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Optimum Scheme Selection for Multilayer Perceptron-Based Monte Carlo Simulation of Slope System Reliability

机译:基于多层的Perceptron的Monte Carlo模拟的最佳方案选择坡度系统可靠性

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摘要

Surrogate models are helpful tools to enhance the efficiency for intensive computations of the factor of safety (FoS) in probabilistic slope stability evaluation. This study presents a multilayer perceptron (MLP)-based surrogate model combined with the Monte Carlo simulation (MCS) for system reliability analysis of earth slopes. The MLP-based surrogate model is constructed derived from the space-filling Latin hypercube sampling (LHS) for a global prediction of the FoS. Several factors affecting the performance of the MLP model are studied in detail, including the training algorithm, the generation method and size of samples, and the hyperparameters. Three examples with system effects are tested to verify the performance of the proposed method. The results show that the MLP-based MCS can achieve high accuracy and efficiency for the system failure probability assessment of soil slopes in different failure zones.
机译:代理模型是有用的工具,提高概率坡度稳定性评估中安全性(FOS)的密集计算效率。 本研究提出了一种多层的Perceptron(MLP)的代理模型,与Monte Carlo仿真(MCS)相结合,用于地球斜坡的系统可靠性分析。 基于MLP的代理模型是从空间填充拉丁超立体采样(LHS)的构建,用于全局预测FOS。 详细研究了影响MLP模型性能的几个因素,包括训练算法,模拟的生成方法和样本大小,以及超参数。 测试有系统效果的三个例子以验证所提出的方法的性能。 结果表明,基于MLP的MCS可以实现不同故障区土壤斜坡系统故障概率评估的高精度和效率。

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