Abstract

Geosynthetics are extensively utilized to improve the stability of geotechnical structures and slopes in urban areas. Among all existing geosynthetics, geotextiles are widely used to reinforce unstable slopes due to their capabilities in facilitating reinforcement and drainage. To reduce settlement and increase the bearing capacity and slope stability, the classical use of geotextiles in embankments has been suggested. However, several catastrophic events have been reported, including failures in slopes in the absence of geotextiles. Many researchers have studied the stability of geotextile-reinforced slopes (GRSs) by employing different methods (analytical models, numerical simulation, etc.). The presence of source-to-source uncertainty in the gathered data increases the complexity of evaluating the failure risk in GRSs since the uncertainty varies among them. Consequently, developing a sound methodology is necessary to alleviate the risk complexity. Our study sought to develop an advanced risk-based maintenance (RBM) methodology for prioritizing maintenance operations by addressing fluctuations that accompany event data. For this purpose, a hierarchical Bayesian approach (HBA) was applied to estimate the failure probabilities of GRSs. Using Markov chain Monte Carlo simulations of likelihood function and prior distribution, the HBA can incorporate the aforementioned uncertainties. The proposed method can be exploited by urban designers, asset managers, and policymakers to predict the mean time to failures, thus directly avoiding unnecessary maintenance and safety consequences. To demonstrate the application of the proposed methodology, the performance of nine reinforced slopes was considered. The results indicate that the average failure probability of the system in an hour is during its lifespan, which shows that the proposed evaluation method is more realistic than the traditional methods.

Highlights

  • Soil slope stability analysis is a typical engineering issue that is widely associated with enormous geotechnical problems in practice

  • Our study sought to develop a probabilistic methodology for the reliability analysis of reinforced slopes, focusing on failures through the drainage system, which is an application of geotextiles

  • This study proposes a methodology for predicting the failure rate of an integrated system of several slopes reinforced with geotextiles

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Summary

Introduction

Our study sought to develop a probabilistic methodology for the reliability analysis of reinforced slopes, focusing on failures through the drainage system, which is an application of geotextiles. HBM is a probabilistic approach that allows the organization of inference on realconditions, and canand assist obtaining the posterior distribution of the parameters [34,35,36,37]. To estimate the posterior distribution, the prio ( ), should be modeled This prior knowledge can be obtained from dif distribution, ferent sources, including numerical simulations [36], experiments [40], or industrial oper ations [41].

Developed Methodology
Application to a Case Study
Geometry of the GRSs
97.5 Percentile α
Prioritizing Maintenance Actions
Conclusions
Full Text
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