3.1. Orthogonal Experiment Results
Based on the orthogonal experimental design, 27 sets of numerical simulation analyses were conducted with the improved PBM. Through simulations of uniaxial compression, uniaxial tension, and triaxial compression, seven macroscopic parameters corresponding to each curve were extracted. These parameters included the elastic modulus (
E), Poisson’s ratio (
v), uniaxial compressive strength (
σt), internal friction angle (
φ), cohesion (
c), ratio of crack damage stress to uniaxial compressive strength (
σcd/
σc), and compressive–tensile strength ratio (
σc/
σt). The results of the numerical simulation are presented in
Table 5.
The results indicate that the configuration of different microscopic parameters significantly impacts the macroscopic performance of the sandstone model. The elastic modulus (E) ranges from 21.534 GPa to 36.037 GPa, the uniaxial compressive strength (σc) varies from 13.204 MPa to 141.244 MPa, the internal friction angle (φ) spans from 33.218°to 44.663°, and the cohesion (c) ranges from 2.635 MPa to 12.294 MPa. The compressive–tensile strength ratio (σc/σt) fluctuates between 5.773 and 14.977, demonstrating that the improved PBM model effectively simulates the compressive–tensile strength ratio characteristics of sandstone, thereby resolving the issue of the low compressive–tensile strength ratio in the traditional PBM model.
3.2. Macro–Mesoscopic Parameter Correlation Analysis
To quantify the linear relationship between microscopic parameters and macroscopic parameters, the Pearson correlation coefficient was utilized for analysis, as illustrated in Equation (3) and the corresponding heatmap in
Figure 4.
where
xi and
yi represent the values for the
i group of microscopic parameters and macroscopic parameters, respectively;
and
denote the mean values of the microscopic parameters and macroscopic parameters, respectively; n signifies the sample size. The correlation coefficient, r, ranges from −1 to 1, with |r| ≥ 0.7 indicating a strong correlation, 0.5 ≤ |r| < 0.7 indicating a moderate correlation, 0.3 ≤ |r| < 0.5 indicating a weak correlation, and |r| < 0.3 indicating essentially no correlation.
As shown in the figure, the effects of the various microscopic parameters on the macroscopic parameters are as follows:
(1) The bonding effective modulus (r = 0.876) exerts the most significant influence on the elastic modulus E, followed by the packing ratio Rf (r = −0.416). The elastic modulus E increases with the rise in the bonding effective modulus but decreases as Rf increases. This indicates that variations in the bonding effective modulus directly affect the sample’s stiffness, whereas Rf impacts stiffness by modifying the ratio of strong to weak inter-particle contacts. The other microscopic parameters with an |r| less than 0.3 have a negligible effect on E and are omitted from further discussion.
(2) The impact of various microscopic parameters on Poisson’s ratio v, from greatest to least, is as follows: filler ratio Rf (r = 0.612), tangential stiffness ratio k (r = 0.549), and effective bond modulus (r = −0.484). Poisson’s ratio v increases with increases in Rf and k but decreases with the increase in the effective bond modulus. This indicates that changes in Rf directly affect the sample’s deformation capacity. An increase in k and the effective bond modulus enhances the inter-particle bonding stiffness, which suppresses relative particle movement, thereby limiting deformation and resulting in a decrease or increase in Poisson’s ratio.
(3) The uniaxial compressive strength σc is primarily influenced by the moment distribution coefficient (r = −0.477), the packing ratio Rf (r = −0.434), the tensile strength (r = 0.414), (r = 0.386), and the strength ratio Rσ (r = 0.342). The negative correlation between and Rf indicates that an increase in either leads to a decrease in σc. affects the overall stability of the specimen through uneven moment distribution, while Rf reduces the compressive performance by increasing the proportion of weak contact. Changes in , , and Rσ impact the inter-particle bond strength and homogeneity, thereby influencing the specimen’s compressive performance.
(4) The distribution coefficient (r = −0.597) exerts the most significant influence on the internal friction angle φ, followed by the packing ratio Rf (r = −0.495), the friction coefficient μ (r = 0.408), and the effective bond modulus (r = 0.342). φ increases with the rise in μ but decreases with the increase in and Rf. This indicates that variations in μ directly impact inter-particle friction, whereas changes in and Rf affect the effective inter-particle contact, thereby influencing friction.
(5) The factors influencing cohesion c, ranked from most to least significant, are tensile strength (r = 0.502), effective bond modulus (r = −0.415), cohesion/tensile strength (r = 0.386), packing ratio Rf (r = −0.368), strength ratio Rσ (r = 0.364), and friction angle (r = −0.341). Rσ is positively correlated with c, indicating that an increase in these factors enhances inter-particle bonding, thereby increasing c. Conversely, Rf and are negatively correlated with c, suggesting that a decrease in the effective inter-particle contact reduces c. Generally, an increase in bond strength enhances inter-particle bonding, but excessively strong bonding restricts particle movement, thereby increasing the specimen’s deformation resistance and leading to a decrease in c.
(6) The critical deviatoric stress ratio is primarily influenced by the tensile strength (r = −0.488), packing ratio Rf (r = 0.453), the ratio of cohesion to tensile strength (r = −0.439), the moment distribution coefficient (r = 0.365), and the friction angle (r = 0.361). This ratio decreases as and increase and rises with the increase in Rf, , and . This suggests that variations in and directly impact the expansion of microcracks, whereas Rf, , and limit crack propagation by decreasing particle contact and enhancing friction, thereby elevating the ratio.
(7) The friction angle (r = 0.569) exerts the most significant influence on σc/σt, followed by the moment distribution coefficient (r = −0.486), the strength ratio Rσ (r = −0.435), and the packing ratio Rf (r = 0.417). The positive correlation between and Rf indicates that increasing both parameters elevates the compression–tension ratio. impacts this ratio by modifying the inter-particle friction force, whereas Rf affects it by enhancing the material’s deformation capacity. Conversely, the negative correlation between and Rσ suggests that their increase leads to a reduction in the compression–tension ratio. An increase in causes local weakening in the sample, while a rise in Rσ results in a more uniform strength distribution, thereby decreasing the compression–tension ratio.
3.3. Macro–Mesoscopic Parameter Regression Modeling
Based on the results of the aforementioned Pearson correlation coefficient analysis, to further investigate the quantitative relationship between the microscopic parameters and macroscopic parameters, the microscopic parameters with an |r| ≥ 0.3 were identified as the primary factors influencing the macroscopic parameters and are presented in
Table 6.
We established a multiple linear regression model using the main influencing factors from
Table 6 as the independent variables and the macroscopic parameters as the dependent variables. The regression analysis was conducted using SPSS Statistics 26.0 software, with significant variables selected through the stepwise regression method. The linear regression model was fitted based on the ordinary least squares method (OLS), resulting in the regression equations for each macroscopic parameters as follows:
Table 7 presents the statistical test results of the regression models for each macroscopic parameters, showing the following:
(1) The R2 values of all models are greater than 0.79, with E (R2 = 0.9) and c (R2 = 0.903) demonstrating the best fit and relatively strong fitting effects; φ (R2 = 0.793), though slightly lower, still has good explanatory capability.
(2) The multicollinearity test indicates that the maximum condition number reaches 4180 (cohesion c model), but the variance inflation factors (VIFs) for all models are below five, suggesting that although there is some degree of correlation among the independent variables, it remains within an acceptable range.
(3) The normality of the residuals is confirmed by the Jarque–Bera test (p > 0.05), with the models for Poisson’s ratio v (p = 0.958) and the critical deviatoric stress ratio σcd/σc (p = 0.892) demonstrating optimal residual normality.
(4) The autocorrelation tests show that except for models E (DW = 0.983) and σc/σt (DW = 0.971), which exhibit slight autocorrelation, the DW values for the other models range between 1.5 and 2.3, satisfying the independence assumption.
(5) It is noteworthy that although some models have a high condition number, all regression coefficients have significant p-values, and the variance inflation factors are all less than five, indicating that the model results are reliable. The regression model, established based on the selection of microscopic parameters with an |r| ≥ 0.3, can adequately explain the changes in the macroscopic parameters.
3.4. Analysis and Discussion of Results
The correlation and regression analysis results indicate significant differences in the influence of different mesoscopic parameters on the macroscopic mechanical properties. Among them, the effective bond modulus and elastic modulus E exhibit the strongest positive correlation (r = 0.876), which suggests that the bond stiffness between particles is a key factor in determining the overall deformation stiffness of the material. The negative correlation between the filler ratio Rf and E reflects that an increase in the proportion of weak contacts weakens the overall continuity and stiffness of the structure, thereby reducing its deformation resistance.
Regarding Poisson’s ratio ν, the positive correlation between the filler ratio Rf and the bond normal stiffness ratio k indicates that a higher proportion of weak contacts and stronger normal resistance help suppress particle sliding, leading to more significant lateral deformation. In contrast, a larger limits particle micro-motion, resulting in a decrease in Poisson’s ratio.
The uniaxial compressive strength σc is influenced by multiple factors, with the negative correlation between the moment distribution coefficient and Rf being particularly prominent. This suggests that unreasonable moment transfer and a high proportion of weak contacts may reduce the overall load-bearing capacity between particles. The positive correlation between the tensile strength σt and strength ratio Rσ further confirms that high strength and a uniform structure contribute to improving compressive performance.
The strong positive correlation (r = 0.569) between the compressive–tensile strength ratio σc/σt and the friction angle φ reveals the decisive role of frictional resistance in determining the failure mode of the structure. An increase in frictional force suppresses crack propagation, enhancing the overall compressive strength of the structure. The negative correlation between the moment distribution coefficient and Rσ also suggests that mechanical heterogeneity within the structure can reduce the compressive–tensile strength ratio.
This study established logical relationships between mesoscopic parameters and macroscopic responses through orthogonal design and quantitative analysis methods, providing theoretical support for parameter inversion in rock particle flow modeling. The statistical test results of the regression models indicate a high fitting accuracy, with R2 values exceeding 0.79, meeting the needs for engineering prediction and analysis. Compared with traditional empirical calibration methods, the process proposed in this paper is systematic and repeatable, providing a more reliable parameter basis for numerical rock simulations.