1. Introduction
Profile control and water shutoff represent widely employed techniques for stabilizing oil production and regulating water flux [
1,
2]. This method holds particular significance in oil fields characterized by predominant fluid flow through specific channels [
3,
4,
5]. Throughout the process of profile control and water shutoff, variations in injection pressure and velocity exert influence on the distribution of plugging agents within reservoirs [
6]. Polymer-plugging agents stand out as the most frequently utilized approach for profile control. However, challenges arise due to the non-Newtonian fluid characteristics and unique gelation kinetics of polymers, complicating the determination of distribution regularities, especially within heterogeneous reservoirs [
7,
8,
9].
Scholars have investigated the distribution of plugging agents using seepage mechanics and numerical simulation [
10,
11]. Applying the principles of mass conservation and Darcy’s law, Scott derived expressions for linear displacement and plane radial flow displacement, explicating the injection volume of the monomer gel-plugging agent [
12]. Scott’s work, however, exhibits a limitation in that it does not quantitatively assess the seepage behavior of polyacrylamide or xanthan sealants. To develop a more comprehensive model, Seright drew upon the studies by Deppe J C, particularly his work on injection rates, mobility ratio, area swept, and pattern effects [
13,
14,
15]. This approach considered plugging agent viscosity, formation water viscosity, and formation porosity as constants, thereby elucidating the impact of the polymer injection resistance coefficient, chemical retention, dispersion, and diffusion on polymer agent emplacement. Nevertheless, the oversimplification of constant parameters by Seright resulted in noticeable errors in the calculation of the plugging agent emplacement ratio [
16,
17].
In summary, both Scott and Seright’s methodologies are analytical, relying on assumptions that may introduce biases in practical applications. Notably, they fall short in estimating variations in polymer emplacement and describing changes in fluid viscosity within heterogeneous reservoirs. To address these challenges, significant contributions have been made by various scholars. For instance, Wang established a black oil model for the oil–water phase, enabling the calculation of the plugging agent emplacement rate [
18]. The numerical model incorporates factors such as the residual resistance coefficient, adsorption capacity, and oil–water viscosity ratio. However, the specific influence of the shear-thinning characteristics of plugging agents on their distribution was not explicitly delineated [
19]. In the context of deep profile control in heterogeneous reservoirs, the distinct flow velocities of plugging agents result in varying shear deformations [
20]. This dynamic process leads to continuous changes in the viscosity of polymer agents. The time-varying viscosity, in turn, significantly impacts the distribution patterns of plugging agents in heterogeneous reservoirs, resulting in varied injection amounts of these agents [
21].
This paper endeavors to elucidate the impact of shear-thinning characteristics on the distribution of plugging agents. Presently, various tools are employed for studying the shear-thinning properties of polymer-plugging agents, including corrugated mixers, high-speed mixers, sand-filled tubes, artificial cores, Wu Yin mixers, and sieve meshes. To introduce variable parameters for simulation, diverse methods generating shear-thinning effects were utilized to measure viscosity changes with the flow rate. Specifically, polymer solutions were subjected to high shearing rates in a corrugated mixer [
22], Wu Yin agitator [
23], high-speed stirrer [
24], and conventional agitators. Alternatively, shear-thinning effects were examined by injecting polymer solutions through a sieve mesh [
25] and artificial cores [
26]. Recognizing that mixers or agitators may inadequately characterize shear effects in porous media, and the sieve mesh method is applicable primarily to homogeneous reservoirs, this study relies on artificial cores to explore the shear-thinning impact on polymer viscosity in heterogeneous reservoirs for more practical applications.
To summarize, the current characteristics and application of water-plugging agents in the oil field have the following deficiencies:
1. For the experiments on the shear-thinning properties of water-plugging agents, the commonly used methods (such as stirrers and sieve meshes) are obviously different from the shear effect on the flow of water-plugging agents in porous media reservoirs;
2. Previous studies have calculated the depth ratio of a water-plugging agent into the reservoir, but have not considered the effect of shear thinning on the depth ratio of a polymer-based plugging agent into the reservoir;
3. The previous research is not sufficient to investigate the different emplacement performance of water-plugging agents in high-permeability reservoirs and low-permeability reservoirs, and lacks a systematic analysis and summary of the influence of key factors such as the residual resistance coefficient, cumulative injection volume, permeability extreme difference and average injection rate.
Aiming to address the above research gaps, the following innovative work has been carried out in this study:
1. For the experiments on the shear thinning characteristics of the plugging agent, the artificial core can more realistically simulate the situation of non-homogeneous reservoirs, and the shear effect on the flow of the plugging agent in the artificial core is the closest to the flow of the plugging agent in the real reservoir; therefore, the artificial core method is chosen;
2. A variable viscosity–velocity rate formula for polymer-based plugging agents is proposed to make up for the lack of constant viscosity, which makes the calculation of the depth of the plugging agent into the reservoir more accurate;
3. In the numerical simulation, the control variable method is employed to examine the influences of four key parameters on the emplacement of polymer agents in different permeability layers. These parameters include the residual resistance coefficient, cumulative injection volume, average injection rate, and initial permeability ratio.
This study adopts an integrated approach encompassing the research stages of “indoor experiment—numerical simulation—optimization fitting.” The experimental phase involves conducting shear-thinning tests on four types of polymer-plugging agents within artificial cores, from which correlation curves for the emplacement ratio of polymer-plugging agents are derived. Subsequently, these correlation curves are incorporated into 2D and 3D numerical models to analyze the impact of shear thinning on the distribution of polymer agents. As a concluding step, a multivariate nonlinear regression model is developed, utilizing the aforementioned four parameters as variables, to predict the emplacement rate of polymer-plugging agents in both high- and low-permeability layers.
The novelty of the research is that varying polymer viscosity is implemented instead of the fixed-fluid viscosity that is conventionally used. The proposed model and established regression model are conductive to the understanding of the plugging agent distribution and dosage estimation, which lays a good theoretical foundation for effective and efficient reservoir exploitation, especially the secondary recovery of crude oil.
3. Components Model Considering the Distribution of Plugging Agent
The polymer-plugging agent comprises the polymer, cross-linking agent, and gel as its primary components. Investigating the distribution patterns of the polymer-plugging agent involves considering the impact of the varying concentrations of each component on viscosity, the residual resistance coefficient, adsorption capacity, and shear-thinning characteristics. The component model is based on certain assumptions: the fluid comprises two phases (oil and water) and five components (polymer, crosslinker, gel, water, and oil); water and oil conform to Darcy’s law, whereas the polymer, as a non-Newtonian fluid, adopts the flow rule obtained by the indoor experiment, that is, Formulas (1)–(4). The fluid flow is an isothermal seepage process. Additionally, Equations (1)–(4), describing the correlation between viscosity and seepage velocity, need to be integrated into the model.
The numerical simulation model encompasses the mass conservation equation, motion equation, constraint equation, and boundary conditions. The mass conservation equation, derived from the principle of mass conservation, can be uniformly expressed as follows:
The constraint equations encompass the saturation constraint equation, mole fraction constraint equation, and capillary force constraint equation. The saturation constraint equation is succinctly expressed as follows:
where
Sw and
So are the saturations of water and oil, respectively.
The mole fraction constraint equation is represented as follows:
The capillary force equation is represented as follows:
where
Pw is the pressure of the water phase,
Po is the pressure of the oil phase,
Pcow is the capillary force of the water phase and is a function of water saturation.
Concerning inner boundary conditions, constant production rate and constant bottom hole pressure are frequently employed, and these conditions can be expressed as follows:
where
represents the constant production rate, and
represents the constant well flow pressure.
The initial conditions are expressed as follows:
The mass conservation equation, motion equation, constraint equation, and boundary conditions described above are discretized using different methods that are embedded in CMG. Due to the limited space of the paper, the detailed discrete forms of the mass conservation equations for water, oil, the polymer, and the crosslinking agent are not provided in the text.
4. Numerical Simulations
In this research, the CMG software (2022.10), a prevalent tool for oilfield production simulation, is employed to create 2D and 3D heterogeneous models. These models are specifically designed within the CMG framework to analyze the emplacement ratios of polymer-plugging agents in layers with different permeability levels, focusing on the variations between low-permeability and high-permeability strata. The 2D model simulates the emplacement ratio for linear displacement in fractured reservoirs (
Figure 3), while the 3D model simulates the emplacement ratio for planar radial flow in reservoirs without fractures (
Figure 4). Both models consist of two layers, a low-permeability layer and a high-permeability layer, with emplacement depths denoted as
Llow and
Lhigh, respectively. The study systematically analyzes the influences of the residual resistance coefficient, cumulative injection volume, average injection rate, and initial permeability ratio on the emplacement of polymer agents in different permeability layers.
In terms of the polymer flow characterization method, the commonly used fixed-fluid viscosity is not recommended here; instead, varying viscosity is considered according to the fitting curves obtained from the indoor experiment. To implement this process, a customized table linking the flow rate and viscosity of the polymer is intentionally embedded in CMG.
4.1. The Effect of Residual Resistance Coefficient
In this section, the influence of the residual resistance coefficient on the emplacement ratios (
Llow/
Lhigh) of plugging agents with different concentrations is considered under shear-thinning and non-shear-thinning conditions. The residual resistance coefficient reflects the polymer’s capability to reduce the permeability of porous media, defined as the ratio of the water-relative permeability of porous media before and after polymer flooding. The basic simulation parameters for the 2D and 3D models are detailed in
Table 1 and
Table 2, and the results of the emplacement ratio are presented in
Figure 5 and
Figure 6, respectively.
As illustrated in
Figure 5, in the 2D model, when the residual resistance coefficient is less than 3, the depth of plugging agent penetration into the low-permeability layer increases rapidly with the rise of the residual resistance coefficient, leading to a substantial increase in the emplacement ratio. Conversely, when the residual resistance coefficient exceeds 5, the emplacement ratio stabilizes.
As depicted in
Figure 6, the 3D model illustrates a dynamic fluctuation in the emplacement ratio with an increase in the residual resistance coefficient, revealing an intricate pattern. This phenomenon may be attributed to the combined effects of the emplacement depth and viscosity loss of the polymer-plugging agent. A smaller residual resistance coefficient results in a deeper penetration of the polymer-plugging agent into the low-permeability layer. With the same seepage velocity, a higher viscosity loss rate corresponds to a smaller filling ratio of the low-permeability layer to the high-permeability layer. However, under the same seepage velocity, a higher viscosity loss rate is associated with a lower emplacement ratio.
4.2. The Effect of Cumulative Injection Volume
This section presents the disparity in plugging depth with and without shear thinning at various cumulative injection rates. The control of the cumulative injection volume of the polymer-plugging agent is achieved through the regulation of injection time. Parameters utilized in the 2D and 3D models are outlined in
Table 3 and
Table 4, encompassing a diverse range of cumulative injection volumes. The emplacement ratio outcomes are shown in
Figure 7 and
Figure 8.
Upon the introduction of the polymer-plugging agent into the reservoir, the permeability undergoes alteration, resulting in a dynamic shift in the emplacement ratio. Nevertheless, as the cumulative injection volume rises, the discrepancy in the emplacement ratio between the low permeability layer and high permeability layer progressively diminishes.
As depicted in
Figure 7 and
Figure 8, the emplacement ratio of the default polymer solution consistently ranks as the highest, succeeded by polymer solutions C and D. Conversely, polymer solutions A and B exhibit the lowest emplacement ratios. Both the 2D and 3D modeling results indicate that polymer solutions A and B experience elevated viscosity loss rates, resulting in a relatively modest ratio of plugging agent emplacement depth. Consequently, at equivalent seepage velocities, a higher viscosity loss rate correlates with a diminished emplacement ratio. This, in turn, leads to a reduced amount of plugging agent infiltrating the low permeability layer, thereby enhancing the plugging efficacy in the high permeability layer.
4.3. The Effect of Average Injection Rate
The examination of the impact of the average injection rate on the emplacement ratio of the plugging agent is conducted under both shear-thinning and non-shear-thinning conditions. Simulation parameters are detailed in
Table 5 and
Table 6, with the respective results graphically presented in
Figure 9 and
Figure 10.
As illustrated in
Figure 9, within the 2D model and constrained by an injection rate of 0.1 cm/min, the emplacement ratio undergoes a distinct variation. For injection rates below 0.1 cm/min, an incremental injection rate leads to dynamic changes in the depth of plugging agent penetration into the reservoir. Conversely, stability is observed after the injection rate surpasses 0.1 cm/min.
Figure 10 reveals that, in the 3D model, the emplacement ratio experiences a rapid increase with the injection rate until it reaches 0.1 cm/min, after which the ratio remains relatively constant. A higher viscosity loss rate at the same seepage velocity leads to a lower emplacement ratio.
4.4. The Effect of Initial Permeability Ratio
Permeability differentiation, being a significant manifestation of reservoir heterogeneity, holds a pivotal influence on the emplacement depth of water-plugging agents. To quantify the differentiation degree of initial permeability distribution, the initial permeability ratio is introduced. Simulation parameters, encompassing a diverse permeability ratio ranging from 5.82 to 34.7, are summarized in
Table 7 and
Table 8.
As depicted in
Figure 11 and
Figure 12, the emplacement ratio consistently positions the default polymer solution as the highest, with polymer solution A exhibiting the lowest emplacement ratio. In both the 2D and 3D models, an increase in the initial permeability ratio corresponds to a decrease in the emplacement ratio, along with a reduction in the fraction of the plugging agent penetrating the low permeability layer. In reservoirs characterized by highly differentiated permeability, plugging agents exhibit enhanced effectiveness, minimizing polymer wastage in low permeability layers. Furthermore, at equivalent seepage velocities, a higher viscosity loss rate for the polymer-plugging agent results in a smaller emplacement ratio, achieving the same plugging endpoint.
4.5. Multivariate Regression Analysis
The numerical simulation results elucidate the impact of the residual resistance coefficient, cumulative injection volume, initial permeability ratio, and average injection rate on the emplacement ratio of the polymer-plugging agent. Utilizing regression analysis with these key parameters, the emplacement ratio can be predicted, offering valuable insights for water-plugging agent selection in heterogeneous reservoirs. In Equations (14)–(23), where
y denotes the plugging agent emplacement ratio,
xa,
xb,
xc, and
xd represent the residual resistance coefficient, cumulative injection volume, initial permeability ratio, and average injection rate, respectively. Each set of fitting equations comprises four different polymer solution concentrations and one default group. The comparison between numerical-simulation results and nonlinear-regression-fitting results is illustrated in
Figure 13 and
Figure 14, demonstrating satisfactory fitting performance achieved through multivariate nonlinear regression.
- (1)
Multivariate nonlinear regression of 2D model
We employed the CMG software to assess the impact of various plugging agents on oilfield productivity. Relying on CFD principles and integrating key parameters such as residual resistance coefficients and injection volumes, the software predicts the effectiveness of the plugging agents. The numerical simulation data (basic data) from CMG, analyzed through multivariate nonlinear regression, resulted in “fitting data” curves. This aims to establish a precise mathematical relationship between the plugging agent’s emplacement ratio and essential influencing factors. As illustrated in
Figure 13 and
Figure 14, the meticulous fitting of the 2D and 3D model data has yielded equations that provide a quantitative basis for reservoir management, aiding in enhancing production capacity.
Figure 13’s R
2 values indicate high accuracy in the fitting results. R
2 values range from 0 to 1, where values closer to 1 signify a better match between the fitted and original data. The ‘Default (No shear)’ has a strong correlation at 0.8997. ‘Polymer Solution A’ is an excellent fit at 0.9456, while ‘Polymer Solution B’ is also robust at 0.8979. ‘Polymer Solution C’ leads with an R
2 of 0.9570, showing a tight match with the data. ‘Polymer Solution D’, although the lowest, is still a solid fit at 0.8610. These high R
2 values suggest that the model provides a precise fit across all solutions.
- (2)
Regression equation of 2D model
- (3)
Multiple nonlinear regression of 3D model
Figure 14 shows the data and fitting curves for different blockers in a 3D simulation model, with high R
2 values indicating accurate results. ‘Default (No shear)’ is strongly correlated at 0.8491, ‘Polymer Solution A’ fits excellently at 0.9698, ‘Polymer Solution B’ is robust at 0.9425, ‘Polymer Solution C’ is outstanding with an R
2 of 0.9616, and ‘Polymer Solution D’, though the lowest, still fits well at 0.9574. These values demonstrate the model’s precise fit for all solutions.
- (4)
3D model regression equation
5. Application
Due to the considerable heterogeneity inherent in most oil and gas reservoirs, the precise calculation of plugging agent quantities and the prediction of their distribution pose challenges without real-time monitoring. On-site water plugging and profile control encounters a significant obstacle when the plugging agent migrates from the substantial channels within high permeability layers to the designated profile control radius, while those within lower permeability layers may not have reached the corresponding locations. In this context, the regression mathematical model proposed in this study offers an accurate means of calculating plugging agent dosage. The total amount of plugging agent can be determined by understanding the depth of the plugging agent in various permeability layers.
This mathematical model has been successfully applied to the Kunan Oilfield block, as illustrated in
Figure 15 and
Figure 16. According to the provided statistics, the geological reserves within the block amount to 394,300 tons, with a cumulative oil production from the well group reaching 103,000 tons, resulting in a recovery rate of 25.06%. The permeabilities of the three primary oil-bearing layers are as follows: 900 × 10
−3 μm
2, 632 × 10
−3 μm
2, 300 × 10
−3 μm
2, and 140 × 10
−3 μm
2, with the mean value of 493 × 10
−3 μm
2.
A salt-resistant polymer solution, with a concentration of 1.4 g/L, was employed in the Kunan Oilfield block. Utilizing a regression mathematical model (residual resistance coefficient
xa = 1.5, cumulative injection rate
xb = 5000, initial permeability ratio
xc = 6.4, average injection rate
xd = 500), the emplacement ratio of the plugging agent
y is determined to be 4. Accounting for a profile control radius equal to 1/3 of the well spacing in the high permeability layer, the profile control distance for the high permeability layer is set at 100 m. The profile control radii for the other two low-permeability layers are determined to be 25 m and 6.25 m, respectively. This result obtained from the model simulation and the water profile obtained from the field-measured logging data can be well matched and fitted.
Table 9 presents the specific setup parameters for the Kunan Oilfield block.
The calculated amount of plugging agent, derived from the mathematical model, serves as a guide for profile control. Post-implementation, there is a notable enhancement in the water absorption profile, increasing the thickness of the water absorption layer from 5 m (
Figure 17a) to 12 m (
Figure 17b). The preliminary validation of the mathematical model is evident through field records. The further refinement of the regression model is essential to enhance its adaptability, and future efforts may explore the utilization of fuzzy mathematics to assign weights to key parameters. Simultaneously, clarifying the correlation between control parameters is imperative. Due to space constraints, a thorough discussion on these aspects is not possible here. Nevertheless, the research in this study holds reference significance for the efficient development of heterogeneous reservoirs.