1. Introduction
Hydraulic fracturing is a stimulation treatment widely used in the upstream division of the petroleum industry to enhance well productivity in tight gas/oil or shale gas/oil reservoirs [
1]. The purpose of fracturing is production intensification by creating high conductive, propped fractures that provide a larger inflow surface than the cylindrical area of an ordinary well [
2]. The fracturing procedure is controlled on the surface and executed by high-power hydraulic pumps boosting the hydraulic fluid to exceed the formation breakdown pressure at the bottom hole. This pressure of the hydraulic fluid initiates the formation to break. Meanwhile, the fracture starts to propagate according to the petrophysical properties of the given formation. Proppant is a granular media with high porosity, is mixed with the fracturing fluid to prop the fracture and prevent formation closure that would result in an ineffective stimulation [
3]. The phenomenon investigated in this research occurs after fractures are created, and hydraulic pumps are stopped entailing the hydraulic fluid pressure to drop below the formation closure pressure. At this point, there is no more extra pressure energy to hold the fractures open, which leads to a closing action of the formation, which is prevented by proppant particles that carry the stresses of formation closure [
4]. The primary indicator, which characterizes the fracturing treatment, is the fracture conductivity calculated as the product of fracture width and proppant pack permeability. Since the above-described situation affects fracture conductivity significantly, it is crucial to model the problem comprehensively.
Several earlier studies deal with proppant embedment; Huitt and McGlothlin [
5] derived an equation based on the knowledge of proppant concentration and overburden load to compute proppant embedment. It is a semi-empirical model containing two characteristic constants, which could be determined by fitting the results with experimental data. They performed relevant experiments to prove the capability of this equation, and they found that proppant embedment is a more relevant phenomenon than proppant crush under formation pressure. The factors affecting proppant embedment were determined by the formation’s competency, the proppant’s size, the concentration of the proppant, and the overburden pressure. They concluded that a stiffer, tougher material would be a better propping agent than sand because sand would crush rather than embed under the overburden pressure.
Volk et al. [
6] derived empirical equations based on experimental data to determine the parameters influencing proppant embedment, such as proppant concentration, size, distribution, rock type, etc.
Lacy et al. [
7] carried out experimental research on proppant embedment in non-tight reservoir cores; therefore, the results can be interpreted as limited ones. Nevertheless, the results showed that the most critical factors that have a relevant impact on proppant embedment were closure pressure, proppant size, and fluid properties. Therefore, Lacy et al. [
8] also developed a computer-controlled measurement that determined propped-fracture width and proppant embedment as a function of closure pressure, the concentration of proppant paving, proppant size, core mechanical characteristics, etc.
Guo and Liu [
9] investigated the proppant embedment in core samples experimentally. They also found that the fracture width could be remarkably reduced because of the proppant embedment, especially in soft formations. They examined the experimental data of proppant embedment at different conditions, and they published empirical equations that can determine the proppant embedment as a function of formation pressure, the elastic modulus of the core, and proppant concentration.
Further experimental studies of proppant embedment and fracture conductivity were published by many researchers [
10,
11,
12,
13,
14]. However, these empirical or semi-empirical solutions could provide interpretations in limited conditions. Others [
15,
16,
17,
18] also conducted experimental research about fracture conductivity. However, the exactness of these developed models considering the prediction of in situ fracture behavior may not be satisfactory due to the artificial conditions from which they have been derived.
The lack of a comprehensive analytical model was fulfilled by Li et al. [
19], who developed an analytical approach based on the Hertzian Contact Theory to investigate the effect of proppant deformation and embedment on fracture conductivity. Their research was derived from two mutually squeezed spheres and considered only mathematical and physical principles; therefore, it was found to be a valuable method to gain information about conductivity influencing factors. Their approach could provide results for proppant embedment, change in fracture aperture, deformation, permeability, and conductivity for single- and multi-layer patterns. Furthermore, their equations are completely analytical, resulting in an elegant solution for fracture behavior modeling. However, it also has limitation because some random factors, like non-regular proppant shape, uneven proppant placement, uneven stress distribution, and complicated fracture geometry, cannot be described analytically.
After all, it can be stated that the detailed description of a propped fracture behavior requires a numerical solution due to the random character of the phenomenon. Therefore, a few numerical approaches have already been developed. For example, Sun et al. [
20] investigated the impact of high-quality proppant on fracture conductivity and long-term production. They created a numerical model based on field case studies, and the result showed that upgrading the completion design with a high resistant proppant enhanced the production enormously.
Fan et al. [
21] investigated hydraulic fracture conductivity by creating a coupled numerical model using Particle Flow Code (PFC), which is a three-dimensional discontinuum mechanics simulator, and the lattice Boltzmann (LB) method to solve the Navier–Stokes equations. In addition, the effect of proppant concentration in the fracture and effective stress was investigated, and they found the partial monolayer pattern with large-diameter proppants as an alternative to improve fracture conductivity.
Zhang et al. [
22] developed a DEM–CFD numerical modeling process to examine proppant embedment and fracture conductivity after hydraulic fracturing in shale formations. They concluded shale hydration as the main reason for proppant embedment. They also found that conductivity increases with proppant concentration and size and decreases with closure pressure.
Fan et al. [
23] also conducted experimental and numerical research on fracture conductivity in narrow fractures. They used laboratory experiments and a numerical modeling approach that combines continuum mechanics, the discrete element method, and the lattice Boltzmann (LB) method. Their results showed a strong correlation between proppant embedment and rock mechanical properties. However, the results are related to narrow fractures only, characterized mainly by monolayer proppant pattern.
Zhu et al. [
24] examined a reasonably new fracturing technique called channel fracturing. The essence of channel fracturing is promoting the hydrocarbon-bearing rock stable voids by intermittent proppant pumping and mixing fibers to the fracking fluid. These voids serve as high conductive areas within the proppant pack to improve the oil transport into the well. The method is considered to be more effective than conventional fracturing. Finally, Zhu et al. developed a method based on DEM to optimize channel fracturing in the field.
Zhang and Dontsov [
25] dealt with hydraulic fracturing in a two-layer formation characterized by different pressures. Their research aimed to define the size of the proppant particle, which eases the pinching effect observed at the interface of the layers. As a result, they developed a numerical method (Distinct Element Method) to estimate pinching aperture and select the ideal size proppant for the case.
In conclusion, one can conclude that fracture conductivity is one of the most important indexes that can evaluate the impact of fracturing on production intensification, and it is affected by many factors, such as closure pressure, proppant size, the elastic modulus of proppant, and the formation as well, etc. The studies and articles listed and presented briefly above summarize the results achieved in hydraulic-fracture-behavior-related research. In the first period, mainly experimental examinations were conducted to simulate fracture conductivity. As the technology evolved and hydraulic fracturing was spread to enhance unconventional hydrocarbon production, the need for more sophisticated solutions arose. An analytical approach was developed to determine and investigate conductivity influencing parameters, and numerical models were introduced to precisely examine the problem. Proppant embedment or even proppant crush is integrated into these numerical models; nevertheless, they consider proppant particles as rigid spheres ignoring the effect of proppant deformation that may exceed the impact of embedment into the formation and particle fragmentation on fracture conductivity.
Therefore, the Finite Element Method (FEM) was integrated into our coupled numerical model not only to describe fluid dynamics in the porous media represented by the propped fracture but also to include the effect of proppant deformation. Our pursuit was to develop a coupled numerical model to describe the hydraulic fracture behavior under the in-situ condition as precisely as possible. Finally, we invented a complex workflow that simulates random and uneven proppant placement, the closing action of the formation considering the rock and proppant as elastic bodies, and involves fluid dynamics at typical fractured well flow rates. Sensitivity test results were matched with published data, and the correctness of the method was verified. The findings of underground achievable fracture conductivity, which is much less than expected from proppant technical datasheets, showed the potential of DEM–FEM–CFD coupling for modeling multidisciplinary processes in respect of hydraulic fracturing.
3. Results
As introduced above, DEM simulation was used to generate fractures filled by the particles. The first step is generating the particles in the model space randomly. Although a regular layout is easy to create, this particle generation procedure can distort the behavior of the particle assembly [
40]. Due to this reason, YADE software applies a random particle generation technique. At the beginning of the simulation, proppant particles were randomly generated in a closed box placed above the fracture. The box was closed until the summarized kinetic energy of elements decreased almost to zero (the system reached a quasi-static state). Then the bottom of the box was opened, and the particles could fell into the fracture under gravity. This random particle placement procedure allows the representation of proppant transport and placement by the fracturing fluid, neglecting particle settlement by gravity. The filled fracture can be seen in
Figure 8.
The resulting geometry was pushed by an artificial assembly from the top of the fracture with 500 psi to enable proppant compaction and slippage, which occurs during actual fracturing and is considered in API standard proppant conductivity measurements [
48], and then converted into FE software environment.
The first step in the FEA analysis was to specify the material properties. As described in
Section 2.1.2, the proppant Young’s modulus and Poisson ratio were 41,306 MPa and 0.22. The Young’s modulus of the formation was systematically varied in a range of 1000 MPa to 30,000 MPa. The Poisson ratio was 0.22 in each case. The second step was to create a numerical mesh; then, the parts were meshed using second-order tetrahedron elements. Finally, mesh refinements were applied to the stress concentration areas, such as the particles and surfaces of the fracture. Mesh of the assembly can be seen in
Figure 9, while
Table 2 summarizes the nodes and elements in each case.
One constraint was applied during the simulations to model fracture behavior: fixed support was used at the bottom of the formation (
Figure 10b). In contrast, negative pressure was applied on the inside surfaces of the fracture to demonstrate the closure pressure acting as the initiator of deformation and embedment (
Figure 10a).
Contact behavior was applied and modeled on connecting surfaces. There were only bonded contacts in the model, entailing no sliding or separation between faces or edges allowed. Automatic contact detection was utilized in the FEA software. The default contact formulation was adjusted Multi-Point Constraint (MPC) to bonded contacts. In
Figure 11 undeformed and deformed assembly can be seen colored by the extent of total deformation. The deformed body is represented at two times magnification to get the results perceived. Comparing and analyzing the assemblies, one can obtain that the contacts worked well according to the rock and proppants’ visible displacement and deformation.
After FEM simulated deformation, static structural deformed geometry was exported into ANSYS CFX environment. To reduce the number of nodes and the computational time to achieve reasonable computational efficiency, the fracture was halved along a symmetry plane of the deformed assembly, assuming similar behavior for the rest of the fracture.
Figure 12. shows the analyzed cross-section of the formation and proppants.
During the CFD analysis, the pressure drop was determined. To describe the fluid flow, one of the most commonly used turbulence models, the k-omega turbulence model, was applied. The cross-section was meshed using second-order tetrahedron elements, as in the case of FEM. Mesh refinement was applied to the areas between the particles to make the model more accurate. For better visibility, the cross-section was rotated 90 degrees. To define the boundary conditions well, the bottom and the top of the fracture were extended. The pore pressure for all runs was set to be 100 bar allowing one to make comparisons and draw conclusions, while the fluid mass flow was considered to be 0.144 kg/s as described in
Section 2.1.2.
Figure 13 shows the numerical mesh of the CFD model, while Figure 15 represents a typical case of velocity distribution within the fracture.
In the calculations, convergence was checked continuously. For evaluating convergence, the residuals plot can be used as the primary tool. The solver performs iterative solutions of the fundamental equation of CFD. Therefore, residuals should be as low as possible. In
Figure 14, the residuals of one of the simulations can be seen. In each case, the lowest value of the residuals was under 10
−4, which is the default criterion value in most of the CFD software. In
Figure 15, one can see the velocity and pressure distribution between the particles.
Sensitivity Analysis
By application of the fore-mentioned one-way coupling method, a parameter sensitivity study was performed to analyze behaviors of proppant particles for a pressure drop of the medium flowing between particles. As previous research showed, the main parameters that affect propped fracture behavior concerning permeability and conductivity are the closure pressure, Young’s modulus of the formation, and proppant diameter. Therefore, the effect of these factors was investigated in a predetermined relevant range according to chapter
Section 2.1.2:
Closure pressure (Pc) 2139–13,904 psi;
Young’s modulus of the formation (Ef) 1–30 GPa;
Proppant diameter (Dp) 1–1.74 mm.
In the first part of the sensitivity study, the effect of closure pressure was investigated. The Young’s modulus of the proppant particles was 41,306 MPa, while the Young’s modulus of the formation was 15,000 MPa. The diameter of proppants was 12, 12/18, and 16/20 mesh, as described in
Section 2.1.2. The closure pressure was ranged from 2139 to 13,904 psi by 2000 psi steps, and the corresponding pressure drops were recorded at each simulation. Defining a mean value for the cross-section where the fluid flows through and using Darcy’s law, apparent permeability could be calculated.
Figure 16 and
Figure 17 demonstrate permeability and conductivity results as a function of closure pressure.
As expected, proppant pack permeability or other defined the permeability of the propped fracture decreases as closure pressure increases. Again, this phenomenon is anticipated since the formation pressure generates load on the propped fracture entailing a closing action which deforms and embeds proppants into the formation reducing the size of pore throats where fluid could flow.
Another critical point is the impact of proppant particles on fracture permeability. The diameter of the proppant has a remarkable influence on fluid dynamics. As Petrophysics predicts exponentially higher permeability value for rocks formed by greater particles of sediment, crystalline or metamorphic components, the same, or even more significant effect—because no cementation considered this case―could be observed in case of propped fractures. Analyzing the sensitivity test results in
Figure 16 one can also conclude that the greater the proppant size, the more permeability reduction takes place. By approximating the closure pressure value of 12,000 psi, different proppant diameters produce similar permeability. This phenomenon can be explained as follow: a proppant pack formed by greater particles can deform to a greater extent because more pore space is available to be reduced. Consequently, pore space is getting smaller with closure pressure, and permeability approximates the case of proppant packs formed by particles with lower diameters.
Comparing our one-way coupled model results and laboratory test results published by Fan et al. [
21], one can identify permeability values with the same magnitude, i.e., our DEM–FEM–CFD model resulted in 935 D (
Figure 16, 12/18 mesh). In contrast, lab test ~ 2700 D. The difference could be traced back to reasons summarized by Palish et al. [
34] about API RP-61 conductivity testing standard versus realistic fracture conductivity, which implies additional permeability reduction due to inertial forces not representing by flow regimes (2 mL/min) applied at conductivity testing standards. Another indicator of the difference could be the ideal―evenly distributed―proppant placement and “fracture” geometry demonstrated by the conductivity cell in API standards as an artificial, manufactured assembly.
The known conditions for
Figure 17 were taken to be the same as
Figure 16: Young’s modulus of proppant particles was set to be 41,306 MPa, while Young’s modulus of the formation was 15,000 MPa, the diameter of proppants was ranged from 12 mesh to 16/20 mesh. Fracture conductivity is directly dependent―calculated as the product of fracture width and proppant pack permeability―on fracture permeability,
Figure 17 illustrates similar curves as
Figure 16 did, i.e., closure pressure has a relevant impact on fracture conductivity. Since both fracture width and permeability are affected by the formation’s closing action, the impact of closure pressure on fracture conductivity can be interpreted as the superposition of fracture width and permeability reduction. Therefore, fracture conductivity could be decreased to one-sixth at 10,000 psi in the case of 12 mesh, while this reduction is only one-fourth for permeability.
Proppant size has a more relevant impact on fracture conductivity than permeability. It can be explained by the definition of conductivity as well. The bigger the proppant, the greater the negative effect of closure pressure on fracture width and permeability as described above, i.e., the conductivity difference for different proppant sizes reduces at a higher rate with closure pressure.
Figure 18 was performed to investigate the effect of closure pressure on fracture conductivity for different Young’s modulus of the hydrocarbon-bearing formation. The known conditions were taken to be D
p = 12/18 mesh (proppant diameter), E
p = 41,306 MPa (proppant Young’s modulus), and E
f—denoting Young’s modulus of formation―was set to be 1000, 15,000, and 30,000 MPa. The tendency is similar to the diagrams presented previously. However, a complete evaluation gives exciting results. Since the elastic modulus of formation is directly proportional to proppant embedment and nothing else, one can conclude that embedment in the case of soft formation, e.g., shale, can affect fracture conductivity in a large-scale way. Nevertheless, the difference between conductivity values for different Young’s modulus gets smaller with closure pressure, as noticed in the previous sensitivity analyses.
4. Discussion
Hydraulic fracturing treatment is used to enhance well productivity, usually drilled in tight or less permeable reservoirs by forming high-conductive channels between the formation and the wellbore. The closure pressure after fracturing indicates a closing action that is prevented by proppant particles placed between the fracture walls and which are bearing a complex stress condition. Even if proppants are enormously strong and the strength of the hydrocarbon-bearing layer is quite high, proppant deformation and embedment take place and may result in a significant reduction of the created fracture conductivity, particularly under high closure pressure circumstances. In this paper, a brand-new method was developed to model in-situ fracture behavior by coupling DEM–FEM–CFD numerical solutions. DEM was applied to generate and randomly place proppants into the fracture; meanwhile, FEM Static Structural module was used to let the proppants be deformed and embedded into the formation, and finally, Computational Fluid Dynamics application was coupled to investigate the permeability and conductivity of the propped fractures. To the best of our knowledge, this research marks the workflow of coupling DEM–FEM–CFD for propped fracture behavior modeling the first time.
This research showed that achievable fracture conductivity increases with the increase of proppant size and formation stiffness; however, it decreases with the increment of fracture-aperture-closing stress. Of course, these trends fit the results published by many researchers before, but the absolute value of the simulation results pointed out new perspectives of fracture behavior modeling. As many real factors―such as fracture geometry, uneven proppant and so stress distribution, proppant deformation and embedment, and industrial flow rate―have been integrated in our model, lower conductivity values could be observed, which fact allows one to consider this developed workflow as a more sophisticated approximation of the real phenomenon. Meanwhile, these results also confirm the conclusions drawn by Palish et al. [
34], i.e., proppant conductivity measuring standards may result in overestimated conductivity values compared to achievable ones in the underground.
This current work also highlighted some future perspectives in the direction of how to describe the phenomenon more precisely. Following the way of our previous work, the implementation of non-perfect spheres as proppants may make another breakthrough.
Figure 19 represents our electron microscopic examination of proppants and DEM clumps approximating proppant particle geometry which is usually characterized by sphericity and roundness indices. Another potential is to consider proppant size distribution and generate proppants with different diameters according to their mesh size and sieve analysis that may result in further conductivity reduction.
This paper demonstrated the capability of DEM–FEM–CFD coupling for modeling multidisciplinary processes regarding hydraulic fracturing and provided insight into the factors that drive the comprehensive interactions between proppant particles, formation stiffness, and closure pressure. The outcome of this research may advance the fundamental understanding of proppant embedment and deformation and contribute to a broad scale of applied sciences that aim to optimize hydraulic fracturing.