利用高斯过程和贝叶斯推理模拟交通基础设施边坡稳定性的计算机实验

IF 2.4 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE DataCentric Engineering Pub Date : 2021-09-06 DOI:10.1017/dce.2021.14
A. Svalova, P. Helm, D. Prangle, M. Rouainia, S. Glendinning, D. Wilkinson
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引用次数: 7

摘要

摘要:我们建议使用完全贝叶斯高斯过程仿真(GPE)作为替代方法,对高塑性粘土中交通基础设施路堑边坡进行昂贵的计算机实验,这些边坡与破坏风险增加有关。我们的退化试验模拟了超孔隙水压力的耗散和季节性孔隙水压力循环,以确定边坡破坏时间。在一定的几何形状和强度参数范围内进行足够的边坡稳定性预测的计算机模拟是不切实际的。因此,GPE被用作一组最佳间隔模拟器运行的插值器,将斜坡破坏的时间建模为几何形状、强度和渗透率的函数。采用贝叶斯推理和马尔可夫链蒙特卡罗模拟得到GPE参数的后验估计。对于在184年模型时间内未达到失效的实验,采用贝叶斯模型随机推算失效时间。经过培训的GPE具有为基础设施边坡设计、管理和维护提供信息的潜力。与原始模拟器相比,计算成本的降低使其成为一种非常有吸引力的工具,可以应用于不同时空尺度的运输网络。
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Emulating computer experiments of transport infrastructure slope stability using Gaussian processes and Bayesian inference
Abstract We propose using fully Bayesian Gaussian process emulation (GPE) as a surrogate for expensive computer experiments of transport infrastructure cut slopes in high-plasticity clay soils that are associated with an increased risk of failure. Our deterioration experiments simulate the dissipation of excess pore water pressure and seasonal pore water pressure cycles to determine slope failure time. It is impractical to perform the number of computer simulations that would be sufficient to make slope stability predictions over a meaningful range of geometries and strength parameters. Therefore, a GPE is used as an interpolator over a set of optimally spaced simulator runs modeling the time to slope failure as a function of geometry, strength, and permeability. Bayesian inference and Markov chain Monte Carlo simulation are used to obtain posterior estimates of the GPE parameters. For the experiments that do not reach failure within model time of 184 years, the time to failure is stochastically imputed by the Bayesian model. The trained GPE has the potential to inform infrastructure slope design, management, and maintenance. The reduction in computational cost compared with the original simulator makes it a highly attractive tool which can be applied to the different spatio-temporal scales of transport networks.
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来源期刊
DataCentric Engineering
DataCentric Engineering Engineering-General Engineering
CiteScore
5.60
自引率
0.00%
发文量
26
审稿时长
12 weeks
期刊最新文献
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