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Extreme learning machine for the displacement prediction of landslide under rainfall and reservoir level

机译:极限学习机在降雨和水库水位下滑坡位移预测

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摘要

Landslide prediction is always the emphasis of landslide research. Using global positioning system GPS technologies to monitor the superficial displacements of landslide is a very useful and direct method in landslide evolution analysis. In this paper, an EEMD-ELM model [ensemble empirical mode decomposition (EEMD) based extreme learning machine (ELM) ensemble learning paradigm] is proposed to analysis the monitoring data for landslide displacement prediction. The rainfall data and reservoir level fluctuation data are also integrated into the study. The rainfall series, reservoir level fluctuation series and landslide accumulative displacement series are all decomposed into the residual series and a limited number of intrinsic mode functions with different frequencies from high to low using EEMD technique. A novel neural network technique, ELM, is employed to study the interactions of these sub-series at different frequency affecting landslide occurrence. Each sub-series extracted from accumulative displacement of landslide is forecasted respectively by establishing appropriate ELM model. The final prediction result is obtained by summing up the calculated predictive displacement value of each sub. The EEMD-ELM model shows the best accuracy comparing with basic artificial neural network models through forecasting the displacement of Baishuihe landslide in the Three Gorges reservoir area of China.
机译:滑坡预测一直是滑坡研究的重点。使用全球定位系统GPS技术监测滑坡的表层位移是滑坡演化分析中非常有用且直接的方法。本文提出了一种EEMD-ELM模型[基于整体经验模式分解(EEMD)的极限学习机(ELM)整体学习范式]来分析滑坡位移预测的监测数据。降雨数据和水库水位波动数据也被整合到研究中。 EEMD技术将降雨序列,水库水位波动序列和滑坡累积位移序列分解为残差序列,并限制了有限数量的固有模式函数,这些函数具有从高到低的不同频率。一种新的神经网络技术,ELM,用于研究这些子系列在不同频率下影响滑坡发生的相互作用。建立适当的ELM模型,分别对从滑坡累积位移中提取的每个子系列进行预测。通过将每个子计算出的预测位移值相加得出最终预测结果。通过预测中国三峡库区白水河滑坡的位移,EEMD-ELM模型与基本的人工神经网络模型相比,具有最佳的精度。

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