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Prediction of landslide displacement with an ensemble-based extreme learning machine and copula models

机译:基于集合的极限机器和Copula模型预测滑坡位移

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摘要

Research on the dynamics of landslide displacement forms the basis for landslide hazard prevention. This paper proposes a novel data-driven approach to monitor and predict the landslide displacement. In the first part, autoregressive moving average time series models are constructed to analyze the autocorrelation of landslide triggering factors. A linear ensemble-based extreme learning machine using the least absolute shrinkage and selection operator is applied in predicting the displacement of landslides. Five benchmarking data-driven models, the support vector machine, neural network, random forest, k -nearest neighbor, and the classical extreme learning machine, are considered as baseline models for validating the ensemble-based extreme learning machines. Numerical experiments demonstrated that the proposed prediction model produces the smallest prediction errors among all the algorithms tested. In the second part, parametric copula models are fitted on the predicted displacement, to investigate the relationship between the triggering factors and landslide displacement values. The Gumbel-Hougaard copula model performs best, which indicates strong upper tail correlation between the triggering factors and displacement values. Thresholds for the triggering factors can be obtained by monitoring the landslide moving patterns with large displacement values. The effectiveness and utility of the proposed data-driven approach have been confirmed with the landslide case study in the region of the Three Gorges Reservoir.
机译:滑坡位移动力学的研究构成了滑坡危险预防的基础。本文提出了一种新的数据驱动方法来监测和预测滑坡位移。在第一部分中,构建自回归移动平均时间序列模型以分析滑坡触发因子的自相关。使用最小的绝对收缩和选择操作员的基于线性集合的极端学习机器预测滑坡的位移。五个基准测试数据驱动模型,支持向量机,神经网络,随机森林,K -Nearest邻居和经典的极端学习机,被视为用于验证基于集合的极端学习机的基线模型。数值实验表明,所提出的预测模型在所有测试的所有算法中产生最小的预测误差。在第二部分中,参数拷贝模型安装在预测的位移上,以研究触发因子与滑坡位移值之间的关系。 Gumbel-HouGaard Copula模型表现最佳,这表明触发因子和位移值之间的强尾相关性强。可以通过监视具有大的位移值的滑坡移动模式来获得触发因子的阈值。拟议的数据驱动方法的有效性和效用已通过三峡库区区域的滑坡案例研究证实。

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