Study of the Scale Effect on Permeability in the Interlayer Shear Weakness Zone Using Sequential Indicator Simulation and Sequential Gaussian Simulation
Abstract
:1. Introduction
2. Materials and Methods
2.1. General Description of the Interlayer Shear Weakness Zones
2.2. Basic Principles and Methods of Modeling
- (1)
- Transform the discrete variable Sk into an indicator variable. Set ik (u) as the indicator value of Sk. When u ∈ Sk, ik (u) is 1, otherwise it is 0. For all samples, K discrete variables must be mutually exclusive. In other words, the following relations can be established:
- (2)
- Calculate the indicator variation function of each indicator variable ik (u). If there is a cluster effect for the original data, the cluster effect should be eliminated first.
- (3)
- The following steps should be used to conduct sequential simulation:
- (i)
- Determine the random access path for each grid point. Confirm the quantity (maximum and minimum) of the adjacent conditional data (including the original y and the y value of the grid point) at appointed grid point.
- (ii)
- Apply indicator kriging to the indicator variable ik (u) to estimate the probability that the type variable at the grid point belongs to Sk. For example, when simple indicator kriging is used, the probability of Sk at grid point u is:
- (iii)
- Determine the sequence (e.g., 1, 2, 3, …, K) of k discrete variables Sk. This sequence defines the distribution order of k discrete variables Sk within the probability range of [0, 1].
- (iv)
- Randomly formulate a value within [0, 1] and determine the type of the discrete variable corresponding to the value. This type refers to the variable type of the grid point.
- (v)
- Use a simulated value to update the k indicator data set and deal with the next grid point by following a random path until all the points have been simulated. Under such circumstances, one realization is obtained.
2.3. Generation of the 3-D Numerical Models
2.3.1. The Geometry Model
2.3.2. The Permeability Model
3. Results
3.1. Variation of Permeability as a Function of Sample Support
- For all eighteen ISWZs, it is observed that each sample has a similar trend with the increase in sample scale. As for the individual realizations, the fluctuations of permeability are gradually reduced with the increase in sample scale for each realization. This means that local homogeneity is captured at a particular model scale if its permeability is not sensitive to the slight variation.
- For ISWZs with constant width, the permeability values for all five realizations remain nearly unchanged with the increase in sample scale when mud < 0.4 for kh and mud > 0.45 for kv. However, this trend is found to be absent for ISWZs with varying width. In addition, note that there is a highly positive correlation between the kv and sample scale, whereas the kh decreases with the increase in sample scale.
3.2. Representative Effective Permeability of the ISWZs
3.3. Verification of The Proposed Numerical Model
4. Discussion
5. Conclusions
- A set of eighteen realistic numerical models of ISWZs were developed by geostatistical modeling, each with five stochastic realizations. The models represent common ISWZs that have variable effective permeability on their horizontal and vertical axes and on different scales. Additionally, the permeability variation displays a downward trend as the sample scale increases for all types of ISWZs.
- The width distributions and filling content are the main factors affecting the permeability properties of an ISWZ. The ISWZ that has a higher mud content will lead to a larger scale effect on ISWZ horizontal permeability, while the opposite is true for its vertical permeability. Furthermore, the ISWZs with changing width would have greater permeability variation than that of ISWZs with constant width.
- The permeability variation between the five realizations at each scale step is expressed by the Cv. When Cv remains below 0.5, this can be used as an indication that local homogeneity has been achieved at a particular sample scale (Vs). The estimated Vs varies as a function of ISWZ type, and varies for horizontal and vertical permeability.
- The modeling and simulation methods introduced here could be adopted to other types of ISWZs and can be applied to develop accurate relationships for ISWZ permeability as a function of sample scale and other ISWZ petrophysical parameters.
Author Contributions
Acknowledgments
Conflicts of Interest
Nomenclature
ISWZ | interlayer shear weakness zone |
SIS | sequential indicator simulation |
SGS | sequential Gaussian simulation |
IK | indicator kriging |
MC | monte Carlo |
LCPD | local conditional probability distribution |
Cv | the normalized standard deviation |
k | effective permeability |
kh | effective horizontal permeability of samples |
kv | effective vertical permeability of samples |
ks | a representative effective permeability |
Vs | size of a statistically homogeneous region |
kv-f | kv calculated at the full-size models |
kh-f | kh calculated at the full-size models |
ks-h | ks in the horizontal direction |
ks-v | ks in the vertical direction |
Vs-h | Vs in the horizontal direction |
Vs-v | Vs in the vertical direction |
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Geometrical Input Parameters | Permeability Input Parameters |
---|---|
ISWZ width (range, mean and standard deviation) | Mud permeability (range, mean and standard deviation) |
Fillings percentage | Gravel permeability (range, mean and standard deviation) |
Variogram parameters (major and minor range, search radius, etc.) | Fractured surrounding rock permeability (range, mean and standard deviation) |
SIS parameters (distribution type and distribution parameters) | SGS parameters (distribution type and log-normal distribution parameters) |
Type | Normal Distribution Parameters of the Width (cm) | |||
---|---|---|---|---|
Minimum | Maximum | Mean | Standard Deviation | |
C2 | 12.9 | 58.3 | 31.49 | 7.5 |
C3 | 14.3 | 108.8 | 44.12 | 15.6 |
C4 | 14.1 | 102.1 | 61.86 | 14.6 |
C5 | 27.3 | 65.4 | 46.8 | 6.3 |
ISWZ Type | Mud Content (%) | Distribution Parameters of the Width (cm) | |||
---|---|---|---|---|---|
Range | Mean | Standard Deviation | |||
Constant width | Type1 | 10 | 100 | 100 | 0 |
Type2 | 20 | 100 | 100 | 0 | |
Type3 | 25 | 100 | 100 | 0 | |
Type4 | 30 | 100 | 100 | 0 | |
Type5 | 35 | 100 | 100 | 0 | |
Type6 | 40 | 100 | 100 | 0 | |
Type7 | 45 | 100 | 100 | 0 | |
Type8 | 50 | 100 | 100 | 0 | |
Type9 | 60 | 100 | 100 | 0 | |
Varying width | Type10 | 10 | 10–100 | 55 | 15 |
Type11 | 20 | 10–100 | 55 | 15 | |
Type12 | 25 | 10–100 | 55 | 15 | |
Type13 | 30 | 10–100 | 55 | 15 | |
Type14 | 35 | 10–100 | 55 | 15 | |
Type15 | 40 | 10–100 | 55 | 15 | |
Type16 | 45 | 10–100 | 55 | 15 | |
Type17 | 50 | 10–100 | 55 | 15 | |
Type18 | 60 | 10–100 | 55 | 15 |
Fillings | Log-Normal Distribution Parameters of Permeability (mD) | |||
---|---|---|---|---|
Minimum | Maximum | Mean | Standard Deviation | |
Mud | 0.7 | 5.6 | 2.1 | 0.8 |
Gravel | 276.7 | 28,913.2 | 3818.5 | 3464 |
Fractured surrounding rock | 16.5 | 605.3 | 119.8 | 78.9 |
ISWZ Type | Vs (m) | ||
---|---|---|---|
For Horizontal Direction | For Vertical Direction | ||
Constant width (100 cm) | Type1 (mud = 0.1) | <0.5 | 3 |
Type2 (mud = 0.2) | <0.5 | 2.5 | |
Type3 (mud = 0.25) | <0.5 | 3.5 | |
Type4 (mud = 0.3) | <0.5 | 2.5 | |
Type5 (mud = 0.35) | <0.5 | 1 | |
Type6 (mud = 0.4) | <0.5 | <0.5 | |
Type7 (mud = 0.45) | <0.5 | <0.5 | |
Type8 (mud = 0.5) | 2.5 | <0.5 | |
Type9 (mud = 0.6) | N/A | <0.5 | |
Varying width (10–100 cm) | Type10 (mud = 0.1) | 40 | N/A |
Type11 (mud = 0.2) | 65 | N/A | |
Type12 (mud = 0.25) | 75 | N/A | |
Type13 (mud = 0.3) | 70 | N/A | |
Type14 (mud = 0.35) | N/A | N/A | |
Type15 (mud = 0.4) | N/A | N/A | |
Type16 (mud = 0.45) | N/A | N/A | |
Type17 (mud = 0.5) | N/A | 60 | |
Type18 (mud = 0.6) | N/A | 65 |
ISWZ Type | ks (mD) | ||
---|---|---|---|
For Horizontal Direction | For Vertical Direction | ||
Constant width (100 cm) | Type1 (mud = 0.1) | 2074.8 | 482 |
Type2 (mud = 0.2) | 1707.4 | 101.6 | |
Type3 (mud = 0.25) | 1416.6 | 85.8 | |
Type4 (mud = 0.3) | 941.8 | 54 | |
Type5 (mud = 0.35) | 826 | 27.2 | |
Type6 (mud = 0.4) | 645.2 | 10.4 | |
Type7 (mud = 0.45) | 405.4 | 5.12 | |
Type8 (mud = 0.5) | 291.8 | 3.98 | |
Type9 (mud = 0.6) | 81 | 3.178 | |
Varying width (10–100 cm) | Type10 (mud = 0.1) | 1044 | 378.8 |
Type11 (mud = 0.2) | 1072 | 199.2 | |
Type12 (mud = 0.25) | 834.8 | 126 | |
Type13 (mud = 0.3) | 584 | 94.6 | |
Type14 (mud = 0.35) | 330.4 | 72.4 | |
Type15 (mud = 0.4) | 270.2 | 32.6 | |
Type16 (mud = 0.45) | 232.8 | 34.2 | |
Type17 (mud = 0.5) | 154.2 | 19.8 | |
Type18 (mud = 0.6) | 105.6 | 13.2 |
Test Method | Number | k (mD) | Sample Number | k (mD) | Sample Number | k (mD) |
---|---|---|---|---|---|---|
Water-pressure test by Hohai University (boost) | No. 1 | 11.5 | No. 2 | 213.3 | No. 3 | 825.7 |
Water-pressure test by Hohai University (depressurization) | No. 4 | 328.7 | No. 5 | 222.6 | No. 6 | 365.1 |
Laboratory test | No. 7 | 108.2 | No. 8 | 149.8 | No. 9 | 24.9 |
Water-pressure test by ECIDI | No. 10 | 32.4 | No. 11 | 317.6 | No. 12 | 70.3 |
No. 13 | 17.6 | No. 14 | 625.7 | No. 15 | 175.8 | |
No. 16 | 574.4 | No. 17 | 912.3 | No. 18 | 912.3 | |
No. 19 | 10.1 | No. 20 | 736.5 | No. 21 | 617.6 | |
No. 22 | 116.5 | No. 23 | 211.8 | No. 24 | 133.8 | |
No. 25 | 29.7 | No. 26 | 39.2 | No. 27 | 623.2 | |
No. 28 | 1154.8 | No. 29 | 458.7 | No. 30 | 1287.3 |
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Chen, M.; Zhou, Z.; Zhao, L.; Lin, M.; Guo, Q.; Li, M. Study of the Scale Effect on Permeability in the Interlayer Shear Weakness Zone Using Sequential Indicator Simulation and Sequential Gaussian Simulation. Water 2018, 10, 779. https://doi.org/10.3390/w10060779
Chen M, Zhou Z, Zhao L, Lin M, Guo Q, Li M. Study of the Scale Effect on Permeability in the Interlayer Shear Weakness Zone Using Sequential Indicator Simulation and Sequential Gaussian Simulation. Water. 2018; 10(6):779. https://doi.org/10.3390/w10060779
Chicago/Turabian StyleChen, Meng, Zhifang Zhou, Lei Zhao, Mu Lin, Qiaona Guo, and Mingwei Li. 2018. "Study of the Scale Effect on Permeability in the Interlayer Shear Weakness Zone Using Sequential Indicator Simulation and Sequential Gaussian Simulation" Water 10, no. 6: 779. https://doi.org/10.3390/w10060779