基于滑坡演化状态水平预测的下行控制

Shu Sun, Cheng Lian, Xiaoping Wang
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引用次数: 0

摘要

准确的预测和有效的控制是减少滑坡灾害影响的关键。在实践中,最近的研究大多集中在滑坡位移的预测和控制上。本文提出了一种基于滑坡演化状态水平预测的新的控制方法,即下行控制。该方法的核心部件是水平预测器和区间预测器。特别地,我们首先通过标记滑坡样本点的离散类别信息,将传统的位移回归预测问题转化为水平分类预测问题。然后建立基于多任务学习-堆叠长短时记忆网络(MTL-SLSTM)的水平预测器,预测滑坡的状态,判断是否需要对系统进行控制。最后,我们设计了一个基于自举法的安全降雨间隔预测器,以获得控制变化的安全值。在白水河滑坡和十六树堡滑坡上验证了所提出的控制方法的有效性。实验结果表明,所提出的向下控制方法是有效的,并且更加直观。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Down-Level Control Based on Level Prediction of Landslide Evolutionary State
Accurate prediction and effective control are the key to reducing the impact of landslide disasters. In practice, most of recent studies focus on landslide displacement prediction and control. In this paper, we propose a new control method based on the level prediction of landslide evolution state, namely down-level control. The core components are level predictor and interval predictor in this method. Specially, we first transform the traditional displacement regression prediction problem into a level classification prediction problem by labeling discrete category information for landslide sample points. Then the level predictor based on Multi-task learning-Stacked long-short time memory network (MTL-SLSTM) is established to predict the state of the landslide and judge whether the system needs to be controlled. Finally, we design a safe rainfall interval predictor based on bootstrap method to obtain the safe value of control variation. The effectiveness of the proposed control method is verified on Baishuihe and Shiliushubao landslides. The results show the proposed down-level control method is valid and more intuitive.
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