Prediction of Landslide Displacement Using EMD-PSO-ELM with Multiple Factors

Ying Zhu, Li Zhou, Honggao Deng, Xiao Nan
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引用次数: 3

Abstract

This study demonstrates a model for the prediction of active landslide displacement based on the extreme learning machine (ELM) with multiple factors. The particle swarm optimization (PSO) model is selected to optimize the parameters of ELM. Firstly, the landslide displacement sequence which has been monitored is divided into several components developed by the empirical mode decomposition (EMD). Secondly, from the analysis of the basic characteristics of a landslide, this research acquires a series of main influencing factors. Thirdly, each landslide displacement component respectively is predicting by the multi-factor PSO-ELM model. Then, all landslide displacement components are added up as the forecasting result. The model is first trained and then evaluated by using data from a case study of shuping landslide triggered by seasonal rainfall in China. Performance comparisons of EMD-PSO-ELM model with PSO-ELM model are presented. The experimental results illustrate that the multi-factor EMD-PSO-ELM model can efficiently measure the landslide displacement behavior.
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多因素EMD-PSO-ELM预测滑坡位移
提出了一种基于多因素极值学习机(ELM)的活动滑坡位移预测模型。采用粒子群优化(PSO)模型对ELM参数进行优化。首先,利用经验模态分解(EMD)将监测到的滑坡位移序列划分为若干分量;其次,通过对滑坡基本特征的分析,得出了一系列主要影响因素。再次,利用多因素PSO-ELM模型分别预测各滑坡位移分量。然后将所有滑坡位移分量相加作为预测结果。首先对模型进行了训练,然后以中国季节性降雨引发的树坪滑坡为例对模型进行了评估。比较了EMD-PSO-ELM模型与PSO-ELM模型的性能。实验结果表明,多因素EMD-PSO-ELM模型能够有效地测量滑坡位移特性。
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