, RVE determination plays a fundamental role in the analysis of rock mass problems.
The concept of RVE was first proposed in a study on the seepage of porous media by Bear (1972). Subsequent studies on RVE were carried out in various fields, and different determination methods were proposed. Pinto and Da (1993) determined the mechanical RVE size with in situ tests. However, such tests are extremely difficult and expensive. Numerical simulations were then widely used by scholars. Karatelike (1985) and Shalhoob and Poufy (2008) investigated mechanical RVEs with the finite element method. Min et al. (2004) and Wu and Kulatilake (2012) used field data to generate 3D fracture network models, and the RVE sizes based on the mechanical properties were studied with the distinct element method. Esmaieli et al. (2010) studied the scale effect on the geometrical and mechanical properties of rock mass and determined geometrical and mechanical RVE sizes with the three-dimensional Particle Flow Code (PFC3D, Itasca Co. Ltd.). In addition, given the random distribution of fractures in rock masses, statistical tests were widely used to determine RVE. Li et al. (2017) applied the Mann–Whitney test to determine the RVE based on the fracture connectivity parameters. Liu et al. (2018) studied the inhomogeneity of volumetric fracture density (P32) in rock masses and determined the RVE based on P32 with the likelihood ratio test and Wald–Wolfowitz runs test.
In the past few decades, many properties of rock masses have been investigated in RVE studies. These studies can be divided mainly into two categories in terms of the parameters (i.e. geometrical and mechanical parameters). Geometrical parameters include P32, the fracture orientation, the rock quality designation, the fracture connectivity, the fracture persistence, etc. (Esmaieli et al. 2010; Zhang et al. 2012, 2013a, 2013b; Li et al. 2017; Song et al. 2017). The RVEs based on the aforementioned parameters are usually referred to as geometrical RVEs, for which many statistical methods are used to obtain the parameters. Mechanical parameters include Young’s modulus, the deformation modulus, Poisson’s ratio, the uniaxial compressive strength, the damage coefficient, etc. (Castelli et al. 2003; Ivars et al. 2008; Esmaieli et al. 2010; Wu and Kulatilake 2012; Ni et al. 2016). Due to the limitation of site conditions and the high costs of in situ and laboratory tests, numerical simulation tests are usually used to obtain the parameters for mechanical RVE determination.
This study takes a large field outcrop downstream of a sluice under construction as a study area. The number of fractures and the information of the geometrical characteristics collected are sufficient to support the reasonable modelling of the 3D fracture network of field rock masses to study the RVE. The study results will contribute on the analysis of engineering problems of this station. The correlational study on geometrical and mechanical RVEs is necessary for the in-depth study of RVEs and the size effects on various parameters. Although previous studies have involved this kind of work (Esmaieli et al. 2010), the selection of parameters in RVE determination is important to be discussed due to the great influence of the selected parameters on the RVE size. Moreover, rock masses characterised by non-persistent fractures are inhomogeneous and anisotropic (described as special natures in this article). Some researchers took inhomogeneity into account using non-parametric hypothesis tests in the studies of geometrical RVE (Li et al. 2017; Liu et al. 2018). At present, the study on the special natures is not systematic in RVE determination. It is necessary to analyse the effects of the special natures on the various RVE sizes and comprehensively consider them to accurately determine the RVE sizes. The deep exploration and accurate determination of RVE lay a foundation for the analysis of engineering problems.
The current study considers the rock masses downstream of the sluice gate at Datengxia Hydropower Station in a case study to establish a comprehensive analysis of these problems. In this study, 3D fracture networks are generated on the basis of the fractures collected from the field (Sect. 2). On the premise of the reasonable selection and presentation of the parameters (Sect. 3), the geometrical and mechanical RVEs are determined, in which the special natures of rock masses are considered, and the effects of the special natures on the RVEs are analysed (Sect. 4). Finally, the relationship between the geometrical and mechanical RVEs under confining pressure are studied (Sect. 5).
2 Generation of a 3D Fracture Network
2.1 Study Area
Rock masses at the Datengxia Hydropower Station are investigated in this study. The station is located in the Qian Jiang River, a branch of the Pearl River in Guiping City, Guangxi Province, China (Fig. 1). It is listed as a major project of the Minister of Water Resource. The main engineering tasks of the station are flood control, power generation and water resource allocation. The main dam is a concrete gravity dam with a length of 1343 m and a maximum height of 80 m. The following data are forecasted after the completion of engineering: normal water level of 61 m, total storage capacity of 3.43 billion m3, installed power station capacity of 1.6 million kWh and annual power output of 6.13 billion kWh.
No earthquake with a magnitude equal to or larger than 7.0 has been recorded in this area, but three earthquakes with magnitudes of 6.0–6.9 were recorded in recent decades (Fig. 1). The nearest distance between the dam site and the epicentre of an earthquake with a magnitude of 6.0–6.9 is approximately 120 km. In the reservoir area, the seismic activity is weak.
The lithologies of the reservoir area are characterised by sedimentary rocks from Cambrian to Quaternary systems, while Ordovician, Silurian and Jurassic systems are lacking. The exposed strata of the reservoir area are mainly the Lower Devonian system (D1), with lithologies of limestone and mudstone (Fig. 2).
The sluice gate, in sections #23–33, is an important part of the main dam (Fig. 3). This gate is estimated to bear high hydrostatic pressures exerted by an upstream water level of 61 m and a downstream water level of 22.7 m (normal storage conditions). In addition, the rock masses downstream of the sluice gate are poor due to a large number of discontinuities, as shown in Fig. 3. Thus, the rock masses of the dam foundation of the sluice gate are more prone to damage than other parts. This part of the rock masses needs to be studied in depth, including the relevant size effects and RVEs based on different geometrical and mechanical considerations.
The main strata downstream of the sluice gate are mudstone and sandstone from the 13th layer of the Nagaolingian and limestone from the Lower Yujiangian. These two strata have similar bedding orientations of N5°–20°E, SE∠10°–15°. The structure, mineral composition and colour of the rock masses are almost unchanged. The partial fracture surfaces are slightly discoloured. The rock masses are weakly weathered.
Few faults are developed around the sluice gate, and the widths of the crushed zones are relatively small, except for that of the F216 fault. The faults intersect the dam axis at a large angle.
A large number of stochastic fractures are exposed beneath the slice gate (Fig. 3). Different from the configurations of the other sections, the features of fractures in section #28 are special. The size and density of the fractures are large. Moreover, many of the fractures are nearly parallel to the dam axis. When the fractures intersect bedding planes and weak interlayers, failure surfaces are likely to develop (Fig. 4). Therefore, this study focuses on the rock masses downstream of section #28.
2.2 Acquisition of Fracture Data
A horizontal artificially excavated outcrop with an area of 807.3 m2 at D1y1-2 downstream of section #28 is used for the collection of fractures, as shown in Fig. 2. Fractures with trace lengths longer than 0.5 m are collected using the sampling window method (Kulatilake and Wu 1984). The geometrical characteristics, including the location (start and end coordinates), orientation (dip direction and dip angle), aperture, surface roughness of the fracture wall and filling, are recorded. Data form a total of 390 fractures are collected from the field. The fracture traces are shown in Fig. 5.
The trace lengths of the fractures are mostly shorter than 4 m, with an average value of 2 m and minimum and maximum lengths of 0.5 m and 13.7 m, respectively. Most of the fractures have steep dip angles greater than 60°. The apertures commonly range from 1 to 3 mm. The fracture walls mainly present a straight and smooth morphology, with fewer presenting a wavy morphology. The fillings are mainly rock debris and weathered muds. The persistence of these fractures is 46%. The grouping results are obtained using the method proposed by Shanley and Mahtab (1976), as shown in Fig. 6 and Table 1. The directions of the predominant fracture sets are shown in Figs. 3 and 6. Set 1 intersects the dam axis at a relatively small angle, and set 2 intersects the dam axis at a large angle.
2.3 3D Fracture Network Modelling
Influenced by tectogenesis, many stochastic fractures are developed inside the D1y1-2 rock masses. However, only 2D trace information can be obtained by field investigation. Consequently, obtaining 3D fractures information through a modelling method is necessary to analyse the size effect and determine the RVE from a 3D perspective (Zhang et al. 2020b).
In consideration of the size of the sampling window (approximately 40 m × 30 m) and the thickness of stratum D1y1-2 (20 ~ 30 m), a model with dimensions of 50 m × 40 m × 40 m is designed to accommodate the 3D fracture network. A 3D fracture network modelling method suitable for large fracture windows was proposed by Nie et al. (2019) with disc-shape discontinuities. 3D fracture network modelling is carried out on the basis of this fracture geometry. The steps are as follows:
(1) Determination of statistical homogeneity and preferential fracture sets.
The number of fractures is limited in the field. The division of the statistical homogeneity greatly decreases the accuracy of the fracture statistical results. The lithology and strength of the rock is uniform in the study area, suggesting that the characteristics of the fractures are similar in different locations. In addition, the inhomogeneity of the fractures can be statistically accepted to model the 3D fracture network. Therefore, the rock masses in the study area can be regarded as a statistically homogeneous zone (Zhang et al. 2013a, 2013b). The fractures are demarcated into two sets based on orientation (Table 1, Fig. 6). These two fracture sets are separately modelled to generate 3D fracture networks.
(2) Determination of fracture disc diameter 2r.
The stochastic mathematical method is used to determine the probability density function (PDF) of r. The mean, variance and probability density distribution type of r are determined on the basis of the field trace length data using the trial method and chi-square test (Bryant and Satorra 2012). Subsequently, the PDF of r that intersects the outcrop surface is obtained. However, in actual cases, the PDF of r differs from that in 3D space. Thus, a correction is carried out using Eq. (1).
where \({n}_{ab}\) and \({n}_{ab}^{\text{'}}\) are the number of fractures with radii between a and b in the outcrop surface and in 3D space, L is the height of the 3D space that accommodates the fractures, and θ is the intersection angle between the fracture set and the outcrop surface.
(3) Determination of fracture orientation.
Although the orientations of the fractures in the outcrop surface are collected from those in 3D space, the frequencies of the fracture orientation in 3D space may differ from those collected from the outcrop surface (Terzaghi 1965). For example, the probability that fractures that intersect the outcrop surface at small angles are collected is smaller than that of fractures with large angles. Equation (2) is used accordingly to correct this deviation.
where α is the average intersection angle between the fractures and the outcrop surface, Nα is the number of fractures with an intersection angle of α in the outcrop surface, and Pα is the corrected fracture frequency with an intersection angle of α in 3D space.
(4) Determination of fracture density.
The density of the fractures is determined by the trial method. An arbitrary density is assumed to determine the fracture number n in 3D space. A 3D fracture network is generated on the basis of the aforementioned radii, orientations and n. Subsequently, this 3D fracture network is intersected by a plane with an orientation identical to that of the outcrop surface. The density is adjusted until the number of fractures intersecting the plane in 3D space is consistent with that in the outcrop surface, i.e. the trial method.
(5) Monte Carlo simulation.
The fracture centre points are assumed to follow a homogeneous (Poisson) model (Billaux et al. 1989); thus, n centre coordinates are stochastically generated. Then, n random fracture diameters and orientations are generated according to Steps 2 and 3. Finally, n diameters and orientations are stochastically combined to generate 3D fracture networks (Li et al. 2020).
(6) Verification of the 3D fracture networks.
The generated networks are intersected by a plane with an orientation identical to that of the outcrop surface. If the statistical characteristics of the fracture traces in the intersection plane are consistent with those in the outcrop surface, the networks are reasonable. The Fisher constant is used to represent the fracture orientation distribution. The fracture number and P21 (m/m2) are used to represent the fracture density. The average and standard deviation are selected as the statistical characteristics of trace length. The statistical parameters in the intersection plane and outcrop surface are calculated, and the results are shown in Table 2. The statistical parameters are nearly the same, indicating that the simulated networks are reasonable.
The parameters of the fracture sets for 3D fracture network modelling are determined and verified on the basis of the aforementioned steps. The details are shown in Table 3. The 3D fracture networks of the two fracture sets are separately generated, in which the fractures are numerically expressed by their coordinates, sizes and orientations. Figure 7 shows the 3D fracture networks using a discrete fracture network (DFN) in PFC3D, which are accommodated in domains with a size of 50 m × 40 m × 40 m.
3 Key Conditions of RVE Determination
Several key conditions need to be exhibited prior to RVE determination. In the present study, we select the representative parameters to determinate the geometrical and mechanical RVEs. Then, we state the sampling principles to explain how the special natures can be taken into account. Finally, the RVEs can be easily determined by the quantitative method.
3.1 Parameter Selection
The RVE sizes of rock masses greatly depend on the parameters considered. The selection of parameters must be reasonable enough to ensure that the determined RVEs can accurately represent the geometrical and mechanical characteristics of the whole rock masses.
3.1.1 Geometrical Parameters
Density, size and orientation, the basic geometrical characteristics of fractures, can be used to characterise the fracture structures in rock masses. Therefore, the selected parameters for RVE determination need to reflect the aforementioned geometrical elements. In this way, the determined RVE can accurately represent the geometrical characteristics of the rock masses. Volumetric fracture density (P32), which can simultaneously represent size and density, and patches in the equal-area Schmidt projection diagram, which can represent orientation information, are selected as the parameters for geometrical RVE determination in the present study.
3.1.2 Mechanical Parameters
An accurate understanding of rock mass strength and deformability is fundamental to ensure the safe and economical design of structures built inside and above rock masses (Wu and Kulatilake 2012). In addition, the strength and deformability of rock masses are also important mechanical parameters in the analysis of rock mass engineering problems. Thus, the representative properties, including the uniaxial compressive strength (UCS) and deformation modulus (E0), are taken as the parameters for mechanical RVE determination.
3.2 Parameter Determination Methods
Parameter values need to be accurately determined for use in RVE studies. Different calculation methods and measurement approaches are applied to various parameters as follows.
3.2.1 Geometrical Parameters
P32 (m2/m3) is the fracture area per rock mass volume, indicating that the value of this parameter comprehensively depends on fracture density and size. The Delaunay triangulation method is used to determine the P32 value (Zhang et al. 2017a), as shown in Fig. 8a. Many random discrete points on the fracture disc are generated. Subsequently, Delaunay triangulation is applied to the points inside the sample to form triangles (Lee and Schachter 1980). The fracture area inside the sample is calculated by summing the triangle areas based on Heron’s formula (Mitchell 2009). The areas of all the fractures inside the sample are summed and then divided by the sample volume to determine the P32 value.
The equal-area Schmidt projection diagram is divided into 34 equal-area patches, as shown in Fig. 8b. A fracture with an individual orientation can be projected into a corresponding patch. By repeating this procedure for all the fractures in a sample, the orientation frequencies of the fractures in the 34 patches can be determined. These 34 frequencies are treated as a 34-dimensional vector \(\overrightarrow{\mathbf{A}}\) (p1, p2, p3, …, p34). Subsequently, the norm of vector \(\left|\overrightarrow{\mathbf{A}}\right|\) can be calculated, as shown in Eq. (3). The norm is a parameter value representing the orientation distribution information of the fractures, and it is called the orientation vector norm (A34) in the subsequent sections.
3.2.2 Mechanical Parameters
Only a sufficient quantity of samples that can accommodate the enough fractures can be used to derive the mechanical characteristics of rock masses. However, this kind of sample cannot be tested in the laboratory due to the difficulty of constructing such samples and the high economic cost. Therefore, a numerical simulation test is employed as the primary approach for obtaining the parameters.
The studied rock mass contains many non-penetration fractures. A recently reported method called the equivalent rock mass technique is suitable for simulating this kind of rock mass (Esmaieli et al. 2010). With three-dimensional Particle Flow Code (PFC3D) software, a bonded particle model is constructed to simulate intact rock. Subsequently, an assembly of fractures is inserted into an intact rock to simulate rock mass, as shown in Fig. 9. By assigning the corresponding contact constitutive model to the particles near the fractures, the mechanical behaviour of fractures is well simulated.
In PFC3D, the spherical particle is the basic unit of rock mass. The particle and the contact model between particles need to be assigned parameters, i.e. micro-parameters. The mechanical behaviours and properties of the materials are controlled by their assigned micro-parameters. The rock is assigned the Parallel Bond contact model, providing the mechanical behaviour of a finite-sized piece of cement-like material deposited between the two contacting pieces. The structural plane is assigned the Smooth Joint contact model, providing the macroscopic behaviour of a linear elastic and either bonded or frictional interface with dilation. However, micro-parameters cannot be directly determined by laboratory or in situ tests (Yang et al. 2014). Following the principles of PFC3D, the micro-parameters first need to be calibrated. Specifically, a set of micro-parameters is assumed, and numerical tests are conducted. Subsequently, the macro-mechanical parameters are obtained and compared with those obtained in the laboratory or in situ test. If the parameters are inconsistent, the micro-parameters need to be changed (i.e. trial and error method) (Lee and Jeon 2011; Cao et al. 2016a, 2016b; Cheng et al. 2016).
The compression test of the rock and direct shear test of a structural plane are carried out in the calibration process. In the laboratory tests, the axial loading of the compression tests is controlled by displacement, at a loading rate of 0.04 mm/min. The horizontal shearing of direct shear tests is also controlled by displacement, at a loading rate of approximately 0.5 mm/min. As shown in Fig. 10, the numerical tests used in the calibration are presented. In the compression numerical tests, the top and bottom walls are set as loading plates with a fixed speed. In the uniaxial compression tests, the sidewall is removed to simulate the unconfined state. In the triaxial compression tests, the sidewall is applied with the servo mechanism to apply the confining pressure. In the direct shear tests, the top and bottom walls are applied with the servo mechanism to apply the normal stress. The sidewalls are divided into upper and lower parts. The upper sidewalls are immobile. The lower sidewalls are moved horizontally with a fixed speed to apply the shear stress. In the numerical PFC3D tests, the calculation is run based on an explicit time stepping algorithm. The time step of each calculation is extremely small (1e-6 s). If the loading rate of the laboratory test is applied in the numerical test, it takes too long to calculate. Based on the previous studies, the loading rate is reasonably increased. The loading rate is set as 0.05 m/s in the compression test (Zhang et al. 2016, 2017b) and 0.1 m/s in the direct shear test (Bahaaddini et al. 2013, 2017; Xu et al. 2015a, 2015b).
Based on the relationship between the micro- and macro-parameters, the micro-parameters of the rock and fracture are determined by the trial and error method (Cundall and Potyondy 2004; Yang et al. 2006; Koyama and Jing 2007; Yoon 2007). The stress–strain curve of the uniaxial compression test is shown in Fig. 11a. Due to the limitation of the direct shear testing equipment, the shear strength and the shear displacement under shear strength are only recorded. The shear strengths are shown in Fig. 11b. The macro-mechanical parameters in the laboratory and numerical tests are shown in Table 4 (the mechanical parameter values obtained from the laboratory parallel tests are presented in Table 1 in the supplementary data). The mechanical behaviours and parameters are roughly the same in the laboratory and numerical tests. The corresponding micro-parameters are shown in Table 5.
The rock mass model is extremely large, indicating that the number of particles will be too large for calculation if the calibrated particle radius (minimum radius of 0.15 mm) is used. For example, 2.06 million particles are generated in a sample with a side length of 10 m. Therefore, the particle radius needs to be appropriately enlarged. Studies have shown that when the number of particles in the minimum side length of the model (RES) is equal to or larger than 10 (Eq. (4)), the number and radius of particles have a negligible effect on the macro-mechanical parameters (Deisman et al. 2008; Zhou et al. 2011). Table 6 shows the minimum particle radius, RES index and particle number in the samples with different side lengths after the enlargement of the particle.
where Lmin is the minimum side length of the model, and Rmax and Rmin are the maximum and minimum particle radii, respectively.
Uniaxial compression tests are run with the corresponding micro-parameters and particle radius. The UCS and E0 values are recorded to determine the mechanical RVE. To ensure the correctness of the simulation, the fractures are monitored. Due to the limitation of the 3D perspective, a filter with a thickness of 1.5 m is presented to clearly show the micro-fractures. Figure 12 shows the propagation process of the micro-fractures. As shown in Fig. 12, the initial positions of the micro-fractures are located at the edge of the 3D fracture network. With the increase in axial stress, the micro-fractures gradually propagate, and the micro-fractures and the 3D fracture network coalesce. These phenomena are reasonable and consistent with the failure process of rock masses in laboratory tests (Cao et al. 2016a, 2016b).
3.3 Parameter Sampling
The space that accommodates the fracture network is constructed prior to the RVE determination. The edge effect denotes the small fracture density in the edge regions. Therefore, the 3D fracture networks generated in Sect. 2.3 should be reduced. In the present study, the sizes of the 3D fracture networks in the x, y, and z directions are separately reduced by twice the average trace length (Zhang et al. 2012). Eventually, 3D fracture networks with dimensions of 46 m × 36 m × 36 m are obtained for RVE determination.
Cubes with increasing side lengths (i.e. from 4 to 22 m) are sampled to analyse the size effects and determine the RVE sizes. The following three kinds of sampling methods are considered in the study of the RVE sizes:
(a) Traditional sampling method.
An arbitrary point is taken as a constant centre point. Subsequently, the cubes centred at this point with different side lengths are sampled (Fig. 13a).
(b) Sampling method considering inhomogeneity.
The traditional sampling method assumes that the fractures are homogeneously distributed in rock masses. However, fractures in both natural rock masses and 3D fracture networks are typically inhomogeneous (Liu et al. 2018). Therefore, the corresponding RVE is characterised by spatial variability (Zhang et al. 2013a, b). This method is used to consider the spatial effect. Multiple cubes with a same side length but random centre points are sampled (Fig. 13b).
(c) Sampling method considering anisotropy.
The geometrical and mechanical properties of rock masses are characterised by anisotropy. Therefore, this method, in which the sampling direction is rotated multiple times on the basis of the sampling method considering inhomogeneity, is generated to study whether RVE has the directional variability, as shown in Fig. 13c. In the figure, Dt is the direction of the body diagonal in the samples with the conventional sampling direction. Dx, Dy and Dz are the directions of the body diagonal in the rotated samples. Cubes with different directions are sampled to determine the RVEs in different directions. Because these directions are very different, the anisotropy can be shown clearly.
3.4 Quantitative Methods of RVE Determination
In the traditional sampling method, an individual parameter value is determined for a given size. The rate of change in the parameter values (Eq. (5)) is used to determine the RVE size. When the rate of change is less than an acceptable value, the parameter is in a convergence state. The acceptable rate of change is chosen as 5% in this article. When the size is larger than the critical value, i.e. the RVE size, the rate of change will always be less than 5%.
where ki-2 and ki are the parameter values of rock mass samples with sizes of i-2 m and i m, respectively, and ε is the rate of change in the parameter values.
In the sampling methods considering the inhomogeneity and anisotropy, twenty cubes with a same side length and direction but random centre points are sampled, as shown in Fig. 13. Thus, the main problem is how to quantify a comprehensive parameter for the twenty parameter values.
The coefficient of variation (CV), the ratio of the standard deviation to the mean value, is introduced to quantify the discreteness of the parameter values for the samples with a given size and direction. The parameter values have a significant discreteness under a large CV value. Different acceptable values of CV have been used to determine RVE size in previous studies (5%, 10%, 20%) (Min and Jing 2003; Esmaileli et al. 2010). With the increase in the acceptable value of CV, the allowable discreteness of the parameter values under the RVE size gradually increases; thus, the RVE size gradually decreases. For the different parameters in the RVE determination, the same acceptable value of CV should be used. We take a moderate value (10%) to determine the RVE size in this article.
4 Determination of RVE with different considerations
4.1 Determination of RVE with the Traditional Method
The traditional sampling method (Sect. 3.3a) is applied, and then the rate of change in the parameter values (Eq. (5)) is calculated to determine the RVE sizes. The following three centre points are taken to carry out this study: (15 m, 15 m, 15 m), (20 m, 20 m, 20 m), and (25 m, 25 m, 25 m).
The geometrical and mechanical parameter values are obtained using the method introduced in Sect. 3.2, and the results are shown in Fig. 14. Distinct size effects are observed. Overall, an increase in sample size gradually enlarges P32 and decreases A34, UCS and E0. When the sample size is small, the parameter values fluctuate dramatically with size. The variability gradually weakens as the size increases.
The rate of change in the geometrical and mechanical parameter values are calculated, and then the RVE are determined based on the acceptable value of 5%. The larger value of RVE sizes based on P32 and A34 is taken as the geometrical RVE size. The larger value of RVE sizes based on UCS and E0 is taken as the mechanical RVE size. The results are shown in Table 7. Both the geometrical and mechanical RVEs vary among the study regions.
As illustrated in Fig. 14, the parameter values vary among the locations within 3D fracture networks, suggesting that the rock masses are characterised by inhomogeneity. Table 7 shows that the RVEs vary among the study regions, reflecting the spatial effect on RVE size. Moreover, the spatial effect on the mechanical RVE is more significant than that on the geometrical RVE.
The above studies show the necessity of considering the inhomogeneity in RVE determination. Subsequently, we study whether considering the anisotropy is necessary. The parameter values in different directions with a centre point (15 m, 15 m, 15 m) are shown in Fig. 15, in which the directions are shown in Fig. 13c. The anisotropies of the geometrical and mechanical parameters are distinct. Furthermore, the RVE sizes vary among the directions, as shown in Table 8.
The above studies indicate that the traditional method needs to be improved, as it can only represent a single study region and direction. In the subsequent sections, the RVEs are subjected to an in-depth study by considering the special natures of the rock masses.
4.2 Determination of RVE with the Consideration of Inhomogeneity
The sampling method considering the inhomogeneity is used to study the geometrical and mechanical RVEs (Fig. 13b). An acceptable CV value is used to determine the RVE sizes.
The geometrical and mechanical parameter values are calculated, as shown in Fig. 16. The variability in the parameter values of the samples with a same size is shown, which corresponds to the inhomogeneity of the fracture structures. When the sample size is small, the parameter values vary significantly with location. With the increase in the sample size, the difference in the fracture structures between the samples gradually weakens. Thus, the variability in the parameter values gradually weakens, i.e. the CV gradually decreases. All of the studied parameters exhibit the aforementioned trends.
The CV curves of the geometrical parameters are regular. Thus, the CV curves of the mechanical parameters that are relatively irregular are emphasised. When the sample size is small, the failure of a sample is likely to depend on a minority of fractures that play a key role in the mechanical behaviour. Thus, the mechanical properties are extremely inhomogeneous, which leads to the irregularity of the CV curve at small sample sizes. This irregularity indicates that the mechanical RVE is larger than the geometrical RVE.
As shown in Fig. 16, the CV varies among the parameters. Overall, the CVs of the mechanical parameters are larger than those of the geometrical parameters. This indicates that the inhomogeneity of the mechanical properties is more significant. Based on the acceptable CV value of 10%, the RVE sizes based on P32 and A34 are 10 m and 8 m, respectively. The larger value of 10 m is taken as the geometrical RVE size. The RVE sizes based on UCS and E0 are 18 m and 14 m, respectively. Similarly, the mechanical RVE size is 18 m, which is far larger than the geometrical RVE.
4.3 Determination of RVE with the Consideration of Anisotropy
On the basis of the sampling method considering the anisotropy (Fig. 13c), the RVEs in the different directions are determined by analysing the CV. This method simultaneously considers the inhomogeneity and anisotropy of the rock masses.
The geometrical and mechanical parameter values are determined in different directions, as shown in Fig. 17. The anisotropies of the rock mass properties are observed (Sect. 4.1). Thus, we mainly discuss the anisotropy characteristics of the different parameters. For the geometrical parameters, when the sample size is sufficiently large (16 m), the parameter values in the different directions are nearly the same. However, for the mechanical parameters, the anisotropy is obvious within the entire sizes. In particular, UCS and E0 in the Dx direction are larger than those in the other directions. Therefore, the anisotropy of the mechanical properties is more significant than that of the geometrical properties.
As shown in Fig. 17, the CV varies with direction, that is, the size effects are anisotropic. Furthermore, the degrees of anisotropy in the size effects are different with parameter. Based on the previous studies on the quantification of anisotropy, the anisotropy of size effects is measured quantitatively by the anisotropy coefficient Ap (Eq. (6)) (Il'Chenko and Gannibal 2019). Figure 18 shows the Ap values of the CV of the different parameters. Overall, the Ap values of the mechanical parameters are larger than those of the geometrical parameters. Therefore, the size effects of the mechanical parameters have a more significant anisotropy than those of the geometrical parameters. Furthermore, that of P32 is relatively weak.
where CVt、CVx、CVy and CVz are the values of CV in the Dt、Dx、Dy and Dz directions,
\(C{V}_{m}=\left(C{V}_{t}+C{V}_{x}+C{V}_{y}+C{V}_{z}\right)/4\) is the average value of CV in the different directions.
The RVE sizes in different directions are determined using a CV value of 10%, as shown in Table 9. The results show that the RVE size has a directional effect. Furthermore, the directional effect on the mechanical RVE is more significant than that on the geometrical RVE, which is consistent with the analysis of the anisotropy degrees of the size effects of different parameters. In particular, based on the mechanical parameters, the RVE sizes in the Dy directions are smaller than those in the other directions. The directional effect on the geometrical RVE is not very obvious.
In this study, we take the maximum of the RVE sizes in different directions as the final RVE size. The geometrical and mechanical RVE sizes are 10 and 18 m, respectively. As reported in Table 9, for the rock masses in the present study, the RVE sizes in the Dt direction are largest; thus, there are no changes in the RVE sizes under anisotropy consideration. Through the above studies, the directional effect on the RVE is verified. Therefore, the consideration of anisotropy is necessary to improve the accuracy of RVE determination.
5 Comparison between geometrical and mechanical RVE sizes
We discuss the relationship between the geometrical and mechanical RVE sizes in this section. Many studies have shown that the size effects of the various properties of rock masses are mainly caused by the complex fracture structures (Piggott and Elsworth 1989; Zhang and Einstein 2000; Harrison et al. 2002; Fereshtenejad et al. 2016; Ni et al. 2016). Therefore, the geometrical features theoretically control the mechanical features. In the analysis of Zhang et al. (2013b), fractures were found to be the key factors controlling rock mass characteristics. These studies indirectly show that RVEs based on the fracture characteristics are representative, have universality, and can, thus, reflect the size effects of mechanical properties; that is, the geometrical RVE is larger than the mechanical RVE for the same rock masses. However, in the RVE determination of practical engineering rock masses, the mechanical RVE is larger than the geometrical RVE. For example, Esmaieli et al. (2010) found that the mechanical RVE (7 m × 7 m × 14 m) is larger than the geometrical RVE (3.5 m × 3.5 m × 7 m). In this study, the mechanical RVE (18 m × 18 m × 18 m) is also larger than the geometrical RVE (10 m × 10 m × 10 m).
Given the complexity of the mechanical properties of rock masses, the conclusion regarding the relationship between geometrical and mechanical RVE sizes cannot be easily concluded. In this article, the studies involving the mechanical aspect all focus on unconfined rock masses. The confining pressure has a great influence on the mechanical characteristics of rock masses (Yao et al. 2019; Guo et al. 2020). Therefore, we conjecture that the relationship between geometrical and mechanical RVE sizes may be influenced by confining pressure. More importantly, rock masses work under the three-dimensional stress states in engineering.
A study on the influence of confining pressure on mechanical RVE size is undertaken, and then the mechanical RVE considering the confining pressure is compared with the geometrical RVE. We separately take five samples with sizes of 8 m,10 m and 12 m to run the triaxial compression test. Confining pressures of 1 MPa, 3 MPa, 5 MPa, 7 MPa, 10 MPa and 15 MPa are applied.
The shear strength and E0 values are recorded, and then the CVs are calculated, as shown in Fig. 19 (the stress–strain curves of the samples with different sizes under different confining pressures are presented in Fig. 1 in the supplementary data). With the increase in the confining pressure, the shear strength gradually increases, but the law of E0 is not clear. The CVs of the shear strength and E0 gradually decrease as the confining pressure increases. When the confining pressure is less than or equal to 5 MPa, the CVs of the mechanical parameters are larger than 10%. When the confining pressure is equal to 7 MPa, the CVs of the mechanical parameters with sample sizes of 10 m and 12 m are less than 10%. When the confining pressure is greater than or equal to 10 MPa, the CVs of the mechanical parameters are less than 10%. Therefore, the mechanical RVE size under a confining pressure of 7 MPa is the same as the corresponding geometrical RVE size, and the mechanical RVE size under a high confining pressure (greater than or equal to 10 MPa) is smaller than the corresponding geometrical RVE size.
During the compression tests, the percentage of bond failure is recorded. The changes in the percentage of bond failure with the increase in the axial stress in the sample with a size of 10 m are shown in Fig. 20. With increasing confining pressure, the initiation stress of micro-fractures gradually increases, and the percentage of bond failure gradually decreases under the same axial stress. This indicates that the confining pressure limits the generation and propagation of micro-fractures. The influence of fracture structures on the mechanical properties gradually weakens as the confining pressure increases. Therefore, the mechanical RVE size gradually decreases.
6 Discussion
The calculation results of the RVE size at the sluice show that the equivalent continuum model is applicable for large-scale rock mass engineering problems such as stability analysis of the entire sluice. In this case, the mechanical parameters obtained from samples with the RVE size are representative and can be used as the input parameters of the model. On the other hand, for the small-scale excavation of rock masses, the equivalent rock mass technique used in this article is applicable for rock masses characterised by non-persistent fractures.
The consideration of anisotropy is necessary in practical problems. For some engineering problems with directional features, the direction in the RVE determination should be consistent with that involved in the engineering. The parameter values in the corresponding direction are obtained for the RVE determination to improve the accuracy and efficiency. In some engineering, the geometrical or mechanical characteristics in various directions are related to the problem of analysis. We can determine the RVEs in several very different directions, such as the directions selected in this study. Subsequently, the maximum is taken as the final RVE size to ensure accuracy. For the study object of the rock masses in the dam foundation of the sluice, stability analysis is a crucial engineering problem. Instability may occur in multiple directions. Therefore, the maximum of the RVE sizes in different directions is taken as the final RVE size.
Mechanical tests are necessary in the determination of the mechanical RVE, which is more complex and time-consuming than the determination of the geometrical RVE. To quickly determine or roughly estimate the mechanical RVE for the analysis of rock mass engineering problems, it is necessary to study the relationship between the geometrical and mechanical RVEs. The present study shows that the mechanical RVE without confining pressure is almost twice the geometrical RVE. With increasing confining pressure, the mechanical RVE gradually decreases. In practical engineering, rock masses work under the ground stresses, which are not fixed. Therefore, the mechanical RVE determined without confining pressure is sufficient and reasonable for the analysis of engineering problems. Future developments will be aided by the quantitative determination of the relationship between geometrical and mechanical RVEs to improve the efficiency of solving engineering problems.
7 Conclusion
The rock masses downstream of the sluice gate of the Datengxia Hydropower Station are taken as the study area to determine the geometrical and mechanical RVEs by focusing on the special natures (inhomogeneity and anisotropy) of the rock masses. The volumetric fracture density (P32) and orientation vector norm (A34) are taken to comprehensively characterise the complex fracture structures. The uniaxial compressive strength (UCS) and deformation modulus (E0) obtained by PFC3D are taken to present the mechanical characteristics. The conclusions can be summarised as follows:
-
1
Based on the sampling methods considering the special natures, the results indicate that the special natures of mechanical properties are more significant than those of geometrical properties.
-
2
The inhomogeneity of rock masses results in the RVE sizes varying with location, i.e. spatial effect on RVE sizes. The anisotropy of rock masses results in the RVE sizes varying with direction, i.e. directional effect on RVE sizes. Furthermore, these effects are more significant on the mechanical properties than on the geometrical properties. Therefore, the traditional method of RVE determination needs to be improved.
-
3
Considering the special natures of the studied rock masses, the RVEs are determined by using an acceptable CV value of 10%. The mechanical RVE size is 18 m, which is far larger than the geometrical RVE size of 10 m. The confining pressure has an influence on the mechanical RVE size. The mechanical RVE size gradually decreases as the confining pressure increases. When the confining pressure is high enough (greater than or equal to 10 MPa), the mechanical RVE is smaller than the geometrical RVE.
Abbreviations
- r :
-
Fracture disc diameter
- L :
-
The height of 3D space that accommodates the fractures
- θ :
-
The intersection angle between the fracture set and the outcrop surface
- α :
-
The average intersection angle between the fractures and the outcrop surface
- p n :
-
The frequency of fractures in the equal-area Schmidt projection diagram
- N α :
-
The number of fractures with an intersection angle of α in the outcrop surface
- P α :
-
The corrected fracture frequency with an intersection angle of α in 3D space
- L min :
-
The minimum side length of the model
- \({n}_{ab}\) :
-
The number of fractures with radii between a and b in the outcrop surface
- \({n}_{ab}^{\text{'}}\) :
-
The number of fractures with radii between a and b in 3D space
- RES:
-
The number of particles within the minimum side length of the model
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This work was financially supported by the National Key Research and Development program of China [grant number: 2019YFA0705504] and the National Nature Science Foundation of China [grant numbers: 42022053; 41877220; U1702241; 41702301].
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Ma, W., Chen, H., Zhang, W. et al. Study on Representative Volume Elements Considering Inhomogeneity and Anisotropy of Rock Masses Characterised by Non-persistent Fractures. Rock Mech Rock Eng 54, 4617–4637 (2021). https://doi.org/10.1007/s00603-021-02546-4
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DOI: https://doi.org/10.1007/s00603-021-02546-4