红土取土场边坡稳定性的人工神经网络概率评估

IF 2.3 Q2 ENGINEERING, GEOLOGICAL International Journal of Geotechnical Engineering Pub Date : 2022-06-20 DOI:10.1080/19386362.2022.2090697
M. A. Idris
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引用次数: 0

摘要

住宅区废弃红土取土坑的边坡稳定性评估是非常可取的,因为其破坏的后果可能是致命的。本研究将人工神经网络(ANN)应用于取土坑的概率边坡稳定性评估。为了确定相应的安全系数(FOS),在有限差分数值模拟中,使用随机抗剪强度参数、边坡几何形状、边坡上的结构荷载和结构与坡顶的距离作为输入。将FOS与人工神经网络技术相结合,导出了预测失效概率的数学模型。研究了土壤抗剪强度参数的变异性和参数之间的相互关系对边坡破坏概率的影响。结果表明,矿坑边坡的性能水平是危险的。抗剪强度参数的变化显著影响边坡的稳定性,而参数之间的负相关系数降低了边坡破坏的概率。
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Probabilistic slope stability assessment of laterite borrow pit using artificial neural network
ABSTRACT Assessment of slope stability of abandoned laterite borrow pits in residential areas is highly desirable as the consequence of its failure could be fatal. This study applied artificial neural network (ANN) to conduct probabilistic slope stability assessments of the borrow pits. To determine the corresponding factor of safety (FOS), random shear strength parameters, slope geometry, structure load on the slope and structure distance from the slope crest were used as inputs in finite-difference numerical simulations. The FOS was combined with ANN techniques to derive a mathematical model for predicting the failure probability. The effects of variability of soil shear strength parameters and cross-correlation between the parameters on the probability of slope failure were examined. Results showed that the performance level of the pit slopes was hazardous. Variability in shear strength parameters significantly influenced the slope stability, while negative correlation coefficients between the parameters reduced the probability of the slope failure.
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来源期刊
CiteScore
5.30
自引率
5.30%
发文量
32
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