Submitted:
04 August 2025
Posted:
05 August 2025
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Abstract

Keywords:
1. Introduction
2. Method for Constructing CRFs
2.1. Generation of URFs via FFT Filtering
2.2. Construction of CRFs with the Co-Kriging Method
3. Case Study
3.1. Model Configuration
3.2. Slope-Stability Analysis with URFs
3.3. Slope-Stability Analysis with IRFs
3.4. Slope-stability analysis with CRFs
4. Discussion
- (1)
- Failure mechanisms. Incorporating field observations substantially changes the evolution of the incipient slip surface. In the CRF model the probability of through-going failure (Mode M1) is markedly lower than in the URF, whereas modes characterised by local sliding or multi-step combinations (e.g. M2, M8) become much more frequent. Borehole data locally update the material strength, which in turn inhibits the formation of continuous low-strength bands and mitigates the risk of a large, penetrating slip surface. At the same time, the revealed weak zones trigger shear instability in the upper benches. This behaviour is consistent with the shallow, small-scale failures commonly observed in practice.
- (2)
- Statistical characteristics of the FoS. The CRF increases the mean FoS slightly (≈ 0.01) while reducing its variance by roughly 15 %, yielding a markedly more concentrated distribution with thinner tails. This convergence is most pronounced at intermediate bedding dips of 15°–45°, underscoring the decisive role of observation constraints in controlling local weakening zones and illustrating a robustness effect arising from the inclusion of field information together with parameter cross-correlation..
- (3)
- Consistency of input parameter fields (Figure 13). Goodness-of-fit tests show that the generated cohesion field (log-normal) and friction-angle field (truncated normal) reproduce the prescribed marginal distributions well (mean Kolmogorov–Smirnov statistic D < 0.035). The sample mean of the target cross-correlation coefficient (ρ = −0.2) deviates by only 0.007, indicating that the framework accurately captures the prior, although the sample standard deviation remains about 0.08. Such “accurate mean yet noticeable fluctuation” is expected when a finite domain, long correlation length and nonlinear distribution mapping coexist, and it exerts only a minor influence on Monte Carlo estimates of failure modes and FoS.
5. Conclusions
- (1)
- Cross-correlation governs failure mechanisms. A negative cohesion–friction-angle correlation (ρ = −0.2) produces a pronounced strength-compensation effect, whereas assuming independence (IRF) accentuates “weak-weak” spatial co-location. Consequently, the IRF increases the local-failure probability, reduces the mean FoS by 0.006, enlarges its standard deviation by 10.26 %, and raises the probability of low-FoS events (FoS < 1.1) from 7.49 % to 12.30 %.
- (2)
- Observation constraints optimise the failure-mode distribution. By suppressing the formation of extreme local weak zones, the CRF reduces the probability of through-going failure (Mode M1) by an average of 12 % and increases the incidence of local or multi-step failures (e.g. M2, M8), yielding patterns that more closely match field observations.
- (3)
- The CRF markedly enhances FoS robustness. Relative to the URF, the CRF produces a tighter FoS distribution with lighter tails: the mean FoS rises by 0.010, the standard deviation decreases by 15.38 %, and the probability of low-FoS events falls to 2.30 %. These improvements provide more reliable and actionable guidance for engineering design.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
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| Parameter | Unit Weigh (kN m⁻³) |
Elastic Modulus (GPa) |
Poisson’s Ratio | Cohesion (kPa) |
Friction Angle (°) |
|---|---|---|---|---|---|
| Mean | 23 | 1 | 0.25 | 45 | 27 |
| Coefficient of variation | — | — | — | 0.2 | 0.1 |
| Distribution type | Deterministic | Deterministic | Deterministic | Log-normal | Normal |
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