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Probabilistic back analysis based on Bayesian and multi-output support vector machine for a high cut rock slope

机译:基于贝叶斯和多输出支持向量机的高边坡岩体概率反分析

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Uncertainty of geomechanical parameters is an important consideration for rock engineering and has a very important influence on safety evaluation, design, and construction. Back analysis is a common method of determining geomechanical parameters but traditional deterministic back analysis cannot allow for consideration of this uncertainty. In this study, a new probabilistic back analysis method is proposed that integrates Bayesian methods and a multi-output support vector machine (B-MSVM). In this B-MSVM back analysis method, Bayesian was used to deal with the uncertainty of geomechanical parameters and a multi-output support vector machine (MSVM) was adopted to build the relationships between displacements and those parameters. The proposed method was applied to a high abutment rock slope at the Longtan hydropower station, China. At Longtan, the uncertainty of the two types of geomechanical parameters, Young's modulus and lateral pressure coefficients of in situ stress, were modeled as random variables. Based on the parameters identified by probabilistic back analysis, the computed displacements agreed closely with the measured displacement data monitored in the field. The result showed that B-MSVM presented the uncertainty of the geomechanical parameters reasonably. Further study indicated that the performance of B-MSVM could be improved greatly by updating field monitoring information regularly. The proposed method provides a significant new approach for probabilistic back analysis and contributes to the determination of realistic geomechanical parameters. (C) 2015 Elsevier B.V. All rights reserved.
机译:岩石力学参数的不确定性是岩石工程的重要考虑因素,对安全性评估,设计和施工具有非常重要的影响。反分析是确定岩土力学参数的常用方法,但是传统的确定性反分析无法考虑这种不确定性。在这项研究中,提出了一种新的概率反分析方法,该方法将贝叶斯方法和多输出支持向量机(B-MSVM)集成在一起。在这种B-MSVM反分析方法中,贝叶斯方法用于处理地质力学参数的不确定性,而多输出支持向量机(MSVM)用于建立位移与这些参数之间的关系。该方法被应用于中国龙滩水电站的高基岩边坡。在龙滩,将两种类型的地质力学参数的不确定性(杨氏模量和原位应力的侧向压力系数)建模为随机变量。根据通过概率反分析确定的参数,计算出的位移与现场监测的测得位移数据非常吻合。结果表明,B-MSVM合理地反映了岩土力学参数的不确定性。进一步的研究表明,定期更新现场监测信息可以大大提高B-MSVM的性能。所提出的方法为概率反分析提供了重要的新方法,并有助于确定实际的地质力学参数。 (C)2015 Elsevier B.V.保留所有权利。

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